可解释的深度学习识别淡水有害藻华的模式和驱动因素。

IF 14 1区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES
Shengyue Chen , Jinliang Huang , Jiacong Huang , Peng Wang , Changyang Sun , Zhenyu Zhang , Shijie Jiang
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引用次数: 0

摘要

有害藻华(HABs)的规模、频率和持续时间不断上升,对全球淡水生态系统构成了重大挑战。然而,驱动赤潮的机制仍然知之甚少,部分原因是藻类过程的强烈区域特异性和数据可用性不均衡。这些复杂性使得传统模型难以推广有害藻华动力学并有效预测其发生。为了应对这些挑战,我们开发了一种可解释的深度学习方法,使用长短期记忆(LSTM)模型和解释技术相结合,可以捕捉复杂的模式,并为关键的HAB驱动因素提供可解释的见解。我们在三年内将这种方法应用于中国102个湖泊和水库的藻类密度建模。LSTMs有效地捕获了藻类的日常动态,在测试阶段,Nash-Sutcliffe效率系数的平均值和最大值分别为0.48和0.95。此外,在全国和超过30%的地区,水温都是赤潮的主要驱动因素,其中中低纬度地区的水温敏感性更强。我们还确定了区域相似性,允许在模拟藻类动力学成功转移。具体来说,使用微调迁移学习,我们提高了超过75%的不良测量区域的预测准确性。总体而言,基于lstm的可解释深度学习方法通过解决区域特异性和数据局限性,有效地解决了HAB建模中的关键挑战。通过准确预测藻类动态和确定关键驱动因素,这种方法为有害藻华的机制提供了可行的见解,最终有助于为全国和区域淡水生态系统实施有效的缓解措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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

Explainable deep learning identifies patterns and drivers of freshwater harmful algal blooms
The escalating magnitude, frequency, and duration of harmful algal blooms (HABs) pose significant challenges to freshwater ecosystems worldwide. However, the mechanisms driving HABs remain poorly understood, in part due to the strong regional specificity of algal processes and the uneven data availability. These complexities make it difficult to generalize HAB dynamics and effectively predict their occurrence using traditional models. To address these challenges, we developed an explainable deep learning approach using long short-term memory (LSTM) models combined with explanation techniques that can capture complex patterns and provide explainable insights into key HAB drivers. We applied this approach for algal density modeling at 102 sites in China's lakes and reservoirs over three years. LSTMs effectively captured daily algal dynamics, achieving mean and maximum Nash-Sutcliffe efficiency coefficients of 0.48 and 0.95 during testing phase. Moreover, water temperature emerged as the primary driver of HABs both nationally and in over 30% of localities, with stronger water temperature sensitivity observed in mid-to low-latitudes. We also identified regional similarities that allow for the successful transferability in modeling algal dynamics. Specifically, using fine-tuned transfer learning, we improved the prediction accuracy in over 75% of poorly gauged areas. Overall, LSTM-based explainable deep learning approach effectively addresses key challenges in HAB modeling by tackling both regional specificity and data limitations. By accurately predicting algal dynamics and identifying critical drivers, this approach provides actionable insights into the mechanisms of HABs, ultimately aids in the implementation of effective mitigation measures for nationwide and regional freshwater ecosystems.
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来源期刊
CiteScore
20.40
自引率
6.30%
发文量
11
审稿时长
18 days
期刊介绍: Environmental Science & Ecotechnology (ESE) is an international, open-access journal publishing original research in environmental science, engineering, ecotechnology, and related fields. Authors publishing in ESE can immediately, permanently, and freely share their work. They have license options and retain copyright. Published by Elsevier, ESE is co-organized by the Chinese Society for Environmental Sciences, Harbin Institute of Technology, and the Chinese Research Academy of Environmental Sciences, under the supervision of the China Association for Science and Technology.
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