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Analysis of cyanobacteria bloom in the Waihai part of Dianchi Lake, China

机译:滇池外海部分蓝藻水华的分析

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Blue-green algae (BGA) bloom is a typical phenomenon in eutrophied lakes. However, up to now, no environmental mechanism has been commonly accepted. Systematic and complete data sets of BGA blooms and environmental factors without any missing data are rare, which seriously affected previous studies. In this study, a bootstrapping based multiple imputation algorithm (EMB) was first applied to reconstruct a complete data set from the available data set with missing data, hence forming a basis for quantitatively relating BGA bloom to contributing factors. Then, the probability of BGA bloom outbreak was simulated using a binomial (or binary) logistic regression model, which is an effective tool for recognizing key contributing factors. The results suggest that 1) the outbreak frequency or probability of BGA bloom tends to first increase and then decrease with a turning point between June and September each year; 2) air temperature, relative humidity, and precipitation were significant positive factors correlated with outbreak frequency, whereas wind speed and the number of sunshine hours were negative factors; 3) water temperature had a strong positive effect on the probability of BGA bloom outbreak, whereas other water quality factors, such as concentrations of organics and nutrients, were not so significant. However, water quality factors, such as NO _3-N, SD, pH, NH _4-N, COD and DO, still need to be concerned, which had a potential to aggravate the outbreak of BGA bloom in Dianchi Lake, if they were out of control.
机译:在富营养化湖泊中,蓝绿色藻类(BGA)的开花是一种典型现象。但是,到目前为止,还没有普遍接受环境机制。很少有没有完整数据的BGA绽放和环境因素的系统数据集,这严重影响了先前的研究。在这项研究中,首先应用基于自举的多重插补算法(EMB)从缺少数据的可用数据集中重建完整的数据集,从而为将BGA盛开与影响因素定量相关奠定了基础。然后,使用二项式(或二元)逻辑回归模型模拟了BGA绽放爆发的可能性,这是识别关键影响因素的有效工具。结果表明:1)BGA爆发的发生频率或概率倾向于每年先增加后减少,并在每年的6月至9月之间有一个转折点; 2)气温,相对湿度和降水是与暴发频率相关的显着正因素,而风速和日照时数是负面因素; 3)水温对BGA绽放爆发的可能性有很强的积极影响,而其他水质因素,例如有机物和营养物的浓度却没有那么显着。但是,仍然需要考虑水质因素,例如NO _3-N,SD,pH,NH _4-N,COD和DO,如果这些因素引起了滇池BGA暴发的爆发,则有可能加剧这种情况。失控。

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