Control of Hydraulic Power System by Mixed Neural Network PID in Unmanned Walking Platform

Jun Wang, Yanbin Liu, Yi Jin, Youtong Zhang
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引用次数: 2

Abstract

To speedily regulate and precisely control a hydraulic power system in a unmanned walking platform (UWP), based on the brief analysis of digital PID and its shortcomings, dual control parameters in a hydraulic power system are given for the precision requirement, and a control strategy for dual relative control parameters in the dual loop PID is put forward, a load and throttle rotation-speed response model for variable pump and gasoline engine is provided according to a physical process, a simplified neural network structure PID is introduced, and formed mixed neural network PID(MNN PID)to control rotation speed of engine and pressure of variable pump, calculation using the back propagation(BP) algorithm and a self-adapted learning step is made, including a mathematic principle and a calculation flow scheme, the BP algorithm of neural network PID is trained and the control effect of system is simulated in Matlab environment, real control effects of engine rotation speed and variable pump pressure are verified in the experimental bench. Results show that algorithm effect of MNN PID is stable and MNN PID can meet the adjusting requirement of control parameters.
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无人步行平台液压动力系统的混合神经网络PID控制
为了快速调节和精确控制无人行走平台(UWP)中的液压动力系统,在简要分析数字PID及其缺点的基础上,针对精度要求,给出了液压动力系统的双控制参数,并提出了双回路PID中双相对控制参数的控制策略,根据物理过程建立了可变泵和汽油机的负载和节气门转速响应模型,引入了简化的神经网络结构PID,并形成了混合神经网络PID(MNN-PID)来控制发动机转速和可变泵压力,利用BP算法和自适配学习步骤进行计算,包括数学原理和计算流程,训练了神经网络PID的BP算法,并在Matlab环境下对系统的控制效果进行了仿真,在实验台上验证了发动机转速和可变泵压的实际控制效果。结果表明,MNN-PID算法效果稳定,能够满足控制参数的调节要求。
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