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CLASSIFIER FUSION FOR ACOUSTIC EMISSION BASED TOOL WEAR MONITORING

机译:基于声发射的工具磨损监控的分类器融合

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摘要

It is often difficult for a single classifier to achieve perfect classification during process monitoring. Sensor fusion enables the final decision to be improved, but uses voting methods, which usually do not perform well when there is a tie vote. In this paper, classifier fusion with class-weighted voting is investigated to further enhance the performance of monitoring systems. The overall performances of individual classifiers are used as the weighting factors to classifier fusion based on majority voting. When applied to tool wear monitoring of the coroning process, the classifier that was based on overall performance weighting improved the classification rate to 95.6% and the one based on state performance weighting showed 98.5% classification, compared to 87.7% for classifier fusion with unity weighting. A classifier fusion further increased performance from 98.5% to 99.7% by applying a penalty vote on the weighting factor.
机译:单个分类器通常难以在过程监控期间实现完美的分类。传感器融合使得能够改进最终决定,而是使用投票方法,当有一个领带投票时通常不会表现良好。本文研究了具有类加权投票的分类器融合,进一步提高了监测系统的性能。基于多数投票的分类器融合的总体性能用作类别分类器的加权因子。当应用于刀具磨损监测时,基于整体性能加权的分类器将分类率提高到95.6%,基于状态性能加权的分类显示为98.5%,分类为87.7%,对于统一加权的分类器融合率为87.7% 。通过对加权因子应用罚款投票,分类器融合进一步提高了98.5%至99.7%的性能。

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