Bioinspired Intelligent Algorithm and Its Applications for Mobile Robot Control



EOI: 10.11242/viva-tech.01.05.063

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Citation

Ms. Sagar Gorle, Ms. Abhishek Iswalkar, Ms. Govindnarayan Dubey, Prof. Pallavi Raut, "Bioinspired Intelligent Algorithm and Its Applications for Mobile Robot Control ", VIVA-IJRI Volume 1, Issue 5, Article 63, pp. 1-6, 2022. Published by Computer Engineering Department, VIVA Institute of Technology, Virar, India.

Abstract

Bio-inspired intelligent algorithm (BIA) is a kind of intelligent computing system, which is with a more natural working medium than other types. BIAs have made significant progress in both understanding of the neuroscience and natural systems and applying to various fields. Mobile robot control is one of the principle exertion fields of BIAs which has drawn in farther and promote consideration, since mobile robots can be employed extensively and general artificial intelligent algorithms meet an enhancement full back in this field, relative as complicated computing and the reliance on high-flawlessness pointers This paper presents a check of recent disquisition in BIAs, which focuses on the disquisition in the consummation of various BIAs predicated on different working mechanisms and the operations for mobile robot control, to help in understanding BIAs completely and fluently. The check has four primary corridor type of BIAs from the biomimetic medium, a summary of several typical BIAs from different situations, an overview of current operations of BIAs in mobile robot control, and a description of some possible future directions for disquisition.

Keywords

Machine learning, machine learning algorithm, accuracy.

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