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Explainable deep learning model provides new understanding of harmful algal blooms in china’s lakes and reservoirs

01.15.25 | Eurasia Academic Publishing Group

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In a significant breakthrough, researchers have developed an advanced explainable deep learning model to predict and analyze harmful algal blooms (HABs) in freshwater lakes and reservoirs across China. With HABs posing an increasing threat to water ecosystems and public health, this study offers crucial insights into their underlying drivers and potential mitigation strategies.

Harmful algal blooms are complex phenomena influenced by multiple ecological and climatic factors. Traditional models often struggle to accurately predict these blooms or provide interpretable insights. To overcome these challenges, the research team implemented a Long Short-Term Memory (LSTM) neural network, enhanced by explainability techniques. The model was trained on data from 102 monitoring sites across China, achieving an average Nash-Sutcliffe efficiency coefficient of 0.48, a significant improvement over conventional machine learning methods.

Water temperature emerged as the most influential factor driving algal bloom dynamics, accounting for 11.7% of the predictive variance on average. Notably, regions in mid- to low-latitudes displayed heightened sensitivity to temperature changes, emphasizing the potential impact of climate change on HAB occurrences.

"Our explainable deep learning model not only enhances prediction accuracy but also helps policymakers understand the key factors behind harmful algal blooms," said lead author Shengyue Chen. "This approach can inform targeted management strategies for lakes and reservoirs at high risk."

Additionally, the study demonstrated that transfer learning could effectively improve predictions in data-scarce regions by using information from well-monitored areas, offering a scalable solution for regions with limited monitoring infrastructure.

This pioneering research highlights the power of combining artificial intelligence with explainability to tackle complex environmental challenges.

Environmental Science and Ecotechnology

10.1016/j.ese.2024.100522

Experimental study

Not applicable

Explainable deep learning identifies patterns and drivers of freshwater harmful algal blooms

15-Jan-2025

Keywords

Article Information

Contact Information

Kent Anderson
Eurasia Academic Publishing Group
contact@caldera-publishing.com

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How to Cite This Article

APA:
Eurasia Academic Publishing Group. (2025, January 15). Explainable deep learning model provides new understanding of harmful algal blooms in china’s lakes and reservoirs. Brightsurf News. https://www.brightsurf.com/news/LVD9PJXL/explainable-deep-learning-model-provides-new-understanding-of-harmful-algal-blooms-in-chinas-lakes-and-reservoirs.html
MLA:
"Explainable deep learning model provides new understanding of harmful algal blooms in china’s lakes and reservoirs." Brightsurf News, Jan. 15 2025, https://www.brightsurf.com/news/LVD9PJXL/explainable-deep-learning-model-provides-new-understanding-of-harmful-algal-blooms-in-chinas-lakes-and-reservoirs.html.