Cutting power modeling in turning based on cutting parameters and tool condition

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作者
Liu, Dunyan
Shao, Hua
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摘要
A cutting power model in turning based on cutting parameters (such as spindle speed, feedrate, back engagement, workpiece material and tool material) and tool condition (primarily focus on tool flank wear) has been established for the first time. It has been verified through experimentation that the model correctly reveals the relationship between cutting power signals and tool condition as well as cutting parameters.
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页码:68 / 69
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