Virtual Energy Storage System Scheduling for Commercial Buildings with Fixed and Dynamic Energy Storage
Abstract
:1. Introduction
1.1. Motivation
1.2. Prior Works
1.3. Contribution
- Integration of fixed and dynamic ESSs: This study proposes an approach for integrating both fixed and dynamic ESSs within a VESS scheduling framework. Unlike traditional methods that typically focus on either fixed or dynamic storage independently, this study demonstrates the enhanced efficiency and efficacy of combining these systems. By integrating fixed batteries and dynamic V2G capabilities, the proposed model optimizes energy usage within commercial buildings and enhances grid stability and energy cost management. This dual approach allows greater flexibility and resilience in energy management, adapting to both predictable energy demands and peak load fluctuations more effectively than standalone systems.
- Experimental results and discussions regarding a real dataset: The use of real-world data from Korea in the simulation process validates the practical applicability of the proposed scheduling method and enhances its relevance and utility for real-world scenarios. This methodological rigor ensures that the scheduling strategy is not only theoretically sound but also empirically effective, providing a replicable model for other researchers and practitioners in the field. These findings highlight the potential for significant reductions in energy costs and peak demand charges, which are crucial for the economic sustainability of energy use in commercial settings. Moreover, the demonstrated capability of the combined VESS in reducing the need for extensive and costly upgrades to utility grids presents a compelling case for policymakers to consider supportive policies and incentives for integrated energy storage solutions. This could lead to the broader adoption of such systems, ultimately contributing to enhanced energy efficiency, reduced carbon emissions, and greater energy independence on a larger scale.
2. System Description
2.1. Building Energy Service Provider
2.2. Participant Unit
2.3. Fixed Energy Storage
2.4. Dynamic Energy Storage
3. Virtual Energy Storage Scheduling Method
3.1. Objective Function
3.2. Fixed ES Constraint
3.3. Dynamic ES Constraint
3.4. VESS Scheduling Method with Fixed and Dynamic ESs
4. Results and Discussion
4.1. Experimental Environment
4.2. Fixed-ES-Only Scenario
4.3. Dynamic-ES-Only Scenario
4.4. Combining Fixed ES and Dynamic ES Scenario
4.5. Discussion Summary
- Net benefit dynamics: The total net benefits are directly proportional to the combined capacity of the fixed and dynamic ES. As shown in Figure 6, the VESS scheduled under the combined scenario achieves higher benefits owing to the optimized resource utilization and cost efficiency compared to the scenarios where only one type of ES is used. This implies that the synergy between the fixed and dynamic ES significantly enhances the performance of the system.
- Operational efficiency: The operational efficiency of a VESS varies significantly across different setups. In scenarios that utilize only fixed ES, efficiency hinges on matching storage capacity precisely with demand because both oversizing and undersizing can introduce cost inefficiencies. For dynamic ES setups, efficiency is more variable and heavily dependent on the availability and capacity of the charging infrastructure, which can be mitigated by increasing the number of CSs. However, combining fixed and dynamic ES offers the best of both systems, optimizing operational efficiency by using fixed ES for stability and dynamic ES for flexibility. This combination minimizes energy waste and enhances the ability of the system to respond adaptively to demand fluctuations, thereby showcasing a superior operational model.
- Demand management: Demand management capabilities differ across various VESS scenarios. Fixed ES systems effectively manage base and peak loads within their capacity but lack the flexibility to respond to demands beyond their static limits. Conversely, dynamic ES systems, reliant on EV availability and charging behaviors, tend to struggle with peak demand management when used in isolation because of their dependence on external factors. The integration of both fixed and dynamic ES into a combined system proves to be the most effective, leveraging dynamic ES for its responsiveness to sudden peaks and fixed ES for consistent baseline load management, thereby ensuring a comprehensive demand response strategy.
- Implications for the utility grid and social welfare: The combined VESS operation effectively reduces peak demand, which directly benefits the utility grid by lowering the need for costly peak-time energy production and deferring new infrastructure investments. Moreover, as the combined system enhances the efficiency of both fixed and dynamic ES, it promotes a higher level of social welfare improvement across participating units and broader energy networks.
- Real-time operation: Our approach focuses on the scheduling of flexible resources and derives solutions as an optimization problem. For real-time operation of the scheduled resources, compensation for uncertainties at each time point is necessary. The model does not currently address these real-time uncertainties.
- Economic impact analysis: The study uses total net benefit to evaluate the economic impact. However, this metric can be influenced by fluctuations in electricity market prices, which may affect the overall benefits. The variability of market conditions needs to be considered for a more comprehensive economic analysis.
- VESS integration into the utility grid: The integration of VESS into the utility grid may introduce additional constraints related to grid stability and operational limitations. These constraints could affect the feasibility and effectiveness of VESS operations, especially during peak demand periods.
- Integration of renewable energy sources: The potential for integrating renewable energy sources, such as solar and wind, with fixed and dynamic ES within the VESS can be explored. This study focuses on effectively storing the excess energy generated during peak production times and utilizing it during demand peaks or low production periods to enhance sustainability and reduce reliance on non-renewable energy sources. Additionally, real-time uncertainty compensation methods should be developed to address the variability in renewable energy generation.
