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Application of particle swarm optimisation in artificial neural network for the prediction of tool life

机译:粒子群算法在人工神经网络中预测刀具寿命的应用

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摘要

In an advanced manufacturing system, accurate assessment of tool life estimation is very essential for optimising the cutting performance in turning operation. Estimation of tool life generally requires considerable time and material and hence it is a relatively expensive procedure. In this present work, back-propagation feed forward artificial neural network (ANN) has been used for tool life prediction. Speed, feed, depth of cut and flank wear were taken as input parameters and tool life as an output parameter. Twenty-five patterns were used for training the network. Recently there have been significant research efforts to apply evolutionary computational techniques for determining the network weights. Hence an evolutionary technique named particle swarm optimisation has been used instead of the back-propagation algorithm and it is proved that the experimental results matched well with the values predicted by both artificial neural network with back-propagation and the proposed method. It is found that the computational time is greatly reduced by this method.
机译:在先进的制造系统中,准确评估刀具寿命估计对于优化车削操作中的切削性能至关重要。估计工具寿命通常需要大量时间和材料,因此这是一个相对昂贵的过程。在本工作中,反向传播前馈人工神经网络(ANN)已用于工具寿命预测。速度,进给,切削深度和后刀面磨损作为输入参数,刀具寿命作为输出参数。二十五种模式用于训练网络。近来,已经进行了大量的研究工作,以应用进化计算技术来确定网络权重。因此,采用进化算法代替粒子群优化算法来代替粒子群优化算法,证明了实验结果与人工神经网络和粒子群预测方法的预测值相吻合。发现该方法大大减少了计算时间。

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