Predicting the Soluble Solids of Apples by Near Infrared Spectroscopy (II) - PLS and ANN Models -

근적외선을 이용한 사과의 당도예측 (II) - 부분최소제곱 및 인공신경회로망 모델 -

  • ;
  • W. R. Hruschka (U.S.A. USDA, ARS, NRI, Instrumentation & Sensing Laboratory) ;
  • J. A. Abbott (U.S.A. USDA, ARS, NRI, Instrumentation & Sensing Laboratory) ;
  • ;
  • B. S. Park (U.S.A. USDA, ARS, NRI, Instrumentation & Sensing Laboratory)
  • 이강진 (농총진흥청 농업기계화연구소) ;
  • ;
  • ;
  • 노상하 (서울대학교 생물자원공학부 농업기계전공) ;
  • Published : 1998.12.01

Abstract

The PLS(Partial Least Square) and ANN(Artificial Neural Network) were introduced to develop the soluble solids content prediction model of apples which is followed by making a subsequent selection of photosensor. For the optimal PLS model, number of factors needed for spectrum analysis were increased until the convergence of prediction residual error sum of squares. Analysis has shown that even part of the overall wavelength with no pretreatment may turn out better performing. The best PLS model was found in the 800 to 1,100nm wavelength region without pretreatment of second derivation, having $R^2$=0.9236, bias= -0.0198bx, SEP=0.2527bx for unknown samples. On the other hand, for the ANN model the second derivation led to higher performance. On partial range of 800 to 1,100nm wavelengh region, prediction model with second derivation for unknown samples reached $R^2$=0.9177, SEP=0.2903bx in contrast to $R^2$=0.7507, SEP =0.4622bx without pretreatment.

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