Assessing neural networks for sensor fault detection

G. Jäger, S. Zug, Tino Brade, André Dietrich, Christoph Steup, C. Moewes, A. Crétu
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引用次数: 26

Abstract

The idea of “smart sensing” includes a permanent monitoring and evaluation of sensor data related to possible measurement faults. This concept requires a fault detection chain covering all relevant fault types of a specific sensor. Additionally, the fault detection components have to provide a high precision in order to generate a reliable quality indicator. Due to the large spectrum of sensor faults and their specific characteristics these goals are difficult to meet and error prone. The developer manually determines the specific sensor characteristics, indicates a set of detection methods, adjusts parameters and evaluates the composition. In this paper we exploit neural-network approaches in order to provide a general solution covering typical sensor faults and to replace complex sets of individual detection methods. For this purpose, we identify an appropriate set of fault relevant features in a first step. Secondly, we determine a generic neural-network structure and learning strategy adaptable for detecting multiple fault types. Afterwards the approach is applied on a common used sensor system and evaluated with deterministic fault injections.
用于传感器故障检测的神经网络评估
“智能传感”的概念包括对与可能的测量故障相关的传感器数据进行永久监测和评估。这个概念需要一个故障检测链,覆盖特定传感器的所有相关故障类型。此外,故障检测组件必须提供高精度,以生成可靠的质量指标。由于传感器故障的大频谱和其特定的特性,这些目标很难满足,容易出错。开发人员手动确定特定的传感器特性,指示一套检测方法,调整参数并评估成分。在本文中,我们利用神经网络方法来提供涵盖典型传感器故障的通用解决方案,并取代复杂的单个检测方法集。为此,我们在第一步中确定一组适当的与故障相关的特征。其次,我们确定了一种适用于检测多种故障类型的通用神经网络结构和学习策略。然后将该方法应用于一个常用的传感器系统,并用确定性故障注入进行了评估。
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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