Multi-Sensor Prediction of Stand Volume by a Hybrid Model of Support Vector Machine for Regression Kriging

被引:17
|
作者
Chen, Lin [1 ,2 ]
Ren, Chunying [1 ]
Zhang, Bai [1 ]
Wang, Zongming [1 ,3 ]
机构
[1] Chinese Acad Sci, Northeast Inst Geog & Agroecol, Key Lab Wetland Ecol & Environm, Changchun 130102, Peoples R China
[2] Univ Chinese Acad Sci, Beijing 100049, Peoples R China
[3] Natl Earth Syst Sci Data Ctr, Beijing 100101, Peoples R China
来源
FORESTS | 2020年 / 11卷 / 03期
关键词
ALOS-2 L band SAR; Sentinel-1 C band SAR; Sentinel-2; MSI; ALOS DSM; stand volume; support vector machine for regression; ordinary kriging; GROWING STOCK VOLUME; SOIL ORGANIC-CARBON; ARTIFICIAL NEURAL-NETWORKS; REMOTE-SENSING DATA; STEM VOLUME; ABOVEGROUND BIOMASS; SPATIAL PREDICTION; FOREST BIOMASS; QUICKBIRD IMAGERY; MULTISOURCE DATA;
D O I
10.3390/f11030296
中图分类号
S7 [林业];
学科分类号
0829 ; 0907 ;
摘要
Quantifying stand volume through open-access satellite remote sensing data supports proper management of forest stand. Because of limitations on single sensor and support vector machine for regression (SVR) as well as benefits from hybrid models, this study innovatively builds a hybrid model as support vector machine for regression kriging (SVRK) to map stand volume of the Changbai Mountains mixed forests covering 171,450 ha area based on a small training dataset (n = 928). This SVRK model integrated SVR and its residuals interpolated by ordinary kriging. To determine the importance of multi-sensor predictors from ALOS and Sentinel series, the increase in root mean square error (RMSE) of SVR was calculated by removing the variable after the standardization. The SVRK model achieved accuracy with mean error, RMSE and correlation coefficient in -2.67%, 25.30% and 0.76, respectively, based on an independent dataset (n = 464). The SVRK improved the accuracy of 9% than SVR based on RMSE values. Topographic indices from L band InSAR, backscatters of L band SAR, and texture features of VV channel from C band SAR, as well as vegetation indices of the optical sensor were contributive to explain spatial variations of stand volume. This study concluded that SVRK was a promising approach for mapping stand volume in the heterogeneous temperate forests with limited samples.
引用
收藏
页数:19
相关论文
共 50 条
  • [31] Streamflow prediction using support vector regression machine learning model for Tehri Dam
    Sharma, Bhanu
    Goel, N. K.
    APPLIED WATER SCIENCE, 2024, 14 (05)
  • [32] Disaster prediction model based on support vector machine for regression and improved differential evolution
    Yu, Xiaobing
    NATURAL HAZARDS, 2017, 85 (02) : 959 - 976
  • [33] Damage tolerance reliability analysis combining Kriging regression and support vector machine classification
    Chocat, Rudy
    Beaucaire, Paul
    Debeugny, Lclc
    Lefebvre, Jean-Pierre
    Sainvitu, Caroline
    Breitkopf, Piotr
    Wyart, Eric
    ENGINEERING FRACTURE MECHANICS, 2019, 216
  • [34] Site Characterization Model Using Support Vector Machine and Ordinary Kriging
    Samui, Pijush
    Das, Sarat
    JOURNAL OF INTELLIGENT SYSTEMS, 2011, 20 (03) : 261 - 278
  • [35] Hybrid approach of selecting hyperparameters of support vector machine for regression
    Jeng, Jin-Tsong
    IEEE TRANSACTIONS ON SYSTEMS MAN AND CYBERNETICS PART B-CYBERNETICS, 2006, 36 (03): : 699 - 709
  • [36] Coal thickness prediction based on support vector machine regression
    Li Zhengwei
    Xia Shixiong
    Niuqiang
    Xia Zhanguo
    SNPD 2007: EIGHTH ACIS INTERNATIONAL CONFERENCE ON SOFTWARE ENGINEERING, ARTIFICIAL INTELLIGENCE, NETWORKING, AND PARALLEL/DISTRIBUTED COMPUTING, VOL 2, PROCEEDINGS, 2007, : 379 - +
  • [37] Flight delay prediction using support vector machine regression
    Luo, Yun-Qian
    Chen, Zhi-Jie
    Tang, Jin-Hui
    Zhu, Yong-Wen
    Jiaotong Yunshu Xitong Gongcheng Yu Xinxi/Journal of Transportation Systems Engineering and Information Technology, 2015, 15 (01): : 143 - 149
  • [38] Prediction of Sweetness by Multilinear Regression Analysis and Support Vector Machine
    Zhong, Min
    Chong, Yang
    Nie, Xianglei
    Yan, Aixia
    Yuan, Qipeng
    JOURNAL OF FOOD SCIENCE, 2013, 78 (09) : S1445 - S1450
  • [39] Support vector machine regression for volatile stock market prediction
    Yang, HQ
    Chan, LW
    King, I
    INTELLIGENT DATA ENGINEERING AND AUTOMATED LEARNING - IDEAL 2002, 2002, 2412 : 391 - 396
  • [40] Hybrid Machine Learning Model for Body Fat Percentage Prediction Based on Support Vector Regression and Emotional Artificial Neural Networks
    Hussain, Solaf A.
    Cavus, Nadire
    Sekeroglu, Boran
    APPLIED SCIENCES-BASEL, 2021, 11 (21):