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基于多光谱遥感的裸土土壤含水量反演研究

王启元 赵艳玲 房铄东 杨熙 周虎 刘金凤

王启元, 赵艳玲, 房铄东, 杨熙, 周虎, 刘金凤. 基于多光谱遥感的裸土土壤含水量反演研究[J]. 矿业科学学报, 2020, 5(6): 608-615. doi: 10.19606/j.cnki.jmst.2020.06.002
引用本文: 王启元, 赵艳玲, 房铄东, 杨熙, 周虎, 刘金凤. 基于多光谱遥感的裸土土壤含水量反演研究[J]. 矿业科学学报, 2020, 5(6): 608-615. doi: 10.19606/j.cnki.jmst.2020.06.002
Wang Qiyuan, . Inversion of soil moisture in bare soil based on multispectral remote sensing[J]. Journal of Mining Science and Technology, 2020, 5(6): 608-615. doi: 10.19606/j.cnki.jmst.2020.06.002
Citation: Wang Qiyuan, . Inversion of soil moisture in bare soil based on multispectral remote sensing[J]. Journal of Mining Science and Technology, 2020, 5(6): 608-615. doi: 10.19606/j.cnki.jmst.2020.06.002

基于多光谱遥感的裸土土壤含水量反演研究

doi: 10.19606/j.cnki.jmst.2020.06.002
详细信息
    作者简介:

    王启元(1993—),男,陕西铜川人,博士研究生,主要从事无人机遥感和定量遥感等方面的研究工作。Tel:13021179951,E-mail:faker_wangqy@163.com

