The aim of the chapter is to explain the basic concepts of Machine Learning applied to condition monitoring in Industry 4.0. Machine learning is a common term used today in different fields, mainly related to an automated and self-learning routine in a decisional process. This chapter details how a Machine Learning approach may be structured, starting from a distinction between Supervised and Unsupervised approaches. These two classes have different advantages and disadvantages that constrain their application to specific boundary conditions. Machine Learning techniques are the core part of a structured methodology for the condition monitoring, but other phases, such as the pre-processing of data, the feature extraction and the evaluation of performances, are equally important for the success of a condition monitoring system. Together with standard parameters used to assess the performances of the machine learning method, a particular emphasis will be given to the interpretability of the results that can be determinant in the choice and development of a specific tool for condition monitoring in an industrial environment.

A Structured Approach to Machine Learning Condition Monitoring / Capelli, L.; Massaccesi, G.; Cavalaglio Camargo Molano, J.; Campo, F.; Borghi, D.; Rubini, R.; Cocconcelli, M.. - 19:(2021), pp. 33-54. [10.1007/978-3-030-79519-1_3]

A Structured Approach to Machine Learning Condition Monitoring

Cavalaglio Camargo Molano J.;Borghi D.;Rubini R.;Cocconcelli M.
2021

Abstract

The aim of the chapter is to explain the basic concepts of Machine Learning applied to condition monitoring in Industry 4.0. Machine learning is a common term used today in different fields, mainly related to an automated and self-learning routine in a decisional process. This chapter details how a Machine Learning approach may be structured, starting from a distinction between Supervised and Unsupervised approaches. These two classes have different advantages and disadvantages that constrain their application to specific boundary conditions. Machine Learning techniques are the core part of a structured methodology for the condition monitoring, but other phases, such as the pre-processing of data, the feature extraction and the evaluation of performances, are equally important for the success of a condition monitoring system. Together with standard parameters used to assess the performances of the machine learning method, a particular emphasis will be given to the interpretability of the results that can be determinant in the choice and development of a specific tool for condition monitoring in an industrial environment.
2021
Applied Condition Monitoring
978-3-030-79518-4
978-3-030-79519-1
Springer Science and Business Media Deutschland GmbH
A Structured Approach to Machine Learning Condition Monitoring / Capelli, L.; Massaccesi, G.; Cavalaglio Camargo Molano, J.; Campo, F.; Borghi, D.; Rubini, R.; Cocconcelli, M.. - 19:(2021), pp. 33-54. [10.1007/978-3-030-79519-1_3]
Capelli, L.; Massaccesi, G.; Cavalaglio Camargo Molano, J.; Campo, F.; Borghi, D.; Rubini, R.; Cocconcelli, M.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1253605
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