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박소영,홍상기,이강복,Park, Soyoung,Hong, Sanggi,Lee, Kangbok 한국전자통신연구원 2020 전자통신동향분석 Vol.35 No.1
This paper describes the development trends and service provision examples of disaster occurrence and spread prediction technology for various disasters such as tsunamis, floods, and fires. In terms of fires, we introduce the WIFIRE system, which predicts the spread of large forest fires in the United States, and the Metro21: Smart Cities Institute project, which predicts the risk of building fires. This paper describes the development trends in tsunami prediction technology in the United States and Japan using artificial intelligence (AI) to predict the occurrence and size of tsunamis that cause great damage to coastal cities in Japan, Indonesia, and the United States. In addition, it introduces the NOAA big data platform built for natural disaster prediction, considering that the use of big data is very important for AI-based disaster prediction. In addition, Google's flood forecasting system, domestic and overseas earthquake early warning system development, and service delivery cases will be introduced.
이병복,홍상기,이계선,김내수,고정길,Lee, Byung-Bog,Hong, SangGi,Lee, Kyeseon,Kim, Naesoo,Ko, JeongGil The Korea Institute of Information and Commucation 2013 정보와 통신 Vol.30 No.10
By interacting with external wireless sensors, smartphones can gather high-fidelity data on the surrounding environment to develop various environment-aware, personalized applications. In this work we introduce the sensor virtualization module (SVM), which virtualizes external sensors so that smartphone applications can easily utilize a large number of external sensing resources. Implemented on the Android platform, our SVM simplifies the management of external sensors by abstracting them as virtual sensors to provide the capability of resolving conflicting data requests from multiple applications and also allowing sensor data fusion for data from different sensors to create new customized sensors elements. We envision our SVM to open the possibilities of designing novel personalized smartphone applications.
김기태(Kitae Kim),곽철현(Chulhyun Kwak),홍상기(Sanggi Hong),박상준(Sangjun Park),김건욱(Keonwook Kim) 大韓電子工學會 2009 電子工學會論文誌-SP (Signal processing) Vol.46 No.6
본 논문에서는 이동 금속 물체 탐지 목적의 무선 센서네트워크 응용 시스템에 이용 가능한 저연산, 저전력 소모를 목적으로하는 간결한 신호처리 알고리즘을 제안한다. 일반적 센서노드에 주로 사용되는 자기센서의 물리적 특성을 분석하고 Exponential Average method(EA)를 사용하여 시간 영역에서 실시간으로 센서 신호를 처리한다. EA를 사용하여 잡음, 시간, 온도에 따른 자기장 변화, 외부 간섭에 강인하면서 임베디드 프로세서에 적합한 적은 메모리소모와 연산량을 가진다. 또한 통계적 분석을 통해 제안하는 알고리즘의 최적화된 파라미터 값을 도출하고 적용하였다. 보편적으로 사용되는 자기 센서 모델의 시뮬레이션 결과 5%의 오경보 확률에서 90%이상의 이동 물체를 탐지할 수 있었다. 그리고 직접 제작한 센서 노드의 모델링 및 이를 이용한 시뮬레이션과 외부 실험의 결과 60∼70% 이상의 탐지 확률을 확인하였다. This paper suggests the novel light-weight signal processing algorithm for wireless sensor network applications which needs low computing complexity and power consumption. Exponential average method (EA) is utilized by real time, to process the magnetometer signal which is analyzed to understand the own physical characteristic in time domain. EA provides the robustness about noise, magnetic drift by temperature and interference, furthermore, causes low memory consumption and computing complexity for embedded processor. Hence, optimal parameter of proposal algorithm is extracted by statistical analysis. Using general and precision magnetometer, detection probability over 90% is obtained which restricted by 5% false alarm rate in simulation and using own developed magnetometer H/W, detection probability over 60∼70% is obtained under 1∼5% false alarm rate in simulation and experiment.