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FOOD:LAB

Strategic Oversight & Author: Tanner Methvin Contributor: Etai Even-Zahav | Editor: Tambudzai Ndlovu Project Management: Robin Jutzen & Tambudzai Ndlovu Design: Thandiwe Tshabalala | Photography: Yasser Booley ©Africa Centre 2015 | 5th Floor Exchange Building, 28 St George’s Mall, Cape Town | [email protected] | www.africacentre.net All rights reserved. No part of this publication may be reproduced in any form or by any means without prior permission from the Africa Centre.

2

CONTENTS 5

Project Overview

20

Spaza Shops

7

Context

22

Kanana Residents

7

Everyday Urbanism

24

Kanana Overview

9

Food Security Lab

41

Perceptions of Behaviour

9

Background

65

Actual Behaviour

12

South Africa & Food Insecurity

92

Motivations for Behaviour

12

Urban Food Insecurity & Cape Town

132

Spaza Shops

15

Focus Area

146

Closing Remarks

18

Research Intentions

148

Acknowledgements

18

Research Structure

149

Bibliography

3

4

PROJECT OVERVIEW Everyday African Urbanism is a conceptual framework

they do; where they shop and how often; beyond resource

that filters out the macro picture of city life and instead

constraints, what influences their food purchasing choices;

focuses on the micro-spaces of everyday engagement

at what income level is it possible to secure a high quality

and interaction.

regular diet; and what are the environmental, social and psychological factors that may prevent a strategic approach

To re-imagine and re-define the meaning of urban life and

to food purchases and consumption? At the centre of this

plot a different future/s, we have to first understand what is

research was an exploration of how the local/immediate

actually going on through the practices of the people who

food suppliers (spaza shops1, street vendors, informal

live there. The Africa Centre has applied this framework to

cooking facilities) contribute to the food ecosystem. As

its initial intervention: The Food Security Lab.

such, the Lab also included an in depth review of the spaza shops in particular, the stock they carry and why, their

To date, The Food Security Lab has comprised 16 months of

supply chains and a range of consumer behaviour within

research within a community called Kanana in Gugulethu,

the shops.

Cape Town, South Africa. The research focused on how people living within households that generally earn a monthly income of R4,000 or less manage their food requirements. It examined: why they purchase the food

1.

Spaza Shops are informal general stores typically operating out of shacks outside the public sector’s regulatory framework.

5 5

6

CONTEXT Urbanisation can be defined as the rapid and

in the world today living in slums and the most

mental interventions that are flawed and which,

massive growth of, and migration to, large cit-

extreme depths of deprivation within these com-

by and large, are unable to come to terms with

ies. We are currently experiencing the second

munities. Cities and towns in Africa have been

the reality and implications of rapid urbanisation.

most important period of urban growth and

growing in tandem with slums and informal eco-

To support alternative approaches to the Conti-

transition in the history of the world and this

nomic activity.

nent’s urban development trajectory, a new body

process is almost entirely localised within the Global South.

of theory and practice must be considered. In In 2014 the United Nations reported 70% of Afri-

other words, unless we can imagine and develop

can urban dwellers live in slums and in SSA, only

a more credible account of everyday urbanism,

Statisticians have been measuring this transi-

30% of the population is linked to an electricity

the desire for urban improvement will remain a

tion since 1950 and expect it to continue until

network; 60% to portable water; and 31% have

frustrated yearning.

approximately 2030. Over this period the Global

access to sanitation. The reason Africa’s rapid

South is expected to grow the urban share of its

urbanisation has translated into the explosion

EVERYDAY URBANISM

populations from 18% to 60%.

of poverty, slum-living, and gross inequity is, of

A significant resource of literature dealing with

course, complex and manifold. One clear mate-

everyday urbanism asserts that we have to first

Although today 40% of Africa is officially urban-

rial issue that seems poorly understood within

understand what is actually going on through the

ised this figure hides enormous discrepancies

this complexity is the lack of competent theory,

practices of the people who live in urban spaces

across the continent - certain countries (all of

which underpins policies and programmes, and

before solutions are defined and implemented.

the large African economies) and regions have

effective implementation and governance of

The principle being that more often than not,

already reached the 50% mark while others lag

these programmes at multiple levels of public

theory is developed in the abstract and remains

far behind. However, the reality of African ur-

and private sector leadership - city, regional and

without practical application. How can we pos-

banisation disproves the generally accepted

national.

sibly expect to address the broad continuum

principle that economic prosperity is associ-

of challenges facing the urban poor if we don’t

ated with higher rates of urbanisation. In fact,

It is clear to us today that on one hand much of

have an intimate understanding of their desires,

Sub-Sahara Africa (SSA) which represents over

public and private sector leadership in Africa is

aspirations, attachments, connectivity, and mo-

90% of the continent, has the largest population

using policy frameworks and social and environ-

tivations?

7 7

8

FOOD SECURITY LAB To bring the ideas of Everyday Urbanism into

of chronic undernourishment of 209 million be-

ent countries would be possible. In the process,

practice, as a means of understanding a specif-

tween today and 1990-1992 .

they are inherently forced to make broad estima-

1

ic aspect of urban behaviour we designed the Food Security Lab research initiative.

tions and to omit a range of important details. Yet, these big statistics tell a partial story. The

These span from macro-trends to intra-regional

number of people suffering from poverty and

variations, to micro-scale, context-specific coping

It is our intention that the information and knowl-

hunger remains unacceptably high after dec-

strategies.

edge generated out of this process will support

ades of development efforts: 1.2 billion people are

policy, programmes and solutions to the food se-

still estimated to be trapped in extreme poverty,

Hunger, or more technically ‘undernutrition’, of-

curity challenges facing our country.

1

while 805 million are chronically undernourished

fers a pertinent example of a simplified measure

BACKGROUND

.Meanwhile, there is enough wealth and food in

that only tells a small part of a complex story – im-

global circulation to support humanity adequate-

portant as it is. Inadequate nutrition, or ‘malnutri-

The Millennium Development Goals (MDGs)

ly. It is global disparities, not insufficient resources

tion’ manifests in often invisible and counter-intu-

placed the need to “eradicate extreme poverty

that are fundamentally implicated in this human

itive ways. For instance, ‘micronutrient deficiency’

and hunger” by 2015 at the top of the interna-

development crisis. Secondly, these statistics do

or ‘invisible hunger’, a deficiency in vitamins and/

tional community’s agenda to improve the grim

not disclose inter-regional differences. Nearly all

or minerals in the body, affects a large portion

state of human health, equity and dignity.

of the globe’s destitute and hungry citizenry re-

of the world population, with adverse effects on

side in the Global South. Even within the Global

human wellbeing. Another relatively recent and

On both accounts, that is, poverty and hunger,

South, wide disparities exist. Sub-Saharan Afri-

counter-intuitive form of malnutrition, ‘over-nutri-

there have been encouraging gains in recent

ca for instance fares particularly poorly on both

tion’, is commonly believed to manifest in over-

years. The MDGs indicate that there were 700 mil-

scores compared to the rest of the Global South.

weight and obesity. Globally between 1980 and

lion less people living in extreme poverty in 2010

Thirdly, because the MDGs cover such a wide

2013 the number of overweight and obese people

as in 1990. Likewise, the latest Food and Agricul-

suite of developmental issues, the measures used

is estimated to have increased from 857 million to

ture Organisation’s (FAO) report on the State of

to assess progress have to be simple and well-

2.1 billion3. Overweight and especially obesity car-

Food Insecurity in the World shows a reduction

established, so that retrieving data across differ-

ry particularly deleterious consequences, ranking

&2

1. 2. 3.

FAO (2014) MDGs (2013:11) Ng et al. (2014)

9 9

amongst the top non-communicable health risks.

for an active and healthy life”5. From this defi-

energy dense, high fat, high protein, nutrient poor,

While traditionally these phenomena were closely

nition, four key pillars can be distilled, namely,

highly processed, high in sugar foods. These food

associated with wealth and the Global North, the

“food availability, physical and economic access

choices are informed by the increased demands

rate of the ‘pandemic’ is now growing dramati-

to food, utilisation and stability over time” .

put on urban residents’ time, which leads to the

5

cally in the Global South.

purchase of cheaper ready made foods, which are Mega-trends, such as the second wave of urbani-

defined by these qualities.

