基于最优算法和启发式算法的需求响应比较研究

Shuhui Li, Dong Zhang
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引用次数: 2

摘要

智能电网的发展正在推动电力和能源行业对需求响应计划的兴趣激增。“需求响应”一词通常用于描述最终用户根据电价随时间的变化而改变其正常消费模式的方案。要做到这一点,智能使用主要家用电器是必要的。本文通过计算实验策略对最优和启发式需求响应算法进行了比较。以家庭用电成本最小为目标,得到最优DR算法。启发式DR算法基于一天内的动态价格信息。计算实验方法将建筑能耗模拟与动态电价相结合,对不同的DR算法进行评价。本文考察了两种不同DR策略的特点,以及它们如何受到动态价格关税、季节和天气的影响。
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A comparison study of demand response using optimal and heuristic algorithms
The development of the smart grid is driving an explosion of interest in demand response programs in the power and energy industry. The term “demand response” is usually used to describe programs that result in changes in electricity usage by end-use customers from their normal consumption patterns in response to changes in the price of electricity over time. To do so, smart usage of major home appliances is necessary. This paper compares optimal and heuristic demand response (DR) algorithms through a computational experiment strategy. The optimal DR algorithm is obtained based on the objective of minimizing the cost for household electricity consumption. The heuristic DR algorithm is based on the dynamic price information during a day. The computational experiment approach combines building energy consumption simulation and dynamic electricity price together for different DR algorithm evaluation. The paper examines the characteristics of the two different DR strategies and how they are affected by dynamic price tariffs, seasons, and weathers.
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