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대용량 정보처리기술을 통한 U-City 통합플랫폼 개선방안에 관한 연구

Research about the Methods to Improve the U-City Platform through High-Capacity Information Processing Technologies

  • 투고 : 2015.04.20
  • 심사 : 2015.06.23
  • 발행 : 2015.06.30

초록

현대도시와 환경에서 발생하는 여러 종류의 사회문제를 해결하기 위한 목적으로 다양한 정보를 처리하고 운영하는 U-City 통합플랫폼이 도입되었다. 시간이 지나감에 따라 더 많은 자료를 처리해야 하는 어려움과 더불어 제한된 자원으로 적시의 필요한 정보를 찾는 사용자들의 요구를 만족시켜야 하는 어려움에 직면하게 되었다. 플랫폼의 운영비가 더 증가하면 할수록, 이를 유지하고 지속적인 투자를 해야 하는가에 대한 우려가 거세졌다. 이에 우리는 기존의 플랫폼의 한계점을 집어보고, 새로운 요구가 무엇인지 분석하고 기능 등을 개선하고자 하는 항목을 도출하였다. 이를 위해, 대용량 데이터를 처리할 수 있는 새로운 기술을 적용하였으며 전산환경의 기반을 제시하였다. U-City 통합플랫폼의 고도화로 비용절감의 효과와 편익 증가를 기대한다.

It was necessary for us to establish a U-City Integrated platform to handle information and to operate the processes in order to solve various social problems in the modern cities and environment. As time has passed, we have confronted to difficulty in handling massive data with limited storage and computing environment and in not satisfying all the new requirements and on time information from the publics. The bigger the cost of the operation of the platform got, the more doubts to keep and invest more to upgrade it arose. Here, we investigated the limitations of the U-city platforms and analyzed the additional requirements and each function of the platform. In order to meet the requirement, we applied new technologies to deal with massive data and suggested the infrastructure of computing environment. We will be expecting the cost decreasing effects and the benefit increasing effects from the enhancement of U-City platform.

키워드

참고문헌

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피인용 문헌

  1. Efficient in-memory processing for huge amounts of heterogeneous geo-sensor data vol.24, pp.3, 2016, https://doi.org/10.1007/s41324-016-0029-7