Chemometrics and Intelligent Laboratory Systems, Volume (207), Year (2020-11) , Pages (104194-104205)

Title : ( Minimum variance based-Bayes Combination for prediction of soil properties on Vis-NIR reflectance spectroscopy )

Authors: milad ghobadi tarnik , SEPEHR GHAFARI , tahereh bahraini , Hadi Sadoghi Yazdi ,

Citation: BibTeX | EndNote

Abstract

Traditional laboratory methods for determining soil properties require a great deal of time and expense, while reflectance spectroscopy technology is a fast, inexpensive, and convenient way to predict physical and chemical soil properties. This technology in the spectral range of 400 to 2500 nm (Vis-NIR) as a suitable alternative method to get soil properties are accompanied by problems and challenges to extract considered properties. In this paper, we propose Minimum Variance based-Bayes Combination (MVBC) method to predict the soil properties. In the proposed MVBC method, we design two steps, prediction and combination for the training phase. Firstly, in the prediction step, five regression methods, i.e., partial least square regression (PLSR), kernel Ridge regression (KRR), linear regression (LR), gradient boosting regression (GBR) and random forest (RF) method used to calculate and estimate nine soil properties, i.e., CaCo3, CEC, Clay, N, OC, PH in CaCl2, PH in H2O, Sand and Silt, separately. Secondly, in the combination step, the estimation errors of all regressions in the prediction step are determined to assign appropriate weight to each of them in the Bayesian framework based on minimum variance. These two steps are repeated until the final estimation error reaches an acceptable minimum value. Finally, these results and the trained system are used for the test phase. Experiments are reported to evaluate the effectiveness of the proposed MVBC method on real soil data, which shows the good performance of the proposed method with better results than other methods.

Keywords

, Bayes combiner; Minimum variance; Regression; Soil properties; Prediction; Vis, NIR spectroscopy
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@article{paperid:1082127,
author = {Ghobadi Tarnik, Milad and GHAFARI, SEPEHR and Bahraini, Tahereh and Sadoghi Yazdi, Hadi},
title = {Minimum variance based-Bayes Combination for prediction of soil properties on Vis-NIR reflectance spectroscopy},
journal = {Chemometrics and Intelligent Laboratory Systems},
year = {2020},
volume = {207},
month = {November},
issn = {0169-7439},
pages = {104194--104205},
numpages = {11},
keywords = {Bayes combiner; Minimum variance; Regression; Soil properties; Prediction; Vis-NIR spectroscopy},
}

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%0 Journal Article
%T Minimum variance based-Bayes Combination for prediction of soil properties on Vis-NIR reflectance spectroscopy
%A Ghobadi Tarnik, Milad
%A GHAFARI, SEPEHR
%A Bahraini, Tahereh
%A Sadoghi Yazdi, Hadi
%J Chemometrics and Intelligent Laboratory Systems
%@ 0169-7439
%D 2020

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