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Fault diagnosis for photovoltaic array based on convolutional neural network and electrical time series graph

机译:基于卷积神经网络和电时间序列图的光伏阵列故障诊断

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Fault diagnosis of photovoltaic array plays an important role in operation and maintenance of PV power plant. The nonlinear characteristics of photovoltaic array and the Maximum Power Point Tracking technology in the inverter prevent conventional protection devices to trip under certain faults which reduces the system's efficiency and increases the risks of fire hazards. In order to better diagnose photovoltaic array faults under Maximum Power Point Tracking conditions, the sequential data of transient in time domain under faults are analyzed and then applied as the input fault features in this work. Firstly, the sequential current and voltage of the photovoltaic array are transformed into a 2-Dimension electrical time series graph to visually represent the characteristics of sequential data. Secondly, a Convolutional Neural Network structure comprising nine convolutional layers, nine max-pooling layers, and a fully connected layer is proposed for the photovoltaic array fault diagnosis. The proposed model for photovoltaic array fault diagnosis integrates two main parts, namely the feature extraction and the classification. Thirdly, this model automatically extracts suitable features representation from raw electrical time series graph, which eliminates the need of using artificially established features of data and then employs for photovoltaic fault diagnosis. Moreover, the proposed Convolutional Neural Network based photovoltaic array fault diagnosis method only takes the array of voltage and current of the photovoltaic array as the input features and the reference panels used for normalization. The proposed approach of photovoltaic array fault diagnosis achieved over 99% average accuracy when applied to the case studies. The comparisons of the experimental results demonstrate that the proposed method is both effective and reliable.
机译:光伏阵列的故障诊断在光伏电站的运行和维护中起着重要的作用。光伏阵列的非线性特性和逆变器中的最大功率点跟踪技术阻止了传统的保护设备在某些故障下跳闸,从而降低了系统的效率并增加了火灾隐患。为了更好地诊断在最大功率点跟踪条件下的光伏阵列故障,分析了故障下时域瞬态的连续数据,然后将其用作输入故障特征。首先,将光伏阵列的顺序电流和电压转换为二维电时间序列图,以直观地表示顺序数据的特征。其次,提出了由九个卷积层,九个最大池层和一个全连接层组成的卷积神经网络结构,用于光伏阵列故障诊断。提出的光伏阵列故障诊断模型综合了特征提取和分类两大部分。第三,该模型自动从原始电时间序列图中提取合适的特征表示,从而无需使用人工建立的数据特征,然后将其用于光伏故障诊断。此外,提出的基于卷积神经网络的光伏阵列故障诊断方法仅将光伏阵列的电压和电流阵列作为输入特征,并将参考面板用于归一化。当应用于案例研究时,所提出的光伏阵列故障诊断方法可实现超过99%的平均准确度。实验结果的比较表明,该方法是有效且可靠的。

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