使用天气数据进行住宅负荷切换状态预测,实现智能自动化需求响应

Ajay Singh, Shashank Vyas, R. Kumar
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引用次数: 2

摘要

可再生能源发电对需求响应系统框架的影响非常明显。小型、孤立的电网(微电网)对主要公用电网的依赖也随着电力系统中可再生能源注入的增加而减少。通过负荷管理来缓解电力不平衡对于像光伏发电系统这样具有间歇性发电的孤岛系统至关重要。由于这种系统在国内足以形成一个孤岛,因此了解住宅负荷切换的模式对于维持电力平衡非常重要。任何家用电器的开关状态完全取决于使用者的行为。因此,人类行为是控制参数。天气是其所依赖的因素之一,因此选择了天气数据的重要特征来预测负荷的切换状态。本研究以天气数据为输入特征,通过时间序列预测和分类技术,讨论了特定国内负荷的开/关状态预测。自动断电控制器对少数关键负荷的开关状态估计精度较低,而非关键负荷的开关状态预测是正确的。这种负载学习可以应用于实现智能自动化需求响应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Switching state prediction for residential loads with weather data for smart automated demand response
Impact of renewable energy based generation is very much visible on the framework of a demand response system. Dependency of small, isolated power networks (micro grids) on the main utility grid is also reduced with the increase in renewable energy injection in the power system. Mitigation of power imbalance by load management is essential for islanded systems having intermittent generation like photovoltaic systems. Since such systems can sufficiently form an island at domestic level, understanding the pattern of residential load switching becomes important for maintaining power balance. Switching state of any home appliance is fully dependent on the behaviour of the occupants. Human behaviour is thus the controlling parameter. Weather is one of the element on which it depends and accordingly important features of weather data have been selected for the prediction of loads' switching state. This work discusses the prediction of On/Off states for specific domestic loads by both time series prediction and classification techniques with weather data as input features. Estimation accuracy of switching was low for few loads which were generally critical loads with automatic power cut controller however non-critical loads showed correct prediction of switching states. This load-learning can be applied for implementing smart automated demand response.
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