Special Issue on Machine Learning for Robotics and Swarm Systems
Author(s) -
Masahito Yamamoto,
Takashi Kawakami,
Keitaro Naruse
Publication year - 2019
Publication title -
journal of robotics and mechatronics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.257
H-Index - 19
eISSN - 1883-8049
pISSN - 0915-3942
DOI - 10.20965/jrm.2019.p0519
Subject(s) - artificial intelligence , swarm robotics , robotics , computer science , swarm behaviour , robot , process (computing) , field (mathematics) , ant robotics , robotic paradigms , machine learning , mobile robot , robot control , mathematics , pure mathematics , operating system
In recent years, machine-learning applications have been rapidly expanding in the fields of robotics and swarm systems, including multi-agent systems. Swarm systems were developed in the field of robotics as a kind of distributed autonomous robotic systems, imbibing the concepts of the emergent methodology for extremely redundant systems. They typically consist of homogeneous autonomous robots, which resemble living animals that build swarms. Machine-learning techniques such as deep learning have played a remarkable role in controlling robotic behaviors in the real world or multi-agents in the simulation environment. In this special issue, we highlight five interesting papers that cover topics ranging from the analysis of the relationship between the congestion among autonomous robots and the task performances, to the decision making process among multiple autonomous agents. We thank the authors and reviewers of the papers and hope that this special issue encourages readers to explore recent topics and future studies in machine-learning applications for robotics and swarm systems.
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