Recent Trends on the use of Infrared Spectroscopy for Soil Assessment DOI Open Access
Angelo Jamil Maia

Journal of Biomedical Research & Environmental Sciences, Journal Year: 2023, Volume and Issue: 4(11), P. 1618 - 1623

Published: Nov. 1, 2023

Infrared spectroscopy has emerged as a powerful tool to assess soil properties for both environmental science and agriculture. Here, we explore its recent trends developments assessment. This technique is an alternative that counters the limitations of traditional laboratory methods, offering cost-effective non-destructive approach. latest in innovation landscape infrared assessment are explored, providing insights on broad range applications into future trajectory this technology. Firstly, delve agriculture, highlighting potential prediction many attributes. Next, carbon assessment, emphasizing importance estimating organic stock quality. Soil pollution elemental contents addressed, focusing potentially toxic elements concentrations soil, strongly relevant monitoring. emerges valuable rapid non-hazardous content physical prediction, traditionally limited texture analysis, extended through application novel approaches, shedding light broader technology quality The ongoing statistical modeling technological also showcased, mainly focused machine learning methods. Lastly, spectral libraries emphasized, such Global Spectral Calibration Library Estimation Service, Brazilian Library. In conclusion, become important multitude across agricultural contexts. review underscores growing advancing standardization reproducibility sustainable procedures, ensuring brighter science.

Language: Английский

SHAP values accurately explain the difference in modeling accuracy of convolution neural network between soil full-spectrum and feature-spectrum DOI
Liang Zhong, Guo Xi, Meng Ding

et al.

Computers and Electronics in Agriculture, Journal Year: 2024, Volume and Issue: 217, P. 108627 - 108627

Published: Jan. 13, 2024

Language: Английский

Citations

21

Ensemble and transfer learning of soil inorganic carbon with visible near-infrared spectra DOI Creative Commons
Yu Wang, Keyang Yin, Bifeng Hu

et al.

Geoderma, Journal Year: 2025, Volume and Issue: 456, P. 117257 - 117257

Published: March 15, 2025

Language: Английский

Citations

2

Soil organic matter content prediction in tobacco fields based on hyperspectral remote sensing and generative adversarial network data augmentation DOI
Yu Xia,

Xueying Cheng,

Xiao Hu

et al.

Computers and Electronics in Agriculture, Journal Year: 2025, Volume and Issue: 233, P. 110164 - 110164

Published: March 5, 2025

Language: Английский

Citations

1

Quantitative prediction and visualization of matcha color physicochemical indicators using hyperspectral microscope imaging technology DOI
Dengshan Li, Bosoon Park, Rui Kang

et al.

Food Control, Journal Year: 2024, Volume and Issue: 163, P. 110531 - 110531

Published: April 18, 2024

Language: Английский

Citations

8

Minimize of moisture effects from laboratory simulations of in-situ Vis-NIR spectral for the prediction of soil salinity DOI
Yu Wang, Bifeng Hu,

Yongsheng Hong

et al.

Infrared Physics & Technology, Journal Year: 2024, Volume and Issue: 137, P. 105194 - 105194

Published: Feb. 2, 2024

Language: Английский

Citations

7

Whale optimization algorithm coupled with machine learning models for quantitative prediction of soil Ni content DOI
Chengbiao Fu,

Xiqin Feng,

Anhong Tian

et al.

Microchemical Journal, Journal Year: 2025, Volume and Issue: 209, P. 112709 - 112709

Published: Jan. 7, 2025

Language: Английский

Citations

0

Estimation of soil chromium content using visible and near-infrared spectroscopy coupled with discrete wavelet transform and long short-term memory model DOI
Chengbiao Fu, Shuang Cao, Anhong Tian

et al.

Advances in Space Research, Journal Year: 2025, Volume and Issue: unknown

Published: Jan. 1, 2025

Language: Английский

Citations

0

Mapping the distribution and magnitude of soil inorganic and organic carbon stocks across Australia DOI Creative Commons
Wartini Ng, José Padarian, Mercedes Román Dobarco

et al.

Geoderma, Journal Year: 2025, Volume and Issue: 456, P. 117239 - 117239

Published: March 8, 2025

Language: Английский

Citations

0

Spatial Inversion of Soil Organic Carbon Content Based on Hyperspectral Data and Sentinel‐2 Images DOI

Xiaoyu Huang,

Xuemei Wang, Yanping Guo

et al.

Land Degradation and Development, Journal Year: 2025, Volume and Issue: unknown

Published: April 3, 2025

ABSTRACT Given that Sentinel‐2 (S2) multispectral images provide extensive spatial information and ground‐based hyperspectral data capture refined spectral characteristics, their integration can enhance both the comprehensiveness precision of surface acquisition. This study seeks to leverage these sources develop an optimized estimation model for accurately monitoring large‐scale soil organic carbon (SOC) content, thereby addressing current limitations in multi‐source fusion research. In this study, using mathematical transformation discrete wavelet transform process ground delta oasis Weigan Kuqa rivers Xinjiang, China, combination with S2 image, machine learning algorithms were employed construct models SOC content total variables characteristic variables, inversion oases was carried out. We found R ‐DWT‐H9 significantly correlation between ( p < 0.001). The accuracy constructed based on feature selected by SPA IRIV generally higher than variable models. IRIV‐RFR had highest stable capability. values 2 training validation sets 0.66 0.64, respectively. RMSE 1.5 g∙kg −1 , RPD > 1.4. interior oasis, mainly deficient (61.35%) or relatively (8.17%), while periphery it extremely (30.48%). Combine providing a reference evaluating fertility arid regions.

Language: Английский

Citations

0

Soil Organic Carbon Prediction and Mapping in Morocco Using PRISMA Hyperspectral Imagery and Meta-Learner Model DOI Creative Commons
Yassine Bouslıhım, Abdelkrim Bouasria, Budiman Minasny

et al.

Remote Sensing, Journal Year: 2025, Volume and Issue: 17(8), P. 1363 - 1363

Published: April 11, 2025

Accurate mapping of soil organic carbon (SOC) supports sustainable land management practices and accounting initiatives for mitigating climate change impacts. This study presents a novel meta-learner framework that combines multiple machine learning algorithms spectra processing to optimize SOC prediction using the PRISMA hyperspectral satellite imagery in Doukkala plain Morocco. The employs two-layer structure models. first layer consists Random Forest (RF), Support Vector Regression (SVR), Partial Least Squares (PLSR). These base models were configured data smoothing, transformation, spectral feature selection techniques, based on 70/30% split. second utilizes ridge regression model as integrate predictions from Results indicated RF SVR performance improved primarily with selection, while PLSR was most influenced by smoothing. approach outperformed individual models, achieving an average relative improvement 48.8% over single R2 0.65, RMSE 0.194%, RPIQ 2.247. contributes development methodologies predicting properties data.

Language: Английский

Citations

0