Biologically Inspired Intelligence with Applications on Robot Navigation

C. Luo, G. E. Jan, Zhenzhong Chu, Xinde Li
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引用次数: 3

Abstract

Biologically inspired intelligence technique, an important embranchment of series on computational intelligence, plays a crucial role for robotics. The autonomous robot and vehicle industry has had an immense impact on our economy and society and this trend will continue with biologically inspired neural network techniques. In this chapter, multiple robots cooperate to achieve a common coverage goal efficiently, which can improve the work capacity, share the coverage tasks, and reduce the completion time by a biologically inspired intelligence technique, is addressed. In many real-world applications, the coverage task has to be completed without any prior knowledge of the environment. In this chapter, a neural dynamics approach is proposed for complete area coverage by multiple robots. A bio-inspired neural network is designed to model the dynamic environment and to guide a team of robots for the coverage task. The dynamics of each neuron in the topologically organized neural network is characterized by a shunting neural equation. Each mobile robot treats the other robots as moving obstacles. Each robot path is autonomously generated from the dynamic activity landscape of the neural network and the previous robot position. The proposed model algorithm is computationally sim- ple. The feasibility is validated by four simulation studies.
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生物启发智能及其在机器人导航上的应用
生物智能技术是计算智能的一个重要分支,在机器人技术中起着至关重要的作用。自主机器人和汽车行业对我们的经济和社会产生了巨大的影响,这种趋势将继续与生物启发的神经网络技术。在这一章中,讨论了多机器人合作高效地实现一个共同的覆盖目标,通过生物智能技术提高工作能力,共享覆盖任务,减少完成时间。在许多现实世界的应用程序中,覆盖任务必须在不事先了解环境的情况下完成。在本章中,提出了一种神经动力学方法来实现多个机器人的完整区域覆盖。设计了一个仿生神经网络来模拟动态环境,并指导一组机器人完成覆盖任务。在拓扑组织的神经网络中,每个神经元的动态用一个分流神经方程来表征。每个移动机器人都把其他机器人当作移动的障碍物。每个机器人的路径都是由神经网络的动态活动景观和之前的机器人位置自主生成的。所提出的模型算法计算简单。通过四个仿真实验验证了该方法的可行性。
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