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Data-driven fault detection and diagnosis for packaged rooftop units using statistical machine learning classification methods

机译:使用统计机器学习分类方法进行数据驱动的屋顶单位的封装故障检测和诊断

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摘要

This paper proposes and demonstrates a data-driven fault detection and diagnosis strategy for packaged rooftop units using statistical machine learning classification methods. The fault detection and diagnosis task is formulated as a multi-class classification problem. Seven typical rooftop unit faults are discriminated against one another as well as the normal condition. Since experimental data for rooftop units is rare and difficult to obtain, a simulated data library of model faults at steady state operation is used for training and validating the classifications models. Synthetic minority over-sampling technique is used to generate new artificial samples of minority class in order to balance the dataset. Nine well-known classification methods are applied to our dataset, and their performance is compared. The results show that support vector machine, with an overall accuracy rate of 96.2%, is the best classifier, and linear discriminant analysis, with an overall accuracy rate of 76.2%, is the worst classifier. The performance of the classification methods for individual faults is also characterized using true positive rate and false positive rate statistical measures. The relative importance of input variables is also discussed. The high accuracy of the classification methods shows the potential of a data-driven strategy in detecting and diagnosing the rooftop unit faults. (C) 2020 Elsevier B.V. All rights reserved.
机译:本文提出了使用统计机器学习分类方法的包装屋顶单位的数据驱动故障检测和诊断策略。故障检测和诊断任务被制定为多级分类问题。七个典型的屋顶单元故障彼此歧视,以及正常情况。由于屋顶单位的实验数据很少且难以获得,因此稳态操作的模型故障模拟数据库用于训练和验证分类模型。合成少数群体过度采样技术用于生成少数群体类的新的人造样本,以便平衡数据集。九种众所周知的分类方法应用于我们的数据集,并比较它们的性能。结果表明,支持向量机,总精度率为96.2%,是最佳分类器,线性判别分析,总精度率为76.2%,是最差的分类器。各个故障的分类方法的性能也具有真正的阳性率和假阳性率统计措施。还讨论了输入变量的相对重要性。分类方法的高精度显示了数据驱动策略在检测和诊断屋顶单元故障时的潜力。 (c)2020 Elsevier B.v.保留所有权利。

著录项

  • 来源
    《Energy and Buildings》 |2020年第10期|110318.1-110318.12|共12页
  • 作者单位

    Univ Nebraska Lincoln Durham Sch Architectural Engn & Construct Peter Kiewit Inst 1110 South 67th St Omaha NE 68588 USA;

    Univ Nebraska Lincoln Durham Sch Architectural Engn & Construct Peter Kiewit Inst 1110 South 67th St Omaha NE 68588 USA;

    Univ Nebraska Lincoln Durham Sch Architectural Engn & Construct Peter Kiewit Inst 1110 South 67th St Omaha NE 68588 USA;

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

    Rooftop unit; Fault detection and diagnosis; Data-driven; Machine learning; Classification;

    机译:屋顶单位;故障检测和诊断;数据驱动;机器学习;分类;

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