基于改进PID神经网络的自动调平控制研究

Chusi Huang, Jiandong Li
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引用次数: 3

摘要

由于调平系统是一个非线性多变量耦合系统,传统的控制方法难以在自动调平系统中达到良好的控制效果。因此,本文以四足结构平台为研究对象,提出最高点平稳法与逆系统解耦控制方法相结合的复合调平方法作为调平方法。利用MATLAB/Simulink建立了平台与腿系统的机电一体化仿真模型。在此基础上,采用经典PID控制器、经典多变量PID神经网络控制器和改进PID神经网络解耦控制器对平台进行控制。仿真结果表明,优化后的PID神经网络控制器不仅避免了抖动、假腿、超调等问题,而且大大缩短了调平时间,提高了平台的调平性能。
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Research on automatic leveling Control based on improved PID Neural Network
Since the leveling system is a nonlinear multi-variable coupling system, it is difficult for the traditional control methods to achieve good control effect in the automatic leveling system. Therefore, this paper takes the four-legged structure platform as the research object and proposes the compound leveling method of the highest point stationary method combined with the inverse system decoupling control method as the leveling method. The mechatronic integration simulation model of the platform and the leg system is established by MATLAB/Simulink. On this basis, the platform is controlled by classical PID controller, classical multi-variable PID neural network controller and improved PID neural network decoupling controller. Simulation results show that the optimized PID neural network controller not only avoids jitter, false leg, overshoot and other problems, but also greatly reduces the leveling time and improves the leveling performance of the platform.
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