基于数据驱动模型的智能传感器故障检测动态测量滤波

E. Lughofer, Hajrudin Efendic, L. Re, E. Klement
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引用次数: 11

摘要

越来越复杂的测试平台和自动校准和优化工具的广泛使用导致对数据质量的要求越来越严格。对于许多应用,如发动机测试台,先验的物理信息太少,无法使用经典的故障检测方法。本文提出了一种基于实测数据动态建立数据驱动模型,并以数据驱动模型为参考情境进行故障检测的发动机试验台结构。为了提高故障检测语句的性能,在智能传感器中应用信号分析算法来检测动态信号中的峰值或漂移等干扰。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Filtering of dynamic measurements in intelligent sensors for fault detection based on data-driven models
Increasing complexity of test benches and the widespread use of automatic calibration and optimization tools leads to tighter requirements on the data quality. For many applications, like engine test benches, there are too few physical information a priori to allow the use of classical fault detection methods. In this paper, we propose a structure which has been developed and tested for engine test benches, in which data-driven models are built dynamically from measurements and fault detection is carried out by using data-driven models as reference situation. To improve the performance of fault detection statements, signal analysis algorithms are applied in intelligent sensors to detect disturbances such as peaks or drifts in the dynamic signals.
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