A novel approach to machining process fault detection using unsupervised learning

Author:

McLeay Thomas1ORCID,Turner Michael S2,Worden Keith3

Affiliation:

1. Sandvik Coromant, Sandviken, Sweden

2. High Value Manufacturing Catapult, Solihull, UK

3. Department of Mechanical Engineering, The University of Sheffield, Sheffield, UK

Abstract

The most common machining processes of turning, drilling, milling and grinding concern the removal of material from a workpiece using a cutting tool. The performance of machining processes depends on a number of key method parameters, including cutting tool, workpiece material, machine configuration, fixturing, cutting parameters and tool path trajectory. The large number of possible configurations can make it difficult to implement fault detection systems without having to train the system to a particular method or fault type. The research of this article applies a novel method to detect the changing state of a process over time in order to detect faulty machining conditions such as worn tools and cutting depth changes. Unlike studies in the previous literature in this domain, an unsupervised learning method is used, so that the method can be applied in production to unfamiliar processes or fault conditions. In the case presented, novelty detection is applied to a multivariate sensor feature data set obtained from a milling process. Sensor modalities include acoustic emission, vibration and spindle power and time and frequency domain features are employed. The Mahalanobis squared-distance is used to measure discordancy of each new data point, and values that exceed a principled novelty threshold are categorised as fault conditions.

Publisher

SAGE Publications

Subject

Industrial and Manufacturing Engineering,Mechanical Engineering

Reference26 articles.

1. German Federal Ministry for Education Research (BMBF) Industrie 40, http://www.bmbf.de/en/19955.php

2. Engineering Physical Sciences Research Council (EPSRC) Research Strategy Manufacturing the Future, http://www.epsrc.ac.uk/research/ourportfolio/themes/manufacturingthefuture/

3. Machining Process Monitoring and Control: The State-of-the-Art

4. Surface roughness monitoring application based on artificial neural networks for ball-end milling operations

5. An automated monitoring solution for avoiding an increased number of surface anomalies during milling of aerospace alloys

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