To reach the climate goals we have to integrate all the energy sectors. Different transition ... Efficient Design and Management needs the help of a digital twin.
Design and Operation of Future Energy Systems – an Technology Providers View Michael Metzger VDE Kongress 2016, Mannheim
Siemens Corporate Technology
Design and Operation of Future Energy Systems Agenda
Motivation Digital twin of our energy system Analysis of a target system 2035+ Conclusion
unrestricted © Siemens AG 2016 Page 2
Corporate Technology
Energiewende is not only a technical issue – even more important are business models, regulation (politics) and markets Unbundled electrical power supply in Europe
Grid
Generation Steam power plant
Combined cycle/ Simple cycle
Hydropower
Nuclear power
Photovoltaics
Grid
Simple cycle power plant
Onshore wind
Biomass
Small hydro
Spot Market
Transmission
Energy Supplier
Transmission and distribution grid operators are responsible for grid stability. Transmission and distribution grid operators have a monopoly.
Energy Supplier Energy suppliers are responsible for energy supply. Energy suppliers are competitors. A distribution grid is used by multiple energy suppliers.
Distribution
End Customer
The end customer is expected to become a more important driver in the future Industrial Site
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Building
Corporate Technology
To reach the climate goals we have to integrate all the energy sectors Different transition paths
A
Space
Somewhere else B
C
Water Gas/Fuel Cold Heat Electricity
here
now later
Generation Utilization
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Corporate Technology
Future energy systems are becoming multi-modal and decentralized Efficient Design and Management needs the help of a digital twin Water Transport
Water Production
Pumping Station
Water Tanks
Smart Building w/ heat pump & thermal storage
Gas Supplier Gas Transport
Gas Station
Private Wind or Solar
Water Distribution Biomass
Gas Distribution Heater, Chiller Heat Station
C(C)HP2)
Power to gas (liquid, chemical) Offshore Wind Park
District heating cooling
Microgrid Controller Microgrid
Industry Storage Thermal Storage
Pumped Hydro
Engine Generator with C(C)HP2)
District heating cooling
Storage Solutions
Onshore Wind
Fuel cell
Electrical Vehicle Infrastructure
Onshore Wind Park Network Control Center
Controllable LV transformer Large Scale PV Plant
Fossil Power Plant Power Station
Bulk Generation Energy Management System (Production Plant)
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Power Station
Power Station
Distribution and DER1)
Transmission Building Energy Management System
Smart Meter Smart Energy Agent
1) Distributed Energy Resources
Buildings and Industry Access Point Internet of things
Power AC Power DC
Nanogrid within Building (e.g. DC grid in Data Center)
Heat/Cold Gas
Water supply
2) Combined (Cooling) Heat and Power Corporate Technology
Design and Operation of Future Energy Systems Agenda
Motivation Digital twin of our energy system Analysis of a target system 2035+ Conclusion
unrestricted © Siemens AG 2016 Page 6
Corporate Technology
With the Energy System Development Plan (ESDP) we are analyzing the system and market level, e.g. for Germany in a European energy market
80% renewable energy 2035+
Residual load 500MW
Digital twin of the European energy system
250MW
0MW
-250MW
-500MW
Scenario for 2035+ (80% share from renewable sources)
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Corporate Technology
Fine grain modeling of the renewable in-feed & demand in Germany – embedded into European model needs consistent and detailed data Integration of Renewable feed-in and demand Meteorological data as basis for renewables
Electrical & thermal load modelling Electricity demand sector CTS Exemplary heat demand in category 47:Retail sector
• Electrical and thermal loads are modeled for • Consistent meteorological data across Europe
o Private sector
• High spatial and temporal resolution
o Commerce, Trade and Services (CTS)
• Enables the modeling of realistic feed-in time series
o Industrial sector
• 15-minute resolution of solar radiation (SoDa) • Hourly data for wind-speed and temperature (eraint)
• Spatial resolution: ZIP code area (PLZ5), down to single company (large industrial sites) • Hourly time resolution
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Corporate Technology
The cellular approach enables the evaluation of distributed energy resources in system simulations Cells are defined as the supply area of one 380 kV / 110 kV substation
