Optimal Mechanisms for Demand Response: An Indifference Set Approach

Mohammad Mehrabi, Omer Karaduman, Stefan Wager
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Abstract

The time at which renewable (e.g., solar or wind) energy resources produce electricity cannot generally be controlled. In many settings, consumers have some flexibility in their energy consumption needs, and there is growing interest in demand-response programs that leverage this flexibility to shift energy consumption to better match renewable production -- thus enabling more efficient utilization of these resources. We study optimal demand response in a model where consumers operate home energy management systems (HEMS) that can compute the "indifference set" of energy-consumption profiles that meet pre-specified consumer objectives, receive demand-response signals from the grid, and control consumer devices within the indifference set. For example, if a consumer asks for the indoor temperature to remain between certain upper and lower bounds, a HEMS could time use of air conditioning or heating to align with high renewable production when possible. Here, we show that while price-based mechanisms do not in general achieve optimal demand response, i.e., dynamic pricing cannot induce HEMS to choose optimal demand consumption profiles within the available indifference sets, pricing is asymptotically optimal in a mean-field limit with a growing number of consumers. Furthermore, we show that large-sample optimal dynamic prices can be efficiently derived via an algorithm that only requires querying HEMS about their planned consumption schedules given different prices. We demonstrate our approach in a grid simulation powered by OpenDSS, and show that it achieves meaningful demand response without creating grid instability.
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需求响应的最佳机制:无偏见集方法
可再生能源(如太阳能或风能)发电的时间一般无法控制。在许多情况下,消费者的能源消费需求具有一定的灵活性,人们对需求响应计划的兴趣日益浓厚,这种计划可以利用这种灵活性改变能源消费,使其更好地匹配可再生能源的生产,从而更有效地利用这些资源。我们在一个模型中研究了最优需求响应,在这个模型中,消费者操作的家庭能源管理系统(HEMS)可以计算出满足预先指定的消费者目标的能源消耗曲线 "无差别集",接收来自电网的需求响应信号,并在无差别集范围内控制消费者设备。例如,如果消费者要求室内温度保持在一定的上限和下限之间,那么 HEMS 就可以在可能的情况下,根据可再生能源的高产量来安排空调或暖气的使用时间。在此,我们表明,虽然基于定价的机制一般无法实现最优需求响应,即动态定价无法诱导 HEMS 在可用的偏好集内选择最优需求消费档案,但随着消费者数量的不断增加,定价在均值场极限内是近似最优的。此外,我们还证明了大样本最优动态价格可以通过一种算法高效得出,该算法只需查询 HEMS 在不同价格下的计划消费时间表即可。我们在一个由 OpenDSS 支持的电网仿真中演示了我们的方法,并证明它能在不造成电网不稳定的情况下实现有意义的需求响应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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