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首页> 外文期刊>Sensors Journal, IEEE >Sensor-Fault Detection, Isolation and Accommodation for Digital Twins via Modular Data-Driven Architecture
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Sensor-Fault Detection, Isolation and Accommodation for Digital Twins via Modular Data-Driven Architecture

机译:通过模块化数据驱动的架构传感器故障检测,隔离和数字双胞胎的住宿

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Sensor technologies empower Industry 4.0 by enabling integration of in-field and real-time raw data into digital twins. However, sensors might be unreliable due to inherent issues and/or environmental conditions. This article aims at detecting anomalies in measurements from sensors, identifying the faulty ones and accommodating them with appropriate estimated data, thus paving the way to reliable digital twins. More specifically, we propose a general machine-learning-based architecture for sensor validation built upon a series of neural-network estimators and a classifier. Estimators correspond to virtual sensors of all unreliable sensors (to reconstruct normal behaviour and replace the isolated faulty sensor within the system), whereas the classifier is used for detection and isolation tasks. A comprehensive statistical analysis on three different real-world data-sets is conducted and the performance of the proposed architecture validated under hard and soft synthetically-generated faults.
机译:传感器技术通过能够将现场和实时原始数据集成到数字双胞胎中,赋予行业4.0。然而,由于内在的问题和/或环境条件,传感器可能是不可靠的。本文旨在检测来自传感器的测量中的异常,识别出故障,并以适当的估计数据容纳它们,从而为可靠的数字双胞胎铺平道路。更具体地说,我们提出了一种基于机器学习的基于机器学习的架构,用于构建在一系列神经网络估计和分类器上的传感器验证。估计器对应于所有不可靠传感器的虚拟传感器(重建正常行为并更换系统内的孤立的故障传感器),而分类器用于检测和隔离任务。对三种不同现实世界数据集进行了全面的统计分析,并在硬度和软合成的故障下验证的拟议架构的性能。

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