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首页> 外文期刊>International journal of materials & product technology >Modelling cutting power and tool wear in turning of aluminium matrix composites using Artificial Neural Networks
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Modelling cutting power and tool wear in turning of aluminium matrix composites using Artificial Neural Networks

机译:使用人工神经网络对铝基复合材料车削中的切削力和刀具磨损进行建模

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摘要

Aluminium matrix composites have been investigated since 1970s because of the high performance of these materials for aerospace, aircraft and automotive industries. This paper builds Artificial Neural Network (ANN) machining models of aluminium matrix composites according to cutting parameters. Feedforward ANN is created and trained using comprehensive data sets tested by the authors, and good performances of networks are achieved. The prediction results show the tool wear and the machining power are highly influenced by the cutting velocity. The increase in the feed leads to moderate decrease in the tool wear and moderate increase in the machining power.
机译:自1970年代以来就对铝基复合材料进行了研究,因为这些材料在航空航天,飞机和汽车工业中具有高性能。根据切削参数建立了铝基复合材料的人工神经网络加工模型。前馈ANN使用作者测试的综合数据集进行创建和培训,并且网络性能良好。预测结果表明,切削速度对刀具的磨损和加工能力有很大的影响。进给量的增加导致刀具磨损的适度降低和加工能力的适度提高。

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