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A study on probability of distribution loads based on expectation maximization algorithm

机译:基于期望最大化算法的分配负荷概率研究

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In a distribution power network, the load model has no certain pattern or predicted behaviour due to large range of data and changes in energy consumption for end-user consumers. Thus, a powerful analysis based on probabilistic structure is required. For this paper Gaussian Mixture Model (GMM) has been used. GMM is a powerful probability model that allows different types of load distributions to be presented as a combination of several Gaussian distributions. The parameters of GMM is unknown for large random data such as real load data and these parameters can be identified by Expectation Maximization (EM) algorithm. This paper presents a method to evaluate probabilistic load data concerning the time-evolution of any type of distribution load for any duration of time. The proposed method is explained through generated load data of 100 residential houses for duration of one year.
机译:在分销电网中,由于大量数据以及最终用户消费者的能耗的变化,负载模型没有某些模式或预测行为。因此,需要基于概率结构的强大分析。对于本文,已经使用了高斯混合模型(GMM)。 GMM是一个强大的概率模型,允许将不同类型的负载分布呈现为几种高斯分布的组合。 GMM的参数对于大型随机数据,例如实际负载数据,并且这些参数可以通过期望最大化(EM)算法来识别。本文提出了一种评估关于任何持续时间的有任何类型分配负荷的时间演变的概率负载数据的方法。该方法是通过产生100个住宅的持续时间为100年的持续时间的载荷数据来解释。

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