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유비쿼터스 컴퓨팅 환경에서 상황인식 기반 TV 응용 서버스
문애경,이강우,김형선,김현,이수원,Moon Ae-Kyung,Lee Kang-Woo,Kim Hyoung-Sun,Kim Hyun,Lee Soo-Won 한국통신학회 2006 韓國通信學會論文誌 Vol.31 No.7B
With the advent of ubiquitous computing environments, it has become increasingly important for applications to take full advantage of context information, such as the user's location, to offer greater services to the user without any explicit request. In this paper, we propose context-aware active services on the basis of CAMUS (Context-Aware Middleware for URC Systems). CAMUS is a middleware for providing context-aware applications with development and execution methodology. Accordingly, the applications developed by CAMUS respond in a timely fashion to contexts. To evaluate, we apply proposed active services to TV application domain. Therefore, we implement and experiment the TV contents recommendation service agent, control service agent and TV task based on CAMUS. The context-aware TV task is to recommend programs and control of TV according to user preference, location and voice commands. 유비쿼터스 컴퓨팅 환경이 도래함에 따라 사용자의 명시적 요구에 따라 제공되는 서비스 보다는 상황정보를 활용하여 능동적인 서비스를 지원할 수 있는 기술이 필요하다. 따라서 본 논문에서는 컨텐츠 추천 서비스 에이전트와 상황인식 기반 태스크를 포함하는 CAMUS(Context-Aware Middleware for URC Systems) 시스템을 이용한 상황인식 기반 능동형 서버스를 제안한다. CAMUS 는 사용자의 요청이 없더라도 로봇 또는 컴퓨터가 현재의 상황을 인식하여 그 상황에 맞는 정보와 서비스를 제공할 수 있도록 지원하는 소프트웨어 프레임워크이다. 제안된 서비스를 평가하기 위하여 TV 응용 도메인에 적용한다. 이를 위해, TV 프로그램 추천 및 TV 제어 서비스 에이전트 그리고 TV 도우미 태스크를 구현한다. TV 도우미 태스크는 사용자 위치, 음성 등의 상황 정보에 따라 TV 프로그램 추천 및 제어 서비스를 실행할 수 있도록 한다.
데이타베이스 공유 시스템에서 동적 부하분산을 지원하는 해쉬 조인 알고리즘들의 성능 평가
문애경(Ae Kyung Moon),조행래(Haeng Rae Cho) 한국정보처리학회 1999 정보처리학회논문지 Vol.6 No.12
Most of previous parallel join algorithm assume a database partition system(DPS), where each database partition is owned by a single processing node. While the DPS is novel in the sense that it can interconnect a large number of nodes and support a geographically distributed environment, it may suffer from poor facility for load balancing and system availability compared to the database sharing system(DSS).In this paper, we propose a dynamic load balancing strategy by exploiting the characteristics of the DSS, and then extend the conventional hash join algorithms to the DSS by using the dynamic load balancing strategy. With simulation studies under a wide variety of system to the DSS and database workloads, we analyze the effects of the dynamic load balancing strategy and differences in the performances of hash join algorithms in the DSS.
홍세운,문애경,리송,이인복,Hong, Se Woon,Moon, Ae Kyung,Li, Song,Lee, In Bok 한국농공학회 2015 한국농공학회논문집 Vol.57 No.3
Internal air temperature of greenhouse is an important variable that can be influenced by the complex interaction between outside weather and greenhouse inside climate. This paper focuses on a data-based model approach to predict internal air temperature of the greenhouse. External air temperature, solar radiation, wind speed and wind direction were measured next to an experimental greenhouse supported by the Electronics and Telecommunications Research Institute and used as input variables for the model. Internal air temperature was measured at the center of three sections of the greenhouse and used as an output variable. The proposed model consisted of a transfer function including the four input variables and tested the prediction accuracy according to the sampling interval of the input variables, the orders of model polynomials and the time delay variable. As a result, a second-order model was suitable to predict the internal air temperature having the predictable time of 20-30 minutes and average errors of less than ${\pm}1K$. Afterwards mechanistic interpretation was conducted based on the energy balance equation, and it was found that the resulting model was considered physically acceptable and satisfied the physical reality of the heat transfer phenomena in a greenhouse. The proposed data-based model approach is applicable to any input variables and is expected to be useful for predicting complex greenhouse microclimate involving environmental control systems.