基于数据驱动的配电变压器运行状态评估与预测

Min Fan, Gang Peng, Bo Zhang, Meng Zhou, Shitao Jia
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引用次数: 0

摘要

随着电力物联网的快速发展,电网监测数据和分析方法不断增多,对电力设备进行实时动态监测成为可能。提出了一种数据驱动的配电变压器运行状态评估与趋势预测方法。从配电变压器电压、电流数据中提取反映运行状态动态变化的关键特征,并将特征数据流输入到动态评价模型中,对配电变压器运行状态进行实时肖像描述。根据特征数据流的时间顺序和变化趋势,利用长短期记忆网络(LSTM)分析特征数据的变化规律,并利用支持向量回归模型(SVR)进行预测。得到未来的特征数据流,并将其输入到动态评价模型中,实现对配电变压器未来运行趋势的预测。最后通过实例说明了该方法的可行性、先进性和适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Operation State Assessment and Prediction of Distribution Transformer Based on Data Driven
With the rapid development of Power Internet of Things, power grid monitoring data and analysis methods are increasing, so real-time dynamic monitoring of power equipment becomes possible. This paper presents a data driven method for evaluation and trend prediction of distribution transformer operation state. The key features reflecting dynamic change of operation state are extracted from voltage and current data of distribution transformer, and characteristic data flow is input into dynamic evaluation model to make real-time portrait description of distribution transformer operation state. According to time order and change trend of characteristic data flow, Long Short-Term Memory network (LSTM) is used to analysis regulation of characteristic data, and Support Vector Regression model (SVR) for its prediction. The future characteristic data flow is obtained, which is input into the dynamic evaluation model to realize the future operation trend prediction of the distribution transformer. Finally, examples are given to illustrate the feasibility, advanced nature and applicability of the method.
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