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Cognitive-Based Adaptive Path Planning for Mobile Robot in Dynamic Environment

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First International Conference on Artificial Intelligence and Cognitive Computing

Part of the book series: Advances in Intelligent Systems and Computing ((AISC,volume 815))

Abstract

Artificial intelligence plays a major role in robotics. The algorithms proposed so far are utilized to recognize static hindrances. The issue of way arranging of robots from source to goal includes distinguishing the static and dynamic snags in the detecting territory of the robot and decides a crash-free way. Most of the algorithms are targeted on the trail-finding procedure in a very illustrious atmosphere and leave higher-level functions like obstacle detection, but the cognitive-based adaptive path planning (CBAPPA) is a reconciling and psychological feature-based mostly thinking system that it identifies the dynamic obstacles in an unknown surrounding. In this paper, we tend to propose an associate approach to seek out optimum path in dynamic surroundings. During this approach, the mechanism that has sensors processes the data received through sensors and decides the path supported the data processed.

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Correspondence to Dadi Ramesh .

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Ramesh, D., Pasha, S.N., Sallauddin, M. (2019). Cognitive-Based Adaptive Path Planning for Mobile Robot in Dynamic Environment. In: Bapi, R., Rao, K., Prasad, M. (eds) First International Conference on Artificial Intelligence and Cognitive Computing . Advances in Intelligent Systems and Computing, vol 815. Springer, Singapore. https://doi.org/10.1007/978-981-13-1580-0_11

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