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Using Causal Inference to Measure Residential Consumers Demand Response Elasticity

机译:使用因果推断来衡量居民消费者的需求响应弹性

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Engaging the residential consumers and providing the best tariffs for their randomized behavior is one of the major barriers to demand response (DR) implementation. Additionally, DR offers submitted by aggregators or retailers are not consumer-specific, which turns it even more difficult for the engagement of consumers in these programs. In order to address this issue, this paper describes a methodology based on causal inference between dynamic DR tariffs and observed residential electricity consumption (resolution of 30 minutes) to estimate consumers’ consumption elasticity. Ultimately, the aim of this approach is to aid aggregators and retailers to better tune DR offers to consumer needs and so to enlarge the response rate to their DR programs.
机译:吸引居民消费者并为其随机行为提供最佳关税是实施需求响应(DR)的主要障碍之一。此外,聚合商或零售商提交的DR报价不是特定于消费者的,这使得让消费者参与这些计划变得更加困难。为了解决此问题,本文介绍了一种基于动态DR费率与观察到的居民用电量(30分钟分辨率)之间因果关系推断的方法,以估算消费者的消费弹性。最终,此方法的目的是帮助聚合商和零售商更好地调整灾难恢复产品以满足消费者需求,从而扩大对其灾难恢复计划的响应率。

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