Author
Listed:
- Jikang Wang
(China Meteorological Administration Hydro-Meteorology Key Laboratory, Beijing 100081, China
National Meteorological Center, Beijing 100081, China)
- Junying Zhao
(National Meteorological Center, Beijing 100081, China)
- Cong Hua
(National Meteorological Center, Beijing 100081, China)
- Jianzhong Zhang
(National Meteorological Center, Beijing 100081, China)
Abstract
The dynamics of cyanobacteria bloom in Lake Taihu, China, are subject to rapid fluctuations under the influence of various factors, with meteorological conditions being particularly influential. In this study, monitoring data on the surface area of cyanobacteria bloom in Lake Taihu and observational data from automatic meteorological stations around Lake Taihu from 2016 to 2022 were utilized. Meteorological sub-indices were constructed based on the probability density distributions of meteorological factors in different areas of cyanobacterial bloom. A stacked ensemble model utilizing various machine learning algorithms was developed. This model was designed to forecast the cyanobacterial bloom area index in Lake Taihu based on meteorological data. This model has been deployed with real-time gridded forecasts from the China Meteorological Administration (CMA) to predict changes in the cyanobacteria bloom area index in Lake Taihu over the next 7 days. The results demonstrate that utilizing meteorological sub-indices, rather than traditional meteorological elements, provides a more effective reflection of changes in cyanobacteria bloom area. Key meteorological sub-indices were identified through recursive feature elimination, with wind speed variance and wind direction variance highlighted as especially important factors. The real-time forecasting system operated over a 2.5-year period (2023 to July 2025). Results demonstrate that for cyanobacteria bloom areas exceeding 100 km 2 , the 1-day lead-time forecast hit rate exceeded 72%, and the 3-day forecast hit rate remained above 65%. These findings significantly enhance forecasting capability for cyanobacterial blooms in Lake Taihu, offering critical support for sustainable water management practices in one of China’s most important freshwater systems.
Suggested Citation
Jikang Wang & Junying Zhao & Cong Hua & Jianzhong Zhang, 2025.
"Constructing Real-Time Meteorological Forecast Method of Short-Term Cyanobacteria Bloom Area Index Changes in the Lake Taihu,"
Sustainability, MDPI, vol. 17(18), pages 1-18, September.
Handle:
RePEc:gam:jsusta:v:17:y:2025:i:18:p:8376-:d:1752522
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