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Study of Intelligent Prediction and Control of Workpiece Size in Traverse Grinding

机译:横磨中工件尺寸的智能预测与控制研究

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摘要

A size intelligent prediction control model during traverse grinding is constructed. The model is composed of the neural network prediction model, the deformation optimal adaptive control system and fuzzy control model. Dynamic Elman network is used in the prediction model. The first and the second derivative of the actual amount removed from the workpiece are added into the network input, which can greatly improve the prediction accuracy. The flexible factor is introduced to the fuzzy control model, which can self-adapt and adjust the quantification factor and scale factor in the fuzzy control. Simulation and experiment verify that the developed prediction control model is feasible and has high prediction and control precision.
机译:建立了横向磨削尺寸智能预测控制模型。该模型由神经网络预测模型,变形最优自适应控制系统和模糊控制模型组成。在预测模型中使用了动态Elman网络。从工件去除的实际量的一阶和二阶导数被添加到网络输入中,这可以大大提高预测精度。将柔性因子引入到模糊控制模型中,该模型可以自适应地调整模糊控制中的量化因子和比例因子。通过仿真和实验证明,所开发的预测控制模型是可行的,具有较高的预测和控制精度。

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