Literature DB >> 29482145

High resolution mapping of soil organic carbon stocks using remote sensing variables in the semi-arid rangelands of eastern Australia.

Bin Wang1, Cathy Waters2, Susan Orgill3, Jonathan Gray4, Annette Cowie5, Anthony Clark2, De Li Liu6.   

Abstract

Efficient and effective modelling methods to assess soil organic carbon (SOC) stock are central in understanding the global carbon cycle and informing related land management decisions. However, mapping SOC stocks in semi-arid rangelands is challenging due to the lack of data and poor spatial coverage. The use of remote sensing data to provide an indirect measurement of SOC to inform digital soil mapping has the potential to provide more reliable and cost-effective estimates of SOC compared with field-based, direct measurement. Despite this potential, the role of remote sensing data in improving the knowledge of soil information in semi-arid rangelands has not been fully explored. This study firstly investigated the use of high spatial resolution satellite data (seasonal fractional cover data; SFC) together with elevation, lithology, climatic data and observed soil data to map the spatial distribution of SOC at two soil depths (0-5cm and 0-30cm) in semi-arid rangelands of eastern Australia. Overall, model performance statistics showed that random forest (RF) and boosted regression trees (BRT) models performed better than support vector machine (SVM). The models obtained moderate results with R2 of 0.32 for SOC stock at 0-5cm and 0.44 at 0-30cm, RMSE of 3.51MgCha-1 at 0-5cm and 9.16MgCha-1 at 0-30cm without considering SFC covariates. In contrast, by including SFC, the model accuracy for predicting SOC stock improved by 7.4-12.7% at 0-5cm, and by 2.8-5.9% at 0-30cm, highlighting the importance of including SFC to enhance the performance of the three modelling techniques. Furthermore, our models produced a more accurate and higher resolution digital SOC stock map compared with other available mapping products for the region. The data and high-resolution maps from this study can be used for future soil carbon assessment and monitoring.
Copyright © 2018 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Digital soil mapping; Machine learning; Remote sensing; Seasonal fractional cover; Soil organic carbon stocks

Year:  2018        PMID: 29482145     DOI: 10.1016/j.scitotenv.2018.02.204

Source DB:  PubMed          Journal:  Sci Total Environ        ISSN: 0048-9697            Impact factor:   7.963


  2 in total

1.  Estimation of Soil Organic Carbon Content in the Ebinur Lake Wetland, Xinjiang, China, Based on Multisource Remote Sensing Data and Ensemble Learning Algorithms.

Authors:  Boqiang Xie; Jianli Ding; Xiangyu Ge; Xiaohang Li; Lijing Han; Zheng Wang
Journal:  Sensors (Basel)       Date:  2022-03-31       Impact factor: 3.576

2.  Mapping forest and site quality of planted Chinese fir forest using sentinel images.

Authors:  Chongjian Tang; Zilin Ye; Jiangping Long; Zhaohua Liu; Tingchen Zhang; Xiaodong Xu; Hui Lin
Journal:  Front Plant Sci       Date:  2022-10-04       Impact factor: 6.627

  2 in total

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