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Evaluation of Feed Values for Imported Hay Using Near Infrared Reflectance Spectroscopy

근적외선분광법을 이용한 수입 건초의 사료가치 평가

  • Received : 2019.12.02
  • Accepted : 2019.12.06
  • Published : 2019.12.31

Abstract

Near infrared reflectance spectroscopy (NIRS) has become increasingly used as a rapid and accurate method of evaluating some chemical compositions in forages. The objective of this study was to evaluate the potential of NIRS, applied to imported forage, to estimate the moisture and chemical parameters for imported hays. A population of 392 imported hay representing a wide range in chemical parameters was used in this study. Samples of forage were scanned at 1 nm intervals over the wavelength range 680-2500nm and the optical data was recorded as log 1/Reflectance(log 1/R), which scanned in intact fresh condition. The spectral data were regressed against a range of chemical parameters using partial least squares(PLS) multivariate analysis in conjunction with spectral math treatments to reduced the effect of extraneous noise. 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 results of this study showed that NIRS predicted the chemical parameters with very high degree of accuracy. The R2 and SECV for imported hay calibration were 0.92(SECV 0.61%) for moisture, 0.98(SECV 0.65%) for acid detergent fiber, 0.97(SECV 0.40%) for neutral detergent fiber, 0.99(SECV 0.06%) for crude protein and 0.97(SECV 3.04%) for relative feed value on a dry matter(%), respectively. Results of this experiment showed the possibility of NIRS method to predict the moisture and chemical composition of imported hay in Korea for routine analysis method to evaluate the feed value.

본 연구는 근적외선분광법을 이용한 수입 건초의 신속한 품질 평가를 위하여 2016년부터 2019년까지 전국 건초 수입상, TMR 회사와 축산 농가에서 화본과와 두과 수입 목건초 392점을 수집하여 수입 건초의 품질평가 NIR-DB를 구축하고 구축된 DB를 바탕으로 최적의 품질평가 검량식을 개발하고 검증하였다. 수집된 건초 시료는 근적외선 분광기를 이용하여 스펙트라를 측정한 후 측정된 스펙트라와 실험실 분석값간에 상관관계를 이용한 다변량회귀분석법을 통하여 검량식을 작성한 다음 각 성분별로 예측 정확성을 평가하였다. 수입건초의 수분함량 평가에 대한 예측 능력은 각각 SEC 0.50%(R2=0.92)와 SECV 0.61%(R2=0.87)로 나타났으며 ADF와 NDF 함량의 예측능력은 각각 SEC 0.56% (R2=0.98), SECV 0.65%(R2=0.97) 및 SEC 0.36%(R2=0.97), SECV 0.40%(R2=0.95)로 나타났다. 조단백질 함량은 각각 SEC 0.04%(R2=0.99)와 SECV 0.06%(R2=0.98)로 조사료의 사료가치 평가 성분 중 가장 우수한 예측능력을 나타내었으며 총가소화양분 (TDN)과 건초의 품질 등급인 상대사료가치 (RFV)의 예측 능력은 각각 SEC 0.44%(R2=0.98), SECV 0.51%(R2=0.96) 및 SEC 2.63% (R2=0.97), SECV 3.04%(R2=0.96)로 나타났다. 이상의 결과를 종합해보면 근적외선분광법을 이용하여 국내에 수입된 외국 건초의 수분함량과 각종 영양성분을 적은 오차범위에서 분석·평가가 가능하였다.

Keywords

References

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