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A Fault Diagnosis Method for Photovoltaic Modules Based on Transfer Long Short-Term Memory Neural Network

机译:基于传输长短期记忆神经网络的光伏模块故障诊断方法

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As the core component of solar power station, the reliability of photovoltaic (PV) module affects the safety and stable operation of the whole system. PV modules are mostly installed in harsh environment, which are prone to various failures. It is very important to find the faults in time for improving the service life and normal operation efficiency of PV modules. However, the fault data of PV modules is insufficient, which makes the diagnosis very challenging. Aiming at the challenge, a fault diagnosis method based on transfer long short-term memory (LSTM) neural network is proposed for PV modules. Firstly, the LSTM-based power generation prediction model of PV module under normal state is trained. Then, by using a small amount of fault data to fine-tune the parameters, the power generation prediction model under fault state is obtained, which effectively solves the problem of insufficient fault data to realize fault diagnosis. The experimental results prove that the proposed fault diagnosis method in this paper can accurately and effectively detect the fault of PV modules under different fault conditions.
机译:作为太阳能电站的核心部件,光伏(PV)模块的可靠性影响了整个系统的安全性和稳定运行。光伏模块主要安装在恶劣的环境中,这易于各种故障。为了提高PV模块的使用寿命和正常运行效率,在时间及时找到故障非常重要。然而,光伏模块的故障数据不足,这使得诊断非常具有挑战性。针对挑战,提出了一种基于转移长短短期存储器(LSTM)神经网络的故障诊断方法.PV模块。首先,训练了正常状态下PV模块的基于LSTM的发电预测模型。然后,通过使用少量故障数据来微调参数,获得了在故障状态下的发电预测模型,这有效地解决了故障数据不足的问题来实现故障诊断。实验结果证明,本文提出的故障诊断方法可以在不同的故障条件下准确且有效地检测光伏模块的故障。

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