文章摘要
刘江,李海龙.动态定量称量包装系统BP神经网络PID控制算法[J].包装工程,2017,38(5):78-81.
LIU Jiang,LI Hai-long.PID Control Algorithm of BP Neural Network of Dynamic Quantitative Weighing Packaging System[J].Packaging Engineering,2017,38(5):78-81.
动态定量称量包装系统BP神经网络PID控制算法
PID Control Algorithm of BP Neural Network of Dynamic Quantitative Weighing Packaging System
投稿时间:2016-12-22  修订日期:2017-03-10
DOI:
中文关键词: 定量称量  BP神经网络  PID  鲁棒性
英文关键词: quantitative weighing  BP neural network  PID  robustness
基金项目:
作者单位
刘江 包头职业技术学院包头 014030 
李海龙 包钢集团包头 014010 
摘要点击次数:
全文下载次数:
中文摘要:
      目的 针对动态定量称量包装控制系统具有大惯性、滞后、非线性且无法建立精确数学模型等缺点,研究提高动态定量称量包装系统控制精度的方法。方法 提出了一种改进型BP神经网络PID的定量称量包装控制系统,将BP神经网络与PID控制方法相结合,通过神经网络的自学习、加权系数的调整,优化PID控制器参数Ki,Kp,Kd,并将粒子群算法引入到神经网络中作为其学习算法,以有效提高BP神经网络算法的收敛速度。结果 仿真和实验结果表明,改进型BP神经网络PID控制响应速度快、超调量较小,系统称量误差得到大幅度减小。结论 所述控制方法可以明显提高定量称量控制过程的稳定性、精确性以及鲁棒性。
英文摘要:
      The work aims to research the method to improve the control precision of dynamic quantitative weighing packaging system, with respect to its shortcomings, such as great inertia, hysteresis, non-linearity and inability to establish accurate mathematical model. An improved BP neural network PID of quantitative weighing packaging control system was proposed. By combining BP neural network and PID control method, and adjusting the self-learning and weighting coefficient of neural network, the parameters (Ki, Kp and Kd) of PID controller were optimized and the particle swarm algorithm was introduced into the neural network as its learning algorithm, so as to effectively improve the convergence rate of BP neural network algorithm. The simulation and experimental results showed that, the improved BP neural network PID control was featured by fast response speed, small overshoot and greatly reduced system weighing errors. The proposed control method can obviously improve the stability, accuracy and robustness of the quantitative weighing control process.
查看全文   查看/发表评论  下载PDF阅读器
关闭

关于我们 | 联系我们 | 投诉建议 | 隐私保护 | 用户协议

您是第21343457位访问者    渝ICP备15012534号-2

版权所有:《包装工程》编辑部 2014 All Rights Reserved

邮编:400039 电话:023-68795652 Email: designartj@126.com

    

渝公网安备 50010702501716号