Inversion of soil moisture in bare soil based on multispectral remote sensing

  • 摘要: 矿区排土场的土壤含水量监测研究在矿产资源开发、生态恢复及干旱预警等方面具有重要意义。以我国东部草原区胜利露天矿北排土场土壤为试验材料,使用Spequoia多光谱相机和ECH2O土壤水分传感器对4种不同深度(1 cm、3 cm、5 cm、10 cm)的土柱样本每天10:00至14:00持续监测,采集到4个波段(550 nm、660 nm、735 nm、790 nm)处的土壤光谱反射率和土壤含水量数据,分别使用偏最小二乘回归法、岭回归法、反向传播(BP)神经网络三种方法建立单波段或多波段光谱反射率组合作为反演因子的土壤含水量反演模型。结果表明,偏最小二乘回归法、岭回归法反演精度较低,R2最高仅为0606。以绿(550 nm)、红边(735 nm)、近红外 (790 nm)三波段组合作为反演因子的反向传播神经网络(G-R-N-BP)模型反演效果最佳,其对1 cm、3 cm、5 cm、10 cm深度土壤含水量反演模型的决定系数(R2)分别为0866、0800、0975、0911,均方根误差(RMSE)分别为0333、0361、0103、0315,最佳反演深度为5 cm。本研究为矿区地表水分监测提供了重要的理论依据与实践应用价值。
  • [1] 汪志农灌溉排水工程学[M]. 北京:中国农业出版社,2010
    [2] 隋涛,肖武,王党朝,等基于无人机摄影测量的露天矿排土场三维模型构建[J]. 金属矿山,2018(5):135-142Sui Tao,Xiao Wu,Wang Dangchao,et al. Establishment of the 3D model of openpit mine dump based on UAV photogrammetry [J]. Metal Mine,2018(5):135-142
    [3] Derksen CThe contribution of AMSRE 187 and 107 GHz measurements to improved boreal forest snow water equivalent retrievals [J]. Remote Sensing of Environment,2008,112(5):2701-2710
    [4] Sadeghi M,Jones S B,Philpot W DA linear physicallybased model for remote sensing of soil moisture using short wave infrared bands[J]. Remote Sensing of Environment,2015,164:66-76 
    [5] 张智韬,李援农,杨江涛,等遥感监测土壤含水率模型及精度分析[J]. 农业工程学报,2008,24(8):152-156,315Zhang Zhitao,Li Yuannong,Yang Jiangtao,et al. Model for monitoring soil moisture using remote sensing and its accuracy analysis [J]. Transactions of the CSAE,2008,24(8):152-156,315
    [6] Petropoulos G P,Ireland G,Barrett BSurface soil moisture retrievals from remote sensing:Current status,products & future trends [J]. Physics and Chemistry of the Earth,2015,83:36-56
    [7] Hatanaka T,Nishimune A,Nira R,et al. Estimation of available moisture holding capacity of upland soils using landsat TM data [J]. Soil Science and Plant Nutrition,1995,41(3):577-586
    [8] Cashion J,Lakshmi V,Bosch D D,et al. Microwave remote sensing of soil moisture:evaluation of the TRMM microwave imager(TMI) satellite for the Little River Watershed Tifton,Georgia [J]. Journal of Hydrology,2005,307(1):242-253
    [9] Kang J,Jin R,Li X,et al. High spatiotemporal resolution mapping of soil moisture by integrating wireless sensor network observations and MODIS apparent thermal inertia in the Babao River Basin,China [J]. Remote Sensing of Environment,2017,191:232-245
    [10] Metin Sezen S,Yazar A,Dasgan Y,et al. Evaluation of crop water stress index(CWSI) for red pepper with drip and furrow irrigation under varying irrigation regimes [J]. Agricultural Water Management,2014,143(143):59-70
    [11] He L,Qin Q M,Panciera R,et al. An extension of the alpha approximation method for soil moisture estimation using timeseries SAR data over bare soil surfaces [J]. IEEE Geoscience and Remote Sensing Letters,2017,14(8):1328-1332
    [12] 齐述华,王长耀,牛铮利用温度植被旱情指数(TVDI)进行全国旱情监测研究[J]. 遥感学报,2003,7(5):420-427,436Qi Shuhua,Wang Changyao,Niu ZhengEvaluating soil moisture status in China using the temperature/vegetation dryness index(TVDI) [J]. Journal of Remote Sensing,2003,7(5):420-427,436
    [13] 徐霞,孙文彬,王振基于TVDI的布尔台矿区土壤湿度变化分析[J]. 矿业科学学报,2019,4(4):285-291Xu Xia,Sun Wenbin,Wang ZhenAnalysis of soil moisture changes of the Buertai mining area based on TVDI [J]. Journal of Mining Science and Technology,2019,4(4):285-291
    [14] 郑小坡,孙越君,秦其明,等基于可见光-短波红外波谱反射率的裸土土壤含水量反演建模[J]. 光谱学与光谱分析,2015,35(8):2113-2118Zheng Xiaopo,Sun Yuejun,Qin Qiming,et al. Bare soil moisture inversion model based on visibleshortwave infrared reflectance [J]. Spectroscopy and Spectral Analysis,2015,35(8):2113-2118
    [15] 张智韬,王海峰,韩文霆,等基于无人机多光谱遥感的土壤含水率反演研究[J]. 农业机械学报,2018,49(2):173-181Zhang Zhitao,Wang Haifeng,Han Wenting,et al. Inversion of soil moisture content based on multispectral remote sensing of UAVs [J]. Transactions of the Chinese Society for Agricultural Machinery,2018,49(2):173-181
    [16] Sorensen L K,Dalsgaard SDetermination of clay and other soil properties by near infrared spectroscopy [J]. Soil Science Society of America Journal,2005,69(1):159-167
    [17] 蒋福坤,刘正春,柴惠文多维随机变量的线性相关性[J]. 数理统计与管理,2008,27(1):96-99Jiang Fukun,Liu Zhengchun,Chai HuiwenThe linear correlation of multidimensional random vector [J]. Application of Statistics and Management,2008,27(1):96-99
    [18] 高惠璇处理多元线性回归中自变量共线性的几种方法:SAS/STAT软件(612)中REG等过程增强功能的使用[J]. 数理统计与管理,2000,19(5):49-55Gao Hui xuanSome method on treating the collinearity of independent variables in multiple linear regression [J]. Application of Statistics and Management,2000,19(5):49-55
    [19] 杨楠岭回归分析在解决多重共线性问题中的独特作用[J]. 统计与决策,2004(3):14-15Yang NanThe unique role of ridge regression analysis in solving multicollinearity problems[J]. Statistics & Decision,2004(3):14-15
    [20] 张曼,刘旭华,何雄奎,等岭回归在近红外光谱定量分析及最优波长选择中的应用研究[J]. 光谱学与光谱分析,2010,30(5):1214-1217Zhang Man,Liu Xuhua,He Xiongkui,et al. Study on the application of ridge regression to nearinfrared spectroscopy quantitative analysis and optimum wavelength selection [J]. Spectroscopy and Spectral Analysis,2010,30(5):1214-1217
    [21] 余凡,赵英时,李海涛基于遗传BP神经网络的主被动遥感协同反演土壤水分[J]. 红外与毫米波学报,2012,31(3):283-288Yu Fan,Zhao Yingshi,Li HaitaoSoil moisture retrieval based on GABP neural networks algorithm [J]. Journal of Infrared and Millimeter Waves,2012,31(3):283-288
    [22] 刘丽娜基于遗传优化BP神经网络算法的土壤含水量反演研究[D]. 成都:电子科技大学,2011
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  • 刊出日期:  2020-12-31

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