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User-expected price-based demand response algorithm for a home-to-grid system

机译:用户期望的基于价格的家庭到电网系统的需求响应算法

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摘要

Demand response algorithms can cut peak energy use, driving energy conservation and enabling renewable energy sources, as well as reducing greenhouse-gas emissions. The use of these technologies is becoming increasingly popular, especially in smart-grid scenarios. We describe a home-to-grid demand response algorithm, which introduces a UEP ("user-expected price") as an indicator of differential pricing in dynamic domestic electricity tariffs, and exploits the modern smart-grid infrastructure to respond to these dynamic pricing structures. By comparing the UEP with rea1-time utility price data, the algorithm can discriminate high-price hours and low-price hours, and automatically schedule the operation of home appliances, as well as control an energy-storage system to store surplus energy during low-price hours for consumption during high-price hours. The algorithm uses an exponential smoothing model to predict the required energy of appliances, and uses Bayes' theorem to calculate the probability that appliances will demand power at a given time based on historic energy-usage data. Simulation results using pricing structures from the Ameren Illinois power company show that the proposed algorithm can significantly reduce or even eliminate peak-hour energy consumption, leading to a reduction in the overall domestic energy costs of up to 39%.
机译:需求响应算法可以减少峰值能源使用量,推动节能并启用可再生能源,并减少温室气体排放。这些技术的使用正变得越来越流行,尤其是在智能电网场景中。我们描述了一种家庭到电网的需求响应算法,该算法引入了UEP(“用户期望价格”)作为动态国内电价差异定价的指标,并利用现代智能电网基础设施来响应这些动态定价结构。通过将UEP与rea1-time公用事业价格数据进行比较,该算法可以区分高价时段和低价时段,并自动调度家用电器的运行,并控制能量存储系统在低电量时段存储多余的能量。 -高价时段消费的高价时段。该算法使用指数平滑模型来预测设备所需的能量,并使用贝叶斯定理根据历史的能源使用数据计算设备在给定时间需要电能的概率。使用美国伊利诺斯州电力公司的定价结构进行的仿真结果表明,所提出的算法可以显着减少甚至消除高峰时段的能源消耗,从而使总体家庭能源成本降低了39%。

著录项

  • 来源
    《Energy》 |2014年第1期|437-449|共13页
  • 作者

    Xiao Hui Li; Seung Ho Hong;

  • 作者单位

    College of Information Science and Engineering, Wuhan University of Science and Technology, Wuhan 430081, PR China;

    Department of Electronic Systems Engineering, Hanyang University, 1271, Sa-3-dong, Ansan 426-791, South Korea;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Demand response; Home-to-grid; Smart grid; User expected price;

    机译:需求响应;家庭到电网;智能电网;用户预期价格;

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