作者
N Ghosh, YB Ravi, A Patra, S Mukhopadhyay, S Paul, AR Mohanty, AB Chattopadhyay
发表日期
2007/1/31
期刊
Mechanical Systems and Signal Processing
卷号
21
期号
1
页码范围
466-479
出版商
Academic Press
简介
Cutting tool wear degrades the product quality in manufacturing processes. Monitoring tool wear value online is therefore needed to prevent degradation in machining quality. Unfortunately there is no direct way of measuring the tool wear online. Therefore one has to adopt an indirect method wherein the tool wear is estimated from several sensors measuring related process variables. In this work, a neural network-based sensor fusion model has been developed for tool condition monitoring (TCM). Features extracted from a number of machining zone signals, namely cutting forces, spindle vibration, spindle current, and sound pressure level have been fused to estimate the average flank wear of the main cutting edge. Novel strategies such as, signal level segmentation for temporal registration, feature space filtering, outlier removal, and estimation space filtering have been proposed. The proposed approach has …
引用总数
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