基于多变量数据的改进机器学习模型的湖泊蓝藻华时空变化评估与改进预测

IF 2.7 3区 环境科学与生态学 Q3 ENVIRONMENTAL SCIENCES
Yue Zhang, Jun Hou, Yuwei Gu, Xingyu Zhu, Jun Xia, Jun Wu, Guoxiang You, Zijun Yang, Wei Ding, Lingzhan Miao
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引用次数: 0

摘要

浅湖蓝藻大量繁殖对全球水生生态系统和公共卫生构成重大威胁,迫切需要先进的预测方法。洪泽湖和骆马湖作为南水北调东线沿线的蓄水湖泊,在水资源管理中发挥着关键作用,对其蓝藻华的预测尤为重要。为了解决这一问题,利用卫星遥感数据分析了这些湖泊蓝藻华的时空动态。随后,一个精确的机器学习模型,集成投影追踪模型和随机森林(PP-RF)算法,被开发来预测蓝藻华的程度,考虑了一系列的影响因素,包括物理,化学,气候和水文变量。研究结果表明,蓝藻华的季节性波动明显,夏季的水平高于其他季节。洪泽湖蓝藻华预测的关键影响因素包括太阳辐射、温度和总氮,骆马湖蓝藻华预测的重要影响因素包括温度、水温和太阳辐射。与传统的数据预处理方法相比,PP-RF模型在处理多重共线性方面具有优势。本研究为跨流域调水工程蓄水湖泊蓝藻华预测提供了可行的方法。通过输入特定区域的数据,该模型可以广泛应用,有助于抵御蓝藻华的不利影响,为水生生态系统的保护和管理提供科学指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatiotemporal Variation Assessment and Improved Prediction Of Cyanobacteria Blooms in Lakes Using Improved Machine Learning Model Based on Multivariate Data.

Cyanobacterial blooms in shallow lakes pose a significant threat to aquatic ecosystems and public health worldwide, highlighting the urgent need for advanced predictive methodologies. As impounded lakes along the Eastern Route of the South-to-North Water Diversion Project, Lakes Hongze and Luoma play a key role in water resource management, making the prediction of cyanobacterial blooms in these lakes particularly important. To address this, satellite remote sensing data were utilized to analyze the spatiotemporal dynamics of cyanobacterial blooms in these lakes. Subsequently, a precise machine learning model, integrating the Projection Pursuit Model and Random Forest (PP-RF) algorithms, was developed to predict the extent of cyanobacterial blooms, considering a range of influencing factors, including physical, chemical, climatic, and hydrologic variables. The findings indicated pronounced seasonal fluctuations in cyanobacterial blooms, with higher levels in summer than in other seasons. Key determinants for cyanobacterial blooms prediction included solar radiation, temperature and total nitrogen for Lake Hongze, while for Lake Luoma, significant predictors were identified as temperature, water temperature, and solar radiation. Compared with traditional data preprocessing methods, PP-RF model has advantages in addressing multicollinearity. This study provides a feasible method for predicting cyanobacterial blooms in impounded lakes within inter-basin water transfer projects. By inputting region-specific data, this model could be applied broadly, contributing to against the adverse effects of cyanobacterial blooms and provide scientific guidance for the protection and management of aquatic ecosystems.

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来源期刊
Environmental Management
Environmental Management 环境科学-环境科学
CiteScore
6.20
自引率
2.90%
发文量
178
审稿时长
12 months
期刊介绍: Environmental Management offers research and opinions on use and conservation of natural resources, protection of habitats and control of hazards, spanning the field of environmental management without regard to traditional disciplinary boundaries. The journal aims to improve communication, making ideas and results from any field available to practitioners from other backgrounds. Contributions are drawn from biology, botany, chemistry, climatology, ecology, ecological economics, environmental engineering, fisheries, environmental law, forest sciences, geosciences, information science, public affairs, public health, toxicology, zoology and more. As the principal user of nature, humanity is responsible for ensuring that its environmental impacts are benign rather than catastrophic. Environmental Management presents the work of academic researchers and professionals outside universities, including those in business, government, research establishments, and public interest groups, presenting a wide spectrum of viewpoints and approaches.
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