Assessing the Role of Energy Storage in Multiple Energy Carriers toward Providing Ancillary Services: A Review
Abstract
:1. Introduction
2. Problem Description
2.1. Traditional Solutions to Displace Fossil Fuels
2.1.1. Renewable Energy Sources
2.1.2. Electric Mobility
2.1.3. Heating Electrification
2.2. Undesired Effects of Distributed Generation on the Grid
2.2.1. Grid Congestion
2.2.2. Overvoltage
2.2.3. Underused Capacity Due to Power Curtailment
2.2.4. Uncertainty in Long-Term Effects on Grid Stability
2.2.5. Utility Rate Variation
2.3. Emerging Solutions
3. Ancillary Services
3.1. Reactive Power Control
3.2. Energy Arbitrage
3.3. Peak Shaving
3.4. Frequency Balancing
3.5. Voltage Control
3.6. Congestion Management
3.7. Demand Response Management
3.8. Direct Load Management
4. Multicarrier Energy Storage Systems
4.1. Mathematical Modeling of Multicarrier Energy Systems
4.2. Elements in Multicarrier Energy Storage Systems
4.2.1. Battery Energy Storage Systems
LFP | NMC | NCA | |
---|---|---|---|
Energy density (Wh/kg) | 75–190 | 120–200 | 140–240 |
Power density (W/kg) | 200–1600 | 600–2400 | 600–700 |
Cell efficiency (%) | 88–90 | 94–95 | 94–95 |
Cost (USD/Wh) | 300–600 | 300–600 | 300–600 |
Lifetime (cycles) | 5000–10,000 | 500–4000 | 500–3000 |
4.2.2. Supercapacitors
4.2.3. Thermal Energy Storage Systems
4.2.4. Hydrogen Fuel Cells
4.2.5. Electric Vehicles
4.3. Current Status on Combined Energy Storage Systems
System Architecture | Detail | Results | Ref. |
---|---|---|---|
PV + BESS + TESS | Three load-shifting strategies were proposed to control an islanded multicarrier microgrid in Abu Dhabi, UAE, including demand response management. | The coordination of charge and discharge of the different ESSs, combined with PV regulation, allowed the implementation of demand response management, with cooling loads shifted due to the TESS and curtailed, if needed, to supply the power demand within the network. | [202] |
PV + BESS + TESS + EV + CHP | A multicarrier energy system was tested with heat and electrical load data from a hospital in Okinawa, Japan, to minimize the annual costs while increasing the system’s resilience. | The system successfully reduced the costs while providing a more resilient system against grid blackouts, regardless of the seasonal variability, and with an acceptable life cycle performance, also showing compatibility with demand response management. | [203] |
PV + wind + concentrating solar power + BESS + TESS | The optimal capacities of BESS and TESS for a multicarrier energy system in north China were determined, considering curtailment and operative constraints. | The obtained capacities of BESS and TESS showed annual profits of USD 4.95 million, considering a generation price of 0.094 USD/kWh, with an annual curtailment rate lower than 5%. | [204] |
PV + BESS + TESS | A study of BESS and TESS as sources of flexibility was performed in Victoria, Australia, considering cost minimization and electric self-sufficiency. The influence of electricity price signals was also taken into account. | The multicarrier energy system showed optimal results when the objective was cost reduction. Most of the revenue was from the PV + BESS coupling, given the thermal load considered, as it allowed energy arbitrage and demand response management. On the other hand, self-sufficiency did not show economic benefits or flexibility options. | [205] |
PV + wind + diesel generation + BESS + TESS | To size the optimal BESS and TESS, data from a greenhouse with a microgrid in Iran were used to simulate an islanded condition in case of disconnection from the grid. | Once the microgrid was islanded, the BESS supported the frequency shifts. Moreover, the combination of BESS and TESS resulted in a reduction of 19% of the costs compared with only the BESS being implemented. | [206] |
BESS + TESS + CHP + chiller + boiler + spinning reserve | An artificial neural network fed with data from a shopping mall in Bangkok, Thailand, was used to create a load forecast strategy that reduced the operative costs when implemented in a multicarrier energy system. | The numerical results showed a reduction of 12.52% in the total operating cost compared with a similar EMS without BESS and spinning reserve when implementing the direct load management strategy. | [207] |
PV + BESS + solar heat exchanger + boiler | A residential area with centralized PV and solar heat exchangers was simulated using electrical, cooling, and thermal load data to study the effect of combining electrical and thermal storage to minimize the energy purchase costs. Constraints included energy balance, electricity price, capacity, and charge and discharge power of the BESS. | The results showed a 15% reduction in the total energy costs bought from the utilities due to the PV generation and energy arbitrage, without compromising the demand. | [208] |