Cell definition and characteristics One cell comprises all distributed energy systems (DES) (decentralized generation, electric / thermal loads and energy storages) connected to one 380kV / 110kV substation The individual DES in one cell are aggregated per technology (combination) (e.g. combined heat and power plants, heat pumps) and sector (households, trade, commerce and services, industry) The aggregated DES per cell are modelled in the system simulation as virtual power plants considering aggregated technical and demand constraints of the individual DES
Dots mark substation Colors mark one cell One cell consists of PLZ 5 regions PLZ: Postleitzahl (engl. zip code) unrestricted © Siemens AG 2016 Page 9
Corporate Technology
Market simulation determines schedules for all power plants and aggregated distributed energy systems European Multimodal Market Simulation
Optimization of energy system operation in Europe based on the objective function of cost minimization Market based generation time series for fossil power plants (Unit commitment based on merit order with technical restrictions) Storage technology operation (pumped storage, Power2Gas,…) Operation plan for each cell (decentralized generation & storage) − Generation: combined heat and power, heat pump, heating rod, boiler − Storage: electrical storage, thermal storage, high temperature storage − Transport: e-mobility
Power plant schedules
International electricity exchange For European neighbor countries power plants are modelled via vintage classes, block wise modelling is also possible
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Cell schedules
Corporate Technology
Based on the unit commitment ESDP is able to analyze the need for transmission grid expansion Objective and methodology
European Multimodal Market Simulation
Objective: Estimate the transmission grid expansion costs for future energy system scenarios Estimate the expansion cost savings of cell autarky (i.e. using distributed flexibilities to minimize imports and exports to/from each substation supply area)
Assignment to grid nodes
Busbar
Methodology and assumptions: Transmission grid including all TYNDP1) and approved NEP20142) measures until 2024 as a starting point Market schedules from market simulation (EMMS) are assigned to grid nodes Grid expansion need is estimated using power flow simulations and expansion heuristic Component
Power Plant
Wind
PV
Cell residual load
Cost assumptions
Double 380 kV AC OHL system
1,4 Mio. €/km Power Flow Simulation
380 kV switchgear
4 Mio. €
380/110 kV transformer (300 MVA) Source: Netzentwicklungsplan 2014
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1)
Ten Year Network Development Plan
6,5 Mio. € 2)
Grid expansion heuristic
Netzentwicklungsplan
Corporate Technology
Based on the unit commitment ESDP is able to analyze the expansion and intelligent management measures in the power grids Objective and methodology
Cell Data
Objective: Estimate the distribution grid expansion costs for future energy system scenarios Estimate the reduction of expansion costs due to innovative grid operation, such as Internet of Things, storage and reactive power management Methodology: Detailed Nationwide Modelling of Medium (MV) and Low Voltage (LV) Grids
Distribution Grid Generator Inhabitants Identify MV Areas Population density
Generate individual combined MV and LV grids
Classify MV Areas
Archetypes
Assign demand and generation profile for every customer Grid expansion need is estimated using power flow calculation and expansion heuristic
Model MV & LV Grid Stuctures Registers Assign Customers to Grid Nodes
Modeled German System MV Grids Total Lines MV/LV Transformers unrestricted © Siemens AG 2016 Page 12
3991
Power Flow Calculation
1.1 Mio. km 580000
Grid expansion heuristic Corporate Technology
Design and Operation of Future Energy Systems Agenda
Motivation Digital twin of our energy system Analysis of a target system 2035+ Conclusion
unrestricted © Siemens AG 2016 Page 13
Corporate Technology
ESDP Phase 1 German Climate Goals 2050 is the base for all modified scenarios Summary of analyzed scenarios in phase 1 (using market simulation). Renewable Sources
Reference Scenario 1. German Climate Goals 2050 1) Assumptions from recent study on GER climate goals: Prognos/GWS/EWI, 2014 80% of electricity consumption from RES & 60% of end-energy demand from RES No power2gas
PV
Onshore
Gas Turbines/ Large CHP
Storage + Other
67 GW
70
18
12
4
75
150
64
60
19
21
11
35
+
GW TWh
Results of Simulation
368 TWh 264 GW
67 GW
78
70
18
12
4
75
150
64
60
19
21
11
35
+
GW TWh
Results of Simulation
447 TWh 132.5 GW
99 GW
63
47
6.5
12
4
61
101
23
60
19
22
11
66
+ Results of Simulation
GW TWh
264 TWh
1) EWI/GWS/Prognos: „Entwicklung der Energiemärkte – Energiereferenzprognose“, Studie im Auftrag des Bundesministeriums für Wirtschaft und Technologie, 2014. 2) IHS Inc.: „A More Competitive Energiewende: Securing Germany’s Global Competitiveness in a New Energy World“, 2014.
