Workspace analysis of parallel mechanisms through neural networks and genetic algorithms

Zeynep Ekicioglu Kuzeci, V. Ömürlü, H. Alp, I. Özkol
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引用次数: 5

Abstract

Stewart Platform Mechanism (SPM) is a type of parallel mechanism (PM) which has 6 degrees of freedom. Due to features like precise positioning and high load carrying capacity, PMs have been used in many areas in recent years. But relatively small workspace of the mechanism is the major disadvantage. This paper aims to improve the method for PM workspace analysis. The structure of Artificial Neural Network (ANN) which was used to analyze 6×3 SPM's workspace, is determined by Genetic Algorithms (GA). This structure of ANNs, i.e., weights, biases are very effective on catching highly accurate results of the ANNs. Therefore, calculation of these values and appropriate structure, i.e., number of neurons in hidden layers, by trial and error approach, results in spending too much time. To prevent the loss time and to determine the problem most fitted structure of hidden layers, a GA is developed and tested in simulation environment, i.e., software developed data. It is noted that by using software-calculated-parameters instead of using trial-error-approach parameters gives the user as accurate as trial-error-approach in short time span.
基于神经网络和遗传算法的并联机构工作空间分析
Stewart平台机构(SPM)是一种6自由度并联机构。由于定位精确、承载能力强等特点,永磁电机近年来在许多领域得到了应用。但相对较小的工作空间是该机构的主要缺点。本文旨在改进项目管理工作空间分析方法。用于分析6×3 SPM工作空间的人工神经网络(ANN)结构采用遗传算法确定。这种人工神经网络的结构,即权重,偏差对于捕获人工神经网络的高精度结果非常有效。因此,通过试错法来计算这些值和适当的结构,即隐藏层中的神经元数量,会花费太多的时间。为了防止时间损失和确定隐藏层最拟合的问题结构,开发了一种遗传算法,并在仿真环境下进行了测试,即软件开发的数据。值得注意的是,通过使用软件计算参数而不是使用试错法参数,用户可以在短时间内获得与试错法相同的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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