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首页> 外文期刊>International Journal of Machining and Machinability of Materials >Prediction and comparison of thrust force and torque in drilling of natural fibre hybrid composite using regression and artificial neural network modelling
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Prediction and comparison of thrust force and torque in drilling of natural fibre hybrid composite using regression and artificial neural network modelling

机译:基于回归和人工神经网络建模的天然纤维混杂复合材料钻削推力和扭矩预测与比较

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摘要

In this paper, the prediction and comparison of thrust force and torque in drilling of roselle/sisal hybrid composite material were presented. This new approach for natural fibre hybrid composite materials is based on artificial neural network (ANN) and regression models (RM). The series of drilling experiments using HSS-twist drill bits were conducted on composite specimen using MAXMILL CNC machining centre. Drill tool dynamometer has been used to measure thrust force and torque during the drilling processes. Thrust force and torque were taken as response variables and feed rate, cutting speed and drill diameter were taken as input variables. The response variables were predicted with the help of empirical relation using RM and ANN models. The predicted values of the responses by both ANN and RM were compared with the experimental values and their closeness with the experimental values was determined. The results indicate that the ANN model is more effective than RM model in prediction of thrust force and torque in drilling of natural fibre hybrid composite materials.
机译:本文提出了玫瑰茄/剑麻混杂复合材料钻孔时推力和扭矩的预测和比较。天然纤维混杂复合材料的这种新方法基于人工神经网络(ANN)和回归模型(RM)。使用MAXMILL CNC加工中心在复合材料试样上进行了使用HSS麻花钻头的一系列钻孔实验。钻具测功机已用于测量钻进过程中的推力和扭矩。推力和扭矩作为响应变量,进给速度,切削速度和钻头直径作为输入变量。使用RM和ANN模型,借助经验关系预测了响应变量。将ANN和RM的响应预测值与实验值进行比较,并确定它们与实验值的接近度。结果表明,在预测天然纤维杂化复合材料的钻进过程中的推力和扭矩方面,ANN模型比RM模型更有效。

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