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Online Learning for Network Constrained Demand Response Pricing in Distribution Systems

机译:网上学习的网络受限需求响应定价分配系统

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摘要

Flexible demand response (DR) resources can be leveraged to accommodate the stochasticity of some distributed energy resources. This paper develops an online learning approach that continuously estimates price sensitivities of residential DR participants and produces such price signals to the DR participants that ensure a desired level of DR capacity. The proposed learning approach incorporates the dispatch decisions on DR resources into the distributionally robust chance-constrained optimal power flow (OPF) framework. This integration is shown to adequately remunerate DR resources and co-optimize the dispatch of DR and conventional generation resources. The distributionally robust chance-constrained formulation only relies on empirical data acquired over time and makes no restrictive assumptions on the underlying distribution of the demand uncertainty. The distributional robustness also allows for robustifying the otpimal solution against systematically misestimating empirically learned parameters. The effectiveness of the proposed learning approach is shown via numerical experiments. The paper is accompanied by the code and data supplement released for public use.
机译:可以利用灵活的需求响应(DR)资源以适应一些分布式能源的随机性。本文开发了在线学习方法,不断估计住宅博士参与者的价格敏感性,并为博士参与者生产这种价格信号,以确保所需的DR容量水平。所提出的学习方法将DR资源的调度决策纳入分布强大的机会约束最佳功率流(OPF)框架。该集成被证明可以充分报复博士资源并共同优化博士和传统生成资源的调度。分布稳健的机会约束制剂仅依赖于随着时间的推移获得的经验数据,并且对需求不确定性的基本分布没有限制性的假设。分布稳健性还允许在系统地默认经验学习的参数中促使OTPimal解决方案。所提出的学习方法的有效性通过数值实验显示。本文伴随着公共使用发布的代码和数据补充。

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