基于人工智能的抽水系统决策支持工具的开发

P. Ilott, A. Griffiths
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引用次数: 5

摘要

研究了一种基于人工智能技术的抽水系统决策支持工具开发框架。泵故障检测与诊断是决策支持工具的关键要求。提出了利用定量性能数据进行状态监测数据解释的人工神经网络(ann)。在分析中,累积和(Cusum)制图方法在早期故障识别中是成功的。研究了各种预处理技术,以获得最大的诊断信息,尽管实际工业数据存在固有问题。标准正交技术在快速的机器学习时间内突出了良好的泛化能力。基于与历史泵故障相对应的真实工业数据,人工神经网络成功地对泵机械故障状况进行了准确、早期的诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of a pumping system decision support tool based on artificial intelligence
A framework for the development of a pumping system decision support tool based on artificial intelligence techniques has been investigated. Pump fault detection and diagnosis are key requirements of the decision support tool. Artificial Neural Networks (ANNs) were proposed for condition monitoring data interpretation utilising quantitative performance data. In the analysis, the Cumulative Sum (Cusum) charting procedure was successful in incipient fault identification. Various preprocessing techniques were investigated to obtain maximum diagnostic information despite the inherent problems of real industrial data. The orthonormal technique highlighted good generalisation ability in fast machine learning time. ANNs were successful for accurate, incipient diagnosis of pumping machinery fault conditions based on real industrial data corresponding to historical pump faults.
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