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Bibliographic Details
Main Authors: Arévalo, Fernando, Piolo, Christian Alison M., Ibrahim, M. Tahasanul, Schwung, Andreas
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2309.00157
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author Arévalo, Fernando
Piolo, Christian Alison M.
Ibrahim, M. Tahasanul
Schwung, Andreas
author_facet Arévalo, Fernando
Piolo, Christian Alison M.
Ibrahim, M. Tahasanul
Schwung, Andreas
contents We propose a novel methodology to define assistance systems that rely on information fusion to combine different sources of information while providing an assessment. The main contribution of this paper is providing a general framework for the fusion of n number of information sources using the evidence theory. The fusion provides a more robust prediction and an associated uncertainty that can be used to assess the prediction likeliness. Moreover, we provide a methodology for the information fusion of two primary sources: an ensemble classifier based on machine data and an expert-centered model. We demonstrate the information fusion approach using data from an industrial setup, which rounds up the application part of this research. Furthermore, we address the problem of data drift by proposing a methodology to update the data-based models using an evidence theory approach. We validate the approach using the Benchmark Tennessee Eastman while doing an ablation study of the model update parameters.
format Preprint
id arxiv_https___arxiv_org_abs_2309_00157
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Information Fusion for Assistance Systems in Production Assessment
Arévalo, Fernando
Piolo, Christian Alison M.
Ibrahim, M. Tahasanul
Schwung, Andreas
Machine Learning
We propose a novel methodology to define assistance systems that rely on information fusion to combine different sources of information while providing an assessment. The main contribution of this paper is providing a general framework for the fusion of n number of information sources using the evidence theory. The fusion provides a more robust prediction and an associated uncertainty that can be used to assess the prediction likeliness. Moreover, we provide a methodology for the information fusion of two primary sources: an ensemble classifier based on machine data and an expert-centered model. We demonstrate the information fusion approach using data from an industrial setup, which rounds up the application part of this research. Furthermore, we address the problem of data drift by proposing a methodology to update the data-based models using an evidence theory approach. We validate the approach using the Benchmark Tennessee Eastman while doing an ablation study of the model update parameters.
title Information Fusion for Assistance Systems in Production Assessment
topic Machine Learning
url https://arxiv.org/abs/2309.00157