Article ID Journal Published Year Pages File Type
560863 Mechanical Systems and Signal Processing 2008 16 Pages PDF
Abstract

Grinding wheels get dull as more material is removed. This paper presents a methodology to detect a ‘dull’ wheel online based on acoustic emission (AE) signals. The methodology has three major steps: preprocessing, signal analysis and feature extraction, and constructing boosted classifiers using the minimum distance classifier (MDC) as the weak learner. Two booting algorithms, i.e., AdaBoost and A-Boost, were implemented. The methodology was tested with signals obtained in grinding of two ceramic materials with a diamond wheel under different grinding conditions. The results of cross-validation tests indicate that: (i) boosting greatly improves the effectiveness of the basic MDC; (ii) over all A-Boost does not outperform AdaBoost in terms of classification accuracy; and (iii) the performance of the boosted classifiers improves as the ensemble size increases.

Related Topics
Physical Sciences and Engineering Computer Science Signal Processing
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