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Social Costs Estimation to Evaluate Urban Trip Activity - An application of student housing and social costs analysis for urban planning -

사회적 비용을 이용한 이동 행위 평가 모델 - 기숙사의 위치와 사회적 비용의 상관관계 분석을 통한 도시 계획으로의 활용방안 고찰 -

  • 신동윤 (성균관대학교 건축학과) ;
  • 송유미 (성균관대학교 미래도시융합공학과) ;
  • 김성아 (성균관대학교 건축학과)
  • Received : 2016.06.17
  • Accepted : 2016.06.27
  • Published : 2016.06.30

Abstract

Social costs analysis seeks to reveal the environmental effects of transportation policy. It delivers a sense of the effects of the public's daily travel and the costs that are or would be incurred from individual trips. Moreover, the accumulated total number of trips will uncover the effects of travel on society. This article shows the quantitative analysis of the economic outcomes of travel using social costs estimation methods. In order to support urban planning tasks, this research implemented analysis tool for social costs estimation by travel behavior. For a case study, a jave based application which can convert people's trip data into social costs is developed. the application used for simulating student-housing effects by estimating social costs changes. The analysis included the attributes, building scale and locational changes of the student housing as well as transforms of the students' trips.

Keywords

References

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