| Literature DB >> 35061183 |
Hai Tao1,2,3, Sinan Salih4,5, Atheer Y Oudah6,7, S I Abba8,9, Ameen Mohammed Salih Ameen10, Salih Muhammad Awadh11, Omer A Alawi12, Reham R Mostafa13, Udayar Pillai Surendran14, Zaher Mundher Yaseen15,16,17.
Abstract
Natural streams longitudinal dispersion coefficient (Kx) is an essential indicator for pollutants transport and its determination is very important. Kx is influenced by several parameters, including river hydraulic geometry, sediment properties, and other morphological characteristics, and thus its calculation is a highly complex engineering problem. In this research, three relatively explored machine learning (ML) models, including Random Forest (RF), Gradient Boosting Decision Tree (GTB), and XGboost-Grid, were proposed for the Kx determination. The modeling scheme on building the prediction matrix was adopted from the well-established literature. Several input combinations were tested for better predictability performance for the Kx. The modeling performance was tested based on the data division for the training and testing (70-30% and 80-20%). Based on the attained modeling results, XGboost-Grid reported the best prediction results over the training and testing phase compared to RF and GTB models. The development of the newly established machine learning model revealed an excellent computed-aided technology for the Kx simulation.Entities:
Keywords: Data division; Input variability; Longitudinal dispersion coefficient; Machine learning
Mesh:
Year: 2022 PMID: 35061183 DOI: 10.1007/s11356-022-18554-y
Source DB: PubMed Journal: Environ Sci Pollut Res Int ISSN: 0944-1344 Impact factor: 4.223