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PV and Demand Models for a Markov Decision Process Formulation of the Home Energy Management Problem

机译:家用能源管理问题的马尔可夫决策过程公式的PV和需求模型

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摘要

This paper proposes a hierarchical approach for estimating residential PV and electrical demand models using historical data. In brief, the method involves first clustering historical data into different day types, and then estimating PV and demand models using kernel regression. Clustering is done to capture intraday variations in the PV and demand profiles, with the aim of capturing much of these intertemporal correlations in the day-type labels. This allows the draws from the kernel estimates within a day type to be done independently. This approach conforms with a Markov decision process construction of the smart home energy management system (SHEMS) problem, which is the ultimate target of the modeling procedure. Moreover, in practical applications, the SHEMS will need the type of a coming day in order to select a daily demand model, which can be done seamlessly using state identification methods. In comparison, forecasting a day's demand profile using time series forecasting methods produces a prediction method that does not provide a probability structure that is directly incorporated into a Markov decision process scheduling model.
机译:本文提出了一种使用历史数据估算住宅光伏和电力需求模型的分层方法。简而言之,该方法涉及首先将历史数据聚类为不同的日期类型,然后使用核回归来估计PV和需求模型。进行聚类以捕获PV和需求曲线的日内变化,目的是捕获日间类型标签中的许多这些跨时相关性。这样一来,就可以独立完成一天类型中来自内核估计的抽取。这种方法符合智能家居能源管理系统(SHEMS)问题的马尔可夫决策过程构造,这是建模过程的最终目标。此外,在实际应用中,SHEMS需要使用新的一天的类型来选择每日需求模型,这可以使用状态识别方法无缝地完成。相比之下,使用时间序列预测方法预测一天的需求状况会产生一种预测方法,该方法不会提供直接纳入马尔可夫决策过程调度模型的概率结构。

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