Establishing a soil carbon flux monitoring system based on support vector machine and XGBoost

被引:0
作者
Hanwei Ding
机构
[1] Chinese Academy of Sciences,State Key Laboratory of Environmental Geochemistry, Institute of Geochemistry
[2] University of Chinese Academy of Sciences,undefined
来源
Soft Computing | 2024年 / 28卷
关键词
Carbon dioxide flux; Soil respiration; Support vector machines; XGBoost; Ensemble modeling; Continuous monitoring; CO;
D O I
暂无
中图分类号
学科分类号
摘要
Soil carbon fluxes are pivotal indicators of climate impacts, yet field-level monitoring remains challenging. This study puts forth an innovative integrated framework coupling support vector machine (SVM) and XGBoost algorithms to enable automated, precise tracking of peat soil carbon dioxide emissions. The core methodology handles a multi-dimensional dataset encompassing 72-h flux measurements from 360 intact tropical peat cores under controlled moisture conditions spanning 30–85% water-filled pore space across intact, logged, and oil palm converted sites. Rigorous preprocessing via outlier elimination and missing value imputation coupled with a tenfold cross-validation approach lays the robust analytical foundation. SVM first applies nonlinear transformation through Gaussian radial basis functions to classify complex soil respiration patterns. An optimized hyperplane decision boundary discretizes the high-dimensional space to separate classes. XGBoost subsequently constructs an ensemble of weighted decision trees targeting residual errors to incrementally boost predictions over 500 iterations. The integrated framework combines SVM and XGBoost outputs using performance-based weighting. This allows efficiently mapping intricate moisture, temperature, oxygen availability, microbial activity, and land use effects on peat soil carbon dioxide production and emission dynamics. Integrated predictions leverage complementary strengths. Peaking at 94.4% accuracy, 92% precision, 91% recall and 0.3 RMSE, SVM with XGBoost decisively surpasses neural networks, LSTM, gradient boosting and regression trees, proving optimized encoding of intricate moisture, texture and land use effects on soil respiration. Clustered data representations confirm feasibility of mapping complex emission behaviors across intact and drained sites. Overall, the dual framework delivers a precise, automated system to unlock new frontiers in responsive soil carbon monitoring and modeling at scale. Next phases should focus on expanding multivariate input data and assessing generalizability across soil and vegetation types.
引用
收藏
页码:4551 / 4574
页数:23
相关论文
共 50 条
  • [1] Establishing a soil carbon flux monitoring system based on support vector machine and XGBoost
    Ding, Hanwei
    SOFT COMPUTING, 2024, 28 (05) : 4051 - 4105
  • [2] Speaker verification system based on M-vector and support vector machine
    Long, Yanhua
    Dai, Lirong
    Huazhong Keji Daxue Xuebao (Ziran Kexue Ban)/Journal of Huazhong University of Science and Technology (Natural Science Edition), 2014, 42 (08): : 63 - 68
  • [3] Establishing chemical profiling for ecstasy tablets based on trace element levels and support vector machine
    Maione, Camila
    de Oliveira Souza, Vanessa C.
    Togni, Loraine R.
    da Costa, Jose L.
    Campiglia, Andres D.
    Barbosa, Fernando, Jr.
    Barbosa, Rommel M.
    NEURAL COMPUTING & APPLICATIONS, 2018, 30 (03) : 947 - 955
  • [4] Establishing chemical profiling for ecstasy tablets based on trace element levels and support vector machine
    Camila Maione
    Vanessa C. de Oliveira Souza
    Loraine R. Togni
    Jose L. da Costa
    Andres D. Campiglia
    Fernando Barbosa
    Rommel M. Barbosa
    Neural Computing and Applications, 2018, 30 : 947 - 955
  • [5] Transient stability assessment of power system based on support vector machine
    Ye, Shengyong
    Zheng, Yongkang
    Qian, Qingquan
    PROCEEDINGS OF THE INTERNATIONAL CONFERENCE ON INTELLIGENT SYSTEMS AND KNOWLEDGE ENGINEERING (ISKE 2007), 2007,
  • [6] Nonlinear Dead Zone System Identification Based on Support Vector Machine
    Du, Jingyi
    Wang, Mei
    SIXTH INTERNATIONAL SYMPOSIUM ON NEURAL NETWORKS (ISNN 2009), 2009, 56 : 235 - 243
  • [7] Microwave-based system for non-destructive monitoring water pipe networks using support vector machine
    Becari, Wesley
    de Oliveira, Arthur M.
    Peres, Henrique E. M.
    Correra, Fatima S.
    IET SCIENCE MEASUREMENT & TECHNOLOGY, 2016, 10 (08) : 910 - 915
  • [8] Control of chaotic system based on least squares support vector machine modeling
    Ye, MY
    ACTA PHYSICA SINICA, 2005, 54 (01) : 30 - 34
  • [9] Carbon Content Measurement of BOF by Radiation Spectrum Based on Support Vector Machine Regression
    Zhou Mu-chun
    Zhao Qi
    Chen Yan-ru
    Shao Yan-ming
    SPECTROSCOPY AND SPECTRAL ANALYSIS, 2018, 38 (06) : 1804 - 1808
  • [10] Support Vector Machine Based Activity Detection
    Uslu, Gamze
    Baydere, Sebnem
    2013 21ST SIGNAL PROCESSING AND COMMUNICATIONS APPLICATIONS CONFERENCE (SIU), 2013,