Litcius/Paper detail

An FPGA-Implemented Antinoise Fuzzy Recurrent Neural Network for Motion Planning of Redundant Robot Manipulators

Zhijun Zhang, Haotian He, Xianzhi Deng

2023IEEE Transactions on Neural Networks and Learning Systems24 citationsDOI

Abstract

When a robot completes end-effector tasks, internal error noises always exist. To resist internal error noises of robots, a novel fuzzy recurrent neural network (FRNN) is proposed, designed, and implemented on field-programmable gated array (FPGA). The implementation is pipeline-based, which guarantees the order of overall operations. The data processing is based on across-clock domain, which is beneficial for computing units' acceleration. Compared with traditional gradient-based neural networks (NNs) and zeroing neural networks (ZNNs), the proposed FRNN has faster convergence rate and higher correctness. Practical experiments on a 3 degree-of-freedom (DOs) planar robot manipulator show that the proposed fuzzy RNN coprocessor needs 496 lookup table random access memories (LUTRAMs), 205.5 block random access memories (BRAMs), 41384 lookup tables (LUTs), and 16743 flip-flops (FFs) of the Xilinx XCZU9EG chip.

Topics & Concepts

Artificial neural networkComputer scienceField-programmable gate arrayFuzzy logicRobotRobot manipulatorArtificial intelligenceMotion planningMotion (physics)Control engineeringEngineeringEmbedded systemRobotic Mechanisms and DynamicsRobotic Path Planning AlgorithmsRobot Manipulation and Learning