Robot Learning and Adaptation for Intelligent Behavior

Shalini Aggarwal, Asst. Professor
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引用次数: 0

Abstract

. This work will offer an overview of the function that machine learning plays in the field of robotics. The relevance of machine learning in enabling robots to acquire knowledge via experience and adjust their behaviour in response to new situations is underlined. This allows robots to adapt to their surroundings and become more efficient. The article delves further into a number of different approaches to machine learning, such as reinforcement learning, imitation learning, and deep learning. These approaches are particularly well-suited for use in robots. Some of the more modern approaches, such as meta-learning, Bayesian optimisation, domain randomization, and adversarial training, are presented here. The final section of the paper discusses the topic of the future of robotics, focusing on the possibility that robots may become more powerful and capable in the future, eventually taking over jobs that are either too dangerous or too time-consuming for people to manage.
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机器人智能行为的学习与适应
。这项工作将提供机器学习在机器人领域中所起作用的概述。强调了机器学习在使机器人能够通过经验获取知识并根据新情况调整其行为方面的相关性。这使得机器人能够适应周围环境,变得更有效率。本文进一步探讨了许多不同的机器学习方法,如强化学习、模仿学习和深度学习。这些方法特别适合用于机器人。本文介绍了一些更现代的方法,如元学习、贝叶斯优化、领域随机化和对抗性训练。论文的最后一部分讨论了机器人未来的主题,重点关注机器人在未来可能变得更加强大和有能力的可能性,最终接管那些对人们来说太危险或太耗时的工作。
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来源期刊
Turkish Online Journal of Qualitative Inquiry
Turkish Online Journal of Qualitative Inquiry Social Sciences-Social Sciences (miscellaneous)
自引率
0.00%
发文量
4
审稿时长
12 weeks
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