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Research on Power Transformer Fault Prediction Model Based on LSTM Neural Network

机译:基于LSTM神经网络的电力变压器故障预测模型研究

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Power transformer is one of the core equipment of power grid system, and the related research on safe and stable operation of power transformer has always been the focus of attention in the power industry. In recent years, neural networks have developed rapidly and have been widely used in the power industry. Studies have shown that the neural network method has strong applicability to the prediction and diagnosis of the power transformer operating state. Aiming at the limitations of traditional neural networks that cannot use time series information and have long incubation periods and various types of power transformer faults, this paper establishes a power transformer dissolved characteristic gas time series data prediction model based on long and short-term memory neural networks.
机译:电力变压器是电网系统的核心设备之一,电力变压器安全稳定运行的相关研究一直是电力行业关注的焦点。近年来,神经网络发展迅速,在电力行业得到了广泛应用。研究表明,神经网络方法对电力变压器运行状态的预测和诊断具有很强的适用性。针对传统神经网络不能利用时间序列信息、潜伏期长、变压器故障类型多样的局限性,建立了基于长、短期记忆神经网络的变压器溶解特征气体时间序列数据预测模型。

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