2023
DOI: 10.3390/machines11050513
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Machine Learning-Based Agoraphilic Navigation Algorithm for Use in Dynamic Environments with a Moving Goal

Abstract: This paper presents a novel development of a new machine learning-based control system for the Agoraphilic (free-space attraction) concept of navigating robots in unknown dynamic environments with a moving goal. Furthermore, this paper presents a new methodology to generate training and testing datasets to develop a machine learning-based module to improve the performances of Agoraphilic algorithms. The new algorithm presented in this paper utilises the free-space attraction (Agoraphilic) concept to safely nav… Show more

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Cited by 3 publications
(1 citation statement)
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References 23 publications
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“…In the process of map matching, due to different road conditions, the importance of each information type varies, and different weights need to be set to achieve the best matching results [30,31]. Let the weight for the distance information be denoted as W 1 , the weight for the direction information be denoted as W 2 , and the weight for the connectivity information be denoted as W 3 , W i > 0 (i = 1, 2, 3).…”
Section: Setting Of Information Weightmentioning
confidence: 99%
“…In the process of map matching, due to different road conditions, the importance of each information type varies, and different weights need to be set to achieve the best matching results [30,31]. Let the weight for the distance information be denoted as W 1 , the weight for the direction information be denoted as W 2 , and the weight for the connectivity information be denoted as W 3 , W i > 0 (i = 1, 2, 3).…”
Section: Setting Of Information Weightmentioning
confidence: 99%