An Agent-based Simulation-optimization Approach for ...

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volumes as shown in the following table. ➢ Assume that no further weathering process occurs during the recovery operation. Slick. Location. Oil volume. (m3).
An Agent-based Simulation-optimization Approach for Device Allocation in Offshore Oil Spill Recovery Pu Li, Zelin Li, Bing Chen*, and Liang Jing Northern Region Persistent Organic Pollution Control (NRPOP) Laboratory, Faculty of Engineering and Applied Science, Memorial University of Newfoundland, St. John’s, NL, Canada, A1B 3X5; *Email: [email protected]

Initial conditions

Device conditions

Interaction of recovery devices

No

Optimal settings for stage n

 To ensure a sound design and optimal operation in terms of time with expected recovery rate

2. Methodology

Objectives:

Perception Agent 1 (Behavioral specification 1)

Perception Interaction Agent 2 (Behavioral specification 2) Actions

...

Interaction Interaction Agent k (Behavioral specification k)

Environment

Perception

 Simulation-based dynamic mixed integer nonlinear programming (DMINP): simulationoptimization coupling for decision support to offshore oil spill recovery

 ASO approach: further considers the interaction of the recovery devices (reflected by ABM) with the DMINP to provide sound decisions

 Optimize the routes of ships  to achieve 90% of oil recovery with minimum time

1 2 3 4 5 6 7

Location X (km) Y (km) 24.03 5.80 19.97 14.07 27.49 16.61

10.03 18.46 20.99 3.43 5.42 29.39

Oil volume (m3) 132.44 219.37 146.69 137.82 81.07 79.86

ORRn of Ship A 40

ORRn of Ship C 30

20

10

0

3.27

13.84

202.76

10

20

30

Slick thickness (mm)

Optimized routes based on the ASO approach  optimal time: 21 hours

40

50

0

Transport to Slick 7

2.9

Oil recovery on Slick 7

Oil recovery on Slick 4 6 6.3

Transport from Slicks 7 to 2

6 6.6

Oil recovery on Slick 2 9 9.8

15

Oil recovery on Slick 3 12 12.5

Transport from Slicks 3 to 6

10 Oil recovery on Slick 6

14 14.3

Transport from Slicks 4 to 1 Oil recovery on Slick 1

Transport from Slicks 5 to 3

9 9.3

Transport from Slicks 1 to 5

11 11.3 12 12.6

Oil recovery on Slick 5 Transport from Slicks 5 to 1 Oil recovery on Slick 1 Transport from Slicks 1 to 3

Transport from Slicks 2 to 7 Oil recovery on Slick 3 Oil recovery on Slick 7

17 17.8

3

5

7

9

11

13

15

19

17

19

21

17 17.5

Transport from Slicks 6 to 2 Oil recovery on Slick 2 Stop operation

21

Transport from Slicks 7 to 2 Oil recovery on Slick 2 Stop operation

19 20.1 21

Transport from Slicks 6 to 7 Oil recovery on Slick 7 Stop operation

1000

Ship C

250

90% of oil recovery

900

Ship B

200

150

100

800 700 600

Comparison of oil recovery by routes based on shortest distances and ASO optimization

500 400 300 Routes based on ASO optimization

200

50

3

5

7

9

11

13

15

17

19

Routes based on shortest distance without consideration of ship interactions

100

Cumulative oil recovery by ships 0 1

Transport from Slicks 3 to 6 Oil recovery on Slick 6

19 19.3

21

300

50

0

Oil recovery on Slick 1 Transport from Slicks 1 to 5

Ship A

ORRn of Ship B

Slick

5 5.3

350

 Three ships (Ship A, B, C) with three different types of skimmers  different oil recovery rate (ORRn) with slick thickness as follows:

ORRn (m3/hr)

 Agent-based model (ABM): a class of computational approaches for micro-scale simulation of the actions and interactions of autonomous agents (e.g., competition of recovery devices in offshore oil spill events) with a view to assessing their effects on the system as a whole

 An offshore oil spill with a release of 1,000 3 m crude oil  initial thickness: 50 mm  Due to advection and spreading, the spilled oil was separated to 7 slicks with different volumes as shown in the following table.  Assume that no further weathering process occurs during the recovery operation

Transport from Slicks 4 to 1

Action

Transport to Slick 4

Time (hour)

3. A case Study

Time (hr)

Action

0 0.2

Transport to Slick 4

Oil recovery on Slick 5

0 1

Update the operational stage n=n+1

Time (hr)

Action

3 3.6

20

5

OBJECTIVES:  To develop a novel agent-based simulationoptimization (ASO) approach and first apply to offshore oil spill recovery

Ship C

25

Ship C

Ship B

Oil recovery on Slick 4

Hourly oil recovery by ships

Goal; Rule; Sequence of activities

response device

0 0.2

Ship B

Predefined Plans Agent

Time (hr)

Ship A

30

Is the pre-set goal achieved

Simulation-based dynamic mixed integer nonlinear programming (DMINP)

Oil recovery simulation New environmental conditions

Efficiency; Time; Cost

Cumulative oil recovery (m )

Environmental conditions

Man power; Finance; Regulation

Ship A

35

Oil recovery by ship (m3)

 Some trajectory models (e.g., GNOME and OSCAR) have been developed for offshore oil spill response  some are integrated with oil spill simulation such as oil weathering and recovery  none was found in further consideration of the interactions of response devices

Yes

3

 Offshore oil spills: a release of a liquid petroleum hydrocarbon into the ocean or coastal waters due to human activities  leads to serious impacts  requires quick response

4. Discussion

Operation ends

Policies (Targets)

Cumulative oil recovery (m3)

1. Introduction

21

0 1

3

5

7

9

Time (hour)

11

13

15

17

19

21

23

Time (hour)

5. Conclusions  The ABM can reflect the interactions of components in a offshore oil spill recovery system and integrate with the optimization  The DMINP can integrate the simulation processes with the optimization of offshore oil spill recovery actions  The ASO approach can provide sound decisions for oil recovery under highly interactive conditions and improve recovery efficiencies  Weathering processes and hydrodynamic simulation will be considered in future study

Acknowledgement Sincere thanks go to Natural Sciences and Engineering Research Council of Canada (NSERC), Research & Development Corporation (RDC) of Newfoundland and Labrador, and Canada Foundation for Innovation (CFI) for funding support of our research, as well as Eastern Canada Response Corporation (ECRC) and Canadian Coast Guard (CCG) for technical advices in the case study.

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