Unlike undernourishment – where some major im-

sation along with economic globalisation are chal-

provements have been made and there are best-

lenging conventional conceptions of food secu-

However, since much of the Global South is still

practice examples to draw on – with obesity there

rity. Traditionally, food security focused narrowly

struggling with widespread under nutrition, its

are “…no national success stories” since 1980 as

on reducing hunger and improving availability by

urban centres are increasingly seeing a disturb-

reported by Ng et al. (2014). There are numerous

increasing rural food production levels. To date, a

ing co-existence of overweight and obesity. This

factors with direct causal links to obesity ranging

clear ‘rural bias’ persists. However, as the Global

stark ‘double burden’ of malnutrition facing

from excessive calorie intake (over-nutrition), to

South urbanises rapidly, securing urban access

many urban hubs across the African continent

dietary changes, decreased physical activity and

to not only sufficient but also nutritious food, is

and other parts of the Global South demands

increasingly, changes in gut microbiome.

becoming a fast-growing but neglected prob-

integrated approaches that examine and deal

lem . Urbanisation, economic globalisation and

with food security, and health more generally in

Food security looks beyond hunger; “…not as a

concomitant food-chain consolidation (from pro-

all its dimensions.

deficit of calories, but as a violation of a broader

ducers through to retailers ) are initiating a ‘nutri-

set of social, economic and physical conditions” .

tion transition’8. Put crudely, this term describes

It speaks to a wide range of requirements need-

the shifting of diets that occurs as people switch

ed to create an enabling environment where “all

from an ‘agrarian’ rural to a more urban ‘industri-

people, at all times, have physical and economic

alised’ lifestyle. This shift can, in a small measure,

access to sufficient, safe and nutritious food to

be associated with a more sedentary lifestyle, but

meet their dietary needs and food preferences

is likely more related to increased consumption of

6

4

4. 5. 6. 7. 8.

Patel (2012:2) FAO (2014) Frayne et al. (2014) Reardon & Timmer (2007) Popkin et al. (2012)

7

10 10

11

SOUTH AFRICA & FOOD INSECURITY

intake’ in the Survey “…reflects the classic picture

on poor households as they tend to be the most

of the nutrition transition and urbanisation” . While

food insecure. Their baseline study found that 77%

South Africa offers a telling case-study of this dou-

the intricacies of this Survey are far more sophisti-

of the surveyed households were moderately or

ble burden and the necessity of developing an in-

cated than it can be given credit for here, the key

severely food insecure. In Cape Town, which was

tegrated two-pronged approach to food security

conclusion is that South Africa faces a related nu-

one of the 11 cities included in the studies, this rate

that addresses both under nutrition and obesity. It

tritional problem that needs to be tackled in an in-

was even higher, at 80%12. The informal settlement

is important to note that South Africa produces an

tegrated manner and customised to also cater for

of Khayelitsha fared particularly badly, with mod-

adequate supply of food nationally. Yet, clearly pro-

a fast-growing informal urban population. Despite

erate to severe food insecurity levels at 89%. This

ducing enough food does not automatically secure

the fact that South Africa is already 54% urban

study indicates the pervasiveness of the problem

access to it, financial or physical. South Africa’s Na-

(expected to reach 77% by 2050)

where access

and shows the urgency of confronting what it calls

tional Health and Nutrition Survey (SANHANES-1)9

is the main concern, direct food security interven-

the ‘invisible crisis’ of food insecurity among the

found that nationally, 26% of its population expe-

tions still focus almost exclusively on production.

urban poor.

rienced hunger while a further 28% were at risk of

9

10

areas, where 32% of the population was found to

URBAN FOOD INSECURITY & CAPE TOWN

be food insecure while 36% was at risk of hunger.

Looking at national data conceals disparities, es-

security in recent years. In 2013 the City of Cape

Notably, while the percentage of those experienc-

pecially in South Africa given its acute levels of so-

Town commissioned a Food System Study to in-

ing hunger has been halved since 1999, ‘at risk of

cio-economic inequality. Little attention is paid to

vestigate the contributions of particular areas to

hunger’ prevalence has slightly increased. In terms

the urban dimensions of food security. One excep-

urban agriculture as well as learn more about the

of obesity and overweight, measured by body mass

tion is the African Food Security Urban Network

food value chain. The study has yet to be released,

index (BMI), prevalence was significantly higher

(AFSUN), which conducted an 11-city study in 9

but its findings should enrich current knowledge

in females than in males (24.8% and 39.2% com-

Southern African Countries to evaluate the extent

and inform further interventions. However, there

pared to 20.1% and 10.6% for females and males,

11

of urban food insecurity . Unlike national studies

is still a significant paucity of research on the

respectively).

that survey the entire population, AFSUN focused

broader ‘food system’ in Cape Town; studies that

hunger. The situation was worse in urban informal

9. 10. 11. 12.

A further examination of ‘dietary

Shisana et al. (2013) UNDP (2014) Frayne et al. (2010) Battersby (2011)

12 12

Encouragingly, there seems to be a growing acknowledgement of the importance of urban food

evaluate the range of factors that influence food

the household income level of R4,000 per month

within a community. As such, gleaning an in-depth

security once it leaves the farm and before it ar-

manage their food requirements. Why do they pur-

understanding of what food is made available and

rives at the household. The effects of ‘Big Food’,

chase the food they do? Where do they shop, how

why, what spaza shop customers want, what food

the multinational food and beverage industry with

often? Beyond resource constraints, what influenc-

purchase choices they make, what influences these

huge and concentrated market power, are begin-

es their food purchase choices? What are the en-

decisions and how to change both what is sold and

ning to be documented, including work on food

vironmental, social and psychological factors that

what is consumed can potentially provide greater

deserts

and supermarket expansion . Even less

may be preventing a strategic approach to food

insight

research is available on the ‘small food’ actors and

purchases and consumption within these families?

South Africa.

their impact on community-level food security in

Understanding the answers to these questions and

informal settlements. These small actors include a

modelling alternative solutions to the existing food

broad spectrum of traditional as well as contem-

purchase and consumption paradigms, provided

porary mutations of micro-businesses and small

the motivation for creating the Food Security Lab

businesses, including spaza shops, independent

project.

13

14

food takeaways and street-food vendors. The Lab’s first manifestation focused on an inWe have scarcely begun to understand the ‘food

depth review of these questions through the lens

environment’ in the novel context of rapid urbani-

of the spaza shop. Spaza shops proliferate low-in-

sation and burgeoning informality in South Afri-

come communities in South Africa and often func-

ca. Little is understood about how people below

tion as a primary point of access to food sources

13. Battersby & Crush (2014) 14. Battersby & Peyton (2014)

13 13

into the food security challenges facing

14

MAP OF KANANA KANANA

FOCUS AREA The Food Security Lab research focused on an area called Kanana, a section of the larger community of Gugulethu in Cape Town. Kanana was chosen and identified as the site for this study because of its average household income, housing type, access to an urban centre, food retailers and the socio-demographics of the population. These conditions are similar to many other low-income communities within South African cities. While the research from this community cannot provide a direct blue print for every urban low-income community, it can progress our knowledge of what is driving food insecurity and support and inform other research and interventions in other areas.

MAP OF KANANA Kanana is comprised of 3,177 households, all of which are shacks; 90% have electricity and 1% have running water and formal ablution facilities in their backyards. It is primarily an isiXhosa speaking community with an average monthly household income of between R1,000 and R2,000.

15

AERIAL VIEW OF AERIAL VIEW OF KANANA

KANANA DURHEIN

KING DAVID COUNTRY CLUB

-1

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Courtesy of the City of Cape Town (2013)

->

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R3,201

Courtesy of the 2011 Census Courtesy of the 2011 Census Nearly 35.7% in the theCity CityofofCape Cape Town below the poverty lessR3,500 than R3500 (Census 2011) Nearly 35.7%of ofhouseholds households in Town livelive below the poverty line ofline lessof than

36

EMPLOYMENT STATUS OF EMPLOYMENT STATUS OF POPULATION

POPULATION

100% 90% 80% 70% 60% 50% 40%

46% EMPLOYED

28% UNEMPLOYED

30%

22%

NOT ECONOMICALLY ACTIVE

20%

4%

DISCOURAGED WORK-SEEKER

10% 0% EMPLOYMENT STATUS

EMPLOYMENT STATUS Courtesy of Stats SA (2014) Stats reports 25.5% of the population in South unemployed, with an unemployment rate of 23.9% rate in Cape Town. in Cape Town. StatsSA SA(2014) (2014) reports 25.5% of total the total population in Africa Southare Africa are unemployed, with an unemployment of 23.9%

37 37

PERCENTAGE WHO OWN A MOBILE PHONE

PERCENTAGE OF PARTICIPANTS WHO OWN A MOBILE PHONE

38

TIME IT TAKES TO TIME IT TAKES TO FETCH WATER FROM TAPS FETCH WATER FROM TAPS

71% 20%

4%

2%

2% 39

ENERGY ENERGYFOR FORCOOKING COOKING

ENERGY FOR LIGHTING ENERGY FOR LIGHTING

3%

2% 1%

97%

97%

Courtesy of Stats SA (2014)

Courtesy ofSAStats Courtesy of Stats (2014) SA (2014)

Courtesy Stats SA (2014) 94% of theof population in the City of Cape Town have electricity for lighting; 85.4% of South African homes have access to electricity Stats SA (2014) 94% of the population in the City of Cape Town have electricity for lighting; 85.4% of South African homes have access to electricity

40 40

PERCEPTIONS OF BEHAVIOUR The data reflected in this section is the result of personal interviews conducted by field workers from the community using a questionnaire on their mobile phones. Participants were also weighed and measured as part of the process so that body mass index scores could be determined. The interviews were conducted in various public spaces in Kanana.

