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Automatic fault detection and diagnosis for photovoltaic systems using combined artificial neural network and analytical based methods

机译:结合人工神经网络和基于分析的方法对光伏系统进行自动故障检测和诊断

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Long term exposure of photovoltaic (PV) systems under relatively harsh and changing environmental conditions can result in fault conditions developing during the operational lifetime. The present solution is for system operators to manually perform condition monitoring of the PV system. However, it is time-consuming, inaccurate and dangerous. Thus, automatic fault detection and diagnosis is a critical task to ensure the reliability and safety in PV systems. The current state-of-the-art techniques either cannot provide enough detailed fault information with high accuracy or have too much complexity. This work presents an automatic fault detection and diagnosis method for string based PV systems. It combines an artificial neural network (ANN) with the conventional analytical method to conduct the fault detection and diagnosis tasks. A two-layered ANN is applied to predict the expected power which is then compared with the measured power from the real PV system. Based on the difference between the ANN estimated power and the measured power, the open circuit voltage and short circuit current of the PV string determined using analytical equations are used to identify any of the six defined fault types. The proposed method has a fast detection, compact structure and good accuracy. Simulation results show the effective fault detection and diagnosis capability of the proposed method.
机译:在相对苛刻和不断变化的环境条件下长期暴露于光伏(PV)系统会导致在使用寿命期间形成故障条件。本解决方案用于系统操作员手动执行PV系统的状态监视。然而,这是耗时的,不准确的并且是危险的。因此,自动故障检测和诊断是确保光伏系统可靠性和安全性的关键任务。当前的最新技术不能以高精度提供足够的详细故障信息,或者具有太多的复杂性。这项工作提出了一种用于基于串的光伏系统的自动故障检测和诊断方法。它结合了人工神经网络(ANN)和常规分析方法来执行故障检测和诊断任务。应用两层ANN预测预期功率,然后将其与实际PV系统的测量功率进行比较。根据ANN估算功率与测得功率之间的差异,使用解析方程确定的光伏组串的开路电压和短路电流可用于识别六种定义的故障类型中的任何一种。该方法检测速度快,结构紧凑,准确度高。仿真结果表明了该方法的有效故障检测和诊断能力。

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