基于LSTM神经网络的风电机组故障检测与诊断

Taoran Yang, Jing Teng, Changling Li, Yizhan Feng
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引用次数: 3

摘要

随着风电需求的不断增长,需要对风力发电机组进行有效、可靠的故障检测和诊断,从而减少停机时间,降低维修成本。采用长短期记忆(LSTM)网络,根据实测数据准确预测正常运行的风力发电机组的时间序列数据。与传统的故障检测算法相比,该方法可以更有效地检测故障。仿真结果验证了该方法能够准确、快速地检测出风电机组基准模型中定义的传感器故障和系统故障。
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Wind turbine fault detection and diagnosis using LSTM neural network
The increasing demand for wind power requires effective and reliable fault detection and diagnosis for wind turbines, which would reduce down-times and moderate repair costs. By adopting the Long Short Term Memory (LSTM) networks, we accurately predict the time-series data of proper functioning wind turbines based on the measured data. Compared with the traditional fault detection algorithm, our method could detect the faults more effectively. Simulation results verified that the proposed method could accurately and speedily detect the possible sensor faults and system faults defined in the benchmark model of wind turbines.
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