2016
DOI: 10.1016/j.procir.2016.03.203
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Sensor Signal Segmentation for Tool Condition Monitoring

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Cited by 32 publications
(13 citation statements)
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“…The resulting deformation causes a gradual breakdown of the tool, and deteriorates its cutting [ 9 ]. The main goal is to give a warning before a certain level of tool wear is reached that could cause sudden tool failure [ 10 ]. During the machining, many parameters that change with the increase of wear, such as cutting forces, cutting temperatures, vibrations in the tool, the sound, chip and current, can be used as information sources to determine the severity of tool wear.…”
Section: Introductionmentioning
confidence: 99%
“…The resulting deformation causes a gradual breakdown of the tool, and deteriorates its cutting [ 9 ]. The main goal is to give a warning before a certain level of tool wear is reached that could cause sudden tool failure [ 10 ]. During the machining, many parameters that change with the increase of wear, such as cutting forces, cutting temperatures, vibrations in the tool, the sound, chip and current, can be used as information sources to determine the severity of tool wear.…”
Section: Introductionmentioning
confidence: 99%
“…The developed TCM only requires the operator to mark tool changes. The basis of the algorithms consists of the following steps: Detection of cutting, i.e., the system automatically recognizes cutting and separates cutting periods into signals from fast feeds, as well as run-up and run-down; Automatic selection of signal segments with a fixed waveform [ 51 ]; Determination of hundreds of signal features from the selected signal segments; Automatic selection of useful features (correlated with the tool condition) and elimination similar features (correlated with each other) for each individual segment [ 52 ]; Determination of the used part of tool life for each feature separately and integration of indications into one evaluation, displayed to an operator as a percentage of tool wear. …”
Section: Edge-computing-based Tool Condition and Cutting Process Modulementioning
confidence: 99%
“…In the Department of Automation and Metal Cutting at Warsaw University of Technology, an algorithm was developed for the automatic selection of segments from stable machining fragments well suited for tool condition diagnostics. A detailed description of the segment selection procedure is described in [66]. Each segment represented a separate diagnostic signal, subjected to determination and SFs.…”
Section: Signal Processing 221 Preprocessing-signal Segmentationmentioning
confidence: 99%