基于高斯混合模型-神经网络的配电系统状态估计

Jun Yang, Ruiping Tian, Shaofei Hu, Bing-jie Fan, Bingying Peng, Xinyu Qiu
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引用次数: 0

摘要

配电系统状态估计的主要问题是节点多测点少,难以观测。随着配电网的建设和发展,大部分配电系统的测量设备已经覆盖了所有节点,但将其测量值实时上传到电力调度中心会占用大量的通信资源,一旦由于网络拥塞等问题导致数据无法上传,状态估计将无法计算。本文建立了负荷高斯混合模型,构建了不同工况下的负荷模型。从智能电表获取负荷数据,训练负荷模型,并将模型参数上传到电力调度中心,利用各节点负荷模型产生的节点注入功率等数据对神经网络进行训练。最后,利用训练好的神经网络计算各节点的电压和幅值。当某些测量数据缺失时,将存储在电力调度中心的节点复合模型生成的测量数据作为状态估计的伪测度。智能电表会根据节点负荷的变化定期更新训练模型,有助于提高系统的鲁棒性。与传统使用功率预测作为伪测量的方法相比,该方法具有计算速度快、计算精度高、通信资源消耗少、鲁棒性强等优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distribution power system state estimation based on Gaussian mixture model-Neural network
The main problem in the state estimation of distribution power system is that there are many nodes but few measuring points such that they are unobservable. With the construction and development of distribution network, most measuring devices of distribution power system have covered all nodes, but uploading their measured values to the power dispatching center in real time will take up a lot of communication resources, and once the data cannot be uploaded due to network congestion and other problems, the state estimation will be impossible to calculate. In this paper, the load Gaussian mixture model is established, and the load model under different scenarios is constructed. Obtain the load data from the smart meter, train the load model, and upload the model parameters to the power dispatching center where the neural network is trained with data such as node injection power generated by each node load model. Finally, the trained neural network is used to calculate the voltage and amplitude of each node. When some measure data is missing, the measure data generated by the compound model of the node stored in the power dispatching center is used as pseudo-measure for state estimation. The smart meter will update the training model regularly according to the change of node load, which helps to improve the robustness of the system. Compared with the traditional method of using power prediction as a pseudo-measurement, this method has the advantages of fast computing speed, high computing accuracy, small consumption of communication resources and strong robustness.
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