An optimal and energy efficient multi-sensor collision-free path planning algorithm for a mobile robot in dynamic environments

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Abstract

There has been a remarkable growth in many different real-time systems in the area of autonomous mobile robots. This paper focuses on the collaboration of efficient multi-sensor systems to create new optimal motion planning for mobile robots. A proposed algorithm is used based on a new model to produce the shortest and most energy-efficient path from a given initial point to a goal point. The distance and time traveled, in addition to the consumed energy, have an asymptotic complexity of O(nlogn), where n is the number of obstacles. Real time experiments are performed to demonstrate the accuracy and energy efficiency of the proposed motion planning algorithm.

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CITATION STYLE

APA

Alajlan, A., Elleithy, K., Almasri, M., & Sobh, T. (2017). An optimal and energy efficient multi-sensor collision-free path planning algorithm for a mobile robot in dynamic environments. Robotics, 6(2). https://doi.org/10.3390/robotics6020007

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