A moving horizon state estimator in the control of thermostatically controlled loads for demand response

E. Kara, Zico Kolter, M. Berges, B. Krogh, G. Hug, T. Yuksel
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引用次数: 25

Abstract

The quality and effectiveness of the load following services provided by centralized control of thermostatically controlled loads depend highly on the communication requirements and the underlying cyberinfrastructure characteristics. Specifically, ensuring end-user comfort while providing real-time demand response services depends on the availability of the information provided from the thermostatically controlled loads to the main controller regarding their operating statuses and internal temperatures. State estimation techniques can be used to infer the necessary information from the aggregate power consumption of these loads, replacing the need for an upstream communication platform carrying information from appliances to the main controller in real-time. In this paper, we introduce a moving horizon mean squared error state estimator with constraints as an alternative to a Kalman filter approach, which assumes a linear model without constraints. The results show that some improvement is possible for scenarios when loads are expected to be toggled frequently.
基于需求响应的温控负荷控制中的移动视界状态估计器
由恒温控制负载的集中控制提供的负载跟踪服务的质量和有效性在很大程度上取决于通信要求和底层网络基础设施的特征。具体来说,在提供实时需求响应服务的同时,确保终端用户的舒适度取决于从恒温控制负载向主控制器提供的有关其运行状态和内部温度的信息的可用性。状态估计技术可用于从这些负载的总功耗推断出必要的信息,取代了对上游通信平台的需求,将信息从设备实时传输到主控制器。在本文中,我们引入了一种带约束的移动视界均方误差状态估计器,作为卡尔曼滤波方法的替代方法,该方法假设线性模型无约束。结果表明,对于期望频繁切换负载的场景,可能会有一些改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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