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An Analysis of Temporal Characteristic Change for Various Hydrologic Weather Parameters (I) - On the Basic Statistic, Trend -

각종 수문기상인자의 경년별 특성변화 분석(I) - 기본통계량, 경향성을 중심으로 -

  • Lee, Jae-Joon (School of Civil and Environmental Engrg., Kumoh National Institute of Technoligy) ;
  • Jang, Joo-Young (School of Civil Engrg., Kumoh National Institute of Technology) ;
  • Kwak, Chang-Jae (School of Civil Engrg., Kumoh National Institute of Technology)
  • 이재준 (금오공과대학교 토목환경공학부) ;
  • 장주영 (금오공과대학교 대학원 토목공학과) ;
  • 곽창재 (금오공과대학교 대학원 토목공학과)
  • Published : 2010.04.30

Abstract

In this study, for the purpose of analyzing the characteristics of Korean hydrologic weather parameters, 9 hydrologic weather parameters data such as annual precipitation, annual rainy days, annual average relative humidity, annual average temperature, annual duration of sunshine, annual evaporation, annual duration of precipitation, annual snowy days and annual new snowy days are collected from 63 domestic meteorological stations that has the hydrologic weather parameters records more than 30 years. And the basic characteristics of hydrologic weather parameters through basic statistics, moving average and linear regression analysis are perceived. Also trend using the statistical methods like Hotelling-Pabst test and Mann-Kendall test about hydrologic weather parameters is analyzed. Through results of basic analysis, moving average and linear regression analysis it is shown that precipitation is concentrated in summer and deviation of precipitation for each season showed significant difference in accordance with Korean climate characteristics, besides the increase in annual precipitation and annual average temperature, annual average relative humidity and annual duration of sunshine reduction and annual rainy days is said to increase or decrease. The results of statistical analysis of trend are summarized as trend commonly appeared in annual average relative humidity and annual average temperature. and annual precipitation, annual rainy days and annual duration of sunshine showed different results according to area.

본 연구에서는 국내 기상관측소 중 관측년수가 30년 이상인 관측소 63개 지점을 대상으로 9개의 수문기상수문인자 즉, 연강수량, 연강수일수, 연평균기온, 연평균상대습도, 연일조시간, 연증발량, 연강수계속시간, 연적설일수, 연신적설일수 자료를 각 지점별로 수집하고, 수문기상인자에 대한 기본통계량, 선형회귀분석, 이동평균법을 통해 수문기상인자의 기본적인 특성을 알아보았다. 또한 통계학적기법인 Hotelling-Pabst 검정과 Mann-Kendall 검정을 통해 경향성을 분석하였다. 기본통계량 분석결과 우리나라의 기후특성상 여름철에 강우가 집중되며, 계절별 강수량의 편차가 큰 전형적인 특성을 확인할 수 있었다. 선형회귀 분석과 5년 이동평균법을 통해서는 시간이 경과함에 따라 연강수량과 연평균기온은 증가, 연평균상대습도와 연일조시간은 감소, 연강수일수는 지점별로 증가 또는 감소하는 추세를 보였다. Hotelling-Pabst 검정과 Mann-Kendall 검정을 통한 경향성분석에서는 연평균상대습도, 연평균기온에서 공통적으로 경향성이 나타났으며, 연강수량, 연강수일수, 연일조시간은 지역에 따라 상이한 결과를 보였다.

Keywords

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