Quantifying uncertainty in the prediction of soil properties using mid-infrared spectra

被引:0
作者
Omondiagbe, Osayande Pascal [1 ]
Roudier, Pierre [2 ]
Lilburne, Linda [1 ]
Ma, Yuxin [2 ]
Mcneill, Stephen [1 ]
机构
[1] Manaaki Whenua Landcare Res, Box 69040, Lincoln 7640, New Zealand
[2] Manawatu Mail Ctr, Manaaki Whenua Landcare Res, Private Bag 11052, Palmerston North 4442, New Zealand
关键词
Soil spectroscopy; Uncertainty quantification; Mid-infrared; Bayesian convolution neural networks; Generalised additive models; Partial least-squares regression; SPECTROSCOPY; MODELS;
D O I
10.1016/j.geoderma.2024.116954
中图分类号
S15 [土壤学];
学科分类号
0903 ; 090301 ;
摘要
Soil's pivotal role in environmental and agricultural processes underscores the importance of accurate soil property predictions for informed decisions and sustainable land management. Spectroscopic techniques, particularly mid-infrared (MIR) spectroscopy, have emerged as rapid and non-destructive tools for soil analysis. Despite advances in predicting soil properties using spectroscopy, quantifying prediction uncertainties has often been overlooked. Accurate uncertainty quantification helps risk assessment and decision-making processes. This study introduces an enhanced version of the variational inference technique to capture uncertainty when using Bayesian Convolutional Neural Networks (Bayesian CNNs). This Bayesian CNNs method was evaluated against two other methods - Bootstrapped Partial Least-Squares regression (Bootsrapped PLS) and Generalised Additive Models (GAM) for their ability to quantify uncertainty in six soil property predictions (clay, sand, silt, pH, phosphorus retention, and carbon) based on MIR spectroscopy. In terms of predictive performance and quality of prediction, our evaluation indicated that both GAMs and Bayesian CNNs outperformed PLS-BS for all six soil properties. The ability of GAMs and Bayesian CNNs to capture non-linear relationships in the data allowed for better fitting to the underlying patterns. Bayesian CNNs, in particular, demonstrated superior performance by combining accurate predictions with robust uncertainty quantification. Our results also showed that, on our dataset, bootstrapping failed to provide satisfactory prediction intervals. We suggest therefore that the evaluation of models should extend beyond standard validation metrics, which typically focuses on prediction accuracy, to include an assessment of the predicted uncertainty.
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页数:16
相关论文
共 43 条
  • [1] Near-infrared (NIR) and mid-infrared (MIR) spectroscopic techniques for assessing the amount of carbon stock in soils - Critical review and research perspectives
    Bellon-Maurel, Veronique
    McBratney, Alex
    [J]. SOIL BIOLOGY & BIOCHEMISTRY, 2011, 43 (07) : 1398 - 1410
  • [2] Bisong E., 2019, Build mach learn deep learn models google cloud platf compr guide begin, P215, DOI 10.1007/978-1-4842-4470-8_18
  • [3] Digital soil assessments: Beyond DSM
    Carre, F.
    McBratney, Alex B.
    Mayr, Thomas
    Montanarella, Luca
    [J]. GEODERMA, 2007, 142 (1-2) : 69 - 79
  • [4] Generalized additive modelling of sample extremes
    Chavez-Demoulin, V
    Davison, AC
    [J]. JOURNAL OF THE ROYAL STATISTICAL SOCIETY SERIES C-APPLIED STATISTICS, 2005, 54 : 207 - 222
  • [5] Dynamic generalised additive models (DGAMs) for forecasting discrete ecological time series
    Clark, Nicholas J.
    Wells, Konstans
    [J]. METHODS IN ECOLOGY AND EVOLUTION, 2023, 14 (03): : 771 - 784
  • [6] Predicting carbon and nitrogen by visible near-infrared (Vis-NIR) and mid-infrared (MIR) spectroscopy in soils of Northeast Brazil
    dos Santos, Uemeson Jose
    de Melo Dematte, Jose Alexandre
    Cezar Menezes, Romulo Simoes
    Dotto, Andre Carnieletto
    Barbosa Guimaraes, Clecia Cristina
    Rodrigues Alves, Bruno Jose
    Primo, Dario Costa
    de Sa Barretto Sampaio, Everardo Valadares
    [J]. GEODERMA REGIONAL, 2020, 23
  • [7] Efron B., 2021, Algorithms, evidence, and data science, V6
  • [8] Bayesian inference for generalized additive mixed models based on Markov random field priors
    Fahrmeir, L
    Lang, S
    [J]. JOURNAL OF THE ROYAL STATISTICAL SOCIETY SERIES C-APPLIED STATISTICS, 2001, 50 : 201 - 220
  • [9] Gal Y, 2016, PR MACH LEARN RES, V48
  • [10] A survey of uncertainty in deep neural networks
    Gawlikowski, Jakob
    Tassi, Cedrique Rovile Njieutcheu
    Ali, Mohsin
    Lee, Jongseok
    Humt, Matthias
    Feng, Jianxiang
    Kruspe, Anna
    Triebel, Rudolph
    Jung, Peter
    Roscher, Ribana
    Shahzad, Muhammad
    Yang, Wen
    Bamler, Richard
    Zhu, Xiao Xiang
    [J]. ARTIFICIAL INTELLIGENCE REVIEW, 2023, 56 (SUPPL 1) : 1513 - 1589