- Scalability and modular system design: Investigate the scalability of VESS by implementing modular designs that can be easily expanded or adjusted based on the increase in energy demands or changes in the user base. This includes studying the impacts of scaling up on system performance, cost efficiency, and infrastructure requirements. Future research should also consider the integration of uncertainty compensation mechanisms to ensure robust real-time operations as the system scales.
- Economic and regulatory impact analysis: Comprehensive studies can be conducted on the economic impacts of widespread VESS adoption, including cost–benefit analysis, return on investment, and effects on electricity market prices. Sensitivity analyses should be performed to understand how varying market conditions influence the total net benefit. Additionally, frameworks for assessing the regulatory challenges and opportunities should be developed to facilitate the broader deployment of VESS.
- Impact on utility grids: The long-term impacts of large-scale VESS integration on utility grids, including grid stability, load balancing, and the potential to reduce peak load pressures, need to be analyzed. Improvements in these areas will help understand how VESS can be optimized to support the existing grid infrastructure and contribute to grid modernization. Future research should also explore the implications of VESS integration on utility grids, considering constraints such as grid stability and operational limitations. Analyzing how these constraints affect VESS operations will provide insights into optimizing the system for enhanced grid reliability and performance.
- Real-time application of study results: As mentioned in the limitations, our study focuses on scheduling and does not explicitly consider real-time operation. However, the problem addressed can be reformulated as a sequential decision making (SDM) problem, as indicated by the benefit model used in our objective function. Our problem can be tackled using techniques such as dynamic programming or reinforcement learning-based approaches to facilitate real-time operation [35]. Future research should explore this reformulation to enable real-time implementation, addressing the uncertainties at each decision point and optimizing operations dynamically.
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Demand Price (USD/kW) | Energy Price (USD/kWh) | ||
---|---|---|---|
Off-Peak | Mid-Peak | On-Peak | |
24.10 | 0.27 | 0.20 | 0.20 |
Parameter | Value | Description |
---|---|---|
Parameters related to BESP | ||
Scheduling period | One month | Value according to the billing cycle |
Parameters related to participant units | ||
Demand of unit | Measured value | Recorded value by the K-MEG project [30] |
Electricity tariff | A-10 of PG&E | Announced tariff for medium general demand-metered service [31] |
Parameters related to fixed ES | ||
Battery cost parameters | α1 = 0.17, α2 = 0.0004, and α3 = 0.043 | Fitting value of the Li-ion battery’s LCOE [24] |
Battery capacity | 10~500 kWh | Variable to measure performance under different conditions. |
Parameters related to dynamic ES | ||
EV profile | Measured value | Recorded value by the KEC [33] |
EV tariff | BEV of PG & E | Announced tariff for business electricity vehicle [32] |
Charging power of chargers | 50 kW | Specification of fast charger [27] |
Number of CSs | 3, 4, 5 | Variable to measure performance under different conditions. |
Blocking probability threshold | 0.02~1.00 | Variable to measure performance under different conditions. |
200 kWh Fixed ES Capacity Case | 500 kWh Fixed ES Capacity Case | ||||
---|---|---|---|---|---|
Average Demand | Peak Demand | Average Demand | Peak Demand | ||
0.21 | 0.77 | 1.00 | 0.38 | 0.88 | 1.00 |
0.04 Blocking Probability Threshold | 0.08 Blocking Probability Threshold | ||||
---|---|---|---|---|---|
Average Demand | Peak Demand | Average Demand | Peak Demand | ||
−0.33 | −0.44 | 1.00 | −0.40 | −0.54 | 1.00 |
200 kWh Fixed ES Capacity and 0.04 Blocking Probability Threshold | |||||
---|---|---|---|---|---|
Average Demand | Peak Demand | Average Demand | Peak Demand | ||
0.38 | 0.81 | 1.00 | 0.27 | 0.28 | 1.00 |
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Brhane, G.Y.; Oh, E.; Son, S.-Y. Virtual Energy Storage System Scheduling for Commercial Buildings with Fixed and Dynamic Energy Storage. Energies 2024, 17, 3292. https://doi.org/10.3390/en17133292
Brhane GY, Oh E, Son S-Y. Virtual Energy Storage System Scheduling for Commercial Buildings with Fixed and Dynamic Energy Storage. Energies. 2024; 17(13):3292. https://doi.org/10.3390/en17133292
Chicago/Turabian StyleBrhane, Grmay Yordanos, Eunsung Oh, and Sung-Yong Son. 2024. "Virtual Energy Storage System Scheduling for Commercial Buildings with Fixed and Dynamic Energy Storage" Energies 17, no. 13: 3292. https://doi.org/10.3390/en17133292
APA StyleBrhane, G. Y., Oh, E., & Son, S. -Y. (2024). Virtual Energy Storage System Scheduling for Commercial Buildings with Fixed and Dynamic Energy Storage. Energies, 17(13), 3292. https://doi.org/10.3390/en17133292