지상원격측정 센서의 반사율 지표를 활용한 사경재배 연초의 생체량 및 질소영양 평가

Evaluation of Biomass and Nitrogen Nutrition of Tobacco under Sand Culture by Reflectance Indices of Ground-based Remote Sensors

  • 투고 : 2008.12.07
  • 심사 : 2009.02.14
  • 발행 : 2009.04.30

초록

질소 스트레스 조건에서 재배된 연초 (Nicotiana tabacum L.)의 생체량 및 질소영양 상태와 원격측정센서 반사율 지표의 상호관계로부터 센서의 반사율 지표를 활용한 연초의 질소 덧거름 시비량 결정 및 수량 예측을 위한 도구로서의 활용 가능성을 평가하였다. 이식 후 30일째의 rNDVI와 gNDVI, 그리고 40일째의 반사율 지표들은 건물중 및 질소흡수량과 밀접한 정의 상관(P<0.05)을 보였다. 40일째 분광방사계의 gNDVI와 Crop Circle passive 센서의 aNDVI는 각각 건물중을 85%와 84%, 질소흡수량을 85%와 92% 설명하였다. 수량 및 수확기 질소 흡수량은 정식 후 35일, 40일, 45일, 50일, 수확기에 측정된 엽록소 측정값 및 반사율 지표와 고도로 유의성 있는 정의 상관을 보였다. 정식 후 40일째 분광방사계에 의한 gNDVI 지표는 연초 수량변동의 72% 설명 가능한 관계를 나타냈다. 따라서 연초의 경우 이식 후 40일째에 측정한 gNDVI 반사율 지표는 실시간에 비파괴적으로 수량을 예측할 수 있음을 시사하였다. 그리고 40일째 gNDVI로 계산한 충족지수는 질소시비수준의 73%를 설명할 수 있었다. 따라서 반사율 지표를 이용한 충족지수는 연초의 질소영양상태를 추정하여 위치별 변량시비가 가능한 방법으로 활용 가능할 것으로 판단되었다.

Remote sensing technique in agriculture can be used to identify chlorophyll content, biomass, and yield caused from N stress level. This study was conducted to evaluate biomass, N stress levels, and yield of tobacco (Nicotiana tabacum L.) under sand culture in a plastic film house using ground-based remote sensors. Nitrogen rates applied were 40, 60, 80, 100, 120, and 140 percent of N concentration in the Hoagland's nutrient solution. Sensor readings for reflectance indices were taken at 30, 35, 40, 45, 50 and 60 days after transplanting(DAT). Reflectance indices measured at 40th DAT were highly correlated with dry weight(DW) of tobacco leaves and N uptake by leaves. Especially, green normalized difference vegetation index(gNDVI) from spectroradiometer and aNDVI from Crop Circle passive sensor were able to explain 85% and 84% of DW variability and 85% and 92% of N uptake variability, respectively. All the reflectance indices measured at each sampling date during the growing season were significantly correlated with tobacco yield. Especially the gNDVI derived from spectroradiometer readings at the 40th DAT explained 72% of yield variability. N rates of tobacco were distinguished by sufficiency index calculated using the ratio of reflectance indices of stress to optimum plot of N treatment. Consequently results indicate that the reflectance indices by ground-based remote sensor can be used to predict tobacco yield and recommend the optimum application rate of N fertilizer for top dressing of tobacco.

키워드

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