Automatic Drift Correction through Nonlinear Sensing

Dhrubajit Chowdhury, A. Melin, K. Villez
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引用次数: 1

Abstract

For successful design and operation of advanced monitoring and control systems, engineers rely on high quality sensor signals that are simultaneously accurate, representative, voluminous, and timely. Unfortunately, sensor faults are common and lead to short-lived symptoms, such as outliers and spikes as well as long-lived symptoms, such as sensor drift. Sensor drift belongs to the category of incipient faults. These are particularly challenging to detect, diagnose, and correct as the time scales of these faults are typically longer than the time scales of the system dynamics that are of interest. Moreover, if sensor drift occurs as a result of exposure to measured medium, then it is likely that multiple sensors will exhibit similar drift rates, thus challenging fault management strategies based on redundancy. In this contribution, we present a first method that can handle this unique challenge.
基于非线性传感的自动漂移校正
为了成功设计和运行先进的监测和控制系统,工程师依赖于高质量的传感器信号,这些信号同时是准确的,有代表性的,大量的和及时的。不幸的是,传感器故障很常见,会导致短暂的症状,如异常值和峰值,以及长期的症状,如传感器漂移。传感器漂移属于早期故障的范畴。这些故障的检测、诊断和纠正尤其具有挑战性,因为这些故障的时间尺度通常比感兴趣的系统动力学的时间尺度更长。此外,如果传感器由于暴露于测量介质而发生漂移,那么多个传感器可能会表现出相似的漂移率,从而挑战基于冗余的故障管理策略。在本文中,我们提出了可以处理这一独特挑战的第一种方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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