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Bio-Inspired Self-Organizing Robotic Systems /

Meng, Yan.

Bio-Inspired Self-Organizing Robotic Systems / edited by Yan Meng, Yaochu Jin. - x, 275 páginas recurso en línea. - Studies in Computational Intelligence, 355 1860-949X ; .

Springer eBooks

Part I:  Self-Organizing Swarm Robotic Systems   --   Part II: Self-Reconfigurable Modular Robots   --   Part III: Autonomous Mental Development in Robotic Systems   --   Part IV:  Special Applications   Part III: Autonomous Mental Development in Robotic Systems   --   Part IV:  Special Applications.

Self-organizing approaches inspired from biological systems, such as social insects, genetic, molecular and cellular systems under morphogenesis, and human mental development, has enjoyed great success in advanced robotic systems that need to work in dynamic and changing environments.  Compared with classical control methods for robotic systems, the major advantages of bio-inspired self-organizing robotic systems include robustness, self-repair and self-healing in the presence of system failures and/or malfunctions, high adaptability to environmental changes, and autonomous self-organization and self-reconfiguration without a centralized control. “Bio-inspired Self-organizing Robotic Systems” provides a valuable reference for scientists, practitioners and research students working on developing control algorithms for self-organizing engineered collective systems, such as swarm robotic systems, self-reconfigurable modular robots, smart material based robotic devices, unmanned aerial vehicles, and satellite constellations.  

9783642207600

10.1007/9783642207600 doi

Q342
Universidad Autónoma de Nuevo León
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