41

GENDER

GENDER

46%

54%

MALE

FEMALE

42

AGE DISTRIBUTION AGE DISTRIBUTION

41%

AGE: 25 - 34 YRS

39%

AGE: 35 - 50 YRS

45% 40% 35% 30% 25% 20%

13%

7%

AGE: 18 - 24 YRS

AGE: > 51 YRS

15% 10% 5% 0%

43 43

BODY MASS INDEX (BMI) BODY MASS INDEX (BMI)

39%

45% 40%

23%

35% 30%

OVERWEIGHT BMI: 25 - 30

25% 20% 15% 10%

31%

NORMAL WEIGHT BMI: 18.5 - 25

7%

UNDERWEIGHT BMI: < 18.5

5% 0%

44

OBESE BMI: > 30

GENDER DISTRIBUTION ACROSS FOUR BMI CATEGORIES

GENDER DISTRIBUTION ACROSS FOUR BMI CATEGORIES

63%

70%

49%

60%

50%

40%

19%

30%

20%

10%

17%

29%

8% 3%

12%

0% UNDERWEIGHT UNDERWEIGHT (BMI: < 18.5) (< 18.5)

NORMAL WEIGHT NORMAL WEIGHT (BMI: 18.5 25) (18.5 - -25) 45 45

OVERWEIGHT OVERWEIGHT (BMI: 25 - 30) (25-30)

OBESE OBESE (BMI: > 30) (> 30)

PERCENTAGE OF PARTICIPANTS WHO GROW THEIR OWN FOOD

PERCENTAGE OF RESPONDENTS WHO GROW THEIR OWN FOOD

4% 46

REASONS GIVENGIVEN FOR NOT FOR GROWING FOOD REASONS NOT GROWING

FOOD

7% 1% 14%

62%

16%

47 47

WHERE FOOD IS PURCHASED WHERE FOOD IS PURCHASED

8% 15% 16% 16%

46% SPAZA

Spaza: Informal convenience shop; Large Grocery Store: Such as Shoprite or Pick n’ Pay Only; Hot Food Vendor: An informal kiosk that sells pre-cooked food; Spaza: Informal convenience shop; Large Grocery Chain: Such as Shoprite or Pick n’ Pay Only; Other: Unidentified source; Hot Food Vendor: An informal kiosk that sells Fruit & Veg stall: An open-air stall largely selling vegetables and fruit as well as small confectionary; Tshisanyama: Informal barbecue or braai typically located near pre-cooked food; Fruit & Veg stall: An open-air stall largely selling vegetables and fruit as well as small confectionary; Tshisanyama: Informal barbecue or braai typically a butchery to grill meat on an open fire. near a butchery to grill meat on an open fire

48

MAIN REASONS INFLUENCING FOOD PURCHASE CHOICE

MAIN REASONS INFLUENCING FOOD PURCHASE CHOICE

9% 49% 42%

49

MODE OF TRANSPORT USED TO GET TO FOOD OUTLETS MODE OF TRANSPORT USED TO GET TO FOOD OUTLETS

1% TRAIN

1% WALKING & TRAIN

95% WALKING

1% 50

2% WALKING & TAXI

AVERAGE AMOUNT SPENT ON FOOD PER WEEK

AVERAGE AMOUNT SPENT ON FOOD PER WEEK

R300

R277

R250

R200

R150

R100

R50

R0

51 51

AVERAGE AMOUNT SPENT WEEKLY ON FOOD

AVERAGE AMOUNT SPENT WEEKLY ONMONTHLY FOOD RELATED TO HOUSEHOLD MONTHLY INCOME RELATED TO HOUSEHOLD INCOME

R608

AVERAGE WEEKLY AVERAGE SPENT SPENT WEEKLY

R600 R600

R500 R500

R400 R400

R336

R300 R300

R200 R200

R386

R184

R272

R100 R100

R0 R0 R4000

AVERAGE AMOUNT SPENT WEEKLY ON FOOD AMOUNT RELATIVE EMPLOYMENT STATUS AVERAGE SPENTTO WEEKLY ON FOOD RELATIVE TO EMPLOYMENT STATUS

AVERAGE SPENT WEEKLY ON FOOD

AVERAGE SPENT WEEKLY ON FOOD

R323

R253

R350 R300 R250 R200 R150 R100 R50 R0

EMPLOYED

UNEMPLOYED EMPLOYMENT STATUS EMPLOYMENT STATUS

53

AVERAGE AMOUNT SPENT WEEKLY ON FOOD RELATIVE TO GENDER

AVERAGE AMOUNT SPENT WEEKLY ON FOOD RELATIVE TO GENDER

AVERAGE SPENT WEEKLY ON FOOD

AVERAGE SPENT WEEKLY ON FOOD

R300

R299

R260

R250

R200

R150

R100

R50

R0

MALE

FEMALE

54

RELATIONSHIP BETWEEN SHOPPING RELATIONSHIP BETWEEN SHOPPING FREQUENCY & HOUSEHOLD MONTHLY INCOME FREQUENCY AND HOUSEHOLD MONTHLY INCOME

36%

Household monthly income:

< R999

30% 46%

R1,000 - R2,000

52%

18%

18%

DAILY

Household monthly income:

WEEKLY

19%

MONTHLY

42%

Household monthly income:

R2,001 - R3,000

40%

18% 55 55

Household monthly income:

R3,001 - R4,000

62%

19%

GENDER RELATIVE TO MEAL PREPARATION

GENDER RELATIVE TO MEAL PREPARATION

100%

72%

94%

100%

90%

90%

80%

80%

70%

70%

60%

60%

50%

50%

40%

40%

30%

30%

20%

20%

10%

10%

0%

0% COOK THEIR OWN MEALS

28% 6%

DO NOT COOK THEIR OWN MEALS

COOK THEIR OWN MEALS

DO NOT COOK THEIR OWN MEALS 56

NUMBER OF MEALS MAINEATEN MEALS EATEN NUMBER OF MAIN PER DAY

PER DAY

49%

33%

11%

8% 57 57

FOOD ITEMS REPORTED TOFROM BE MISSING FOOD ITEMS REPORTED TO BE MISSING DIET

FROM DIET

57% 26% 17%

58

WHAT RESPONDENTS WOULD BUY WHAT PARTICIPANTS WOULD BUY IF GIVEN R100

3%

4% 4%

IF GIVEN R100

2%

4%

32%

7% 11%

7%

FRUIT & VEG

11% 8%

8% EGGS

59 59

RELATIONSHIP BETWEEN HOUSEHOLD MONTHLY INCOME AND WHERE FOOD IS PURCHASED RELATIONSHIP BETWEEN HOUSEHOLD MONTHLY INCOME & WHERE FOOD IS PURCHASED

7% 16% SPAZA

Household monthly income:

< R999

15%

8% 16% 48%

HOT FOOD VENDOR

LARGE GROCERY STORE

15%

Household monthly income:

R2,001 - R3,000

14% TSHISANYAMA

R1,000 - R2,000

16%

14% 9%

FRUIT & VEG STALL

Household monthly income:

45%

15% 8% 18% 47%

15%

Household monthly income:

R3,001 - R4,000

41%

13% 20%

It should be noted that while the food purchased at Spaza shops decreases by 7% when monthly income increases by four times, food purchased at large grocery stores only increases by 2% when monthly incomes increases by four times.

