Decentralized Coverage Control Problems For Mobile Robotic Sensor and Actuator Networks Decentralized Coverage Control Problems For Mobile Robotic Sensor and Actuator Networks
IEEE Press Series on Systems Science and Engineering

Decentralized Coverage Control Problems For Mobile Robotic Sensor and Actuator Networks

Andrey V. Savkin その他
    • ¥13,800
    • ¥13,800

発行者による作品情報

This book introduces various coverage control problems for mobile sensor networks including barrier, sweep and blanket. Unlike many existing algorithms, all of the robotic sensor and actuator motion algorithms developed in the book are fully decentralized or distributed, computationally efficient, easily implementable in engineering practice and based only on information on the closest neighbours of each mobile sensor and actuator and local information about the environment. Moreover, the mobile robotic sensors have no prior information about the environment in which they operation. These various types of coverage problems have never been covered before by a single book in a systematic way.
Another topic of this book is the study of mobile robotic sensor and actuator networks. Many modern engineering applications include the use of sensor and actuator networks to provide efficient and effective monitoring and control of industrial and environmental processes. Such mobile sensor and actuator networks are able to achieve improved performance and efficient monitoring together with reduction in power consumption and production cost.

ジャンル
職業/技術
発売日
2015年
7月31日
言語
EN
英語
ページ数
208
ページ
発行者
Wiley
販売元
John Wiley & Sons, Inc.
サイズ
8.9
MB
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