Abstract

To address the Jacobian matrix approximation error, which usually exists in the iterative solving process of the classic singular robust inverse method, the correction coefficient α is introduced, and the improved singular robust inverse method is the result. On this basis, the constant improved singular robust method and the intelligent improved singular robust inverse method are proposed. In addition, a new scheme, combining particle swarm optimization and artificial neural network training, is applied to obtain real-time parameters. The stability of the proposed methods is verified according to the Lyapunov stability criteria, and the effectiveness is verified in the application examples of spatial linear and curve trajectories with a seven-axis manipulator. The simulation results show that the improved singular robust inverse method has better optimization performance and stability. In the allowable range, the terminal error is smallest, and there is no lasting oscillation or large amplitude. The least singular value is largest, and the joint angular velocity is smallest, exactly as expected. The derivative of the Lyapunov function is negative definite. Comparing the two extended methods, the constant improved singular robust method performs better in terms of joint angular velocity and least singular value optimization, and the intelligent improved singular robust inverse method can achieve a smaller terminal error. There is little difference between their overall optimization effects. However, the adaptability of the real-time parameters makes the intelligent improved singular robust inverse method the first choice for kinematic control of redundant serial manipulators.

Highlights

  • Kinematics is the basis of manipulator control technology, which focuses on inverse kinematics solutions.[1,2,3,4,5] due to the high nonlinearity of redundant manipulators, it is quite difficult to obtain a suitable solution

  • The conclusions of this study are as follows: (1) To compensate for the error caused by the Jacobian matrix approximation, which usually exists in an iterative control solving process, the correction coefficient a is employed, and the improved singular robust inverse method (ISRIM) is proposed

  • particle swarm optimization (PSO) is used in the intelligent improved singular robust inverse method (IISRIM) to obtain the relational data set between the damping coefficients and the singular values of the Jacobian matrix

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Summary

Introduction

Kinematics is the basis of manipulator control technology, which focuses on inverse kinematics solutions.[1,2,3,4,5] due to the high nonlinearity of redundant manipulators, it is quite difficult to obtain a suitable solution. The corresponding data set of damping factors and singular values of the Jacobian matrix are obtained by PSO and further trained by an ANN to obtain the simulated Simulink fitting model; the obtained model is used to predict the a–l factors, which are essential for the real-time optimization of inverse kinematics.

Results
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