SEAug 28, 2018

Comparison of Self-Aware and Organic Computing Systems

arXiv:1809.10846v11 citations
Originality Synthesis-oriented
AI Analysis

It provides a theoretical comparison for researchers in autonomous systems, but is incremental as it reviews existing concepts without new empirical results.

This paper compares self-aware and organic computing systems by discussing their definitions, properties, and architectures to address the need for autonomous, adaptive systems in complex environments.

With increasing complexity and heterogeneity of computing devices, it has become crucial for system to be autonomous, adaptive to dynamic environment, robust, flexible, and having so called self-*properties. These autonomous systems are called organic computing(OC) systems. OC system was proposed as a solution to tackle complex systems. Design time decisions have been shifted to run time in highly complex and interconnected systems as it is very hard to consider all scenarios and their appropriate actions in advance. Consequently, Self-awareness becomes crucial for these adaptive autonomous systems. To cope with evolving environment and changing user needs, system need to have knowledge about itself and its surroundings. Literature review shows that for autonomous and intelligent systems, researchers are concerned about knowledge acquisition, representation and learning which is necessary for a system to adapt. This paper is written to compare self-awareness and organic computing by discussing their definitions, properties and architecture.

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