Utilize este identificador para referenciar este registo: https://hdl.handle.net/1822/87197

TítuloWater quality prediction based on machine learning and comprehensive weighting methods
Autor(es)Wang, Xianhe
Li, Ying
Qiao, Qian
Tavares, Adriano
Liang, Yanchun
Palavras-chaveWater quality prediction
Comprehensive weight-based approach
Feature selection
Machine learning
LSTM
Data9-Ago-2023
EditoraMultidisciplinary Digital Publishing Institute (MDPI)
RevistaEntropy
CitaçãoWang, X.; Li, Y.; Qiao, Q.; Tavares, A.; Liang, Y. Water Quality Prediction Based on Machine Learning and Comprehensive Weighting Methods. Entropy 2023, 25, 1186. https://doi.org/10.3390/e25081186
Resumo(s)In the context of escalating global environmental concerns, the importance of preserving water resources and upholding ecological equilibrium has become increasingly apparent. As a result, the monitoring and prediction of water quality have emerged as vital tasks in achieving these objectives. However, ensuring the accuracy and dependability of water quality prediction has proven to be a challenging endeavor. To address this issue, this study proposes a comprehensive weight-based approach that combines entropy weighting with the Pearson correlation coefficient to select crucial features in water quality prediction. This approach effectively considers both feature correlation and information content, avoiding excessive reliance on a single criterion for feature selection. Through the utilization of this comprehensive approach, a comprehensive evaluation of the contribution and importance of the features was achieved, thereby minimizing subjective bias and uncertainty. By striking a balance among various factors, features with stronger correlation and greater information content can be selected, leading to improved accuracy and robustness in the feature-selection process. Furthermore, this study explored several machine learning models for water quality prediction, including Support Vector Machines (SVMs), Multilayer Perceptron (MLP), Random Forest (RF), XGBoost, and Long Short-Term Memory (LSTM). SVM exhibited commendable performance in predicting Dissolved Oxygen (DO), showcasing excellent generalization capabilities and high prediction accuracy. MLP demonstrated its strength in nonlinear modeling and performed well in predicting multiple water quality parameters. Conversely, the RF and XGBoost models exhibited relatively inferior performance in water quality prediction. In contrast, the LSTM model, a recurrent neural network specialized in processing time series data, demonstrated exceptional abilities in water quality prediction. It effectively captured the dynamic patterns present in time series data, offering stable and accurate predictions for various water quality parameters.
TipoArtigo
URIhttps://hdl.handle.net/1822/87197
DOI10.3390/e25081186
e-ISSN1099-4300
Versão da editorahttps://www.mdpi.com/1099-4300/25/8/1186
Arbitragem científicayes
AcessoAcesso aberto
Aparece nas coleções:BUM - MDPI

Ficheiros deste registo:
Ficheiro Descrição TamanhoFormato 
entropy-25-01186.pdf1,35 MBAdobe PDFVer/Abrir

Este trabalho está licenciado sob uma Licença Creative Commons Creative Commons

Partilhe no FacebookPartilhe no TwitterPartilhe no DeliciousPartilhe no LinkedInPartilhe no DiggAdicionar ao Google BookmarksPartilhe no MySpacePartilhe no Orkut
Exporte no formato BibTex mendeley Exporte no formato Endnote Adicione ao seu ORCID