Swarm Robotics Manal AlBahlal 427220097.

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Presentation transcript:

Swarm Robotics Manal AlBahlal 427220097

Introduction and reasons Swarm robotics is large number of micro-robots that capable of performing tasks that are not possible with either a single micro-robot, or with a small group of micro-robots. Reasons: New and promise technology. It is challenge and wonderful idea to simulate the behavior of ant or bee that living in colonies.

What is swarm intelligence and swarm robotics Swarm intelligence (SI): is an artificial intelligence technique based around the study of collective behavior in decentralized, self-organized systems. To apply this technology: Swarm robotics

History of swarm robotics MINMAN Micron The I-SWARM project

Technology and design Technology: Power supply: Connection way: Nanorobotic Power supply: small lightweight battery ,vibration or light energy. Connection way: Wireless connection: radio or WI FI.

How it’s working Collective Perception and Understanding of Situations

Projects Swarm-bots MAV-Swarm

Conclusion Swarm robot design, technology and applications are developed, enhanced and growing day by day. swarm robots may one day be deployed by the thousands to monitor and sense the environment, inspect machinery, or even perform medical procedures inside the human body. The promise features that can give us attract further researches to be done. Even if the day of this swarm robots not happened but it coming soon by the new technologies and researches.