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The Analysis of Soil Salinity in Saemangeum Agricultural Land using Spatial Analysis Method

공간분석 기법을 활용한 새만금 농업용지 토양 염도 분석

  • KIM, Young-Joo (Dept. of Cadastre and Civil Engineering, Vision University of Jeonju) ;
  • LEE, Geun-Sang (Dept. of Cadastre and Civil Engineering, Vision University of Jeonju)
  • 김영주 (전주비전대학교 지적토목학과) ;
  • 이근상 (전주비전대학교 지적토목학과)
  • Received : 2019.08.19
  • Accepted : 2019.09.23
  • Published : 2019.09.30

Abstract

In this study, we analyzed the soil salinity of Saemangeum agricultural land using GIS spatial interpolation method. Dominant soils series of experimental sites were Munpo (coarseloamy, mixed, non-acid, mesic, typically fluvaquents), which was based on the fluvio-marine deposit. Soil samples were periodically collected at 0~20cm and 20~40cm layer from each site. First, the distribution characteristics of EC, ESP, and SAR according to spatial interpolation were analyzed using 142 sample points. Through the error analysis of 143 validation points, the IDW method for EC and SAR, and the Kriging interpolation method for ESP were selected as the optimal interpolation method. Using the optimal interpolation method, the characteristics of EC, ESP, and SAR were analyzed for the change of soil salinity from 2014 to 2016. As a result, EC, ESP and SAR were decreased by 0.26mg/L, 5.97mg/L and 0.73mg/L respectively due to the dilution effect caused by rainfall.

본 연구에서는 GIS 기반 공간보간법을 적용하여 새만금 농업용지의 토양 염도를 분석하였다. 연구 대상지 공시토양은 하해혼성 충적층을 모재로 한 문포통 이었으며 토양 표토(0~20cm)와 심토(20~40cm)로 구분하여 토양 시료를 채취하였다. 먼저 142 지점의 샘플을 이용하여 공간보간에 따른 EC, ESP, SAR의 분포특성을 파악하였으며, 143 지점의 검증점에 대한 오차분석을 통해 EC와 SAR은 IDW 방법 그리고 ESP는 Kriging 보간법을 최적의 보간법으로 선정할 수 있었다. 최적의 보간법을 이용하여 EC, ESP, SAR 염분농도 항목별로 2014년에서 2016년 동안의 토양 염도 변화특성을 분석하였다. 분석 결과 EC, ESP, SAR는 강우발생에 따른 희석효과 등으로 각각 0.26mg/L, 5.97mg/L, 0.73mg/L 만큼 감소한 것으로 분석되었다.

Keywords

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