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Prediction of Cutting Consumption based on Optimization-Making RBF Artificial Neural Network

机译:基于优化的RBF神经网络的切削量预测

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Excision rate was fitted and predicted via building on cutting parameters affecting cutting machining process with Optimization-Making RBF (OMRBF) Neural Network.Radial basis function was made to select the best optimized distribution density in order to advance the fitting and forecasting capability of RBF.The result of OMRBF was compared with BP Neural Network's,what showed that the fitting and forecasting accuracy of OMRBF was much higher than BP Neural Network's.
机译:通过优化制造RBF(OMRBF)神经网络,通过建立影响切削加工过程的切削参数,对切削速率进行拟合和预测。利用径向基函数选择最佳的优化分布密度,以提高RBF的拟合和预测能力。将OMRBF的结果与BP神经网络的结果进行比较,表明OMRBF的拟合和预测精度远高于BP神经网络。

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