Hardware Implementation of a Real-Time Neural Network Controller With a DSP and an FPGA for Nonlinear Systems 论文

2007IEEE Transactions on Industrial Electronics引用 245
Neural Networks and ApplicationsAdaptive Control of Nonlinear SystemsSensor Technology and Measurement Systems

摘要

In this paper, we implement the intelligent neural network controller hardware with a field programmable gate array (FPGA)-based general purpose chip and a digital signal processing (DSP) board to solve nonlinear system control problems. The designed intelligent control hardware can perform real-time control of the backpropagation learning algorithm of a neural network. The basic proportional-integral-derivative (PID) control algorithms are implemented in an FPGA chip and a neural network controller is implemented in a DSP board. By using a high capacity of an FPGA chip, the additional hardware such as an encoder counter and a pulsewidth modulation (PWM) generator is implemented in a single FPGA chip. As a result, the controller becomes cost effective. It was tested for controlling nonlinear systems such as a robot finger and an inverted pendulum on a moving cart to show performance of the controller

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