Combining spatial autocorrelation with machine learning increases prediction accuracy of soil heavy metals

被引:66
|
作者
Sergeev, A. P. [1 ]
Buevich, A. G. [1 ,2 ]
Baglaeva, E. M. [1 ]
Shichkin, A. V. [1 ]
机构
[1] Inst Ind Ecol UB RAS, Kovalevskaya Str 20, Ekaterinburg 620990, Russia
[2] Ural Fed Univ, Mira Str 32, Ekaterinburg 620002, Russia
关键词
Topsoil; Artificial neural networks; Hybrid modelling; Residual Kriging; GRNNRK; MLPRK; ARTIFICIAL NEURAL-NETWORKS; GEOSTATISTICS; ALGORITHMS;
D O I
10.1016/j.catena.2018.11.037
中图分类号
P [天文学、地球科学];
学科分类号
07 ;
摘要
A hybrid approach was proposed to simulate the spatial distribution of a number of heavy metals in the surface layer of the soil. The idea of the method is to simulate a nonlinear large-scale trend using an artificial neural network (ANN) and the subsequent modelling of the residuals by geostatistical methods. A comparison was made with the basic modelling methods based on ANN: generalised regression neural network (GRNN) and multilayer perceptron (MLP). The raw data for the surface layer modelling of Cuprum (Cu), Manganese (Mn) and Niccolum (Ni) were obtained as a result of the soil screening in the subarctic city Novy Urengoy, Russia. The ANN structures were selected by the computer simulation based on the root mean square error (RMSE) minimization. The predictive accuracy of each selected approach was verified by the correlation coefficient, the coefficient of determination, RMSE, Willmott's index of agreement (d), a ratio of performance to interquartile distance (RPIQ) between the prediction and raw data from the test data set. It was confirmed that the use of the hybrid approach provides an increase in prediction accuracy in comparison with the basic ANN models. The proposed hybrid approach for each element showed the best predictive accuracy in comparison with other models based on ANN.
引用
收藏
页码:425 / 435
页数:11
相关论文
共 50 条
  • [21] Prediction of Total Petroleum Hydrocarbons and Heavy Metals in Acid Tars Using Machine Learning
    Tita, Mihaela
    Onutu, Ion
    Doicin, Bogdan
    APPLIED SCIENCES-BASEL, 2024, 14 (08):
  • [22] Prediction of heavy metals removal by polymer inclusion membranes using machine learning techniques
    Yaqub, Muhammad
    Eren, Beytullah
    Eyupoglu, Volkan
    WATER AND ENVIRONMENT JOURNAL, 2021, 35 (03) : 1073 - 1084
  • [23] Spatial Prediction of Total Nitrogen in Soil Surface Layer Based on Machine Learning
    Liu, Zunfang
    Lei, Haochuan
    Lei, Lei
    Sheng, Haiyan
    SUSTAINABILITY, 2022, 14 (19)
  • [24] A two-point machine learning method for the spatial prediction of soil pollution
    Gao, Bingbo
    Stein, Alfred
    Wang, Jinfeng
    INTERNATIONAL JOURNAL OF APPLIED EARTH OBSERVATION AND GEOINFORMATION, 2022, 108
  • [25] Combining DELs and machine learning for toxicology prediction
    Blay, Vincent
    Li, Xiaoyu
    Gerlach, Jacob
    Urbina, Fabio
    Ekins, Sean
    DRUG DISCOVERY TODAY, 2022, 27 (11)
  • [26] Improving the prediction accuracy of soil nutrient classification by optimizing extreme learning machine parameters
    Suchithra M.S.
    Pai M.L.
    Information Processing in Agriculture, 2020, 7 (01): : 72 - 82
  • [27] Spatial variation in a grassland on soil rich in heavy metals
    Babalonas, D
    Mamolos, AP
    Konstantinou, M
    JOURNAL OF VEGETATION SCIENCE, 1997, 8 (04) : 601 - 604
  • [28] Advanced machine learning model for better prediction accuracy of soil temperature at different depths
    Alizamir, Meysam
    Kisi, Ozgur
    Ahmed, Ali Najah
    Mert, Cihan
    Fai, Chow Ming
    Kim, Sungwon
    Kim, Nam Won
    El-Shafie, Ahmed
    PLOS ONE, 2020, 15 (04):
  • [29] Spatial Autocorrelation Incorporated Machine Learning Model for Geotechnical Subsurface Modeling
    Kim, Hyeong-Joo
    Mawuntu, Kevin Bagas Arifki
    Park, Tae-Woong
    Kim, Hyeong-Soo
    Park, Jun-Young
    Jeong, Yeong-Seong
    APPLIED SCIENCES-BASEL, 2023, 13 (07):
  • [30] 3D spatial interpolation of soil heavy metals by combining kriging with depth function trend model
    Yang, Yong
    Jia, Mengyao
    JOURNAL OF HAZARDOUS MATERIALS, 2024, 461