TY - BOOK AU - Valentini,Gabriele ED - SpringerLink (Online service) TI - Achieving Consensus in Robot Swarms: Design and Analysis of Strategies for the best-of-n Problem T2 - Studies in Computational Intelligence, SN - 9783319536095 AV - Q342 U1 - 006.3 23 PY - 2017/// CY - Cham PB - Springer International Publishing, Imprint: Springer KW - Computational intelligence KW - Robotics KW - Automation KW - Artificial intelligence KW - Computational Intelligence KW - Robotics and Automation KW - Artificial Intelligence N1 - Introduction -- Part 1:Background and Methodology -- Discrete Consensus Achievement in Artificial Systems -- Modular Design of Strategies for the Best-of-n Problem -- Part 2:Mathematical Modeling and Analysis -- Indirect Modulation of Majority-Based Decisions -- Direct Modulation of Voter-Based Decisions -- Direct Modulation of Majority-Based Decisions -- Part 3:Robot Experiments -- A Robot Experiment in Site Selection -- A Robot Experiment in Collective Perception -- Part 4:Discussion and Annexes -- Conclusions -- Background on Markov Chains; Available to subscribing member institutions only. Доступно лише організаціям членам підписки N2 - This book focuses on the design and analysis of collective decision-making strategies for the best-of-n problem. After providing a formalization of the structure of the best-of-n problem supported by a comprehensive survey of the swarm robotics literature, it introduces the functioning of a collective decision-making strategy and identifies a set of mechanisms that are essential for a strategy to solve the best-of-n problem. The best-of-n problem is an abstraction that captures the frequent requirement of a robot swarm to choose one option from of a finite set when optimizing benefits and costs. The book leverages the identification of these mechanisms to develop a modular and model-driven methodology to design collective decision-making strategies and to analyze their performance at different level of abstractions. Lastly, the author provides a series of case studies in which the proposed methodology is used to design different strategies, using robot experiments to show how the designed strategies can be ported to different application scenarios UR - https://doi.org/10.1007/978-3-319-53609-5 ER -