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Diagnostics and forecasting of cutting tool wear at CNC machines

  • Automation in Industry
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Abstract

The problem of monitoring and forecasting the remaining cutting tool durability is formulated and an architectural model of a generalized diagnostic system and its software implementation are suggested. A diagnostic module/CNC system kernel protocol is specified and a universal solution to diagnosing and predicting cutting tool wear is presented being based on an external calculator.

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References

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Original Russian Text © L.I. Martinova, A.S. Grigoryev, S.V. Sokolov, 2010, published in Avtomatizatsiya v Promyshlennosti, 2010, No. 5, pp. 46–50.

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Martinova, L.I., Grigoryev, A.S. & Sokolov, S.V. Diagnostics and forecasting of cutting tool wear at CNC machines. Autom Remote Control 73, 742–749 (2012). https://doi.org/10.1134/S0005117912040133

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  • DOI: https://doi.org/10.1134/S0005117912040133

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