消费者偏好分布对居民需求响应动态电价的影响

Samuel Dunbar, S. Ferguson
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引用次数: 0

摘要

需求响应(DR)是通过部署一种或多种策略来调整消费者电力需求,例如直接负荷控制、政策实施、动态定价或其他经济激励措施。DR的广泛实施是解决间歇性可再生能源整合、降低容量成本和提高电网可靠性等能源挑战的一个有希望的解决方案。了解居民消费者对产品使用变化的偏好,以及这些偏好如何在人群中分布,是预测不同DR策略有效性的关键。此外,还需要更好地了解不同的DR计划、系统级目标和偏好分布将如何影响人口中不同的消费者群体。具体来说,是对他们的产品使用行为和电费的影响。为了应对这一挑战,提出了一种基于产品的方法来模拟消费者关于改变其电力消耗的决策,该方法将消费者价值与他们的产品联系起来,而不是直接与他们消耗的电量联系起来。然后使用该模型来演示改变产品使用的人口水平偏好分布如何影响系统级目标。
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The Impact of Consumer Preference Distributions on Dynamic Electricity Pricing for Residential Demand Response
Demand Response (DR) is the adjustment of consumer electricity demand through the deployment of one or more strategies, e.g. direct load control, policy implementation, dynamic pricing, or other economic incentives. Widespread implementation of DR is a promising solution for addressing energy challenges such as the integration of intermittent renewable energy resources, reducing capacity cost, and improving grid reliability. Understanding residential consumer preferences for shifting product usage and how these preferences are distributed amongst a population are key to predicting the effectiveness of different DR strategies. In addition, there is a need for a better understanding of how different DR programs, system level objectives, and preference distributions will impact different segments of consumers within a population. Specifically, the impacts on their product use behavior and electricity bill. To address this challenge, a product based approach to modeling consumer decisions about altering their electricity consumption is proposed, which links consumer value to their products, instead of directly to the amount of electricity they consume. This model is then used to demonstrate how population level preference distributions for altering product use impact system level objectives.
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