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Using Social Behavior of Beetles to Establish a Computational Model for Operational Management

机译:利用甲虫的社会行为来建立运营管理的计算模型

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In this article, we computationally model the social behavior of beetles and apply it to the tracking control of manipulators. The beetles demonstrate excellent skills to forage food in a previously unknown environment by merely using their olfactory senses. The goal of the beetle is to search the region with the maximum smell. Therefore, the actions of the beetle can be characterized as an optimization algorithm. This article mathematically models this behavior in the form of a recurrent neural network (RNN) with a temporal-feedback connection. We apply the formulated RNN controller for the redundancy resolution and tracking control of the redundant manipulators with an unknown kinematic model. Most of the industrial robots have redundant manipulators, and kinematic trajectory tracking is a fundamental problem for any industrial task. The behavior of the beetle allows us to formulate a position-level controller without relying on the manipulation of the Jacobian matrix. It is in contrast with the conventional velocity-level controllers, which require an accurate kinematic model of the manipulator and calculation of pseudoinverse of Jacobian, a computationally expensive task. The proposed algorithm, called Beetle Antennae Olfactory Recurrent Neural Network (BAORNN) algorithm, is capable of driving the manipulator by only using the feedback from the position and orientation sensors. The stability and convergence of the proposed algorithm are theoretically proved, and the simulations results using a seven-degree-of-freedom (DOF) industrial robotic arm, KUKA LBR IIWA14, are presented to demonstrate the performance of the proposed algorithm.
机译:在本文中,我们计算甲虫的社会行为,并将其应用于操纵器的跟踪控制。甲虫通过仅使用嗅觉感官,展示了在先前未知的环境中觅食的优秀技能。甲虫的目标是以最大气味搜索该地区。因此,甲虫的动作可以表征为优化算法。本文以经常性神经网络(RNN)的形式数为数学方式模拟了具有时间反馈连接的形式。我们将配制的RNN控制器应用于冗余分辨率和冗余机械手的跟踪控制,其中包含未知的运动模型。大多数工业机器人都有冗余的机械手,并且运动轨迹跟踪是任何工业任务的根本问题。甲虫的行为允许我们制定位置级控制器,而无需依赖于雅各族矩阵的操纵。与传统的速度级控制器相比,这需要一种机械手的准确运动模型和雅比尼亚伪倾角的计算,计算昂贵的任务。所提出的算法,称为甲虫天线嗅觉复发性神经网络(BAORNN)算法,能够仅使用来自位置和方向传感器的反馈来驱动操纵器。理论上证明了所提出的算法的稳定性和收敛性,并提出了使用七自由度(DOF)工业机器人Kuka LBR IIWA14的模拟结果,以证明所提出的算法的性能。

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