Photovoltaic–thermal + TESS | A centralized photovoltaic–thermal system combined with a community-level TESS was simulated for an energy network in The Netherlands to determine the optimal size of the TESS to reduce costs and CO emissions when considering thermal, cooling, and electrical loads. | The results showed reductions in annual costs of between 10.5% and 31.9%, and in CO emissions of between 14.9% and 47.8%, depending on the demand analyzed: heating, heating, and cooling, or heating, cooling, and electrical. | [209] |
5. Discussion
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
BESS | Battery Energy Storage System |
CHP | Combined Heat and Power |
DG | Distributed Generation |
DR | Demand Response |
DSO | Distribution System Operators |
EMS | Energy Management Systems |
ESS | Energy Storage Systems |
EV | Electric Vehicle |
G2V | Grid-to-vehicle |
HFC | Hydrogen Fuel Cell |
HP | Heat Pump |
HVAC | Heating, Ventilation, and Air Conditioning |
KPI | Key Performance Indicator |
LCOS | Levelized Cost of Storage |
MCES | Multicarrier Energy System |
MCESS | Multicarrier Energy Storage System |
PSH | Pumped Storage Hydro |
RES | Renewable Energy Sources |
SC | Supercapacitor |
TESS | Thermal Energy Storage System |
TSO | Transmission System Operators |
V2G | Vehicle-to-Grid |
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Main Topic | Major Findings | Research Gaps | Ref. |
---|---|---|---|
Challenges associated with smart grid implementations. | Identification of the main challenges to transforming the existing power network into a smart grid. ESSs can balance the supply and demand mismatch through ancillary services. | Aggregation of multiple ESSs in the low-voltage network. The effect of combined ESSs. | [21] |
Capacity sizing methods, power converter topologies to interface multiple ESSs, architectures, control, and EMS to couple two or more ESSs. | When multiple ESS sare coupled, the trend is to couple a high-power storage system to meet transient power behavior and a high-energy storage system to supply energy in the long term. The most common combination of ESSs is BESSs with supercapacitors. Time delays between control layers affect the overall operation and stability. | Aggregation of multiple microgrids. Consider ancillary services. Inclusion of thermal energy systems. Multiobjective sizing methods for several coupled ESSs. | [22] |
How EV chargers can provide ancillary services to system operators. | Classification of the ancillary services available. Identification of the ancillary services EV can provide to the DSO and TSO theoretically and which are on a commercial stage. Identification of the actors involved. | Ancillary services from other ESS than EV. Smart charging infrastructure to diversify the commercial stage ancillary services available. | [23] |
The techno-economic and regulatory status of energy storage and power quality services at the distribution level. | Including RESs causes reluctance by the DSO, as they change their business models, generally seen as profit loss instead of new business opportunities. BESSs distributed in the grid will play a significant role in the implementation of RESs, but their deployment has to consider the total BESS life cycle. BESS can address grid issues through ancillary services as long as such services are appropriately recognized and rewarded by the DSO. | Quantification of the effects of deploying ESSs. The impact of combined ESSs. Aggregation of multiple ESSs in a low-voltage network. | [24] |
Analysis of potential ancillary services for transmission level and distribution level networks. | Voltage control, congestion management, and peak shaving are the most suitable ancillary services at the distribution level. Primary frequency control, reactive power control, and peak shaving are more effective for the transmission level. Centralized and distributed ESSs are reliable alternatives for ensuring grid stability. | Considers the ESSs as assets of the DSO or TSO. Aggregation of multiple ESSs. Network equivalent models. | [25] |
Coordination strategies of multiple microgrids in the distribution network. | Identification of aggregation strategies to provide ancillary services and market participation. Aggregated microgrids have the potential to facilitate the inclusion of RESs into the grid. Standardization for interconnection and interoperability to participate in the energy market. Standardization in cyber-security. | Considers the microgrids as assets of the DSO or TSO. Inclusion of thermal energy systems. | [26] |
Planning and deployment of DGs and ESSs, including their barriers and technologies available for implementation. | Identification of recent planning and allocation strategies for DGs and ESSs. Identification of uncertainty modeling methods for DG and ESS planning. | Correlation of the ESS and the needs of the system operators. Considers the microgrids as assets of the DSO or TSO. Inclusion of thermal energy systems. Grid failure studies on the distribution level. Multiobjective sizing methods for ESS. | [27] |
Phenomenon | Detail | Proposed Solution | Ref. |
---|---|---|---|