60

RELATIONSHIP BETWEEN BMI ANDMEALS EATEN PER DAY RELATIONSHIP BETWEEN BMI & NUMBER OF MAIN NUMBER OF MAIN MEALS EATEN PER DAY

5% OBESE (BMI: > 30)

40%

Number of main meals eaten per day:

9% 32%

Number of main meals eaten per day:

2

1

39% 21%

23%

OVERWEIGHT (BMI: 25 - 30)

4%

8% NORMAL WEIGHT (BMI: 18.5 - 25) Number of main meals eaten per day:

32%

3

UNDERWEIGHT (BMI: < 18.5)

31%

Number of main meals eaten per day:

31%

40% 20% 61 61

27%

4

38%

RELATIONSHIP BETWEEN HOUSEHOLD MONTHLY INCOME RELATIONSHIP HOUSEHOLD MONTHLY INCOME & THE NUMBER OF MAIN AND THEBETWEEN NUMBER OF MAIN MEALS EATEN PER DAY MEALS EATEN PER DAY

1 MEAL PER DAY

7% 9%

7% 10%

Household monthly income:

Household monthly income:

< R999

2 MEALS PER DAY

48%

55%

13% 3 MEALS PER DAY

36%

2% 17%

11%

Household monthly income:

R2,001 - R3,000

4 MEALS PER DAY

40%

28%

R1,000 - R2,000

36%

40%

Household monthly income:

R3,001 - R4,000

41% 62

RELATIONSHIP BETWEEN MAIN MEALS EATEN PER DAY AND THE NUMBER OF HOUSEHOLD MEMBERS

RELATIONSHIP BETWEEN MAIN MEALS EATEN PER DAY AND THE NUMBER OF HOUSEHOLD MEMBERS

4% 16% 1 MEAL PER DAY

40%

Number of people in household:

Number of people in household:

1-2 people

3-4 people

39%

2 MEALS PER DAY

Number of people in household:

5-6 people

31%

51% 6% 11%

10% 10%

3 MEALS PER DAY

4 MEALS PER DAY

8% 9%

29%

50% 63 63

Number of people in household:

7-8 people

53%

30%

RELATIONSHIP BETWEEN OBESITY AND HOUSEHOLD MONTHLY INCOME RELATIONSHIP BETWEEN OBESITY & HOUSEHOLD MONTHLY INCOME

34%

HOUSEHOLD MONTHLY INCOME

HOUSEHOLD MONTHLY INCOME

< R999

R1,000 - R2,000

31%

R2,001 - R3,000

32% 33%

R3,001 - R4,000

0%

50% 64 64

ACTUAL BEHAVIOUR The following data was gleaned from individual food diaries kept by the study participants. Participants completed 10 days at a time, three times for a total of 30 days. The information tracked by the participants, was given to the field workers each 10-day period. It should be noted that the following graphs only record the frequency that particular foods were consumed and NOT the quantity or portion sizes.

65

DISTRIBUTION OF FOOD CATEGORIES ACROSS DIFFERENT MEALS OF THE DAY

DISTRIBUTION ACROSS FOOD CATEGORIES IN THE MORNING AM

DISTRIBUTION ACROSS FOOD CATEGORIES IN THE AFTERNOON

TOP 6 FOOD CATEGORIES CONSUMED IN THE EVENING

PM

AM

PM PM

PM

6%

4% 1% 1%

8% 2%

12%

11%

13%

42%

13%

24%

24%

candy and assorted sweets; Dairy: Yoghurt, cheese.

GRAIN

Grain: All Bran, Coco Pops cereal, Cornflakes, corn flour, maize cereals, oats, porridge, weet bix, pap, umvubo, bread, savoury pie, maize, pancakes, umnqusho, samp; Protein: Red meat, chicken, sea food, egg; Fruit: Apple, banana, orange, pear, guava, avocado, assorted other fruits; Vegetable: Potatoes, tomatoes, atchar, aubergine, parmigiana, broccoli, carrot, chakalaka, cucumber, mushroom, pepper, peri peri, soy mince, umfino, mixed vegetables; Snack: Potato and maize based snacks, baked goods, cookies, nuts, chocolate, candy and assorted sweets; Dairy: Yoghurt, cheese.

PROTEIN

44%

15%

75%

Grain: All Bran, Coco Pops cereal, Cornflakes, corn flour, maize cereals, oats, porridge, weet bix, pap, umvubo, bread, savoury pie, maize, pancakes, umnqusho, samp; Protein: Red meat, chicken, sea food, egg; Fruit: Apple, banana, orange, pear, guava, avocado, assorted other fruits; Vegetable: Potatoes, tomatoes, atchar, aubergine, parmigiana, broccoli, carrot, chakalaka, cucumber, mushroom, pepper, peri peri, soy mince, umfino, mixed vegetables; Snack: Potato and maize based snacks, baked goods, cookies, nuts, chocolate,

4% 1%

FRUIT

VEGETABLE

SNACK

Grain: All Bran, Coco Pops cereal, Cornflakes, corn flour, maize cereals, oats, porridge, porridge, weet bix, pap, umvubo, bread, savoury pie,'maize, pancakes, umnqusho, samp; Protein: Red meat, chicken, sea food, egg; Fruit: Apple, banana, orange, pear, guava, avocado, assorted other fruits; Vegetable: Potatoes, tomatoes, atchar, aubergine, parmigiana, broccoli, carrot, chakalaka, cucumber, mushroom, pepper, peri peri, soy mince, umfino, mixed vegetables; Snack: Potato and maize based snacks, baked goods, cookies, nuts, chocolate, candy and assorted sweets; Dairy: Yoghurt, cheese.

DAIRY

Grain: All bran, coco pops cereal, cornflakes, corn flour, maize cereals, oats, porridge, weet bix, pap, umvubo, bread, savoury pie, maize, pancakes, umnqusho, samp; Protein: Red meat, chicken, sea food, egg; Fruit: Apple, banana, orange, pear, guava, avocado, assorted other fruits; Vegetable: Potatoes, tomatoes, atchar, aubergine, parmigiana, broccoli, carrot, chakalaka, cucumber, mushroom, pepper, purl, soy mince, umfino, mixed vegetables; Snack: Potato and maize based snacks, baked goods, cookies, nuts, chocolate, candy and assorted sweets; Dairy: Yoghurt, cheese.

66 66

TOP 6 FOODS EATEN PER DAY

TOP 6 FOODS EATEN PER DAY

4%

14%

5% 7%

13%

10%

Porridge: Maize or oat based, prepared with hot water or milk. May be sweetened or flavoured, Gwinya: Deep-fried dough balls; Umngqusho: Made of mielies Porridge: Maize or oat based, prepared with hot water or milk. May be sweetened or flavoured; Gwinya: Deep-fried dough balls; Umngqusho: Made of stamp mielies (samp) (samp) with beans, butter and vegetables. with beans, butter, and vegetables.

67

PROCESSED AND UNPROCESSED FOOD CONSUMED AT DIFFERENT TIMES

14%

27%

29%

86%

73%

71%

Processed Foods: Foods whose original, natural state is manipulated or altered in some way; Unprocessed Foods: Typically includes fruit and vegetables. Note: This graph excludes meat products.

68

PROCESSED AND UNPROCESSED FOOD EATEN PER DAY

PROCESSED AND UNPROCESSED FOOD EATEN PER DAY

25%

75% Processed Foods: Foods whose original, natural state is manipulated or altered in some way; Unprocessed Foods: Typically includes fruit and vegetables. Note: This graph meat products. *Processed Foods:excludes foods whose original, natural state is manipulated or'altered in some way **Unprocessed Foods: Typically includes fruit and vegetables. Note: This graph excludes meat products.

69 69

TOP 6 FRUITS CONSUMED OVER 30 DAYS AS A PERCENTAGE OF TOTAL FRUIT CONSUMPTION

TOP 6 FRUITS CONSUMED OVER 30 DAYS AS A PERCENTAGE OF TOTAL FRUIT CONSUMPTION

39% 30%

14% 5% 4% 3%

Other: Apricot, berry, fruit salad, cherry, coconut, granadilla, lemon, naatjies, nectarine, paw-paw, pineapple, plum, fruit salad, strawberry, watermelon.

Other: apricot, berry, fruit salad, cherry, coconut, granadilla, lemon, naatjies, nectarine, paw paw, pineapple, plum, prune, fruit salad, strawberry, watermelon.

