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Neural networks to determine task oriented dexterity indices for an underwater vehicle-manipulator system

机译:神经网络确定水下车辆操纵器系统的面向任务的敏捷度指标

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A method for the fast approximation of dexterity indices for given underwater vehicle-manipulator systems (UVMS) configurations is presented. Common underwater tasks are associated with two well-known dexterity indices and two types of neural networks are designed and trained to approximate each one of them. The method avoids the lengthy calculation of the Jacobian, its determinant and the computationally expensive procedure of singular value decomposition required to compute the dexterity indices. It provides directly and in a considerably reduced computational time the selected dexterity index value for the given configuration of the system. The full kinematic model of the UVMS is considered and the NN training dataset is formulated by the conventional calculation of the selected dexterity indices. A comparison between the computational cost of the analytical calculation of the indices and their approximation by the two NN is presented for the validation of the proposed approach. This paper contributes mainly on broadening the applications of NN to a problem of high complexity and of high importance for UVMS high performance intervention. (C) 2016 Published by Elsevier B.V.
机译:对于给定的水下车辆操纵器系统(UVMS)配置,提出了一种快速逼近指数的方法。常见的水下任务与两个众所周知的敏捷度指数相关联,并且设计并训练了两种类型的神经网络来近似它们中的每一个。该方法避免了雅可比行列式的冗长计算,其行列式以及计算灵巧指数所需的奇异值分解的计算量大的过程。它为系统的给定配置直接并以显着减少的计算时间提供了选定的灵活性指标值。考虑了UVMS的完整运动学模型,并通过对所选敏捷度指数的常规计算来制定NN训练数据集。为了验证所提出的方法,提出了指数的解析计算的计算成本与两个NN的近似值之间的比较。本文主要致力于将NN的应用扩展到一个高度复杂的问题,这对于UVMS高性能干预非常重要。 (C)2016由Elsevier B.V.发布

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