Incentive Price-Based Demand Response in Active Distribution Grids
Abstract
:1. Introduction
- (A1)
- Hourly load forecasts and PV generation forecasts are available that can be used by both DSO and BESS controllers.
- (A2)
- The LVGC and DER controllers are able to solve the proposed distributed optimization routine at each time-step (10 min) by exchanging information such as dual variables of the optimization problem and the incentive price signals over the communication network.
- Primal-dual projected gradient-based distributed optimization algorithm [18] is proposed to calculate the incentive price signals by the DSO to regulate the node voltages within limits.
- Model predictive control algorithm for control of individual BESS to minimize the electricity costs of the corresponding customer taking into account the incentive price signals from the DSO.
2. Demand Response Methods for Control of DERs: A Review and Comparison
2.1. Centralized Demand Response Control of DERs
- Data privacy of the customers is not ensured as the states of DERs contain sensitive information.
- The centralized control method will have issues with respect to scalability and reliability and therefore cannot be applied to larger distribution grids with thousands of DERs.
- The customers are not empowered to be active and dynamic when they participate in demand response programs.
- The communication overhead will be high as this method involves communication between DERs and the DSO control center.
2.2. Distributed Demand Response Control Methods of DERs
- Both the DSO and the customers can collectively work for an economical demand response.
- Computational requirements for the LVGC will be less and the method will be scalable and extensible for various types of DERs.
- Customers will have more freedom in terms of their availability, quality of service etc., during their participation in demand response programs.
- Energy commitment based DR: The LVGC of the DSO and DER controllers of the customers mutually calculate the optimal amount of flexible energy require for a future time period such that the overall costs of operation of the network as well as electricity bills of the customers are minimum.
- Incentive prices based DR: The LVGC of the DSO and DER controllers of the customers mutually calculate how much incentives in electricity prices are to be provided by the DSO such that the overall costs of operation of the network as well as electricity bills of the customers are minimized.
- DSOs could not motivate the customers to provide more flexibility than they are prepared to offer as the iterations involve only around requested flexible power from DSO and available flexibility from DERs.
- Customers may be motivated to provide more flexibility, if the DSO uses incentive prices as the variables to negotiate with the customers.
- An iterative distributed algorithm computes the incentive price signals for each BESS at each time-step. The objective of this algorithm is to minimize the costs of net power consumption over time in the nodes where BESS are connected and to maintain the grid voltages within allowed limits. These iterations take into the consideration of the BESS constraints such as SOC limits, power limits and the grid constraints such as voltage limits while calculating the incentive price signals.
- Once the iteration converges within a specified tolerance, the computed incentive prices are communicated to the BESS. The BESS controllers use the incentive signals to decide the charging/discharging power of the BESS until the next time-step.
- The incentive price signals will be zero when there are no grid voltage issues, hence the algorithm is iterated only once. In this case, no flexibility is requested from the BESS controller. When incentive price signals are nonzero, the BESS controllers are requested to provide flexibility based on their available power rating and the state of charge.
3. Mathematical Modeling and Simulation Setup
3.1. Linear Model of the LV Grid
3.2. Linear Model of the BESS
3.3. Model Predictive Control Algorithm of the BESS
4. Proposed IDR Method for Control of the BESS
4.1. Proposed Optimization Problem of the LVGC
4.2. Proposed Optimization Problem of the BESS
4.3. Distributed Optimization Based on Incentive Prices
Algorithm 1 Distributed iterative algorithm to compute incentive prices [18] |
Initialize the variables: BESS active powers , dual variables and and the incentive prices for BESS active powers . for{m = 1,2, ⋯ (repeat until convergence)} do
end for |
5. Simulation Studies
5.1. Case 1: Simulation without BESS Connected to the LV Grid
5.2. Case 2: Simulation of BESS Control without Proposed IDR Method
5.3. Case 3: Simulation of BESS Control with the Proposed IDR Method
- The proposed method may be more advantageous to the DSOs than the time-of-use tariffs in which the electricity prices are normally predetermined and fixed. However, in the proposed IDR method, the incentive prices are dynamically calculated based on the grid operating conditions. Hence using the proposed method, the DSO can minimize their operating costs and increase the hosting capacity of the grid.
- From the customers’ point of view, the proposed method is able to make use of the incentives from the DSO to optimally use their DERs and reduce their electricity bills.
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
BESS | Battery Energy Storage System |
DSO | Distribution System Operator |
IDR | Incentive price based Demand Response |
PV | Photovoltaic |
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Case | Over-Voltage Events | Under-Voltage Events | Costs Computed as per (14) [pu] |
---|---|---|---|
Case 1: No BESS | yes | yes | - |
Case 2: BESS control w/o proposed IDR method | slightly above limit | yes | 143.91 |
Case 3: BESS control with proposed IDR method | no | no | 110.32 |
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Nainar, K.; Pillai, J.R.; Bak-Jensen, B. Incentive Price-Based Demand Response in Active Distribution Grids. Appl. Sci. 2021, 11, 180. https://doi.org/10.3390/app11010180
Nainar K, Pillai JR, Bak-Jensen B. Incentive Price-Based Demand Response in Active Distribution Grids. Applied Sciences. 2021; 11(1):180. https://doi.org/10.3390/app11010180
Chicago/Turabian StyleNainar, Karthikeyan, Jayakrishnan Radhakrishna Pillai, and Birgitte Bak-Jensen. 2021. "Incentive Price-Based Demand Response in Active Distribution Grids" Applied Sciences 11, no. 1: 180. https://doi.org/10.3390/app11010180
APA StyleNainar, K., Pillai, J. R., & Bak-Jensen, B. (2021). Incentive Price-Based Demand Response in Active Distribution Grids. Applied Sciences, 11(1), 180. https://doi.org/10.3390/app11010180