70 70

CONSUMPTION OF TOP 3 FRUITS AS A PERCENTAGE OF TOTAL FRUIT INTAKE OVER 30 DAYS BETWEEN CONSUMPTION CONSUMPTION OF OF TOP TOP 33 FRUITS FRUITS AS AS AA PERCENTAGE PERCENTAGE OF OF TOTAL TOTAL DIFFERENT AGE GROUPS

FRUIT FRUIT INTAKE INTAKE OVER OVER 3030 DAYS DAYS BETWEEN BETWEEN DIFFERENT DIFFERENT AGE AGE GROUPS GROUPS AGE: 11 - 20 YRS

AGE:AGE: 11 -11 20- YRS 20 YRS AGE: 21 - 30 YRS

AGE:AGE: 21 -21 30- YRS 30 YRS AGE: 31 - 40 YRS

AGE:AGE: 41 AGE: 31- -50 31 40YRS - YRS 40 YRS

AGE: > 51 YRS

AGE:AGE: 41 -41 50- YRS 50 YRS

35% 35%

24% 24%

15% 15%

43% 43%

36% 36%

9%9%

37% 37%

27% 27%

15% 15%

40% 40%

21% 21%

17% 17%

38% 38%

33% 33%

14% 14%

AGE:AGE: >51>51 YRSYRS

71

CONSUMPTION OF DIFFERENT FRUITS AS FRUITS A PERCENTAGE TOTAL FRUIT INTAKE OVER 30 FRUIT DAYS CONSUMPTION OF DIFFERENT AS AOF PERCENTAGE OF TOTAL BETWEEN WEIGHT & OBESE PARTICIPANTS INTAKENORMAL OVER 3O DAYS BETWEEN NORMAL WEIGHT AND OBESE RESPONDENTS

70%

60%

TOTAL FRUITS

60%

46%

50% 40% 30% 20% 10%

NORMAL WEIGHT

38%

OBESE

31% 20% 13% 4%

7%

4%

7%

3% 5%

2% 3%

2% 4%

0%

Other: apricot, berry, fruit salad, cherry, coconut, granadilla, lemon, naartjies, nectarine, paw-paw, pineapple, plum, prune, strawberry, watermelo

Other: Apricot, berry, fruit salad, cherry, coconut, granadilla, lemon, naartjies, nectarine, paw-paw, pineapple, plum, prune, strawberry, watermelon.

72

1% 1%

TOP 3 VEGETABLES CONSUMED OVER 30 DAYS AS A PERCENTAGE OF TOTAL VEGETABLES CONSUMED

43%

18.5%

Mixed Vegetables: Vegetables, salad, stir fry vegetables and also typically frozen prepackaged assorted vegetables.

73

11%

CONSUMPTION OF TOP 3OF VEGETABLES AS A PERCENTAGEAS OFAS TOTAL VEGETABLE INTAKE OVER 30 DAYS CONSUMPTION CONSUMPTION OF TOP TOP 3 VEGETABLES 3 VEGETABLES A PERCENTAGE A PERCENTAGE OFOF TOTAL TOTAL BETWEEN DIFFERENT AGE GROUPS

VEGETABLE VEGETABLE INTAKE INTAKE OVER OVER 3030 DAYS DAYS BETWEEN BETWEEN DIFFERENT DIFFERENT AGE AGE GROUPS GROUPS

35% 35%

17% 17%

14% 14%

AGE: 21 - 30 YRS

44% 44%

22% 22%

9%9%

AGE: 21 AGE:- 30 21YRS - 30 YRS AGE: 31 - 40 YRS

40% 40%

15% 15%

12% 12%

AGE: 41 - 50 YRS

42% 42%

17% 17%

10% 10%

AGE: > 51 YRS

43% 43%

18% 18%

10% 10%

AGE: 11 - 20 YRS

AGE: 11 AGE:- 20 11YRS - 20 YRS

AGE: 31 AGE:- 40 31YRS - 40 YRS

AGE: 41 AGE:- 50 41YRS - 50 YRS

AGE: >51 AGE: YRS >51 YRS

MIXED MIXED ESTABLES BL GE VEGETA VE

Mixed Vegetables: Vegetables, salad, stir fry vegetables and also typically frozen prepackaged assorted vegetables.

74 74

CONSUMPTION OF DIFFERENT VEGETABLES AS A PERCENTAGE OF TOTAL VEGETABLE INTAKE OVER 30 CONSUMPTION OF DIFFERENT FRUITS AS A PERCENTAGE OF TOTAL FRUIT CONSUMPTION OF DAYS DIFFERENT VEGETABLES ASWEIGHT A PERCENTAGE OF TOTAL VEGETABLE DAYS BETWEEN NORMAL WEIGHT & OBESE PARTICIPANTS INTAKE OVER 3O BETWEEN NORMAL AND OBESE RESPONDENTS

INTAKE OVER 3O DAYS BETWEEN NORMAL WEIGHT AND OBESE RESPONDENTS

80%

70%

60%

70%

TOTAL VEGETABLES

60%

61%

60%

46%

50%

50%

40% 40%

30%

NORMAL WEIGHT NORMAL WEIGHT

38% 41%

OBESE

31%

30%

20%

OBESE

19%

26%

20% 13%

20%

18%

12%

10% 10%

17% 9%7%

4%

7% 4% 6% 6%

5% 7% 3% 6%

0% 0%

K OO

K OO

MIXED VEGGIES

VEGGIE SOUP

Other: apricot, berry, fruit salad, cherry, coconut, granadilla, lemon, naartjies, nectarine, paw-paw, pineapple, plum, prune, strawberry, watermelo

3% 2% 4%

7%

4% 2% 2%

1%

1% 1%

Mixed Vegetables: Vegetables, salad, stir fry vegetables and also typically frozen prepackaged assorted vegetables; Vegetable soup: Soup prepared with carrots, Mixed Vegetables: vegetables, salad, stir fry, vegetables; Vegetable soup: Soup prepared with carrots, potatoes, bones, split peas and fresh soup vegetable mix; potatoes, bones, split peas and fresh soup vegetabe mix; Other: Atchar, aubergine, parmigiana, avocado, broccoli, carrot, chakalaka, cucumber, guacomole, Other: atchar, aubergine, parmigiana, avocado, broccoli, carrot, chakalaka, cucumber, guacomole, mushrooms, pepper, peri-peri, soya mi nce, Umfino mushrooms, pepper, peri-peri, soya mince, umfuno.

75 75

CONSUMPTION OF DIFFERENT PROTEINS AS A PERCENTAGE OF PROTEINS TOTALASPROTEIN INTAKE DAYS CONSUMPTION OF DIFFERENT A PERCENTAGE OF TOTALOVER PROTEIN 30 INTAKE OVER 30 DAYS

64%

13% EGGS

12% 9%

Red Meat: beef, pork, and mutton products. *Beef and mutton products.

76

CONSUMPTION OF TOP 5 PROTEINS AS A PERCENTAGE OF TOTAL PROTEIN INTAKE OVER 30 DAYS ACROSS DIFFERENT AGE GROUPS 

AGE: 11 - 20 YRS

70%

10%

10%

7%

3%

AGE: 21 - 30 YRS

63%

13%

13%

9%

2%

AGE: 31 - 40 YRS

62%

14%

11%

10%

3%

AGE: 41 - 50 YRS

68%

11%

11%

8%

2%

AGE: > 51 YRS

60%

15%

14%

9%

2%

RED MEAT

EGGS

CHICKEN

FISH

PORK

77

CONSUMPTION OF DIFFERENT PROTEINS FRUITS AS A PERCENTAGE OF TOTAL PROTEIN OVER 30 DAYS CONSUMPTION OF DIFFERENT AS A PERCENTAGE OFINTAKE TOTAL FRUIT BETWEEN WEIGHT AND OBESE PARTICIPANTS INTAKE NORMAL OVER 3O DAYS BETWEEN NORMAL WEIGHT AND OBESE RESPONDENTS

70%

TOTAL PROTEINS

25% 60%

24% 25% 60% 19% 19% 46%

50% 20% 40% 15%

NORMAL WEIGHT

38% 31%

30% 10% 20%

12%

10%20%

12%

13% 11%

10%

13%

10% 5%

OBESE

4%

7%

4%

7%

7%

8%

7%

3% 5%

6% 4% 4% 2% 3%

0%

2% 3%4% 2%

1% 1% 1% 1%

0% UNSPECIFIED MEAT

PORK

EGGS

FRENCH POLONY

CHICKEN

FISH

SAUSAGES

Other: apricot, berry, fruit salad, cherry, coconut, granadilla, lemon, naartjies, nectarine, paw-paw, pineapple, plum, prune, strawberry, watermelo

Unspecified Meats: Participants did not record type of meat

78

LIVER

BEEF

TRIPE & OFFALS

CONSUMPTION OF DIFFERENT CATEGORIES TOP 4 SNACKS CONSUMED OVER 30 DAYS OF SNACKSAS A PERCENTAGE OF TOTAL SNACK IN TAKE OVER 30 DAYS

14%

16%

19%

51%

Maize based snack: Includes crackers, popcorn, Fritos, Nik Naks; Potato based snack: Includes cheese crisps, Pringles and other brands. Baked snack: Includes biscuits, doughnuts, cake, muffin; Sweets: Includes chocolate, pudding, Tempo, marshmallows

