Mapping of the wind erodible fraction of soil by bidirectional gated recurrent unit (BiGRU) and bidirectional recurrent neural network (BiRNN) deep learning models

被引:22
作者
Rezaei, Mahrooz [1 ]
Mohammadifar, Aliakbar [2 ]
Gholami, Hamid [2 ]
Mina, Monireh [3 ]
Riksen, Michel J. P. M. [4 ]
Ritsema, Coen [4 ]
机构
[1] Wageningen Univ & Res, Meteorol & Air Qual Grp, POB 47, NL-6700 AA Wageningen, Netherlands
[2] Univ Hormozgan, Dept Nat Resources Engn, Bandar Abbas, Hormozgan, Iran
[3] Shiraz Univ, Sch Agr, Dept Soil Sci, Shiraz, Iran
[4] Wageningen Univ & Res, Soil Phys & Land Management Grp, POB 47, NL-6700 AA Wageningen, Netherlands
关键词
Wind erosion; Neural network; Deep learning; Game theory; Uncertainty; EROSION;
D O I
10.1016/j.catena.2023.106953
中图分类号
P [天文学、地球科学];
学科分类号
07 ;
摘要
The destructive consequences of wind erosion have been reported in many studies, but accurate assessment of wind erosion is still a challenge, especially on large scales. Our research introduces two deep learning (DL) al-gorithms consisting of bidirectional gated recurrent unit (BiGRU), and bidirectional recurrent neural network (BiRNN) for spatial mapping of wind-erodible fraction of the soil (EF). EF was measured in 508 soil samples using the Chepil method. 15 key factors controlling EF including: soil, topography, and meteorology parameters were mapped. The performance of the most efficient DL model was interpreted by Game theory. The uncertainty of the DL models was quantified by deep quantile regression (DQR). Results showed that both DL models were per-formed very well with the BiRNN performing slightly better than BiGRU. The aggregate mean weight diameter (MWD) was a key variable for the mapping of soil susceptibility to wind erosion. Based on the BiRNN model, most of the study region was moderately and highly susceptible to wind erosion regarding the EF value (between 32 and 98). This indicates the urgent need for soil conservation measures in the region. The DQR results showed that the observed values of EF fell within the EF values predicted by the model. Overall, the suggested meth-odology has proven to be helpful in mapping wind erosion susceptibility on a large scale.
引用
收藏
页数:14
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