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Machine learning models development for accurate multi-months ahead drought forecasting: Case study of the Great Lakes, North America
by
Razali, Siti Fatin Mohd
, Yaseen, Zaher Mundher
, Rahman, Norinah Abd
, Mohtar, Wan Hanna Melini Wan
, Hameed, Mohammed Majeed
in
Australia
/ Biology and Life Sciences
/ Case studies
/ Computer and Information Sciences
/ Drought forecasting
/ Droughts
/ Earth Sciences
/ Ecology and Environmental Sciences
/ Ecosystems
/ Fresh water
/ Global temperature changes
/ Machine learning
/ Management
/ Monte Carlo method
/ North America
/ Physical Sciences
/ Research and Analysis Methods
/ Water
2023
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Machine learning models development for accurate multi-months ahead drought forecasting: Case study of the Great Lakes, North America
by
Razali, Siti Fatin Mohd
, Yaseen, Zaher Mundher
, Rahman, Norinah Abd
, Mohtar, Wan Hanna Melini Wan
, Hameed, Mohammed Majeed
in
Australia
/ Biology and Life Sciences
/ Case studies
/ Computer and Information Sciences
/ Drought forecasting
/ Droughts
/ Earth Sciences
/ Ecology and Environmental Sciences
/ Ecosystems
/ Fresh water
/ Global temperature changes
/ Machine learning
/ Management
/ Monte Carlo method
/ North America
/ Physical Sciences
/ Research and Analysis Methods
/ Water
2023
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Machine learning models development for accurate multi-months ahead drought forecasting: Case study of the Great Lakes, North America
by
Razali, Siti Fatin Mohd
, Yaseen, Zaher Mundher
, Rahman, Norinah Abd
, Mohtar, Wan Hanna Melini Wan
, Hameed, Mohammed Majeed
in
Australia
/ Biology and Life Sciences
/ Case studies
/ Computer and Information Sciences
/ Drought forecasting
/ Droughts
/ Earth Sciences
/ Ecology and Environmental Sciences
/ Ecosystems
/ Fresh water
/ Global temperature changes
/ Machine learning
/ Management
/ Monte Carlo method
/ North America
/ Physical Sciences
/ Research and Analysis Methods
/ Water
2023
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Machine learning models development for accurate multi-months ahead drought forecasting: Case study of the Great Lakes, North America
Journal Article
Machine learning models development for accurate multi-months ahead drought forecasting: Case study of the Great Lakes, North America
2023
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Overview
The Great Lakes are critical freshwater sources, supporting millions of people, agriculture, and ecosystems. However, climate change has worsened droughts, leading to significant economic and social consequences. Accurate multi-month drought forecasting is, therefore, essential for effective water management and mitigating these impacts. This study introduces the Multivariate Standardized Lake Water Level Index (MSWI), a modified drought index that utilizes water level data collected from 1920 to 2020. Four hybrid models are developed: Support Vector Regression with Beluga whale optimization (SVR-BWO), Random Forest with Beluga whale optimization (RF-BWO), Extreme Learning Machine with Beluga whale optimization (ELM-BWO), and Regularized ELM with Beluga whale optimization (RELM-BWO). The models forecast droughts up to six months ahead for Lake Superior and Lake Michigan-Huron. The best-performing model is then selected to forecast droughts for the remaining three lakes, which have not experienced severe droughts in the past 50 years. The results show that incorporating the BWO improves the accuracy of all classical models, particularly in forecasting drought turning and critical points. Among the hybrid models, the RELM-BWO model achieves the highest level of accuracy, surpassing both classical and hybrid models by a significant margin (7.21 to 76.74%). Furthermore, Monte-Carlo simulation is employed to analyze uncertainties and ensure the reliability of the forecasts. Accordingly, the RELM-BWO model reliably forecasts droughts for all lakes, with a lead time ranging from 2 to 6 months. The study’s findings offer valuable insights for policymakers, water managers, and other stakeholders to better prepare drought mitigation strategies.
Publisher
Public Library of Science,Public Library of Science (PLoS)
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