Litcius/Paper detail

Rapid estimation of soil Mn content by machine learning and soil spectra in large-scale

Min Zhou, Tao Hu, Mengting Wu, Chundi Ma, Chongchong Qi

2024Ecological Informatics39 citationsDOIOpen Access PDF

Abstract

Manganese (Mn) is an essential element in both plants and the human body; however, traditional methods for monitoring Mn in soil are costly and inefficient. As such, it is necessary to establish a model for environmental research uses that can accurately predict soil Mn content over large areas. This study aims to develop a multilayer perceptron (MLP) model capable of accurately predicting Mn content in diverse soils based on visible and near-infrared (VNIR) spectroscopy. A dataset containing 18,675 soil samples compiled from the Land Use and Coverage Area Frame Survey was used to train and adjust the model, following which the optimal model was applied globally. The correlation coefficient, root mean square error, and mean absolute error values for the optimal model on the test set were 0.76, 140.52, and 97.30, respectively. Feature importance analysis revealed crucial spectral bands at approximately 1400, 2200, 2300, and 2400–2500 nm, which enabled the Mn content to be estimated. The presence of these spectral bands indicates that clay minerals, H 2 O, and OH − groups had significant influence on Mn content. The MLP model developed can effectively identify regions with potentially high or low soil Mn content. With improvement of the spectral database, this model can provide effective assistance in evaluating soil Mn distribution at the global scale. • A neural network model was built to predict the soil Mn content in large-scale. • A large dataset including 18,675 topsoil samples was compiled. • The neural network model identified the most sensitive spectral bands for Mn. • Global application revealed the possible distribution of Mn-rich soils.

Topics & Concepts

Scale (ratio)Environmental scienceSoil scienceSpectral lineEnvironmental chemistryComputer scienceChemistryPhysicsGeographyCartographyAstronomyGeochemistry and Geologic MappingSoil Geostatistics and MappingImage Processing and 3D Reconstruction