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Coal based electric power
RoR
78
3. Gas Revolution 2) (2025) Gas is the main fossil energy source; Europe will have an 100 % integrated gas net, gas is imported from different sources; German CO2 goals not reachable
Biomass
182 GW
2a/b. My Own Storage (2050) Combination of residential PV with massive integration of cheap electric storage with a) 2-15 kWh and b) 500 kWh. Modes of operation: max. self-supply vs. system-oriented utilization. ηAC2AC: 80%
Offshore
Conventional & Storage
PV = photovoltaic's RoR = run of the river hydroelectricity
Corporate Technology
What is the system impact of different power to heat and thermal storage options in the future energy system? Summary
1
2
3
4
• •
Flexibility of decentral technologies (heat pumps, resistive heating, CHP-heating) has positive effect on system costs reduces curtailment of renewables significantly
•
P2H at CHP sites (district-heating) reduces variable system costs significantly more that decentral technologies in 1)
•
reduces curtailment of renewables significantly
•
Optimal dimensioning: P2H for 70% of thermal power of the district heating plants, heat storage capacity for 10h
•
P2H at industrial sites with High-Temperature Heat Pumps (100o-150o C, without thermal storage) reduces variable system costs
•
High ratio of reduction of variable costs to annuity of necessary investments
•
P2H at industrial sites with resistive heating (150o – 500o C) and high-temp. heat-storage reduces variable system costs
•
Optimal dimensioning: P2H for 100% of thermal power of the process heating, heat storage capacity for 10h
•
reduces curtailment of renewables significantly
P2H = Power to Heat, CHP = Combined Heat and Power
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P2H: Power to heat; CHP: Combined Heat and Power
Corporate Technology
What is the system impact of a large penetration of electrical PV storage in the future energy system? Summary
1
2
3
4
5
• Market driven operation of PV storage is expected to have a significant impact in the electricity market. • BUT massive integration of storage seems not to be a game changer.
• Market driven operation of storage can reduce OPEX of the energy supply in DE by 10%.
• Seasonal storages lead to a full autarky of 60% of buildings & self-consumption rates of 70%. • Daily storages do not lead to autarky of buildings, but 50% self-consumption rate.
• Profitability of seasonal storages is critical, as they are operated with only 1.5 cycles per year.
• Storage has little impact on grid reinforcement costs. • Distribution grid friendly storage operation can reduce peaks due to PV in-feed and load.
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Corporate Technology
Massive integration of storage seems not to be a game changer • A massive penetration of seasonal, decentralized PV storage (~11 mio units, 50 kW, 500 kWh) does not change the generation amount of power plants significantly (for optimal self-consumption AND market driven operation) • Operation with maximum self-consumption has negligible impact on the overall system. • Market-integration of PV storage has an impact and improves the integration of renewable sources: • Reduced net export and generation quantities of power plants • No dumped energy (down regulation of renewables) • Pumped storage power stations are almost entirely replaced (better efficiency of PV storage) 140 120
TWh
100 80
Without el. storage
60
Large el. storage (self-consumption) Large el. storage (market)
40 20 0 Lignite
Hardcoal
SCGT
SCGT = Single Cycle Gas Turbines, CCGT = Combined Cycle Gas Turbines
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CCGT
Pumped storage (turbining)
Dumped Energy
Net Export
Corporate Technology
Design and Operation of Future Energy Systems Agenda
Motivation Digital twin of our energy system Analysis of a target system 2035+ Conclusion
unrestricted © Siemens AG 2016 Page 18
Corporate Technology
We have to identify a suitable migration path for each market region of interest – partnering with important stakeholders is key
Energiewende 2.0