Quantifying the Operational Flexibility of Distributed Cross-Sectoral Energy Systems for the Integration of Volatile Renewable Electricity Generation
Abstract
:1. Introduction and Motivation
1.1. Flexibility in the Energy System
- Flexibility options are technologies and operating modes of different fields of function in the energy system that can provide flexibility [13,14,15,16]. Figure 1 shows an overarching definition of these technologies and operating modes and allocates them to the fields of flexible generators, flexible consumers (demand), flexible storage, and the expansion of the electricity grid. In this approach, the flexibility options cover RL.Figure 1. Fields of functions in an energy system with flexibility options covering RL. Figure in accordance with [17].
- According to [18], three areas of flexibility applications exist. They describe the point of view of a flexibility option:
- Market -serving flexibility does not depend on any physical necessity. It is exercised solely by preferences on the demand side. It comprises the operation of individual market players, who optimize their operation following an objective function regarding external signals (e.g., electricity price and CO2 emissions).
- System-serving flexibility is intended to ensure the quality of supply in the electricity grid and thus the security of supply. The main objective is to maintain the frequency by using balancing power for the stability of the system balance of generation and demand. One instrument for providing system-serving flexibility are operating reserves.
- Grid-serving flexibility is provided by the transmission system operators for energy system stability. The focus is on grid congestion management for the interconnected systems and the prevention of bottlenecks. For example, in Germany, one instrument for providing grid-serving flexibility is ‘Redispatch’.
- According to [12,19], flexible operation can be provided on different flexibility levels in the energy system - the consumer, producer, and storage level.
- The consumer level includes mainly energy demands. Consumer level flexibility can be divided into consumption-side flexibility and load management. These are differentiated by their influence on the energy consumer. The consumption-side flexibility has no influence on the consumer’s behavior, as it results from flexibility of the energy supply units on the demand side. In contrast, load management, also called demand-side management (DSM), has an impact on the demand time series and thus has an impact for the consumer and the consumer’s behavior. The consumer level can also be named the prosumer level, if the consumer is also able to provide electricity to the grid.
- The producer level includes controllable power plants that can be operated flexibly without external constraints.
- The storage level includes large-scale storage facilities that can store electrical energy directly or indirectly and thus provide storage flexibility.
- In [20,21,22], the term flexibility potential is defined as the flexibility that a flexibility option can theoretically provide. The authors of [21] defined flexibility potential in terms of technical potential, technically usable potential, socio-technical potential, economic potential, and regulatory potential. The authors of [20] related these to each other as shown in Figure 2. In this sense, the differentiation of technical potential from theoretical potential is in accordance with the technical restrictions of the flexibility option. The technical potential is further constrained by the frequency of its flexibility call-ups, defined as the technical usable potential. The technically usable potential is finally reduced to the usable potential by the economic, socio-technical, and regulatory potential. The economic restrictions of the technical usable potential are affected by the economic viability of a callable flexibility option, which is mainly characterized by the revenue of flexibility provision. The socio-technical potential is the willingness of adjusting operation and services for providing flexibility and depend on the extent to which the provision of flexibility leads to restrictions in normal operation or the original intended use of the flexibility option. The regulatory restrictions are defined by legislations of authorities and regulations of market access.
1.2. Flexibility of a DCES
1.3. Review of Flexibility Indicators
2. Method
2.1. Requirements for a New Quantification Indicator
2.2. The Flexibility Deployment Index
2.3. Case Study
2.3.1. Demand Time Series
2.3.2. Energy System Concepts
2.3.3. Scenario Time Series
Optimization Tariff Scenarios
Residual Load Time Series
3. Results
3.1. FDI Dependency on Unit Operation and RL Demand
3.2. Flexibility Assessment over the Quantification Period
4. Conclusions and Discussion
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Nomenclature & Abbreviations
CC | compression chiller |
CHP | combined heat and power unit |
DCES | decentral cross-sectoral energy system |
electricity demand | |
DSM | demand-side management |
dynamic | dynamic electricity price tariff |
E | Energy |
electricity | |
emission factor | |
flexibility potential factor | |
residual load factor | |
flexibility deployment index | |
average flexibility deployment index | |
fix | fixed electricity price tariff |
electricity feed-in | |
k | cases |
P | power |
maximum | |
MILP | mixed integer linear programming |
marginal power plant | |
n | number of time steps |
opt | optimized concept |
electricity purchase | |
QP | quantification period |
RE | renewable energy |
ref | reference concept |
RL | residual load |
t | time step |
thermal | |
TES | thermal energy storage |
Appendix A. Review Tables
Source | Formula | Unit | Characteristics |
---|---|---|---|
[29,35,36] | [h] |
| |
[31,32,33,35] | [kW] |
| |
[29,30] | [-] |
| |
[36,41] | [kW] |
| |
[31,32,35,37] | [kWh] |
| |
[38] | [%] |
| |
[34] | [1/h] |
|
Source | Formula | Unit | Characteristics |
---|---|---|---|
[31] | [%] |
| |
[32] | [%] |
| |
[37] | [€] |
| |
[31,39] | [%] |
| |
[40] | [%] |
|
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Concepts | CHPNominal Load | CHPPart Load | Gas Boiler | Heating TES | Emergency Cooler | CC | Cooling TES | |
---|---|---|---|---|---|---|---|---|
kWel | kWth | % | kWth | kWhth | - | kWth | kWhth | |
ref | 250 | 348 | n.a. | 1500 | n.a. | yes | 600 | n.a. |
opt | 400 | 557 | 50–100 | 1500 | 519 | n.a. | 600 | 95 |
Tariff | el. Purchase | el. Feed-In | Volatility a | Natural Gas |
---|---|---|---|---|
fix | 17.9 ct/kWh | 15.5 ct/kWh | - | 3.77 ct/kWh |
dynamic | 17.9 ct/kWh | 15.5 ct/kWh | 1.42 ct/kWh | 3.77 ct/kWh |
EF | 589.1 gCO2/kWh | - | 90.06 gCO2/kWh | 201 gCO2/kWh |
Time Step, t | , % | , % | , % |
---|---|---|---|
00:45 a.m. | −45.9 | 16.7 | −100 |
04:00 a.m. | 81.2 | 23.4 | 100 |
06:45 a.m. | 33.0 | 47.3 | 69.8 |
11:30 a.m. | −5.9 | 41.9 | −14.1 |
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Berg, S.; Blaume, L.; Nilges, B. Quantifying the Operational Flexibility of Distributed Cross-Sectoral Energy Systems for the Integration of Volatile Renewable Electricity Generation. Energies 2024, 17, 90. https://doi.org/10.3390/en17010090
Berg S, Blaume L, Nilges B. Quantifying the Operational Flexibility of Distributed Cross-Sectoral Energy Systems for the Integration of Volatile Renewable Electricity Generation. Energies. 2024; 17(1):90. https://doi.org/10.3390/en17010090
Chicago/Turabian StyleBerg, Sebastian, Lasse Blaume, and Benedikt Nilges. 2024. "Quantifying the Operational Flexibility of Distributed Cross-Sectoral Energy Systems for the Integration of Volatile Renewable Electricity Generation" Energies 17, no. 1: 90. https://doi.org/10.3390/en17010090
APA StyleBerg, S., Blaume, L., & Nilges, B. (2024). Quantifying the Operational Flexibility of Distributed Cross-Sectoral Energy Systems for the Integration of Volatile Renewable Electricity Generation. Energies, 17(1), 90. https://doi.org/10.3390/en17010090