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Sensitivity Analysis of Sensors in a Hydraulic Condition Monitoring System Using CNN Models

机译:使用CNN模型的液压状态监测系统中传感器的灵敏度分析

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摘要

Condition monitoring (CM) is a useful application in industry 4.0, where the machine’s health is controlled by computational intelligence methods. Data-driven models, especially from the field of deep learning, are efficient solutions for the analysis of time series sensor data due to their ability to recognize patterns in high dimensional data and to track the temporal evolution of the signal. Despite the excellent performance of deep learning models in many applications, additional requirements regarding the interpretability of machine learning models are getting relevant. In this work, we present a study on the sensitivity of sensors in a deep learning based CM system providing high-level information about the relevance of the sensors. Several convolutional neural networks (CNN) have been constructed from a multisensory dataset for the prediction of different degradation states in a hydraulic system. An attribution analysis of the input features provided insights about the contribution of each sensor in the prediction of the classifier. Relevant sensors were identified, and CNN models built on the selected sensors resulted equal in prediction quality to the original models. The information about the relevance of sensors is useful for the system’s design to decide timely on the required sensors.
机译:状态监视(CM)在工业4.0中非常有用,该工业的运行状况由计算智能方法控制。数据驱动的模型,尤其是深度学习领域的模型,由于能够识别高维数据中的模式并跟踪信号的时间演变,因此是分析时间序列传感器数据的有效解决方案。尽管深度学习模型在许多应用程序中具有出色的性能,但有关机器学习模型的可解释性的其他要求却越来越重要。在这项工作中,我们将对基于深度学习的CM系统中传感器的敏感性进行研究,从而提供有关传感器相关性的高级信息。已从多传感器数据集中构造了几个卷积神经网络(CNN),用于预测液压系统中的不同退化状态。输入特征的归因分析提供了有关每个传感器在分类器预测中的贡献的见解。识别了相关的传感器,并且基于所选传感器构建的CNN模型的预测质量与原始模型相同。有关传感器相关性的信息对于系统设计及时确定所需的传感器很有用。

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