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An enhanced machine learning based approach for failures detection and diagnosis of PV systems

机译:基于增强型机器学习的光伏系统故障检测和诊断方法

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摘要

In this paper, a novel procedure for fault detection and diagnosis in the direct current (DC) side of PV system, based on probabilistic neural network (PNN) classifier, is proposed. The suggested procedure consists of four main stages: (i) PV module parameters extraction, (ii) PV array simulation and experimental validation (iii) elaboration of a relevant database of both healthy and faulty operations, and (iv) network construction, training and testing. In the first stage, the unknown electrical parameters of the one diode model (ODM) are accurately identified using the best-so-far ABC algorithm. Then, based on these parameters the PV array is simulated and experimentally validated by using a PSIM (TM)/Matlab (TM) co-simulation. Finally, efficient fault detection and diagnosis procedure based on PNN classifier is implemented. Four operating cases were tested in a grid connected PV system of 9.54 kWp: Healthy system, three modules short-circuited in one string, ten modules short-circuited in one string, and a string disconnected from the array. Moreover, the PNN method was compared, under real operating conditions, with the feed forward back-propagation Artificial Neural Network (ANN) classifiers method, for noiseless and noisy data to evaluate the suggested method's accuracy and test its aptitude to support noisy data. The obtained results have demonstrated the high efficiency of the proposed method to detect and diagnose DC side anomalies for both noiseless and noisy data cases.
机译:本文提出了一种基于概率神经网络(PNN)分类器的光伏系统直流侧故障检测与诊断的新方法。建议的程序包括四个主要阶段:(i)光伏组件参数提取,(ii)光伏阵列仿真和实验验证(iii)完善有关正常运行和故障运行的数据库,以及(iv)网络建设,培训和维护测试。在第一阶段,使用迄今为止最好的ABC算法准确识别一个二极管模型(ODM)的未知电参数。然后,基于这些参数,通过使用PSIM(TM)/ Matlab(TM)协同仿真对PV阵列进行仿真和实验验证。最后,实现了基于PNN分类器的高效故障检测与诊断程序。在9.54 kWp的并网光伏系统中测试了四个运行情况:健康系统,三个模块成一串短路,十个模块成一串短路以及一列与阵列断开连接。此外,在实际操作条件下,将PNN方法与前馈反向传播人工神经网络(ANN)分类器方法进行了比较,以获取无噪声和有噪声的数据,以评估建议方法的准确性并测试其支持噪声数据的能力。获得的结果证明了该方法在无噪声和有噪声数据情况下检测和诊断直流侧异常的效率很高。

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