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Effects of air quality and vegetation on algal bloom early warning systems in large lakes in the middle-lower Yangtze River basin

机译:中下长江盆地大湖泊藻类盛开预警系统的空气质量和植被的影响

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Studies of algal bloom early warning systems have rarely paid attention to the dynamics of excessive proliferation of phytoplankton (EPP), which occurs prior to algal blooms, or to the sensitivity of a lake to EPP based on multiple environmental factors. In this study, we investigated EPP dynamics in large lakes and identified major factors that influenced the lake's vulnerability to EPP, to improve algal bloom early warning systems. High temporal moderate resolution imaging spectroradiometer (MODIS) images and multi-source daily site monitoring data of large lakes in the middle-lower Yangtze River basin were analyzed. Then, the floating algal index (FAI) and resource use efficiency (RUE) by phytoplankton were used to investigate the EPP dynamics and lake's vulnerability to EPP, respectively. Moreover, generalized linear models were used to assess the relative importance of environmental factors on RUE. The results indicate that the lakes freely connected (FC) to the Yangtze River (Dongting Lake and Poyang Lake) had lower FAIs but higher RUEs than the non-connected lakes (NC; Chaohu Lake and Taihu Lake). The key factors affecting RUE-FC were standard deviation of water level within 30 days(WL30), particulate matter 10 mu m(PM10), and relative humidity(Hum), which explained 15.91% of the variations in RUE. The key factors affecting RUE-NC were ozone(O3), basin normalized difference vegetation index standard deviation(BNDVISD), and dissolved oxygen(DO), which explained 35.28% of the variations in RUE. These results emphasize the importance of air quality in influencing or reflecting EPP risks in large lakes. In addition, basin vegetation and hydrological rhythms can influence NH4+ through non-point source loading. Algal bloom early warning systems can be improved by routine monitoring and forecasting of potential environmental factors such as air quality and basin vegetation.
机译:藻类盛开预警系统很少关注藻类植物(EPP)的过度增殖的动态,这在藻类盛开之前发生,或者基于多种环境因素的湖泊对EPP的敏感性。在这项研究中,我们调查了大湖泊中的EPP动态,并确定了影响湖泊脆弱性对EPP的主要因素,以改善藻类盛开预警系统。分析了高延长长江盆地大湖泊的高颞间分辨率成像光谱仪(MODIS)图像和多源日常网站监测数据。然后,浮游植物的浮动藻类指数(FAI)和资源使用效率(RUE)分别用于调查EPP动力学和湖泊对EPP的脆弱性。此外,广义的线性模型用于评估环境因素对rue的相对重要性。结果表明,湖泊与长江(洞庭湖和鄱阳湖)自由联系(FC),盛士较低,而不是非连通湖泊(NC;巢湖和太湖)。影响Rue-Fc的关键因素在30天内(WL30),颗粒物质10的水位标准偏差,颗粒物质&10μm(pm10),以及相对湿度(嗡嗡声),其解释了戒指的15.91%的差异。影响Rue-NC的关键因素是臭氧(O3),盆地归一化差异植被指数标准偏差(BNDVISD),并溶解氧(DO),该溶解氧(DO),该溶解氧(DO)解释了35.28%的rue变化。这些结果强调了空气质量在大湖泊中影响或反映了EPP风险的重要性。此外,盆地植被和水文节律可以通过非点源载荷影响NH 4 +。通过常规监测和预测诸如空气质量和盆地植被等潜在环境因素的常规监测和预测,可以提高藻类盛开预警系统。

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