首页> 外文会议>2010 IEEE 11th International Conference on Computer-Aided Industrial Design Conceptual Design >Pulp concentration control by PID with BP neural network in the production of light weight cardboard
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Pulp concentration control by PID with BP neural network in the production of light weight cardboard

机译:BP神经网络PID在轻质纸板生产中的纸浆浓度控制。

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It is difficult for conventional optimal proportion integration differentiation (PID) controllers to obtain the optimal PID parameters to achieve the best operating position during papermaking process,because the parameters change greatly during papermaking process and the paper machine system is characterized with non-linear, time-varying and hysteresis qualities. Back propagation (BP) network can find the best PID parameters through online learning and adaptive processing. Combining BP network with PID controllers can make full use of both online learning ability of neural networks and the effectiveness of PID control. In this paper, neural network controller combining BP with PID is used for pulp concentration control in the production process of light weight cardboard. Using self-learning and adaptive functions of neural networks to make online real-time adjustment of PID parameters according to the actual working status online, the control system makes pulp concentration control in an optimal state, and ensures cardboard a uniform and stable basis weight.
机译:传统的最佳比例积分微分(PID)控制器很难获得最佳的PID参数,从而在造纸过程中获得最佳的运行位置,这是因为参数在造纸过程中变化很大,并且造纸机系统具有非线性,时间特征。 -变化和滞后质量。反向传播(BP)网络可以通过在线学习和自适应处理找到最佳的PID参数。将BP网络与PID控制器结合使用可以充分利用神经网络的在线学习能力和PID控制的有效性。本文将结合BP和PID的神经网络控制器用于轻质纸板生产过程中的纸浆浓度控制。该控制系统利用神经网络的自学习和自适应功能,根据在线实际工作状态在线实时调整PID参数,使纸浆浓度控制在最佳状态,并确保纸板均匀,稳定的基重。

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