Artificial inteligence approache to modeling of cutting force and tool wear relationships during dry machining
Published 2018-12-30
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Keywords
- cutting force,
- tool wear,
- experimental dry study machining,
- neural network,
- regression analyse
How to Cite
Copyright (c) 2023 Journal of Production Engineering
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Abstract
In the paper numerical and experimental study for different cutting conditions according planning of experiment was carried out. Contribution was made during dry face milling process what contributes to sustainability of manufacturing processes. Cutting force components and parameters of tool wear versus time were pointed out. It was observed that cutting force components increase with time and/or tool wear. The relationships for cutting force components versus cutting depth, feed and tool wear parameters were expressed by regression analyse and artificial neural network.