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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Model Predictive Control of Duplex Inlet and Outlet Ball Mill System Based on Parameter Adaptive Particle Swarm Optimization
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Model Predictive Control of Duplex Inlet and Outlet Ball Mill System Based on Parameter Adaptive Particle Swarm Optimization

机译:基于参数自适应粒子群优化的双相入口和出口球磨机模型预测控制

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摘要

The direct-fired system with duplex inlet and outlet ball mill has strong hysteresis and nonlinearity. The original control system is difficult to meet the requirements. Model predictive control (MPC) method is designed for delay problems, but, as the most commonly used rolling optimization method, particle swarm optimization (PSO) has the defects of easy to fall into local minimum and non-adjustable parameters. Firstly, a LS-SVM model of mill output is established and is verified by simulation in this paper. Then, a particle similarity function is proposed, and based on this function a parameter adaptive particle swarm optimization algorithm (HPAPSO) is proposed. In this new method, the weights and acceleration coefficients of PSO are dynamically adjusted. It is verified by two common test functions through Matlab software that its convergence speed is faster and convergence accuracy is higher than standard PSO. Finally, this new optimization algorithm is combined with MPC for solving control problem of mill system. The MPC based on HPAPSO (HPAPSO-MPC) algorithms is compared with MPC based on PAPSO (PAPSO-MPC) and PID control method through simulation experiments. The results show that HPAPSO-MPC method is more accurate and can achieve better regulation performance than PAPSO-MPC and PID method.
机译:具有双面入口和出口球磨机的直接烧制系统具有强烈的滞后和非线性。原始控制系统难以满足要求。模型预测控制(MPC)方法设计用于延迟问题,但作为最常用的轧制优化方法,粒子群优化(PSO)具有易于落入局部最小和不可调节参数的缺陷。首先,建立了MINL输出的LS-SVM模型,并通过本文进行了仿真验证。然后,提出了一种粒子相似函数,并且基于该功能,提出了参数自适应粒子群优化算法(HPAPSO)。在这种新方法中,动态调整PSO的权重和加速度系数。通过MATLAB软件通过MATLAB软件验证其收敛速度更快,收敛精度高于标准PSO。最后,这种新的优化算法与MPC结合了解磨机系统的控制问题。基于HPAPSO(HPAPSO-MPC)算法的MPC与基于Papso(Papso-MPC)和PID控制方法通过模拟实验进行比较MPC。结果表明,HPAPSO-MPC方法更准确,可以比Papso-MPC和PID方法更好地达到更好的调节性能。

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