Maize based snack: Includes crackers, popcorn, Fritos, Nik Naks; Potato based snack: Includes cheese crisps, Pringles and other brands; Baked snack: Includes biscuits, doughnuts, cake, muffin; Sweets: Includes chocolate, pudding, Tempo, marshmallows

79

CONSUMPTION OF TOP 5 SNACKS AS A PERCENTAGE OF TOTAL SNACK INTAKE OVER 30 DAYS ACROSS DIFFERENT AGE GROUPS

50%

21%

19%

10%

0%

AGE: 21 - 30 YRS

51%

18%

17%

18%

2%

AGE: 31 - 40 YRS

45%

20%

17%

15%

3%

AGE: 41 - 50 YRS

57%

19%

11%

11%

2%

AGE: > 51 YRS

52%

18%

16%

12%

2%

MAIZE BAKED SNACK

POTATO BAKED SNACK

BAKED SNACK

SWEETS

OTHER

AGE: 11 - 20 YRS

Maize based snacks: Includes crackers, popcorn, fritos, nik naks, Potato based snack: Includes cheese, crisps, pringles and other brands; Sweets: Includes chocolate, pudding, mashmallows, Baked snack: Includes biscuits, doughnuts, cakes, muffin; Other: Other unclassified snacks.

80

NUMBER OF SNACKS EATEN PER MONTH BY WEIGHT TYPE NUMBER OF SNACKS EATEN PER MONTH BY WEIGHT TYPE

MAIZE BASED SNACK

48%

47%

54%

49%

POTATO BASED SNACK TO BASED SNACK

19%

28%

13%

19%

SWEETS

15%

7%

14%

12%

BAKED SNACK

15%

13%

17%

18%

OTHER

2%

4%

1%

2%

ZE BASED SNACK

WEETS

BAKED SNACK

OTHER

Maize based snacks: Includes crackers, popcorn, Fritos, Nik Naks, Potato based snack: Includes cheese, crisps, Pringles and other brands; Sweets: Includes

ize based snacks: includes crackers, popcorn, fritos, nik naks; Potato based snack: includes cheese crisps, pringles and other brands; Sweets: includes chocolate, pudding, mashmallows; chocolate, pudding, mashmallows,Other: Baked snack: Includes biscuits, doughnuts, cakes, muffin; Other: Other unclassified snacks. Other unclassified snacks ked snack:

81

30 DAYS AS A PERCENTAGE OF TOTAL BEVERAGE CONSUMPTION TOP 6 BEVERAGES CONSUMED OVER 30 DAYS AS A PERCENTAGE OF TOTAL BEVERAGE CONSUMPTION

9% 11% 13% 14% 18%

30% Milk: Includes pure milk as well as dairy blends; Soda: Appletiser, Coca Cola, Lemon Twist, Fanta, Ice Tea, Jive, Iron Brew, Schweppes, Sprite, Stoney, Twizza, Tonic; Milk: Includes pure milk as well as dairy blends; Soda: Appletiser, coke, Cool Drink, soda, Lemon Twist, Fanta, ice tea, Jive, Iron Brew, Juice: Includes fruit concentrates as well as fruit juices in different degrees of purity Schweppes, Sprite, Stoney, Twizza,tonic; Juice: Includes fruit concentrates as well as fruit juices in different degrees of purity

82

AVERAGE VOLUME OF POPULAR AVERAGE VOLUME OF POPULAR BEVERAGES CONSUMED BEVERAGES CONSUMED PERPER DAYDAY

44 ML 155 ML 159 ML 186 ML 188 ML 265 ML

510

ML

Soda: appletiser, coca cola, cool crink, soda, Brew, lemon twist, fanta, ice tea, jive, Sprite, iron brew, schweppes, stoney ginger beer, wizza, tonic. Includes fruit concentrates as well as fruit Soda: Appletiser, Coca Cola, Lemon Twist, Fanta, Ice Tea, Jive, Iron Schweppes, Stoney,sprite, Twizza, Tonic; Juice: Juice: includes fruit concentrates as well as fruit juices in different degrees of purity. juices in different degrees of purity.

83

CONSUMPTION OF POPULAR BEVERAGES ASBEVERAGES A PERCENTAGE TOTAL BEVERAGE OVER 30 CONSUMPTION CONSUMPTION OF OF POPULAR POPULAR BEVERAGES AS AS AOFPERCENTAGE A PERCENTAGE OFINTAKE OF TOTAL TOTAL DAYS BEVERAGE BETWEEN AGE GROUPS BEVERAGE INTAKE INTAKE OVER OVER 30 30 DAYS DAYS BETWEEN BETWEEN DIFFERENT DIFFERENT AGE AGE GROUPS GROUPS

AGE: 11 - 20 YRS

AGE: 11 AGE: - 2011YRS - 20 YRS AGE: 21 - 30 YRS

AGE: 21 AGE: - 3021YRS - 30 YRS

26% 26% 21% 21% 16% 16% 10% 10% 15% 15% 10% 10% 2%2% 32% 32% 16% 16% 15% 15% 12% 12% 12% 12% 9%9% 3%3%

AGE: 31 - 40 YRS

30% 30% 18% 18% 14% 14% 13% 13% 12% 12% 9%9% 3%3%

AGE: 31 AGE: - 4031YRS - 40 YRS AGE: 41 - 50 YRS

28% 28% 21% 21% 13% 13% 14% 14% 10% 10% 10% 10% 3%3%

AGE: >41 51- YRS AGE: AGE: 5041YRS - 50 YRS

31% 31% 18% 18% 15% 15% 13% 13% 12% 12% 10% 10% 3%3%

AGE: >51 AGE:YRS >51 YRS

Milk: includes Milk: includes pure milk pure as well milkas asdairy well as blends; dairy Soda: blends; appletiser, Soda: appletiser, coca cola, coca cool cola, drink, cool soda, drink, lemon soda,twist, lemon fanta, twist, icefanta, tea, jive, ice tea, ironjive, brew, iron schweppes, brew, schweppes, sprite, stoney sprite,ginger stoney beer, ginger beer,

twizza, twizza, Juice: tonic; includes Juice: includes fruit concentrates fruit concentrates as well as asfruit welljuices as fruit in juices different in different degrees degrees of purity; ofAlcoholic purity; Alcoholic Beverage: Beverage: umqombothi, wine, cider, gin, wine, beer, gin, irish beer, coffee, irishbrandy, coffee, brandy, vodka,Twizza, whiskey. vodka, whiskey. Milk: Includes pure milktonic; as well as dairy blends; Soda: Appletiser, Coca Cola, Lemon Twist, Fanta, Ice Tea, Jive,umqombothi, Ironcider, Brew, Schweppes, Sprite, Stoney, Tonic; Juice: Includes fruit concentrates as well as fruit juices in different degrees of purity. Alcoholic Beverage: Umqombothi, cider, wine, gin, beer, irish coffee, brand, vodka, whiskey.

84 84

CONSUMPTION OF DIFFERENT NON-ALCOHOLIC BEVERAGES IN LITRES BY WEIGHT CLASS OVER 30 DAYS

CONSUMPTION OF DIFFERENT NON-ALCOHOLIC BEVERAGES IN LITRES BY WEIGHT CLASS OVER 30 DAYS

WATER

SODA

WATER SODA JUICE

JUICE

TEA TEA

MILK MILK

COFFEE COFFEE

OTHER OTHER

13.6L 7.6L 5.0L 4.5L 4.0L 3.9L 0.4L

12.6L 7.3L 5.3L 4.9L 3.3L 4.3L 1.0L

14.9L 8.0L 5.2L 5.8L 5.5L 5.3L 0.4L

15.8L 7.5L 5.2L 6.2L 5.0L 4.2L 0.5L

Soda:Milk: appletiser, cocapure cola, milk cool drink, soda, lemon blends; twist, fanta, ice tea, jive, iron brew, sprite, stoneyIce ginger tonic; Schweppes, Juice: includesSprite, fruit concentrates as well Tonic; as fruit Includes as well as dairy Soda: Appletiser, Coke,schweppes, Lemon Twist, Fanta, Tea,beer, Jive,twizza, Iron Brew, Stoney, Twizza, juicesJuice: in differne degrees of purity; Other: mageu (made fromjuices fermented meali pap), energy of drinks, hot chocolate, phuzamandla (made from mealie and yeast) Includes fruit concentrates as well as fruit in different degrees purity