Loss of inertia and frequency shifts | The effect of different levels of PV and wind in Jordan’s national grid was analyzed, resulting in a penetration of over 40% that would compromise the frequency stability of the system due to a reduction in its inertia. | As a neighboring country, the interconnection with Egypt can support the system. | [51] |
Voltage issues | Circuits operate at, or near, their limits for the connection of any further DG in southwest England. | High-voltage network reinforcement. | [52] |
Voltage issues | Overvoltage surpasses the 110% limit in rural low-voltage grid in Portugal, given the low load required near the injection point, forcing an intermittent connection of the inverter to the grid. | [53] | |
Voltage issues | Voltage fluctuation due to grid congestion produced by generator start-ups to supply the demand planned to be met by wind farms in Germany. | Export of excess power to neighboring countries. | [54] |
Power curtailment and grid congestion | Increase in installed PV and wind systems in Italy caused grid congestion and power curtailment. | Development of a smart grid and use of dynamic line rating to reduce the power curtailment levels from 1% to 2%. | [54] |
Power curtailment and grid congestion | The German regulations give DGs priority access to the grid infrastructure, which, added to the single price zone electric market, created severe grid congestion, resulting in 4.7 TWh curtailed due to feed-in management in 2015. | Development and implementation of a congestion management strategy on the distribution level to provide flexibility as an alternative to power curtailment. | [55] |
Power curtailment | Power curtailment in China of 17.1% in wind and 10% in solar during 2016. | Enhance consumption near the injection point, implement subsidies and feed-in tariffs, and ultra-high-voltage (UHV) transmission. | [56] |
Uncertainty of long-term effects | Islanded systems, such as Crete and Cyprus, would be more affected by the massive deployment of RESs due to their stochasticity. | The interconnection of Greece (Attica Crete), Cyprus, and Israel allows high penetration of RESs while providing a secure match between demand and supply, reducing the need for fossil-fuel-based plants. | [57] |
Uncertainty of long-term effects | By 2011, The Netherlands implemented several policies to ensure the network infrastructure could support the incoming power plants to supply the increasing demand, creating uncertainty for the transmission system operators regarding the grid’s costs and the market’s behavior. | [58] | |
Utility rate variations | A study about the reaction of the electrical utility market related to the mass implementation of DGs in Brazil demonstrated that utility companies need a solid framework to regulate the DGs, as their advantages still need to be fully understood. | Implement strategies and models to understand the effect of DGs at the micro and mini level to implement more efficient utilities. | [59] |
Ancillary Service | Detail | Results | Ref. |
---|---|---|---|
Reactive power control | Simulation using the IEEE 9-bus system, considering synchronous generators and a cluster of coherent grid-following DGs under different control strategies. | Controlled power converters enhanced the network performance, reducing the rate of change of frequency. | [97] |
Reactive power control | Simulation of a Newcastle, Australia, rural network using a 33-node network with 11 loads on medium voltage, with data collected on PV generation, loads, and network voltage from trial sites. | Reduction of curtailment loss and overvoltage. | [98] |
Energy arbitrage | Multiple scenarios were studied in the Belfast City Hospital, Northern Ireland, using different BESS and PV combinations and dimensions to provide grid services and energy arbitrage. | BESS is not economically viable for arbitrage alone, but it is if income from other ancillary services is included. Revenue increases with the increase in the BESS power. | [99] |
Peak shaving | A peak shaving strategy with different BESS sizes was implemented on a test house, representative of a typical house in Northern Ireland, without considering the heating consumption in the measurements. | The peaks were reduced to less than 5%of their initial magnitude and duration and avoided between 70% and 90% of the energy exports. The system is hardly viable with flat tariffs, but incentive tariffs would result in profit. | [100] |
Peak shaving | The economic feasibility of a water tank thermal energy storage system connected to district heating and a heat recovery system in Trondheim, Norway, was tested after implementing a thermal peak-shaving strategy. | The system was able to shave up to 39% of the thermal load and increase waste heat self-use 27%, resulting in 9% savings on annual heating costs. | [101] |
Frequency balancing | A combination of a BESSs and supercapacitors is proposed to provide enhanced frequency response in the U.K. market, considering the minimum required capacity for each ESS and proposing a power management strategy based on allocating the power so that the SoC of the BESS remains near a reference value. | Incorporating the supercapacitor reduced about20% the usage of the BESS, and the power management strategy reduced the variation in the SoC of the BESS. | [102] |
