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근적외선분광법을 이용한 수입건초의 Ca과 P 함량 예측

Predicting Calcium and Phosphorus Concentrations in Imported Hay by near Infrared Reflectance Spectroscopy

  • Lee, Bae Hun (National Institute of Animal Science, RDA) ;
  • Kim, Ji Hye (National Institute of Animal Science, RDA) ;
  • Oh, Mirae (National Institute of Animal Science, RDA) ;
  • Lee, Ki Won (National Institute of Animal Science, RDA) ;
  • Park, Hyung Soo (National Institute of Animal Science, RDA)
  • 투고 : 2021.02.15
  • 심사 : 2021.03.16
  • 발행 : 2021.03.31

초록

본 연구는 근적외선분광법을 활용한 조사료의 Ca과 P 함량의 분석 가능성을 검토하고 예측 정확성이 높은 검량식을 개발하기 위하여 전국 건초 수입상, TMR 회사와 축산 농가에서 수집한 수입 화본과와 두과 목건초 392점 중에서 무작위로 126점을 선택하여 검량식 개발에 이용하였다. 선택된 시료는 시료측정 전처리 방법을 생시료 처리와 건조분쇄 처리구로 나누어 근적외선 스펙트라를 측정하고 근적외선 파장대역을 가시영역, 근적외선, 전파장영역으로 구분하여 검량식을 개발하여 예측 정확성을 평가하였다. 수입건초의 Ca과 P 함량에 대한 예측 정확성은 시료 전처리 방법과 파장대역별에 따라 다양하게 나타났으며, 시료전처리 방법은 건조하여 분쇄하는 방법과 파장대역별로는 근적외선 파장(1,100~2,500 nm)대역에서 예측 정확성이 높게 나타났다. 수입건초의 Ca 함량 예측 정확성은 근적외선 파장대역에서 건조분쇄 측정이 SEC 292.3 mg/kg(R2=0.99)와 SECV 468.6 mg/kg(R2=0.98)로 가장 정확한 예측능력을 나타냈다. 수입건초의 P 함량은 근적외선 파장대역에서 건조분쇄 측정이 SEC 204.4 mg/kg(R2=0.91)과 SECV 224.7 mg/kg(R2=0.89)로 가장 정확한 예측능력을 나타냈다. 이상의 결과를 종합해보면 근적외선분광법을 이용하여 조사료의 주요 광물질인 Ca과 P 함량을 신속하고 정확하게 분석이 가능하였으며, 시료 측정시 건조하여 분쇄하는 전처리 방법과 근적외선 파장대역에서 검량식을 개발하는 것이 예측 정확성이 가장 우수한 것으로 나타났다.

Near infrared reflectance spectroscopy (NIRS) is routinely used for the determination of nutrient components of forages. However, little is known about the impact of sample preparation and wavelength on the accuracy of the calibration to predict minerals. This study was conducted to assess the effect of sample preparation and wavelength of near infrared spectrum for the improvement of calibration and prediction accuracy of Calcium (Ca) and Phosphorus (P) in imported hay using NIRS. The samples were scanned in reflectance in a monochromator instrument (680-2,500 nm). Calibration models (n = 126) were developed using partial least squares regression (PLS) based on cross-validation. The optimum calibrations were selected based on the highest coefficients of determination in cross validation (R2) and the lowest standard error of cross-validation (SECV). The highest R2 and the lowest SECV were obtained using oven-dry grinded sample preparation and 1,100-2,500 nm wavelength. The calibration (R2) and SECV were 0.99 (SECV: 468.6) for Ca and 0.91 (SECV: 224.7) for P in mg/kg DM on a dry weight, respectively. Results of this experiment showed the possibility of NIRS method to predict mineral (Ca and P) concentration of imported hay in Korea for routine analysis method to evaluate the feed value.

키워드

참고문헌

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