85

CONSUMPTION OF DIFFERENT ALCOHOLIC BEVERAGES IN LITRES BY WEIGHT CLASS OVER 30 DAYS

CONSUMPTION OF DIFFERENT ALCOHOLIC BEVERAGES IN LITRES BY WEIGHT CLASS OVER 30 DAYS

BEER

WINE

BEER

WINE

BRANDY

BRANDY

CIDER

CIDER

SPIRITS

SPIRITS

1.7L 0.2L 0.1L 0.1L 0.0L

2.3L 0.7L 0.1L 0.0L 0.1L

1.2L 0.2L 0.2L 0.1L 0.1L

0.9L 0.1L 0.1L 0.2L 0.0L

Brandy: Often drank together with beer or sodas so quantities are likely overstated; Spirits: smirnoff, whiskey, gin, unclassified vodka, unclassified liquor, irish coffee. Brandy: Often drank together with beer or sodas so quantities are likely overstated; Spirits: smirnoff, whiskey, gin, unclassified vodka, unclassified liquor, irish coffee

86

WHERE FOOD AND BEVERAGES ARE PURCHASED

1%

5%

9%

21%

29%

35% Spaza: Informal convenience shop, Large Grocery Store: Such as Shoprite or Pick ‘n Pay only; Hot Food Vendor: An informal kiosk that sells pre-cooked food; Fruit & Veg Stall: An open-air stall largely vegetables and fruit as well as small confectionary; Tshisanyama: Informal barbecue or braai typically located near a butchery to grill meat on an open fire.

87 87

TOP 6 FOODS PURCHASED AT THE SPAZA SHOP

TOP 6 FOODS PURCHASED AT THE SPAZA SHOP

27%

7%

7% 6%

12%

6% 7% Red Meat: Includes beef and mutton; Maize Based Snacks: Includes snacks such as popcorn, Fritos, Nik Naks and others; Samp: Dried, stamped, and chopped corn kernels.

88

TOP 6 FOODS PURCHASED AT LARGE TOP 6 FOODS PURCHASED AT LARGE GROCERY STORES

19%

GROCERY OUTLETS

17%

5%

11%

6%

10% Red Meat: Includes beef and mutton; Samp: Dried, stamped, and chopped corn kernels; Potatoes: Includes potatoes as well French fries.

89 89

TOP 6 BEVERAGES PURCHASED AT THE SPAZA SHOPS TOP 6 BEVERAGES PURCHASED AT THE

SPAZA SHOP

29%

18% 14% 13%

21%

3%

Soda: Appletiser, Coca Cola, Lemon Twist, Fanta, Ice Tea, Jive, Iron Brew, Schweppes, Sprite, Stoney Ginger Beer, Twizza, Tonic; Juice: Includes fruit concentrates as well as fruit juices in different degrees of purity.

90

TOP 6 BEVERAGES PURCHASED AT LARGE GROCERY CHAINS TOP BEVERAGES PURCHASED AT LARGE GROCERY STORES

33%

21%

4% 15%

12%

13% Soda: Appletiser, Coca Cola, Lemon Twist, Fanta, Ice Tea, Jive, Iron Brew, Schweppes, Sprite, Stoney Ginger Beer, Twizza, Tonic; Juice: Includes fruit concentrates as well as fruit juices in different degrees of purity.

91 91

MOTIVATION FOR BEHAVIOUR Once the 30 days of food diaries had been completed, each participant was interviewed by one of the researchers, usually in their homes, to glean a detailed understanding of what motivated their eating and purchasing behaviours. This part of the research attempted to gain a more in-depth understanding of what affected their behaviour and to understand their perceptions of various food and beverage products. In addition, these interviews also explored the relative importance of food and eating in comparison to a broader range of human behaviour. Note that some questions were repeated again from the ‘Perceptions of Behaviour’ section of this study to test consistency in the answers after the participants had spent 30 days thinking more deeply about their eating behaviour. 92 92

MAIN HOUSEHOLD DECISIONDECISION MAKER MAIN HOUSEHOLD

MAKER

?

31% 93

?

69%

MONTHLY HOUSEHOLD INCOME

56%

60%

50%

PERCENTAGE

40%

30%

23%

16%

20%

3%

10%

2%

0%

R0 - R999

R1,000 - R2,000

R2,001 - R3,000

R3,001 - R4,000

> R4,000

MONTHLY HOUSEHOLD INCOME The income distribution is not the same as the census principally because the categories used are different. However, the figures are very close although this information was gathered three years later.

94 94

GOVERNMENT HOUSING SUBSIDY* RECIPIENTS

GOVERNMENT/SOCIAL GRANT *SUBSIDY RECIPIENTS

86% * Individual housing subsidies are and available to low-income where an applicant wishes receive. to buy *This speaks broadly to government subsidies social grantshouseholds, that individuals said they The grants cover the gamut - health, housing and childcare. a residential property for the first time. It is not a cash pay-out, but is paid directly to a financial institution. Applicants with a household income of less than R3 500, are eligible for a subsidy of R96 362.

95 95

AVERAGE AVERAGE DAILY SPEND DAILYON SPEND AIRTIME ON AIRTIME AVERAGE DAILY SPEND ON AIRTIME

80%

PERCENTAGE

70%

71% 71% 80%

70%

60%

60%

50%

50%

40%

40%

30%

30%

20%

20%

10%

10%

0%

0%

R5 - R10

25%

25% 3%

R5 - R10R11 - R20

R11 - R20 R21 - R50

AVERAGE DAILY SPEND ON AIRTIME

96

3% 1%

1%

R21 - R50 R51 - R100

R51 - R100

FOOD PREPARATION RELATIVE TO GENDER

FOOD PREPARATION RELATIVE TO GENDER

24% 76%

97 97

KITCHEN APPLIANCES USED IN FOOD PREPARATION

KITCHEN APPLIANCES USED IN FOOD PREPARATION

4% 1% 1% 20%

74%

98

FOOD STORAGE AREAS

3%

15% 2%

31%

49% 99

COOKING METHODS USED

38%

33%

4%

4%

11%

7% 100

6%

PERCEPTIONS OF THE HEALTHIEST METHODS OF PREPARING FOOD

63%

9%

4%

2%

12%

7% 101

3%

PERCEPTIONS OF THE UNHEALTHIEST METHODS OF PREPARING FOOD

58%

7%

11%

7%

8%

2% 102

9%

FREQUENCY OF GOING TO BED HUNGRY IN THE LAST THREE MONTHS

FREQUENCY OF GOING TO BED HUNGRY IN THE LAST THREE MONTHS

71%

29% 103

MONEY) EACH MONTH TO FEED THEMSELVES PERCENTAGE WHO BORROW (FOOD OR MONEY) EACH MONTH TO FEED THEMSELVES

76% 104 104

ONCE

FREQUENCY WITH WHICH FOOD FREQUENCY WITH WHICH FOOD WAS BORROWED IN THE LAST MONTH WAS BORROWED IN THE LAST MONTH

TWICE

THREE TIMES

MORE THAN THREE TIMES

5%

ONCE

TWICE

14%

5%

14% THREE TIMES

MORE THAN THREE TIMES

39%

42%

42% 105 105

39%

PEOPLE FROM WHOM FOOD IS BORROWED

1% 1% 2% 22%

27%

46% 106 106

ESPONDENTS GAVE FOR3% EATING 3%AGREE AGREE DISAGREE DISAGREE AGREE

%

90% 90% 97% 97% 94% 10% 3% 3% 10% 6%

90% 80% 90% 80% 94% 94%

80% 80% 90%

10% 20% 10% 6% 6% 20%

20% 20% 10%

90% 90% 78% 78% 80% 10% 10% 22% 22% 20% 96%

80% 80% 78% 56% 78% 56%

56% 56% 78%

20% 20% 22% 44% 22% 44%

44% 44% 22%

78% 78% 4% 56% 51% 51% 22% 22% 44% 49% 49%

56% 56%

DISAGREE

3%

SUE AGREE TYLE

%

6% 6% 3%

REASONS PARTICIPANTS GAVE FOR EATING

O PURSUE LIFESTYLE 97%

GREE

6% 3% 3% 6%

DISAGREE

90% DISAGREE

98%10% 2%

78% 22%

94%

96% 4%

30% 51% 51% 30% 44% 44%

30% 30% 51%

70% 49% 49% 70%

70% 70% 49%

93% 51% 51%

107

30% 30%

OFOF WHAT WHAT HEALTH HEALTH MEANS MEANS NTS' UNDERSTANDING 97% EALTH MEANS UNDERSTANDING OF WHAT HEALTH97% PARTICIPANTS’ MEANS 97%97% 94%94% AGREEAGREE DISAGREE DISAGREE 3% 3% AGREE DISAGREE 6% 6% 3% 3%