Frequency balancing | Simulation using the IEEE 33-bus system and historical data from the Australian Energy Market Operator, considering the BESS provides frequency control services with a per-use-share rental strategy. | The strategy was proven as economically viable and reliable. | [103] |
Voltage control | A 21-node system within a 3.09 km line was simulated, including households, an office building, a school, and a store, studying the effect of BESS, EV, and home energy storage systems. | An adequate combination of EV, BESS, and home energy storage systems consistently reduced the voltage fluctuation at the end of the line. | [104] |
Voltage control | The North Cyprus power system (132 kV on transmission and 66 kV subtransmission, 49 busbars, 60 transmission lines, a Y-connected capacitive filter, 432 MW of power plants, and 2.27 MW of DG) was studied to analyze if DGs can improve the voltage profile in the network. | If the DG locations are chosen correctly, the system can operate within safe limits with a penetration level of 50%, achieving a 36.5% reduction in active power loss. | [105] |
Congestion management | A congestion management algorithm was tested in the H2020 InterFlex demonstrator in The Netherlands (26 EV charging points of 22 kW, a 250 kW/315 kWh BESS, and a 260 kWp PV system that supplies 350 apartments through two 630 kVA transformers), based on the loss of life of a transformer and the DSO’s financial risk of a blackout due to overloading. | The algorithm successfully predicts the load pattern, allowing a decision-making model to monetize the required flexibility. | [106] |
Demand response | Three villages in Portugal clustered the consumers with similar consumption patterns and implemented a demand response strategy. | Reduction in the household energy bill. | [107] |
Demand response | A home energy management system was combined with a smart thermostat to control household-power-shiftable loads, including BESSs and EVs, under Turkey’s time-of-use and feed-in tariff rates. | A reduction of 53.2% on the daily costs was achieved under Turkey’s time-of-use and feed-in tariff rates. | [108] |
Demand response | A TESS was implemented to reduce the required cycles of an air source heat pump. | The fluctuation in the outlet water temperature was reduced, while the unit decreased the number of on–off operations. | [109] |
Direct load management | A home energy management system (HEMS) was implemented in a single-family villas category in Riyadh, Saudi Arabia, aiming to achieve a net zero energy home. | Reduction in the household energy consumption by 37% compared with the energy use index in ASHRAE 100-2015, modifying the luminance level and the HVAC load. | [110] |
Issues | RES | Energy Storage Systems | EV | HP | |||
---|---|---|---|---|---|---|---|
BESS | SC | HFC | TESS | ||||
Voltage issues | Reactive power control, voltage control | Congestion management | |||||
Power curtailment | Energy arbitrage | Energy arbitrage | Energy arbitrage | Energy arbitrage | |||
Loss of inertia | Frequency balancing | Frequency balancing, congestion management | Frequency balancing, congestion management | ||||
Rate variation | Energy arbitrage, demand response management, peak shaving | Peak shaving | Energy arbitrage, demand response management, direct load control, peak shaving | Demand response management, peak shaving | Energy arbitrage, demand response management, direct load control, peak shaving | Demand response management, direct load control | |
Grid congestion | Congestion management, demand response management, peak shaving | Peak shaving | Congestion management, demand response management, direct load control, peak shaving | Demand response management, peak shaving | Demand response management, direct load control, peak shaving | Demand response management, direct load control |
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Alpízar-Castillo, J.; Ramirez-Elizondo, L.; Bauer, P. Assessing the Role of Energy Storage in Multiple Energy Carriers toward Providing Ancillary Services: A Review. Energies 2023, 16, 379. https://doi.org/10.3390/en16010379
Alpízar-Castillo J, Ramirez-Elizondo L, Bauer P. Assessing the Role of Energy Storage in Multiple Energy Carriers toward Providing Ancillary Services: A Review. Energies. 2023; 16(1):379. https://doi.org/10.3390/en16010379
Chicago/Turabian StyleAlpízar-Castillo, Joel, Laura Ramirez-Elizondo, and Pavol Bauer. 2023. "Assessing the Role of Energy Storage in Multiple Energy Carriers toward Providing Ancillary Services: A Review" Energies 16, no. 1: 379. https://doi.org/10.3390/en16010379
APA StyleAlpízar-Castillo, J., Ramirez-Elizondo, L., & Bauer, P. (2023). Assessing the Role of Energy Storage in Multiple Energy Carriers toward Providing Ancillary Services: A Review. Energies, 16(1), 379. https://doi.org/10.3390/en16010379