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Fault detection and diagnosis based on C4.5 decision tree algorithm for grid connected PV system

机译:基于C4.5决策树算法的光伏并网系统故障检测与诊断

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摘要

In this paper, a new approach based on decision tree algorithm to detect and diagnose the faults in grid connected photovoltaic system (GCPVS) is proposed. A non parametric model to predict the state of GCPVS by learning task is used; a data set is collected from GCPVS by the acquisition system under several weather conditions. Three numerical attributes and two targets are chosen to form the final used data, the attributes are temperature ambient, irradiation and power ratio calculated from measured and estimated power, the first target is either healthy or faulty state for detection; the second one contains four classes' labels named free fault, string fault, short circuit fault or line-line fault for diagnosis. The Sandia model is applied to estimate the power generated from GCPVS operating in healthy state. The data set has been divided into two parts, where 66% was used for the learning and the remained for testing. Subsequently, a new data was recorded from five days in order to evaluate robustness, effectiveness and efficiency of both models. Testing result indicate that the models have a high prediction performance in the detection with high accuracy while the diagnosis model have accuracy equal to 99.80%. Moreover, the models have been evaluated in five days; the added data guarantees the prediction efficiency resulting in high accuracy for the detection and the diagnosis, whereas the classification is correct for 99%.
机译:提出了一种基于决策树算法的光伏并网发电系统故障检测与诊断的新方法。使用非参数模型通过学习任务来预测GCPVS的状态。采集系统在几种天气条件下从GCPVS收集数据集。选择三个数值属性和两个目标以形成最终使用的数据,这些属性是温度环境,根据测量和估计的功率计算出的辐照度和功率比,第一个目标是检测的正常状态或故障状态。第二个包含四个类别的标签,分别称为自由故障,线路故障,短路故障或线路故障以进行诊断。桑迪亚模型用于估算在健康状态下运行的GCPVS产生的功率。数据集分为两部分,其中66%用于学习,其余用于测试。随后,从五天开始记录新数据,以评估两个模型的鲁棒性,有效性和效率。测试结果表明,该模型在检测中具有较高的预测性能,准确度较高,而诊断模型的准确率达到99.80%。此外,模型已在五天内进行了评估;添加的数据保证了预测效率,从而导致检测和诊断的准确性很高,而分类正确率为99%。

著录项

  • 来源
    《Solar Energy》 |2018年第10期|610-634|共25页
  • 作者单位

    Univ Medea, Res Lab Elect Engn & Automat LREA, Medea, Algeria;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-18 04:06:42

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