Differential Evolution Optimization for a Residential Demand Response Application

Ricardo Faia, F. Lezama, P. Faria, Z. Vale
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引用次数: 1

Abstract

In the smart grid era, when the power system is under stress, demand response (DR) is considered a viable and practical solution for smoothing the demand curve. DR is a procedure that is applied to provide changes in consumers power consumption. These changes can be obtained by optimization techniques producing solutions for the management of power profiles of consumers. In general, optimization techniques can be divided into two groups: the exact methods and the approximate methods. In this paper, an optimization DR problem is formulated and solved using an approximate method based on evolutionary computation. The differential evolution (DE) and one variant called hybrid-adaptive DE (HyDE), as well as the Particle swarm optimization (PSO) algorithms are used and their performance is compared. The results show that DE algorithms are superior to PSO for this application and their performance is close to that obtained with an exact method.
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住宅需求响应应用的差分演化优化
在智能电网时代,当电力系统处于压力下时,需求响应被认为是一种可行的、实用的平滑需求曲线的解决方案。容灾是一种用于提供用户功耗变化的过程。这些变化可以通过优化技术来实现,这些技术为管理用户的功率配置文件提供了解决方案。一般来说,优化技术可以分为两类:精确方法和近似方法。本文提出了一种基于进化计算的近似方法来求解优化DR问题。采用差分进化算法(DE)和混合自适应进化算法(HyDE)以及粒子群优化算法(PSO),并对它们的性能进行了比较。结果表明,在该应用中,DE算法优于粒子群算法,其性能接近于用精确方法得到的结果。
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