Evaluation of Tree-Based Voting Algorithms in Water Quality Classification Prediction DOI Open Access
LI Li-li, Jeng Hua Wei

Sustainability, Journal Year: 2024, Volume and Issue: 16(23), P. 10634 - 10634

Published: Dec. 4, 2024

Accurately predicting the state of surface water quality is crucial for ensuring sustainable use resources and environmental protection. This often requires a focus on range factors affecting quality, such as physical chemical parameters. Tree models, with their flexible tree-like structure strong capability partitioning selecting influential features, offer clear decision-making rules, making them suitable this task. However, an individual decision tree model has limitations cannot fully capture complex relationships between all influencing parameters quality. Therefore, study proposes method combining ensemble models voting algorithms to predict classification. was conducted using five monitoring sites in Qingdao, representing portion many municipal environment stations China, employing single-factor determination stringent standards. The soft algorithm achieved highest accuracy 99.91%, addressed imbalance original categories, reaching Matthews Correlation Coefficient (MCC) 99.88%. In contrast, conventional machine learning algorithms, logistic regression K-nearest neighbors, lower accuracies 75.90% 91.33%, respectively. Additionally, model’s supervision misclassified data demonstrated its good rules. trained also transferred directly at 13 Beijing, where it performed robustly, achieving hard 97.73% MCC 96.81%. countries’ systems, different qualities correspond uses, magnitude related categories; critical can even determine category. are highly capable handling nonlinear important allowing identify exploit interactions parameters, which especially when multiple together there significant motivation develop model-based prediction models.

Language: Английский

Assessing the impact of rainfall, topography, and human disturbances on nutrient levels using integrated machine learning and GAMs models in the Choctawhatchee River Watershed DOI
Shubo Fang, Matthew J. Deitch, Tesfay Gebretsadkan Gebremicael

et al.

Journal of Environmental Management, Journal Year: 2025, Volume and Issue: 375, P. 124361 - 124361

Published: Jan. 31, 2025

Language: Английский

Citations

0

DAD-YOLO as a novel computer vision tool to predict the environmental impact of harmful algae presence in contaminated river water employed for large-scale irrigation to agricultural field DOI

S.S. Jayakrishna,

S. Sankar Ganesh

Journal of Water Process Engineering, Journal Year: 2025, Volume and Issue: 71, P. 107439 - 107439

Published: March 1, 2025

Language: Английский

Citations

0

Dissolved Oxygen Prediction in the Dianchi River Basin with Explainable Artificial Intelligence based on Physical Prior Knowledge DOI
Tunhua Wu, Xi Chen, Jinghan Dong

et al.

Environmental Modelling & Software, Journal Year: 2025, Volume and Issue: 188, P. 106412 - 106412

Published: March 5, 2025

Language: Английский

Citations

0

An improved graph neural network integrating indicator attention and spatio-temporal correlation for dissolved oxygen prediction DOI Creative Commons
Fei Ding, Shilong Hao,

Mingcen Jiang

et al.

Ecological Informatics, Journal Year: 2025, Volume and Issue: unknown, P. 103126 - 103126

Published: April 1, 2025

Language: Английский

Citations

0

Real-time, reagent-free total phosphorus soft sensor based on frequency-enhanced decomposed transformer model DOI
Weilin Guo, Yizhang Wen,

Minghuan Liu

et al.

Measurement, Journal Year: 2025, Volume and Issue: unknown, P. 117509 - 117509

Published: April 1, 2025

Language: Английский

Citations

0

Evaluation of Tree-Based Voting Algorithms in Water Quality Classification Prediction DOI Open Access
LI Li-li, Jeng Hua Wei

Sustainability, Journal Year: 2024, Volume and Issue: 16(23), P. 10634 - 10634

Published: Dec. 4, 2024

Accurately predicting the state of surface water quality is crucial for ensuring sustainable use resources and environmental protection. This often requires a focus on range factors affecting quality, such as physical chemical parameters. Tree models, with their flexible tree-like structure strong capability partitioning selecting influential features, offer clear decision-making rules, making them suitable this task. However, an individual decision tree model has limitations cannot fully capture complex relationships between all influencing parameters quality. Therefore, study proposes method combining ensemble models voting algorithms to predict classification. was conducted using five monitoring sites in Qingdao, representing portion many municipal environment stations China, employing single-factor determination stringent standards. The soft algorithm achieved highest accuracy 99.91%, addressed imbalance original categories, reaching Matthews Correlation Coefficient (MCC) 99.88%. In contrast, conventional machine learning algorithms, logistic regression K-nearest neighbors, lower accuracies 75.90% 91.33%, respectively. Additionally, model’s supervision misclassified data demonstrated its good rules. trained also transferred directly at 13 Beijing, where it performed robustly, achieving hard 97.73% MCC 96.81%. countries’ systems, different qualities correspond uses, magnitude related categories; critical can even determine category. are highly capable handling nonlinear important allowing identify exploit interactions parameters, which especially when multiple together there significant motivation develop model-based prediction models.

Language: Английский

Citations

1