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A precise BP neural network-based online model predictive control strategy for die forging hydraulic press machine

机译:基于BP的基于BP神经网络的在线模型预测控制策略,用于模锻液压机

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摘要

Abstract The time variance and nonlinearity of forging processes pose great challenges to high-quality production. In this study, a one-step-ahead model predictive control (MPC) strategy based on backpropagation (BP) neural network is proposed for the precise forging processes. Two online updated BP neural networks, predictive neural network (PNN) and control neural network (CNN), are developed to accurately control the die forging hydraulic press machine. The PNN and CNN are utilized to predict the output (the velocity of upper die) and determine the input (the oil pressure of driven cylinders), respectively. The weights of neural networks are initially trained offline and then updated online according to an error backpropagation algorithm. In the proposed control strategy, only the input and output are required, which makes the forging process easy to be controlled. In addition, because of the generalized ability and adaptability of neural networks, the proposed predictive controller can well deal with the time variance and nonlinearity of forging process. Two forging experiments demonstrate the feasibility and effectiveness of the proposed strategy. Moreover, comparing the proposed MPC strategy with the traditional MPC approach and PID controller, it can be found that the proposed MPC strategy is the most effective control approach for the practical forging process.
机译:摘要锻造过程的时间差异和非线性对高质量生产造成了巨大挑战。在本研究中,提出了一种基于BackProjagation(BP)神经网络的一步式模型预测控制(MPC)策略,用于精确锻造过程。建立了两个在线更新的BP神经网络,预测神经网络(PNN)和控制神经网络(CNN),以精确地控制模具锻造液压机。 PNN和CNN用于预测输出(上模的速度)并分别确定输入(从动汽缸的油压)。神经网络的权重最初训练离线,然后根据错误反向算法在线更新。在所提出的控制策略中,只需要输入和输出,这使得锻造过程易于控制。此外,由于神经网络的广义能力和适应性,所提出的预测控制器可以很好地处理锻造过程的时间方差和非线性。两个锻造实验表明了拟议的策略的可行性和有效性。此外,将提议的MPC策略与传统的MPC方法和PID控制器进行比较,可以发现所提出的MPC策略是实际锻造过程中最有效的控制方法。

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