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The various strategies applied for navigation of an intelligent cellular robot

kusum dola

Abstract


Navigation of cellular robots in an unsure and complex environment is a wide and complex difficulty because of a spread of boundaries that mobile robots must hit upon and constitute of their maps to navigate accurately. The objective of the navigation-cell robot is to attain an finest path, meaning that the robotic ought to plan a dependable course among the supply factor and the goal point without colliding with the static and dynamic limitations discovered in an unsure and complex surroundings. Several green techniques were developed by researchers within the motion making plans of cell robots. This paper presents special analysis of numerous strategies used inside the self sufficient navigation of cellular robotic.


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