水华
布鲁姆
预警系统
计算机科学
环境监测
优势和劣势
透视图(图形)
环境科学
生化工程
人工智能
生态学
工程类
营养物
环境工程
生物
电信
浮游植物
哲学
认识论
作者
X.L. Xiao,Yazhou Peng,Wei Zhang,Xiuzhen Yang,Zhi Zhang,Bozhi Ren,Guocheng Zhu,Saijun Zhou
标识
DOI:10.1016/j.jenvman.2023.119510
摘要
In recent years, frequent occurrences of algal blooms due to environmental changes have posed significant threats to the environment and human health. This paper analyzes the reasons of algal bloom from the perspective of environmental factors such as nutrients, temperature, light, hydrodynamics factors and others. Various commonly used algal bloom monitoring methods are discussed, including traditional field monitoring methods, remote sensing techniques, molecular biology-based monitoring techniques, and sensor-based real-time monitoring techniques. The advantages and limitations of each method are summarized. Existing algal bloom prediction models, including traditional models and machine learning (ML) models, are introduced. Support Vector Machine (SVM), deep learning (DL), and other ML models are discussed in detail, along with their strengths and weaknesses. Finally, this paper provides an outlook on the future development of algal bloom warning techniques, proposing to combine various monitoring methods and prediction models to establish a multi-level and multi-perspective algal bloom monitoring system, further improving the accuracy and timeliness of early warning, and providing more effective safeguards for environmental protection and human health.
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