The weighted multi-scale connections networks for macrodispersivity estimation

被引:0
作者
Zhou, Zhengkun [1 ]
Ji, Kai [1 ]
机构
[1] Lanzhou Univ, Coll Earth & Environm Sci, Lanzhou 730000, Peoples R China
基金
中国国家自然科学基金;
关键词
Macrodispersivity; Deep learning; Hydraulic conductivity field; Convolutional neural network; Groundwater; ENCODER-DECODER NETWORKS; SOLUTE TRANSPORT; HYDRAULIC CONDUCTIVITY; UNCERTAINTY QUANTIFICATION; DISPERSION; FLOW; MEDIA;
D O I
10.1016/j.jconhyd.2024.104394
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Macrodispersivity is critical for predicting solute behaviors with dispersive transport models. Conventional methods of estimating macrodispersivity usually need to solve flow equations and are time-consuming. Convolutional neural networks (CNN) have recently been proven capable of efficiently mapping the hydraulic conductivity field and macrodispersivity. However, the mapping accuracy still needs further improvement. In this paper, we present a new network shortcut connection style called weighted multi-scale connections (WMC) for convolutional neural networks to improve mapping accuracy. We provide empirical evidence showing that the WMC can improve the performance of CNN in macrodispersivity estimation by implementing the WMC in CNNs (CNN without short-cut connections, ResNet, and DenseNet), and evaluating them on datasets of macrodispersivity estimation. For the CNN without short-cut connections, the WMC can improve the estimating R2 by at least 3% on three datasets of conductivity fields. For ResNet18, the WMC improved the estimated R2 by an average of 2.5% on all three datasets. For ResNet34, the WMC improved the estimated R2 by an average of 5.6%. For ResNet50, the WMC improved the estimated R2 by an average of 16%. For ResNet101, the WMC improved the estimating R2 by an average of 30%. For DenseNets, the improved estimated R2 ranges from 0.5% to 5%. The WMC can strengthen feature propagation of different sizes and alleviate the vanishing-gradient issue. Moreover, it can be implemented to any CNN with down-sampling layers or blocks.
引用
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页数:11
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