O PURSUE LIFESTYLE 97% 3%

SUE AGREE TYLE

GREE

%

%

94% DISAGREE 6%

98%

80% 2% 20%

78% 94% 22%

DISAGREE

94%94% 94% 94% 6%90% 6% 90% 6% 6%

97%97% 94% 3% 94% 94%3% 6% 6% 6% 94%94% 90% 6% 6% 80%80% 10%

96%

20%20% 80%80% 78% 4% 20% 20%78% 78% 96% 22% 22%22% 78%78% 4% 56% 93% 22%22% 44% 51%51%

10%10% 90%90% 80% 80% 10%10% 78%78% 20% 20% 22%22% 78%78% 78% 78% 22%22% 56% 56% 22% 22% 44%44% 56%56% 44% 51%44% 51% 108 30%30%

94% 94% 94% 3% 94% 6% 6% 6% 6% 94% 90% 90% 6% 80% 80% 10% 10% 20% 20% 80% 78% 78% 78% 78% 20% 22% 22% 22% 22%

90% 90% 6% 10% 10% 90% 10% 78% 78% 22% 22% 78% 56% 56% 22% 44% 44% 56%

78% 56% 56% 22% 51%44% 51%44%

44% 30% 30%

49% 49%

70% 70%

51% 30% 30% 49%

30% 70%

PAGES 115 - 120: PERCEPTIONS OF BODY WEIGHT Each participant of the study was shown the following images:

This self-perception data was then pooled, which provided the means for comparing it to the actual BMI data collected as part of the study to determine the difference between actual BMI and self perception.

109 109

FEMALE PERCEPTIONS OF WEIGHT FEMALE PERCEPTIONS OF WEIGHT

41%

45% 40% 35%

PERCENTAGE

30%

27%

NORMAL WEIGHT BMI: 18.5 - 25

24%

UNDERWEIGHT BMI: < 18.5

OVERWEIGHT BMI: 25 - 30

25%

8%

20% 15%

OBESE BMI: > 30

10% 5% 0% PERCEIVED WEIGHT

110 110

RELATIONSHIP BETWEEN PERCEIVED BODY WEIGHT & ACTUAL BMI FEMALES

49% 41%

60%

PERCENTAGE

50%

27% 19%

40%

30%

24%

29% 8%

3%

20%

10%

0%

UNDERWEIGHT UNDERWEIGHT (BMI: 18.5) ( 30)

When reviewing the participants’ perceptions of their weight and health it is imperative that an afro-centric lens is considered. The ‘Afro-centric aesthetic’ often runs counter to the dominant Western cultural values regarding health, weight and beauty. As such, the larger social, cultural and political context within which participants are making food choices and weight preferences greatly influences their self-perception.

111 111

MALE PERCEPTIONS OF WEIGHT MALE PERCEPTIONS OF WEIGHT

60%

PERCENTAGE

50%

52%

UNDERWEIGHT BMI: < 18.5

46%

NORMAL WEIGHT BMI: 18.5 - 25

40%

30%

20%

3%

OVERWEIGHT BMI: 25 - 30

10%

0% PERCEIVED WEIGHT

112

0%

OBESE BMI: > 30

RELATIONSHIP BETWEEN PERCEIVED BODY WEIGHT AND ACTUAL BMI OF MALES RELATIONSHIP BETWEEN PERCEIVED BODY WEIGHT & ACTUAL BMI OF MALES

63% 52%

46%

70%

60%

PERCENTAGE

50%

17%

40%

30%

8%

3%

20%

12% 0%

10%

0%

UNDERWEIGHT UNDERWEIGHT (BMI: (BMI R201

RELATIONSHIP WITH LOCAL SPAZA OWNER

RELATIONSHIP WITH LOCAL SPAZA OWNER

44%

56% 138 138

CUSTOMER LOYALTY TO LOCAL SPAZA SHOPS CUSTOMER LOYALTY TO LOCAL SPAZA SHOPS

46%

54%

139 139

GENDER PROFILE OF CUSTOMERS

54%

SHOP

140 140

46%

AVERAGE CUSTOMER AGE DISTRIBUTION

8%

19%

21%

31% AGE: 21 - 30 YRS

AGE: 11 - 20 YRS

21% AGE: 31 - 40 YRS

AGE: 6 - 10 YRS

AGE: 1- 5 YRS

141

CUSTOMER RETAIL BEHAVIOUR IN ALL FOUR SPAZA SHOPS CUSTOMER RETAIL BEHAVIOUR IN ALL FOUR SPAZA SHOPS

90%

80%

70%

PERCENTAGE

60%

50%

40%

30%

20%

10%

0%

142 142

TOP 5 PRODUCTS REPORTEDLY PURCHASED AT SPAZA

CIGARETTES

CIGARETTES

CIGARETTES

CIGARETTES

CIGARETTES

CIGARETTES

CIGARETTES

CIGARETTES

CIGARETTES

CIGARETTES

CIGARETTES

CIGARETTES

CIGARETTES

CIGARETTES

CIGARETTES

CIGARETTES

CIGARETTES

42%

CIGARETTES

CIGARETTES

CIGARETTES

CIGARETTES

CIGARETTES

CIGARETTES

28% BREAD

20% AIRTIME

CRISPS

CRISPS

CRISPS

CRISPS

6%

CRISPS

143 143

5%

BEER

POPULAR PRODUCTS SPAZA OWNERS REPORTED SELLING

POPULAR PRODUCTS SPAZA OWNER REPORTED SELLING

6%

20%

6%

JUICE****

CRISPS

7%

13%

7% 7%

13% 7%

****Includes fruit concentrates as well as fruit juices in different degrees of purity ***Non alcoholic fermented beverage **Crushed maize meal *Porridge

144 144

HAVE BEEN SOLD BY OWNERS FRUITS & VEGETABLES REPORTED TO HAVE BEEN SOLD BY SPAZA OWNERS

145 145

CLOSING REMARKS What has been discovered through this research both affirms previous studies and unearths a range of new information about food consumption behaviours, beliefs and values amongst the urban poor. It supports the idea that until the desires, aspirations, attachments, and motivations of any community are understood, sustainable solutions to their challenges will not emerge.

146

Our intention remains that the information and knowledge

security, health, and education ecosystems to make more

generated out of this research will support policy,

informed decisions.

programmes and solutions to the food security challenges facing South Africa.

It was important for us to stay true to our motivations of testing the everyday urbanism theories in practice. What

We have deliberately not provided commentary or

has been discovered through this research both affirms

developed any firm conclusions about the behaviours and

previous studies and unearths a range of new information

patterns of participants that emerged from this data. This

about food consumption behaviours, beliefs and values

choice is principally, because we are not food security

amongst the urban poor. It supports the idea that until

experts nor do we hold an intimate understanding, beyond

the desires, aspirations, attachments, and motivations of

this research, of the environment from which this data was

any community are understood, sustainable solutions to

drawn. Our aspiration is that this body of research will

their challenges will not emerge.

support the needs of others better placed within the food

147

ACKNOWLEDGEMENTS The Africa Centre would like to extend its deepest gratitude to the following people for their contributions to this project: Literature Review: Etai Even-Zahav, Elena Geuking & Luke

Data Entry: Taguekou Alexie, Edwin Uzochukwu Anowi,

Metelerkamp (Sustainability Institute)

Franklin Ondah Awaseh, Adedapo Awotidebe, Nkemngu Awungiia, Juveta Ayuk, Modele Bitkeu De Bitnga, Thuliswa

Statistical Analysis: Brighton Chipuka, Guillaum Doree, Luke

Bulana, Jean-Paul De Lange, Rickael Easton, Rosemary Enjema,

Fostvedt (Iowa State University), Pascal Fröhlicher, Dr. Yoram

Ebot Enih, Samuel Enow, Tulisa Gantsho, Brian Githungo,

Gat, Jorieke Haarhuis, Tsakane Lesea, Garreth Lombard, Adela

Ethell Cikizwa Gqirhana, Kenechukwu Maduka Ikebuaku,

Novotna & Gregor Schueler

Chouriya Lougue Kabore, Gaelle Fitong Ketchiwou, Arlette Molako Leufak, Claudia Mukong, Onorine Mujih, Olusola Saibu,

Field Research: Brighton Chipuka, Felicity Mbambani, Claire

Varlorine Tah, Yves Tchakounte, Zubayr Van Wyk led by

Mollatt, Siyamthanda Mrwebi, Alecia Msila, Nosisi Mzingelwa,

Nguatem Michael Belebema (University of the Western Cape)

Charity Nonhlanhla Ndimande, Nomzamo Nokoyo, Africa Tole & Anele Zenzile

148

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