通用控制器进化的自主导航任务学习案例综合分析

IF 1.9 Q2 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Enrique Naredo, Candelaria E. Sansores, Flaviano Godinez, Francisco López, P. Urbano, L. Trujillo, C. Ryan
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引用次数: 0

摘要

机器人技术在工业和社会的各个领域都取得了重大进展。机器人技术是如何改变制造工艺和提高生产力的,这一点很清楚。此外,导航机器人也受到了这些进步的影响,投资者现在投资于公共和私人使用的自动交通。本研究旨在探讨训练场景如何影响自主导航任务的学习过程。主要目标是解决初始条件(学习案例)对开发通用控制器的能力是有积极影响还是有消极影响。通过研究这一研究问题,该研究试图深入了解如何优化自主导航任务的训练过程,最终提高所开发控制器的质量。通过这项调查,该研究旨在为推进自主导航领域和开发更复杂、更有效的自主系统这一更广泛的目标做出贡献。具体来说,我们使用进化计算对特定的导航环境进行了全面分析,为从不同位置出发并旨在到达特定目标的机器人开发控制器。最后的控制器随后在大量看不见的测试用例上进行了测试。实验结果提供了强有力的证据,证明学习案例的初始选择在进化一般控制器中发挥了作用。这项工作包括对手动选择的一组特定的小学习案例进行初步分析,对特定导航任务中的学习案例进行深入分析,并开发了一种工具,显示所选学习案例对机器人控制器整体行为的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comprehensive Analysis of Learning Cases in an Autonomous Navigation Task for the Evolution of General Controllers
Robotics technology has made significant advancements in various fields in industry and society. It is clear how robotics has transformed manufacturing processes and increased productivity. Additionally, navigation robotics has also been impacted by these advancements, with investors now investing in autonomous transportation for both public and private use. This research aims to explore how training scenarios affect the learning process for autonomous navigation tasks. The primary objective is to address whether the initial conditions (learning cases) have a positive or negative impact on the ability to develop general controllers. By examining this research question, the study seeks to provide insights into how to optimize the training process for autonomous navigation tasks, ultimately improving the quality of the controllers that are developed. Through this investigation, the study aims to contribute to the broader goal of advancing the field of autonomous navigation and developing more sophisticated and effective autonomous systems. Specifically, we conducted a comprehensive analysis of a particular navigation environment using evolutionary computing to develop controllers for a robot starting from different locations and aiming to reach a specific target. The final controller was then tested on a large number of unseen test cases. Experimental results provide strong evidence that the initial selection of the learning cases plays a role in evolving general controllers. This work includes a preliminary analysis of a specific set of small learning cases chosen manually, provides an in-depth analysis of learning cases in a particular navigation task, and develops a tool that shows the impact of the selected learning cases on the overall behavior of a robot’s controller.
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来源期刊
Mathematical & Computational Applications
Mathematical & Computational Applications MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-
自引率
10.50%
发文量
86
审稿时长
12 weeks
期刊介绍: Mathematical and Computational Applications (MCA) is devoted to original research in the field of engineering, natural sciences or social sciences where mathematical and/or computational techniques are necessary for solving specific problems. The aim of the journal is to provide a medium by which a wide range of experience can be exchanged among researchers from diverse fields such as engineering (electrical, mechanical, civil, industrial, aeronautical, nuclear etc.), natural sciences (physics, mathematics, chemistry, biology etc.) or social sciences (administrative sciences, economics, political sciences etc.). The papers may be theoretical where mathematics is used in a nontrivial way or computational or combination of both. Each paper submitted will be reviewed and only papers of highest quality that contain original ideas and research will be published. Papers containing only experimental techniques and abstract mathematics without any sign of application are discouraged.
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