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Suitability Classes for Italian Ryegrass (Lolium multiflorum Lam.) Using Soil and Climate Digital Database in Gangwon Province

강원도에서 토양과 기후 데이터베이스를 이용한 이탈리안 라이그라스의 재배 적지 구분

  • 김경대 (강원도농업기술원) ;
  • 성경일 (강원대학교 동물생명시스템학과) ;
  • 정영상 (강원대학교 바이오자원환경학과) ;
  • 이현일 (강원대학교 바이오자원환경학과) ;
  • 김은정 (강원대학교 동물생명시스템학과) ;
  • ;
  • 조무환 (농어촌청소년육성재단) ;
  • 임영철 (국립축산과학원)
  • Received : 2012.11.07
  • Accepted : 2012.12.03
  • Published : 2012.12.31

Abstract

As a part of establishing suitability classification for forage production, use of the national soil and climate database was attempted for Italian ryegrass (Lolium multiflorum Lam., IRG) in Gangwon Province. The soil data base were from Heugtoram of the National Academy of Agricultural Science, and the climate data base were from the National Center for Agro-Meteorology, respectively. Soil physical properties including soil texture, drainage, slope available depth and surface rock contents, and soil chemical properties including soil acidity and salinity, organic matter content were selected as soil factors. The crieria and weighting factors of these elements were scored. Climate factors including average daily minimum temperature, average temperature from March to May, the number of days of which average temperature was higher than $5^{\circ}C$ from September to December, the number of days of precipitation and its amount from October to May of the following year were selected, and criteria and weighting factors were scored. The electronic maps were developed with these scores using the national data base of soil and climate. Based on soil scores, the area of Goseong, Sogcho, Gangreung, and Samcheog in east coastal region with gentle slope were classified as the possible and/or the proper area for IRG cultivation in Gangwon Province. The lands with gentle or moderate slope of Cheolwon, Yanggu, Chuncheon, Hweongseong, Pyungchang and Jeongsun in west side slope of Taebaeg mountains were classified as the possible and/or proper area as well. Based on climate score, the east coastal area of Goseong, Sogcho, Yangyang, Gangreung and Samcheog could be classified as the possible or proper area. Most area located on west side of the Taebaeg mountains were classified as not suitable for IRG production. In scattered area in Chuncheon and Weonju, where the scores exceeded 60, the IRG cultivation should be carefully managed for good production. For better application of electronic maps.

조사료 재배 적지 기준 설정을 위한 연구의 일환으로, 국가적 사업으로 구축되어 있는 토양과 기후 데이터베이스를 이용하여, Italian ryegrass (Lolium multiflorum Lam., IRG)를 대상으로 강원도에서의 재배 가능 지역을 분류하였다. 토양 데이터베이스는 국립농업과학원의 흙토람에서, 기상 데이터베이스는 국립농림기상센터에서 받았다. 토양 요인 항목으로는 토양 물리성인 토성, 배수, 경사, 유효 토심 및 암반노출 등, 토양 화학성인 토양 산도, 토양 염류도 및 유기물 함량 등을 선정하고, 이들의 기준값 및 가중치를 설정하였다. 기후 요인 항목으로는 1월 일최저평균온도, 3~5월의 평균온도, 9~12월의 $5^{\circ}C$ 이상 일수, 10월~익년 5월의 강수일수와 강수량을 선정하고 기준값 및 가중치를 설정하였다. 토양 요인의 관점에서 강원도에서 IRG의 재배가능지 및 재배최적지는 영동지방의 경우 고성, 속초, 양양, 강릉, 동해 및 삼척이며 주로 경사가 완만한 해안 지역에 분포하고 있었다. 영서지방은 철원, 양구, 춘천, 원주, 횡성, 평창 및 정선에 주로 분포하고 있었다. 단 영동지방의 경우 서쪽 급경사인 태백산맥은 재배불가지이며, 경사가 완만한 해안지역을 중심으로 재배가능지 이상이었다. 기후요인의 관점에서 강원도에서 IRG의 재배가능지 또는 재배최적지로 영동지방의 경우 고성, 속초, 양양, 강릉, 동해 및 삼척의 해안 지역이 해당되었다. 영서지방의 경우 대부분의 지역이 재배 불리 지역으로 분류되었다. 일부 춘천과 원주에서 60점 이상인 지역에서는 재배 관리에 신중을 기해야 한다.

Keywords

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