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Design of Convergence Platform for companion animal Personalized Services

반려동물 개인화서비스를 위한 융합 플랫폼 설계

  • Received : 2016.10.17
  • Accepted : 2016.12.20
  • Published : 2016.12.31

Abstract

Nowadays, real-time devices that provide health care for a companion animal is being developed by IoT technology and its demand such as smart puppy tag is increasing. However, it is difficult for IoT devices of companion animals to process complex nature due to miniaturized hardware and constructive nature. There is a clear limit to custom advanced features like health care implementation. This paper designs an integrated platform with statistical analysis which makes it possible to customized services such as feed production, pharmaceutical production, and health care for each companion animal. Middleware that collects sensor information, customer's spending pattern and information from Social Network Service is also designed by making use of IoT devices which companion animals wear. Furthermore, the paper designed data analyzer which analyzes and refines data from collected information that can be applied to personalized services.

최근 스마트 강아지인식표 등의 사물인터넷(Internet of Things, IoT) 기술을 활용하여 반려동물의 건강관리를 실시간으로 수행하는 기기가 개발되고 수요 또한 증가하고 있으나 반려동물용 IoT 기기들은 복잡한 처리가 어렵고, 단순히 센서 정보을 이용 건강상태를 파악하기 때문에 고급기능을 구현하는데 한계가 있다. 본 논문은 통계적 분석을 활용하여 맞춤형 사료제작, 의약품제작, 반려동물 건강관리 등의 반려동물에게 맞춤형 개인화서비스가 가능한 통합 플랫폼을 설계한다. 반려동물이 착용하고 있는 IoT기기로부터의 센서 정보와 쇼핑몰에서의 고객의 구매 패턴 정보, 소셜미디어(SNS) 정보를 수집하는 미들웨어를 설계 한다. 또한 이를 통해 수집한 데이터를 데이터 베이스화하고 개인화서비스에 활용될 수 있도록 수집된 정보를 정제하고 분석 및 추론 가능한 분석기를 설계 한다.

Keywords

References

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