期刊文献+

混合式随机森林的土壤钾含量高光谱反演 被引量:9

Random Forests-Based Hybrid Feature Selection Algorithm for Soil Potassium Content Inversion Using Hyperspectral Technology
下载PDF
导出
摘要 从土壤速效钾光谱中挖掘关键特征较为困难,导致高光谱反演模型预测精度较低。针对此问题,提出了一种混合式随机森林特征选择算法。首先采用封装式特征选择方法进行特征预选,快速去除冗余并保留相关特征,然后再利用改进的随机森林特征选择算法对预处理后的特征进行精选,通过增大关键特征与冗余特征的区分度以及采用迭代特征选择的方式,使精选后的特征具有更好的鲁棒性与区分性,较好的解决了土壤速效钾高光谱反演模型精度较低的问题。为了验证所提出算法的有效性,选取了青岛市大沽河流域具有代表性的124个土壤样品为实验对象,利用提出的算法从2 051个原始波段选出含有13个敏感波段的最优光谱子集建立土壤速效钾反演模型,并与现有特征选择算法所建模型进行对比分析。结果表明:该算法构建的回归模型具有较低的预测均方根误差RMSEP(9. 661 5),较高的相关系数r(0. 936 9)和预测分析相对误差RPD(2. 14)。混合式随机森林特征选择算法以较少的特征波长数实现了较好的预测效果,可为土壤养分实时光谱传感器的设计提供一定的理论依据。 In order to solve the problem of lower predictio n performance caused by the difficulty in retrieving the key features from hyper spectral data of soil available potassium,this paper proposes a novel hybrid fe ature selection algorithm based on Random Forests.Firstly,wrapper-based featu re selection methods were applied to rapidly remove the redundancies and preserv e the related features.Secondly,an Improved-RF feature selection algorithm wa s applied to further accurately select the wavelength variables from the pre-se lected feature sets.In this step,characteristic wavelength with strong robustn ess and discriminative could be selected through improving the dipartite degree between the key and redundant features and using an iterative feature selection method.Therefore,the problem of low prediction performance in the soil availab le potassium inversion model could be better solved by using our hybrid feature selection algorithm.In order to verify the validity of our algorithm,124 repre sentative soil samples collected from the Dagu River Basin were chosen.Using ou r algorithm,the optimal feature subset which contained 13 sensitive bands have been selected and used to build soil available potassium content inversion model.This work compared the model performance of full bands,current feature select ion algorithms and our algorithm.The comparison results indicated that our algo rithm not only selects minimum numbers of wavelength features and reduces the di mension of full bands,but also achieves better prediction performance with lower RMSEP(9.661 5),higher R(0.936 9)and RPD(2.14).As an effective met hod of soil available potassium inversion model,the algorithm proposed in this paper can provide theoretical basis for the design of real-time soil nutrient s ensors.
作者 王轩慧 郑西来 韩仲志 王轩力 王娟 WANG Xuan-hui;ZHENG Xi-lai;HAN Zhong-zhi;WANG Xuan-li;WANG Juan(Key Lab of Marine Environmental Science and Ecology,Ministry of Education,College of Environmental Science and Engineering,Ocean University of China,Qingdao 266100,China;Science and Information College,Qingdao Agricultural University,Qingdao 266109,China;Information Engineering and Automation Department,Shanxi Institute of Technology,Yangquan 045000,China;The Environmental Monitoring Center of North China Sea,State Oceanic Administration,Qingdao 266033,China)
出处 《光谱学与光谱分析》 SCIE EI CAS CSCD 北大核心 2018年第12期3883-3889,共7页 Spectroscopy and Spectral Analysis
基金 国家自然科学基金重点基金项目(41731280) 山东省自然科学基金项目(ZR2017MC041)资助
关键词 土壤速效钾含量 高光谱 特征波长选择 混合式特征选择 随机森林 Soil available potassium content Hyperspectral Characteristic wavelength selection Hybrid feature selection Random forests
  • 相关文献

参考文献1

二级参考文献17

  • 1郭志新,梁亮,何见.一种林地土壤氮磷钾含量快速测定的新方法[J].中国农学通报,2011,27(2):61-65. 被引量:9
  • 2张淼,盛明雅,张丽楠,李莉,张亚静.基于电极阵列的土壤速效养分快速检测系统[J].农业机械学报,2012,43(S1):277-282. 被引量:4
  • 3鲍士旦.土壤农化分析[M].北京:中国农业出版社,1999.118-140.
  • 4Kuang B, Mouazen A M. Calibration of visible and near infrared spectroscopy for soil analysis at the field scale on three European farms [ J 1 European Journal of Soil Science,2011,62 ( 4 ) : 629 - 636.
  • 5Centner V, Massart D L. Elimination of uninformative variables for multivariate calibration[ J. Analytical Chemistry, 1996, 68 (21): 3851-3858.
  • 6Chen D, Shao X G, Hu B, et al. A background and noise elimination method for quantitative calibration of near infrared spectra [J. Analytica Chimica Acta, 2004, 511(1): 37 45.
  • 7Put R, Daszykowski M, Baczek T, et al. Retention prediction of peptides based on uninformative variable elimination by partial least squares [J. Journal of Proteome.Research, 2006, 5(7) : 1 618 - 1 625.
  • 8Polanski J, Gieleciak R. The comparative molecular surface analysis (CoMSA) with modified uniformative variable elimination PLS (UVE- PLS) method: application to the steroids binding the aromatase enzyme [ J]. Journal of Chemical Information and Computer Sciences, 2003, 43 (2) : 656 - 666. 188 194.
  • 9Cai W S, Li Y K, Sbao X G. A variable selection method based on uninformative variable elimination for multivariate calibration of near-infrared spectra [ J]. Chemometrics and Intelligent Laboratory Systems, 2008,90(2) :.
  • 10Mouazen A M, Kuang B, Baerdemaeker J D, et al. Comparison among principal component, partial least squares and back propagation neural network analyses for accuracy of measurement of selected soil properties with visible and near infrared spectroscopy[J]. Geoderma, 2010,158(1 -2) :23 -31.

共引文献9

同被引文献132

引证文献9

二级引证文献96

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部