Weighted Variable Optimization-Based Method for Estimating Soil Salinity Using Multi-Source Remote Sensing Data: A Case Study in the Weiku Oasis, Xinjiang, China

Author:

Jiang Zhuohan12,Hao Zhe345,Ding Jianli126,Miao Zhiguo345,Zhang Yukun345,Alimu Alimira345,Jin Xin345,Cheng Huiling345,Ma Wen12

Affiliation:

1. College of Geography and Remote Sensing Sciences, Xinjiang University, Urumqi 830046, China

2. Institute for Beautiful China, Xinjiang University, Urumqi 830046, China

3. Xinjiang Uygur Autonomous Region Comprehensive Land Management Center, Urumqi 830063, China

4. Ministry of Natural Resources Desert-Oasis Ecological Monitoring and Restoration Engineering Technology Innovation Center, Urumqi 830063, China

5. Field Scientific Observatory for Soil and Water Processes and Ecological Security in Oasis of Tarim River Headwaters Area, Ministry of Natural Resources of China, Aksu 843000, China

6. Xinjiang Institute of Technology, Aksu 843100, China

Abstract

Soil salinization is a significant global threat to sustainable agricultural development, with soil salinity serving as a crucial indicator for evaluating soil salinization. Remote sensing technology enables large-scale inversion of soil salinity, facilitating the monitoring and assessment of soil salinization levels, thus supporting the prevention and management of soil salinization. This study employs multi-source remote sensing data, selecting 8 radar polarization combinations, 10 spectral indices, and 3 topographic factors to form a feature variable dataset. By applying a normalized weighted variable optimization method, highly important feature variables are identified. AdaBoost, LightGBM, and CatBoost machine learning methods are then used to develop soil salinity inversion models and evaluate their performance. The results indicate the following: (1) There is generally a strong correlation between radar polarization combinations and vegetation indices, and a very high correlation between various vegetation indices and the salinity index S3. (2) The top five feature variables, in order of importance, are Aspect, VH2, Normalized Difference Moisture Index (NDMI), VH, and Vegetation Moisture Index (VMI). (3) The method of normalized weighted importance scoring effectively screens important variables, reducing the number of input feature variables while enhancing the model’s inversion accuracy. (4) Among the three machine learning models, CatBoost performs best overall in soil salt content (SSC) prediction. Combined with the top five feature variables, CatBoost achieves the highest prediction accuracy (R2 = 0.831, RMSE = 2.653, MAE = 1.034) in the prediction phase. This study provides insights for the further development and application of methods for collaborative inversion of soil salinity using multi-source remote sensing data.

Funder

esearch Project on Spatial and Temporal Evolution of Soil Salinization in the Aksu River Basin

Technology Innovation Team (Tianshan Innovation Team), Innovative Team for Efficient Utilization of Water Resources in Arid Regions

Key Project of Natural Science Foundation of Xinjiang Uygur Autonomous Region

National Natural Science Foundation of China

Publisher

MDPI AG

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