首页> 外文期刊>Applied Artificial Intelligence >APPLICATION OF ABDUCTIVE POLYNOMIAL NETWORK AND GREY THEORY TO DRILL FLANK WEAR PREDICTION
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APPLICATION OF ABDUCTIVE POLYNOMIAL NETWORK AND GREY THEORY TO DRILL FLANK WEAR PREDICTION

机译:运用多项式网络和灰色理论在钻头侧面磨损预测中的应用。

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An abductive polynomial network for drill flank wear prediction was established, in which grey relational analysis was incorporated to explore the effect of various drilling parameters on flank wear. An abductive polynomial network usually includes multiple layers, each of which contains different polynomial functional nodes. It can automatically synthesize the optimal network structure, including the optimal number of layers and the optimal form of functional nodes. The correlation between the drilling input parameters, including the average thrust force, torque, cutting speed, feed and drill diameter, and drill flank wear can be achieved through this network model. Based on experimental data, the developed network of this paper attained better accuracy in predicting drill flank wear, given the CPM of 0.1. The findings prove that the network is feasible and accurate in predicting flank wear. In addition, grey relational analysis was used in this paper to investigate the effect of the aforementioned five drilling parameters on flank wear. According to the analytical results, the most influential factor on flank wear is drill diameter, followed by the average thrust force.
机译:建立了用于钻头侧面磨损预测的外展多项式网络,其中引入了灰色关联分析,以探索各种钻削参数对侧面磨损的影响。归纳多项式网络通常包括多层,每层包含不同的多项式功能节点。它可以自动综合最佳网络结构,包括最佳层数和功能节点的最佳形式。可以通过此网络模型获得钻井输入参数之间的相关性,包括平均推力,扭矩,切削速度,进给和钻头直径以及钻头侧面磨损。根据实验数据,在CPM为0.1的情况下,本文开发的网络在预测钻头侧面磨损方面获得了更高的精度。研究结果证明,该网络在预测侧面磨损方面是可行且准确的。此外,本文采用灰色关联分析法研究了上述五个钻孔参数对侧面磨损的影响。根据分析结果,影响齿腹磨损的最主要因素是钻头直径,其次是平均推力。

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