Abstract

For the inverse calculation of laser-guided demolition robot, its global nonlinear mapping model from laser measuring point to joint cylinder stroke has been set up with an artificial neural network. Due to the contradiction between population diversity and convergence rate in the optimization of complex neural networks by using differential evolution, a gravitational search algorithm and differential evolution is proposed to accelerate the convergence rate of differential evolution population driven by gravity. Gravitational search algorithm and differential evolution is applied to optimize the inverse calculation neural network mapping model of demolition robot, and the algorithm simulation shows that gravity can effectively regulate the convergence process of differential evolution population. Compared with the standard differential evolution, the convergence speed and accuracy of gravitational search algorithm and differential evolution are significantly improved, which has better optimization stability. The calculation results show that the output accuracy of this gravitational and differential evolution neural network can meet the calculation requirements of the positioning control of demolition robot’s manipulator. The optimization using gravitational search algorithm and differential evolution is done with the connection weights of a neural network in this article, and as similar techniques can be applied to the other hyperparameter optimization problem. Moreover, such an inverse calculation method can provide a reference for the autonomous positioning of large hydraulic series manipulator, so as to improve the robotization level of construction machinery.

Highlights

  • The demolition robot is a kind of special engineering machinery

  • The demolition robot utilizes the electric motor or diesel engine to drive the hydraulic pump, which provides the power source for the hydraulic series joint manipulator and breaking actuator and adopts the manual operation of the hydraulic impactor to carry out the breaking and removing work in the working space.[1]

  • In order to realize the robotization of the above manipulator positioning process and improve the positioning efficiency, we propose a self-positioning method of the demolition series manipulator based on three-dimensional laser ranging

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Summary

Introduction

The demolition robot is a kind of special engineering machinery. Generally, the demolition robot utilizes the electric motor or diesel engine to drive the hydraulic pump, which provides the power source for the hydraulic series joint manipulator and breaking actuator and adopts the manual operation of the hydraulic impactor to carry out the breaking and removing work in the working space.[1]. DE is a new evolutionary algorithm, which has the strong robustness to the optimization of high-dimensional real value parameter and simple parameter setting and has been proved by relevant studies to have stable global search ability It has obvious advantages for the optimization of ANN weight set.[30,31,32,33] Based on the adaptive global optimization capability of DE, we utilize it for the weight optimization of the laser-guided neural network of demolition robot. The GSA provides a position adjustment mechanism that controls the population of individuals to gradually accelerate their approach to excellent individuals in the optimization space, so a new gravitational and differential variation operator is proposed by applying gravity to differential variation operator.

Particle inertia mass calculation
Calculation of gravity
Movement of particles
1.53 Â 10À3
Conclusion
Full Text
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