Saved in:
Bibliographic Details
Main Authors: Deo, Tejas Y., Deshmukh, B. B., Jatakar, Keshav H., Chhajed, Kamlesh M., Pardeshi, S. S., Jegadeeshwaran, R., Khairnar, Apoorva N., Khade, Hrushikesh S., Patange, A. D.
Format: Preprint
Published: 2021
Subjects:
Online Access:https://arxiv.org/abs/2112.08421
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866908870825213952
author Deo, Tejas Y.
Deshmukh, B. B.
Jatakar, Keshav H.
Chhajed, Kamlesh M.
Pardeshi, S. S.
Jegadeeshwaran, R.
Khairnar, Apoorva N.
Khade, Hrushikesh S.
Patange, A. D.
author_facet Deo, Tejas Y.
Deshmukh, B. B.
Jatakar, Keshav H.
Chhajed, Kamlesh M.
Pardeshi, S. S.
Jegadeeshwaran, R.
Khairnar, Apoorva N.
Khade, Hrushikesh S.
Patange, A. D.
contents In this paper, a white-Box support vector machine (SVM) framework and its swarm-based optimization is presented for supervision of toothed milling cutter through characterization of real-time spindle vibrations. The anomalous moments of vibration evolved due to in-process tool failures (i.e., flank and nose wear, crater and notch wear, edge fracture) have been investigated through time-domain response of acceleration and statistical features. The Recursive Feature Elimination with Cross-Validation (RFECV) with decision trees as the estimator has been implemented for feature selection. Further, the competence of standard SVM has been examined for tool health monitoring followed by its optimization through application of swarm based algorithms. The comparative analysis of performance of five meta-heuristic algorithms (Elephant Herding Optimization, Monarch Butterfly Optimization, Harris Hawks Optimization, Slime Mould Algorithm, and Moth Search Algorithm) has been carried out. The white-box approach has been presented considering global and local representation that provides insight into the performance of machine learning models in tool condition monitoring.
format Preprint
id arxiv_https___arxiv_org_abs_2112_08421
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle A White-Box SVM Framework and its Swarm-Based Optimization for Supervision of Toothed Milling Cutter through Characterization of Spindle Vibrations
Deo, Tejas Y.
Deshmukh, B. B.
Jatakar, Keshav H.
Chhajed, Kamlesh M.
Pardeshi, S. S.
Jegadeeshwaran, R.
Khairnar, Apoorva N.
Khade, Hrushikesh S.
Patange, A. D.
Machine Learning
Neural and Evolutionary Computing
In this paper, a white-Box support vector machine (SVM) framework and its swarm-based optimization is presented for supervision of toothed milling cutter through characterization of real-time spindle vibrations. The anomalous moments of vibration evolved due to in-process tool failures (i.e., flank and nose wear, crater and notch wear, edge fracture) have been investigated through time-domain response of acceleration and statistical features. The Recursive Feature Elimination with Cross-Validation (RFECV) with decision trees as the estimator has been implemented for feature selection. Further, the competence of standard SVM has been examined for tool health monitoring followed by its optimization through application of swarm based algorithms. The comparative analysis of performance of five meta-heuristic algorithms (Elephant Herding Optimization, Monarch Butterfly Optimization, Harris Hawks Optimization, Slime Mould Algorithm, and Moth Search Algorithm) has been carried out. The white-box approach has been presented considering global and local representation that provides insight into the performance of machine learning models in tool condition monitoring.
title A White-Box SVM Framework and its Swarm-Based Optimization for Supervision of Toothed Milling Cutter through Characterization of Spindle Vibrations
topic Machine Learning
Neural and Evolutionary Computing
url https://arxiv.org/abs/2112.08421