Towards Optimal Pricing of Demand Response -- A Nonparametric Constrained Policy Optimization Approach (2306.14047v1)
Abstract: Demand response (DR) has been demonstrated to be an effective method for reducing peak load and mitigating uncertainties on both the supply and demand sides of the electricity market. One critical question for DR research is how to appropriately adjust electricity prices in order to shift electrical load from peak to off-peak hours. In recent years, reinforcement learning (RL) has been used to address the price-based DR problem because it is a model-free technique that does not necessitate the identification of models for end-use customers. However, the majority of RL methods cannot guarantee the stability and optimality of the learned pricing policy, which is undesirable in safety-critical power systems and may result in high customer bills. In this paper, we propose an innovative nonparametric constrained policy optimization approach that improves optimality while ensuring stability of the policy update, by removing the restrictive assumption on policy representation that the majority of the RL literature adopts: the policy must be parameterized or fall into a certain distribution class. We derive a closed-form expression of optimal policy update for each iteration and develop an efficient on-policy actor-critic algorithm to address the proposed constrained policy optimization problem. The experiments on two DR cases show the superior performance of our proposed nonparametric constrained policy optimization method compared with state-of-the-art RL algorithms.
- 2021 assessment of demand response and advanced metering. Federal Energy Regulatory Commission, Tech. Rep, 2021.
- FERC Order No. 2222: A new day for distributed energy resources. Federal Energy Regulatory Commission, Tech. Rep, 2021.
- Dependable demand response management in the smart grid: A stackelberg game approach. IEEE Transactions on Smart Grid, 4(1):120–132, 2013.
- A real-time demand-response algorithm for smart grids: A stackelberg game approach. IEEE Transactions on smart grid, 7(2):879–888, 2015.
- Dynamic pricing and energy consumption scheduling with reinforcement learning. IEEE Transactions on smart grid, 7(5):2187–2198, 2015.
- Residential load scheduling with renewable generation in the smart grid: A reinforcement learning approach. IEEE Systems Journal, 13(3):3283–3294, 2018.
- A dynamic pricing demand response algorithm for smart grid: reinforcement learning approach. Applied Energy, 220:220–230, 2018.
- An online learning algorithm for demand response in smart grid. IEEE Transactions on Smart Grid, 9(5):4712–4725, 2017.
- Real-time residential demand response. IEEE Transactions on Smart Grid, 11(5):4144–4154, 2020.
- Distributional policy optimization: An alternative approach for continuous control. Advances in Neural Information Processing Systems, 32, 2019.
- Proximal policy optimization algorithms. arXiv preprint arXiv:1707.06347, 2017.
- Trust region policy optimization. In International conference on machine learning, pages 1889–1897. PMLR, 2015.
- Incentive-based demand response considering hierarchical electricity market: A Stackelberg game approach. Applied Energy, 203(C):267–279, 2017.
- Supply–demand balancing for power management in smart grid: A stackelberg game approach. Applied Energy, 164:702–710, 2016.
- Approximately optimal approximate reinforcement learning. In Proceedings of the 19th International Conference on Machine Learning, pages 267–274, 2002.
- Distributionally robust optimization: A review. arXiv preprint arXiv:1908.05659, 2019.
- Global optimization by basin-hopping and the lowest energy structures of Lennard-Jones clusters containing up to 110 atoms. The Journal of Physical Chemistry A, 101(28):5111–5116, 1998.
- Monte Carlo basin paving: An improved global optimization method. Physical Review E, 73:015701, 2006.
- Robert Leary. Global optimization on funneling landscapes. Journal of Global Optimization, 18:367–383, 2000.
- Multi-step reinforcement learning: A unifying algorithm. In Proceedings of the AAAI Conference on Artificial Intelligence, page 2902–2909, 2018.
- High-dimensional continuous control using generalized advantage estimation. arXiv preprint arXiv:1506.02438, 2015.
- Continuous control with deep reinforcement learning. In Proceedings of the 4th International Conference on Learning Representations, 2016.
- Cloud computing based demand response management using deep reinforcement learning. IEEE Transactions on Cloud Computing, 10(1):72–81, 2022.
- OpenAI gym. ArXiv Preprint, page arXiv:1606.01540, 2016.
- Kullback-Leibler divergence constrained distributionally robust optimization. Optimization Online preprint, 2012.