A Redundancy Metric Set within Possibility Theory for Multi-Sensor Systems

In intelligent technical multi-sensor systems, information is often at least partly redundant—either by design or inherently due to the dynamic processes of the observed system. If sensors are known to be redundant, (i) information processing can be engineered to be more robust against sensor failur...

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Main Authors: Christoph-Alexander Holst, Volker Lohweg
Format: Article
Language:English
Published: MDPI AG 2021-04-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/21/7/2508
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spelling doaj-189322f721b740b2bfec4f540d7cbb4e2021-04-03T23:01:37ZengMDPI AGSensors1424-82202021-04-01212508250810.3390/s21072508A Redundancy Metric Set within Possibility Theory for Multi-Sensor SystemsChristoph-Alexander Holst0Volker Lohweg1inIT–Institute Industrial IT, Technische Hochschule Ostwestfalen-Lippe, Campusallee 6, 32657 Lemgo, GermanyinIT–Institute Industrial IT, Technische Hochschule Ostwestfalen-Lippe, Campusallee 6, 32657 Lemgo, GermanyIn intelligent technical multi-sensor systems, information is often at least partly redundant—either by design or inherently due to the dynamic processes of the observed system. If sensors are known to be redundant, (i) information processing can be engineered to be more robust against sensor failures, (ii) failures themselves can be detected more easily, and (iii) computational costs can be reduced. This contribution proposes a metric which quantifies the degree of redundancy between sensors. It is set within the possibility theory. Information coming from sensors in technical and cyber–physical systems are often imprecise, incomplete, biased, or affected by noise. Relations between information of sensors are often only spurious. In short, sensors are not fully reliable. The proposed metric adopts the ability of possibility theory to model incompleteness and imprecision exceptionally well. The focus is on avoiding the detection of spurious redundancy. This article defines redundancy in the context of possibilistic information, specifies requirements towards a redundancy metric, details the information processing, and evaluates the metric qualitatively on information coming from three technical datasets.https://www.mdpi.com/1424-8220/21/7/2508redundancy analysispossibility theorymulti-sensor systemsinformation fusion
collection DOAJ
language English
format Article
sources DOAJ
author Christoph-Alexander Holst
Volker Lohweg
spellingShingle Christoph-Alexander Holst
Volker Lohweg
A Redundancy Metric Set within Possibility Theory for Multi-Sensor Systems
Sensors
redundancy analysis
possibility theory
multi-sensor systems
information fusion
author_facet Christoph-Alexander Holst
Volker Lohweg
author_sort Christoph-Alexander Holst
title A Redundancy Metric Set within Possibility Theory for Multi-Sensor Systems
title_short A Redundancy Metric Set within Possibility Theory for Multi-Sensor Systems
title_full A Redundancy Metric Set within Possibility Theory for Multi-Sensor Systems
title_fullStr A Redundancy Metric Set within Possibility Theory for Multi-Sensor Systems
title_full_unstemmed A Redundancy Metric Set within Possibility Theory for Multi-Sensor Systems
title_sort redundancy metric set within possibility theory for multi-sensor systems
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2021-04-01
description In intelligent technical multi-sensor systems, information is often at least partly redundant—either by design or inherently due to the dynamic processes of the observed system. If sensors are known to be redundant, (i) information processing can be engineered to be more robust against sensor failures, (ii) failures themselves can be detected more easily, and (iii) computational costs can be reduced. This contribution proposes a metric which quantifies the degree of redundancy between sensors. It is set within the possibility theory. Information coming from sensors in technical and cyber–physical systems are often imprecise, incomplete, biased, or affected by noise. Relations between information of sensors are often only spurious. In short, sensors are not fully reliable. The proposed metric adopts the ability of possibility theory to model incompleteness and imprecision exceptionally well. The focus is on avoiding the detection of spurious redundancy. This article defines redundancy in the context of possibilistic information, specifies requirements towards a redundancy metric, details the information processing, and evaluates the metric qualitatively on information coming from three technical datasets.
topic redundancy analysis
possibility theory
multi-sensor systems
information fusion
url https://www.mdpi.com/1424-8220/21/7/2508
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