基于FPGA的神经网络滑模控制器的设计与验证

Yi Zhang, Weili Dai
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引用次数: 2

摘要

提出了一种基于现场可编程门阵列(FPGA)的神经网络滑模控制器的设计与验证方法。该方法采用FPGA作为神经网络滑模控制器的主要设计方法。设计实验验证了双凸极电磁发电机系统(DSEG系统)核心控制变量控制律和PWM信号分析算法的可行性。通过截取电机有限元仿真中状态变量的相应实验数据作为输入,经神经网络滑模控制器计算后输出相应的控制规律和PWM信号。同时,利用LabVIEW的图像处理能力,将有限元仿真得到的控制规律与PWM信号和FPGA输出的信号进行对比分析。实验结果表明,无论系统处于稳态还是动态状态,FPGA核心控制器都能很好地遵循控制规律。相应的PWM信号变化趋势也一致,可以较好地恢复仿真控制状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design and verification of neural network sliding mode controller based on FPGA
This paper presents a design and verification method for a neural network sliding mode controller based on Field Programmable Gate Array(FPGA). This method uses FPGA as the main method of designing neural network sliding mode controller. Design experiments to verify the feasibility of the analysis algorithm for the core control variable control law and PWM signal in the doubly salient electromagnetic generator system (DSEG system). By intercepting the corresponding experimental data of the state variables in the finite element simulation of the motor as input, the corresponding control law and PWM signal are output after calculation by the neural network sliding mode controller. At the same time, the image processing capability of LabVIEW is used to compare and analyze the control law obtained by finite element simulation with the PWM signal and the signal output by FPGA. The experimental results show that the FPGA core controller can follow the control law well whether the system is in steady state or dynamic state. Corresponding PWM signal change trend is also consistent, which can achieve a better restoration of the simulation control state.
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