Dimensional synthesis of a four-bar linkage mechanism via a PSO-based Cooperative Neural Network approach

Golnoush Asaeikheybari, Amir Salimi Lafmejani, A. Kalhor, M. T. Masouleh
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引用次数: 4

Abstract

The dimensional synthesis problem is one of the challenging problems in robotics which has initiated several mathematical challenges. In this paper, a novel algorithm is proposed based on combination of Particle Swarm Optimization (PSO) and Cooperative Neural Network (CNN) for solving synthesis problem of a four-bar linkage which leads to an optimization problem. The cooperative network, so-called PS-CNN, consists of memory-retaining particles which collaborate together based on PSO algorithm in a cooperative interaction converge to the optimal dimensional synthesis solution. In the complete-connected network, each neuron provides a solution. Thereby, solutions are updated according to the neurons' memory, their interaction with other neurons and the global best solution of the neurons in order to provide a proper solution to the optimization problem. The objective of the optimization problem is to minimize the distance of the robot's end-effector from the 5 prescribed points by the user when traversing them. Simulation results reveal the desirable performance of the PS-CNN for robot synthesis with higher complexities. Furthermore, the proposed approach opens an avenue to extend it.
基于pso的协作神经网络方法的四杆机构尺寸综合
尺寸综合问题是机器人技术中具有挑战性的问题之一,它引发了许多数学挑战。提出了一种基于粒子群优化(PSO)和协同神经网络(CNN)相结合的四杆机构综合优化算法。PS-CNN是一种由保留记忆的粒子组成的协作网络,这些粒子基于粒子群算法以协同交互的方式相互协作,最终收敛到最优维度综合解。在完全连接的网络中,每个神经元提供一个解决方案。因此,根据神经元的记忆、神经元与其他神经元的相互作用以及神经元的全局最优解来更新解,从而为优化问题提供合适的解。优化问题的目标是使机器人末端执行器与用户指定的5个点之间的距离最小。仿真结果表明,PS-CNN在复杂程度较高的机器人综合中具有良好的性能。此外,所建议的方法为扩展它开辟了一条途径。
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