[HTML][HTML] Enhancing interpretability of tree-based models for downstream salinity prediction: decomposing feature importance using the Shapley additive explanation …

G Zhao, K Ohsu, HK Saputra, T Okada, J Suzuki… - Results in …, 2024 - Elsevier
To improve the interpretability of estimation processes in machine learning, we applied the
Shapley additive explanation method to six tree-based models for predicting downstream …

Evaluating Machine Learning Techniques for Predicting Salinity

M Harper, I Liu, B Xue, R Vennell… - 2024 IEEE Congress on …, 2024 - ieeexplore.ieee.org
Oyster farms provide a sustainable and profitable export for New Zealand. Oyster farms are
sensitive to changes in salinity that can cause significant crop loss if they persist too long …

Input determination for neural network models in water resources applications. Part 1—background and methodology

GJ Bowden, GC Dandy, HR Maier - Journal of Hydrology, 2005 - Elsevier
The use of artificial neural network (ANN) models in water resources applications has grown
considerably over the last decade. However, an important step in the ANN modelling …

Salinity Modeling Using Deep Learning with Data Augmentation and Transfer Learning

S Qi, M He, R Hoang, Y Zhou, P Namadi, B Tom… - Water, 2023 - mdpi.com
Salinity management in estuarine systems is crucial for developing effective water-
management strategies to maintain compliance and understand the impact of salt intrusion …

Assessing the suitability of boosting machine-learning algorithms for classifying arsenic-contaminated waters: a novel model-explainable approach using shapley …

B Ibrahim, A Ewusi, I Ahenkorah - Water, 2022 - mdpi.com
There is growing tension between high-performance machine-learning (ML) models and
explainability within the scientific community. In arsenic modelling, understanding why ML …

River water salinity prediction using hybrid machine learning models

AM Melesse, K Khosravi, JP Tiefenbacher, S Heddam… - Water, 2020 - mdpi.com
Electrical conductivity (EC), one of the most widely used indices for water quality
assessment, has been applied to predict the salinity of the Babol-Rood River, the greatest …

[HTML][HTML] Enhancing estuary salinity prediction: A Machine Learning and Deep Learning based approach

L Saccotelli, G Verri, A De Lorenzis, C Cherubini… - Applied Computing and …, 2024 - Elsevier
As critical transitional ecosystems, estuaries are facing the increasingly urgent threat of salt
wedge intrusion, which impacts their ecological balance as well as human-dependent …

A Transformer variant for multi-step forecasting of water level and hydrometeorological sensitivity analysis based on explainable artificial intelligence technology

M Liu, N Bao, X Yan, C Li, K Peng - arXiv preprint arXiv:2405.13646, 2024 - arxiv.org
Understanding the combined influences of meteorological and hydrological factors on water
level and flood events is essential, particularly in today's changing climate environments …

[PDF][PDF] Application of the bayesian model averaging algorithm in evaluating and selecting optimal salinity prediction models

BD Quynh, HT Hang, DC Hieub… - Journal of Science …, 2023 - researchgate.net
Salinity intrusion poses significant challenges to coastal regions worldwide. Reliable salinity
prediction models can provide valuable information to mitigate the impact and influence of …

Explainability of Machine Learning Using Shapley Additive exPlanations (SHAP): CatBoost, XGBoost and LightGBM for Total Dissolved Gas Prediction

S Heddam - Machine Learning and Granular Computing: A …, 2024 - Springer
Recently, explainabilityand interpretabilityof machine learning (ML) has been the subject of
debate, and improving our understanding of ML response is becoming a challenge as …