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다중 스케일 지리가중회귀 모형과 KT 측정기 자료를 활용한 대구시 미세먼지에 대한 환경적 형평성 분석

Environmental Equity Analysis of Fine Dust in Daegu Using MGWR and KT Sensor Data

  • 조은아 (경북대학교 대학원 지리학과) ;
  • 전병운 (경북대학교 지리학과)
  • Euna CHO (Department of Geography, Kyungpook National University) ;
  • Byong-Woon JUN (Department of Geography, Kyungpook National University)
  • 투고 : 2023.12.08
  • 심사 : 2023.12.22
  • 발행 : 2023.12.31

초록

본 연구는 다중 스케일 지리가중회귀(MGWR: Multi-scale Geographically Weighted Regression) 모형과 KT(Korea Telecom Corporation) 측정기 자료를 활용하여 대구시를 사례로 미세먼지(PM10)에 대한 환경적 형평성을 분석하였다. 미세먼지를 측정하기 위한 기존의 국가 측정망 자료는 넓은 지역에서 드물게 분포하는 적은 수의 관측지점에서 수집된다. 이러한 단점을 보완하기 위하여 많은 수의 관측지점이 조밀하게 분포하는 KT 측정기 자료를 본 연구에서 사용하였다. MGWR 모형은 미세먼지의 농도와 사회경제적 변수 간의 공간적 관계에 있어서 공간적 이질성과 다중 스케일 맥락 효과를 다루기 위하여 사용되었다. 분석 결과에 의하면, 대구시에서 지가 및 외국인 비율과 관련하여 미세먼지의 분포에 따른 환경적 불형평성이 나타났다. 또한, MGWR 모형이 미세먼지의 농도와 사회경제적 변수 간의 공간적 관계를 설명하는데 있어서 OLS(Ordinary Least Square: 최소자승법)와 GWR(Geographically Weighted Regression: 지리가중회귀) 모형 보다 나은 설명력을 보였다. 본 연구는 미세먼지를 측정하기 위한 기존의 국가 측정망 자료의 보완자료로서 KT 측정기 자료의 가능성을 논증하였다.

This study attempted to analyze the environmental equity of fine dust(PM10) in Daegu using MGWR(Multi-scale Geographically Weighted Regression) and KT(Korea Telecom Corporation) sensor data. Existing national monitoring network data for measuring fine dust are collected at a small number of ground-based stations that are sparsely distributed in a large area. To complement these drawbacks, KT sensor data with a large number of IoT(Internet of Things) stations densely distributed were used in this study. The MGWR model was used to deal with spatial heterogeneity and multi-scale contextual effects in the spatial relationships between fine dust concentration and socioeconomic variables. Results indicate that there existed an environmental inequity by land value and foreigner ratio in the spatial distribution of fine dust in Daegu metropolitan city. Also, the MGWR model showed better the explanatory power than Ordinary Least Square(OLS) and Geographically Weighted Regression(GWR) models in explaining the spatial relationships between the concentration of fine dust and socioeconomic variables. This study demonstrated the potential of KT sensor data as a supplement to the existing national monitoring network data for measuring fine dust.

키워드

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