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Models for identifying significant environmental factors associated with cyanobacterial bloom occurrence and for predicting cyanobacterial blooms

机译:用于识别与蓝藻水华发生相关的重要环境因素并预测蓝藻水华的模型

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Compared with microscopic indices such as biomass, inverted satellite images can reflect cyanobacterial blooms from a macroscopic perspective, can provide planar information for blooms, and can more definitely reflect the occurrence of visible cyanobacterial blooms. We therefore adopted inverted images (from MODIS imagery) to judge whether cyanobacterial blooms had occurred in a water area at a given time. We constructed two probit models for identifying significant environmental factors related to cyanobacterial bloom occurrence and for short-term forecasts of bloom occurrence. The models used the index of cyanobacterial bloom occurrence as the dependent variable and the predicted variable, respectively, and used three categories (water quality, hydrology, and weather) of monitoring variables as the independent variables (or predictive variables). We used the Hill Dagong water area of Lake Tai in China as a case study of the new methods. The results produced by the identification model are consistent with the general conclusions in this research field indicating the validity of the model. The mean relative error of the forecast model is 13.5%, which is close to or lower than that of two previous models. Compared with the previous models, our forecast model also has advantages in terms of spatial and temporal precision. The new models have both practical applicability and the ability to be generalized and can, therefore, be easily adapted for the prevention, control, and prediction of cyanobacterial blooms in other bodies of water.
机译:与诸如生物量之类的微观指标相比,倒置卫星图像可以从宏观角度反映蓝藻水华,可以为水华提供平面信息,并且可以更确切地反映可见蓝藻水华的发生。因此,我们采用倒置图像(来自MODIS图像)来判断在给定时间在水域中是否发生了蓝藻水华。我们构建了两个概率模型,用于识别与蓝藻水华发生有关的重要环境因素以及水华发生的短期预测。该模型分别将蓝藻水华发生指数作为因变量和预测变量,并将监测变量的三类(水质,水文和天气)用作自变量(或预测变量)。我们以中国太湖的大公山水域为例,对新方法进行了研究。识别模型产生的结果与该研究领域的一般结论相符,表明该模型的有效性。预测模型的平均相对误差为13.5%,接近或低于前两个模型的平均相对误差。与以前的模型相比,我们的预测模型在时空精度方面也具有优势。新模型既具有实用性,又具有泛化能力,因此可以轻松地用于预防,控制和预测其他水域中的蓝藻水华。

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