Agents paradigm to solve a complex optimization problem

A. Ramdane-Cherif, N. Lévy, H. Djenidi, C. Tadj
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引用次数: 8

Abstract

Agents are computational systems interacting with dynamic, and non-entirely predictable environments. They decide for themselves, on the basis of their individual beliefs, goals, etc., how to respond to the environment. An agent is usually motivated to achieve a feasible objective by means of the collaboration of other agents. For example, lifting a heavy table may be impossible without help. However, it can be done by simply asking others for help. The process of gaining collaboration can take many forms. However, some tasks need more detailed communication to generate an explicit mutually acceptable agreement through negotiation. This paper presents a new method to solve the inverse kinematic problem of a redundant robot using the agents paradigm. This method guarantees rapid convergence of the robot to desired position, with substantially good accuracy. The originality of the proposed approach is its ability to overcome some of the standard problems such as the computation of the inverse or pseudoinverse Jacobian matrix, problem of singularity, redundancy, and considerably increased computational complexity, etc.
用智能体范式来解决一个复杂的优化问题
代理是与动态的、不可完全预测的环境交互的计算系统。他们根据自己的信仰、目标等,自行决定如何应对环境。一个代理通常是通过与其他代理的合作来实现一个可行的目标。例如,如果没有帮助,举起一张沉重的桌子可能是不可能的。然而,这可以通过简单地向别人寻求帮助来完成。获得合作的过程可以采取多种形式。然而,有些任务需要更详细的沟通,以通过协商产生明确的双方可接受的协议。提出了一种利用智能体范式求解冗余机器人运动学逆问题的新方法。这种方法保证了机器人快速收敛到期望的位置,具有相当好的精度。该方法的创新之处在于它能够克服一些标准问题,如雅可比矩阵逆或拟逆的计算、奇异性问题、冗余问题以及计算复杂度的显著增加等。
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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