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System Architecture of Ubiquitous House based on Human Behavior

거주자 행위기반 유비쿼터스 주택의 시스템 구조

  • Published : 2008.10.31

Abstract

The purpose of this study is to propose the system architecture of intelligent ubiquitous house which is able to team the human behavior by itself and to predict the forthcoming situation, and to provide the customized and personalized service based on human behavior. The suggestions for advanced intelligent ubiquitous house are as follows; 1) Service should be combined with dwellers' behavior pattern, location moving pattern and service pattern in order to provide the personalized and customized service. 2) The system should be equipped with 4 components such as Agent, Database, Working Memory, and Log Data. Especially. This proposed system architecture of advanced ubiquitous house, which are equipped with these 4 components, will be the basis of providing customized service to every dwellers by learning dwellers' behavior pattern, accumulating dwellers' information, and recognizing dweller's lift style as time goes by.

본 연구의 목적은 거주자의 명령 없이도 스스로 거주자의 행위를 배워서 다가올 상황을 예측하고 이에 맞춰진 개인화 된 서비스를 제공할 수 있는 지능형 유비쿼터스 주택의 시스템구조를 제안하는 것이다. 이러한 시스템 구조가 갖춰야 할 전제조건으로 거주자의 행위패턴, 공간이동패턴, 서비스패턴을 조합한 맞춤형 서비스개념 도입이 필수적임을 도출했고, 이를 구현할 수 있는 4가지 구성요소로 Agent, Database, Working Memory, Log Data가 필요함을 확인하였다. 특히 이들 4가지 구성요소를 갖는 지능형 유비쿼터스 주택의 시스템 구조는 처음에는 거주자 행위의 사례나 패턴이 저장되어 있지 않지만 시간이 지남에 따라 각 거주자에 대한 정보가 누적되고 거주자의 라이프스타일을 인식하게 되면서 거주자별 맞춤형 서비스를 제공할 수 있는 기반이 될 것이다.

Keywords

References

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