Multi-parameter Soil Property Prediction Incorporating Mid-infrared Spectroscopy and Dropout Sequential Artificial Neural Network

被引:0
|
作者
Digambar A. Jakkan
Pradnya Ghare
Chandrashekhar Sakode
机构
[1] Indian Institute of Information Technology Nagpur (IIITN),
[2] Visvesvaraya National Institute of Technology (VNIT Nagpur),undefined
来源
关键词
Soil property prediction; Mid-infrared spectroscopy (MIR); Machine learning; Deep learning; DrSeq-ANN;
D O I
暂无
中图分类号
学科分类号
摘要
Given the facilitation of efficient soil data acquisition, light diffraction in both field and laboratory settings allows for applying infrared spectroscopy. This leads to the development of soil spectral library at regional and international levels owing to the extensive interest in the mid-infrared spectroscopy (MIR) domain. Spectroscopy practices meritoriously evaluate various soil constituents such as total nitrogen (TN), organic carbon (OC), potassium (K), and phosphorus (P) within the mid-infrared range, utilizing direct spectral responses and advanced modeling, mostly while analyzing fresh soil samples (undisturbed, wet). Machine and deep learning approaches potentially revolutionize soil spectral data modeling, demonstrating their transformative impact in various fields of study. A novel technique called DrSeq-ANN (dropout sequential artificial neural network), which falls under DL algorithms for predicting soil properties based on raw soil spectra, is proposed and evaluated in this investigation. The National Soil Survey Center-Kellogg Soil Survey Laboratory of the United States Department of Agriculture (USDA) database, comprising nearly 860 topsoil measurements from Kansas State having biological and physicochemical parameters, was employed. DrSeq-ANN outperformed other algorithms when fed to the pre-processed data with the help of techniques such as initial derivative, inverse derivative, logarithmic transformation with a base of 10 (Log10x), and logarithmic derivative. Specifically, while forecasting soil organic carbon, the DrSeq-ANN algorithm achieved R2 value of 0.79 and RMSE value of 0.03 with the logarithmic pre-processed method. With the competencies of the ANN model, DrSeq-ANN proved to be more accurate in prediction. The study confirmed that DrSeq-ANN can be trained in a multi-task setting to forecast the 4 soil factors (TN, OC, P, and K).
引用
收藏
相关论文
共 50 条
  • [21] Simultaneous Determination of Some Components in Detergent Washing Powder by Mid-Infrared Spectrometry and Artificial Neural Network
    Khanmohammadi, Mohammadreza
    Garmarudi, Amir Bagheri
    Rouchi, Mohammad Babaei
    Khoddami, Nafiseh
    JOURNAL OF AOAC INTERNATIONAL, 2011, 94 (01) : 322 - 326
  • [22] Fine grinding is needed to maintain the high accuracy of mid-infrared diffuse reflectance spectroscopy for soil property estimation
    Wijewardane, Nuwan K.
    Ge, Yufeng
    Sanderman, Jonathan
    Ferguson, Richard
    SOIL SCIENCE SOCIETY OF AMERICA JOURNAL, 2021, 85 (02) : 263 - 272
  • [23] Grade classification of human glioma using a convolutional neural network based on mid-infrared spectroscopy mapping
    Peng, Wenyu
    Chen, Shuo
    Kong, Dongsheng
    Zhou, Xiaojie
    Lu, Xiaoyun
    Chang, Chao
    JOURNAL OF BIOPHOTONICS, 2022, 15 (04)
  • [24] Sequential data-fusion of near-infrared and mid-infrared spectroscopy data for improved prediction of quality traits in tuber flours
    Kandpal, Lalit Mohan
    Mouazen, Abdul M.
    Masithoh, Rudiati Evi
    Mishra, Puneet
    Lohumi, Santosh
    Cho, Byoung-Kwan
    Lee, Hoonsoo
    INFRARED PHYSICS & TECHNOLOGY, 2022, 127
  • [25] Multi-parameter methane measurement using near-infrared tunable diode laser absorption spectroscopy based on back propagation neural network
    Li, Yafei
    Yang, Shuo
    Lu, Yang
    Ma, Zhuo
    Song, Fang
    Zheng, Kaiyuan
    Li, Xiuying
    Wang, Yiding
    Tittel, Frank K.
    Zheng, Chuantao
    INFRARED PHYSICS & TECHNOLOGY, 2022, 125
  • [26] Use of mid-infrared spectroscopy in the diffuse-reflectance mode for the prediction of the composition of organic matter in soil and litter
    Ludwig, Bernard
    Nitschke, Renate
    Terhoeven-Urselmans, Thomas
    Michel, Kerstin
    Flessa, Heiner
    JOURNAL OF PLANT NUTRITION AND SOIL SCIENCE, 2008, 171 (03) : 384 - 391
  • [27] The Performance of Visible, Near-, and Mid-Infrared Reflectance Spectroscopy for Prediction of Soil Physical, Chemical, and Biological Properties
    Soriano-Disla, Jose M.
    Janik, Les J.
    Rossel, Raphael A. Viscarra
    Macdonald, Lynne M.
    McLaughlin, Michael J.
    APPLIED SPECTROSCOPY REVIEWS, 2014, 49 (02) : 139 - 186
  • [28] Soil organic carbon prediction using visible-near infrared reflectance spectroscopy employing artificial neural network modelling
    George, Justin K.
    Kumar, Suresh
    Raj, R. Arya
    CURRENT SCIENCE, 2020, 119 (02): : 377 - 381
  • [29] Prediction of methane emissions using rumination time and milk mid-infrared spectral data via artificial neural networks
    Lopes, Lucas S. F.
    Shadpour, Saeed
    Miglior, Filippo
    Tulpan, Dan
    Schenkel, Flavio S.
    Baes, Christine F.
    JOURNAL OF ANIMAL SCIENCE, 2024, 102
  • [30] Prediction of methane emissions using rumination time and milk mid-infrared spectral data via artificial neural networks
    Lopes, Lucas S. F.
    Shadpour, Saeed
    Miglior, Filippo
    Tulpan, Dan
    Schenkel, Flavio S.
    Baes, Christine F.
    JOURNAL OF ANIMAL SCIENCE, 2024, 102 : 319 - 320