Fluvial bedload transport modelling: advanced ensemble tree-based models or optimized deep learning algorithms?

被引:2
|
作者
Khosravi, Khabat [1 ,8 ]
Farooque, Aitazaz A. [1 ,8 ,9 ]
Bateni, Sayed M. [2 ,3 ]
Jun, Changhyun [4 ]
Mohammadi, Dorsa [5 ]
Kalantari, Zahra [6 ]
Cooper, James R. [7 ]
机构
[1] Univ Prince Edward Isl, Sch Climate Change & Adaptat, Charlottetown, PE, Canada
[2] Univ Hawaii Manoa, Dept Civil Environm & Construct Engn, Honolulu, HI USA
[3] Univ Hawaii Manoa, Water Resources Res Ctr, Honolulu, HI USA
[4] Chung Ang Univ, Coll Engn, Dept Civil & Environm Engn, Seoul, South Korea
[5] Boston Univ, Earth & Environm Sci Dept, Boston, MA USA
[6] KTH Royal Inst Technol, Dept Sustainable Dev Environm Sci & Engn SEED, Stockholm, Sweden
[7] Univ Liverpool, Sch Environm Sci, Dept Geog & Planning, Liverpool, England
[8] Univ Prince Edward Isl, Canadian Ctr Climate Change & Adaptat, St Peters Bay, PE, Canada
[9] Univ Prince Edward Isl, Fac Sustainable Design Engn, Charlottetown, PE, Canada
基金
英国自然环境研究理事会; 新加坡国家研究基金会;
关键词
Bedload sediment; machine learning; empirical equations; deep learning; IAER-AMT; Einstein (1950); BED-LOAD TRANSPORT; SUPPORT VECTOR REGRESSION; SEDIMENT-TRANSPORT; PREDICTION; CLASSIFICATION; CAPACITY;
D O I
10.1080/19942060.2024.2346221
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
The potential of advanced tree-based models and optimized deep learning algorithms to predict fluvial bedload transport was explored, identifying the most flexible and accurate algorithm, and the optimum set of readily available and reliable inputs. Using 926 datasets for 20 rivers, the performance of three groups of models was tested: (1) standalone tree-based models Alternating Model Tree (AMT) and Dual Perturb and Combine Tree (DPCT); (2) ensemble tree-based models Iterative Absolute Error Regression (IAER), ensembled with AMT and DPCT; and (3) optimized deep learning models Long Short-Term Memory (LSTM) and Recurrent Neural Network (RNN) ensembled with Grey Wolf Optimizer. Comparison of the predictive performance of the models with that of commonly used empirical equations and sensitivity analysis of the driving variables revealed that: (i) the coarse grain-size percentile D 90 was the most effective variable in bedload transport prediction (where D x is the xth percentile of the bed surface grain size distribution), followed by D 84, D 50, flow discharge, D 16, and channel slope and width; (ii) all tree-based models and optimized deep learning algorithms displayed 'very good' or 'good' performance, outperforming empirical equations; and (iii) all algorithms performed best when all input parameters were used. Thus, a range of different input variable combinations must be considered in the optimization of these models. Overall, ensemble algorithms provided more accurate predictions of bedload transport than their standalone counterpart. In particular, the ensemble tree-based model IAER-AMT performed most strongly, displaying great potential to produce robust predictions of bedload transport in coarse-grained rivers based on a few readily available flow and channel variables.
引用
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页数:14
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