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Biologically-Inspired Collaborative Computing: IFIP 20th World Computer Congress, Second IFIP TC 10 International Conference on Biologically-Inspired Collaborative Computing, September 8-9, 2008, Milano, Italy 2008 ed. [Hardback]

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Look deep into nature and you will understand everything better. advised Albert Einstein. In recent years, the research communities in Computer Science, Engineering, and other disciplines have taken this message to heart, and a relatively new field of biologically-inspired computing has been born. Inspiration is being drawn from nature, from the behaviors of colonies of ants, of swarms of bees and even the human body. This new paradigm in computing takes many simple autonomous objects or agents and lets them jointly perform a complex task, without having the need for centralized control. In this paradigm, these simple objects interact locally with their environment using simple rules. Applications include optimization algorithms, communications networks, scheduling and decision making, supply-chain management, and robotics, to name just a few. There are many disciplines involved in making such systems work: from artificial intelligence to energy aware systems. Often these disciplines have their own field of focus, have their own conferences, or only deal with specialized s- problems (e.g. swarm intelligence, biologically inspired computation, sensor networks). The Second IFIP Conference on Biologically-Inspired Collaborative Computing aims to bridge this separation of the scientific community and bring together researchers in the fields of Organic Computing, Autonomic Computing, Self-Organizing Systems, Pervasive Computing and related areas. We are very pleased to have two very important keynote presentations: Swarm Robotics: The Coordination of Robots via Swarm Intelligence Principles by Marco Dorigo (Université Libre de Bruxelles, Belgium), of which an abstract is included in this volume.
Keynote Presentations.- Swarm Robotics: The Coordination of Robots via
Swarm Intelligence Principles.- Immuno-engineering.- Inspiration Based on
Insect Behaviors.- Heuristics for Uninformed Search Algorithms in
Unstructured P2P Networks Inspired by Self-Organizing Social Insect Models.-
Congestion Control in Ant Like Moving Agent Systems.- Resource-Aware
Clustering of Wireless Sensor Networks Based on Division of Labor in Social
Insects.- Sensors, Actuators and Networks.- Self-stabilizing Automata.-
Experiments with Biologically-Inspired Methods for Service Assignment in
Wireless Sensor Networks.- Robotics and Multi-Agent Systems.- Evolving
Collision Avoidance on Autonomous Robots.- Local Strategies for Connecting
Stations by Small Robotic Networks.- Measurement of Robot Similarity to
Determine the Best Demonstrator for Imitation in a Group of Heterogeneous
Robots.- Distributed Fault-Tolerant Robot Control Architecture Based on
Organic Computing Principles.- Immunocomputing and Biological-Inspiration.-
Intrusion Detection via Artificial Immune System: a Performance-based
Approach.- Immuno-repairing of FPGA designs.- An Organic Computing Approach
to Sustained Real-time Monitoring.- Applications.- A Case Study in
Model-driven Synthetic Biology.- Image Segmentation by a Network of Cortical
Macrocolumns with Learned Connection Weights.- Integrating Emotional
Competence into Man-Machine Collaboration.- Hardware Issues.- Self-optimized
Routing in a Network on-a-Chip.- On Robust Evolution of Digital Hardware.-
Collaboration.- A Model of Self-Organizing Collaboration.- Guiding
Exploration by Combining Individual Learning and Imitation in Societies of
Autonomous Robots.