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Identifying the Driving Factors of Black Bloom in Lake Bay through Bayesian LASSO

机译:通过贝叶斯LASSO识别湖湾黑水华的驱动因素

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摘要

Black blooms are a serious and complex problem for lake bays, with far-reaching implications for water quality and drinking safety. While Fe(II) and S(−II) have been reported as the most important triggers of this phenomenon, little effort has been devoted in investigating the relationships between Fe(II) and S(−II) and the host of potentially important aquatic factors. However, a model involving many putative predictors and their interactions will be oversaturated and ill-defined, making ordinary least squares (OLS) estimation unfeasible. In such a case, sparsity assumption is typically required to exclude the redundant predictors from the model, either through variable selection or regularization. In this study, Bayesian least absolute shrinkage and selection operator (LASSO) regression was employed to identify the major influence variables from 11 aquatic factors for Fe(II), S(−II), and suspended sediment concentration (SSC) in the Chaohu Lake (Eastern of China) bay during black bloom maintenance. Both the main effects and the interactions between these factors were studied. The method successfully screened the most important variables from many items. The determination coefficients (R2) and adjusted determination coefficients (Adjust R2) showed that all regression equations for Fe(II), S(-II), and SSC were in good agreement with the situation observed in the Chaohu Lake. The outcome of correlation and LASSO regression indicated that total phosphorus (TP) was the single most important factor for Fe(II), S(-II), and SSC in black bloom with explanation ratios (ERs) of 76.1%, 37.0%, and 12.9%, respectively. The regression results showed that the interaction items previously deemed negligible have significant effects on Fe(II), S(−II), and SSC. For the Fe(II) equation, total nitrogen (TN) × dissolved oxygen (DO) and chlorophyll a (CHLA) × oxidation reduction potential (ORP), which contributed 10.6% and 13.3% ERs, respectively, were important interaction variables. TP emerged in each key interaction item of the regression equation for S(−II). Water depth (DEP) × Fe(II) (30.7% ER) was not only the main interaction item, but DEP (5.6% ER) was also an important single factor for the SSC regression equation. It also indicated that the sediment in shallow bay is an important source for SSC in water. The uncertainty of these relationships was also estimated by the posterior distribution and coefficient of variation (CV) of these items. Overall, our results suggest that TP concentration is the most important driver of black blooms in a lake bay, whereas the other factors, such as DO, DEP, and CHLA act in concert with other aquatic factors. There results provide a basis for the further control and management policy development of black blooms.
机译:黑色水华是湖湾的一个严重而复杂的问题,对水质和饮水安全具有深远的影响。尽管据报道,Fe(II)和S(-II)是造成这种现象的最重要诱因,但在研究Fe(II)和S(-II)与潜在重要水生生物之间的关系方面,人们付出了很少的努力。因素。但是,包含许多假定的预测变量及其相互作用的模型将过饱和且定义不明确,从而使普通最小二乘法(OLS)估算变得不可行。在这种情况下,通常需要稀疏假设,以通过变量选择或正则化将冗余预测变量从模型中排除。在这项研究中,采用贝叶斯最小绝对收缩和选择算子(LASSO)回归来确定巢湖中11种水生因子对Fe(II),S(-II)和悬浮沉积物浓度(SSC)的主要影响变量(中国东部)黑色绽放维护期间的海湾。研究了主要影响以及这些因素之间的相互作用。该方法成功地从许多项目中筛选出最重要的变量。测定系数(R 2 )和调整后的测定系数(Adjust R 2 )表明,Fe(II),S(-II)和SSC的所有回归方程均为与巢湖的情况非常吻合。相关性和LASSO回归结果表明,总磷(TP)是黑花中Fe(II),S(-II)和SSC的最重要因素,解释率(ERs)分别为76.1%,37.0%,和12.9%。回归结果表明,以前认为可忽略的相互作用项目对Fe(II),S(-II)和SSC具有显着影响。对于Fe(II)方程,总氮(TN)×溶解氧(DO)和叶绿素a(CHLA)×氧化还原电位(ORP)(分别贡献了10.6%和13.3%的ER)是重要的相互作用变量。 TP出现在S(-II)回归方程的每个关键相互作用项中。水深(DEP)×Fe(II)(30.7%ER)不仅是主要的相互作用项目,而且DEP(5.6%ER)也是SSC回归方程的重要单因素。这也表明浅海湾的沉积物是水中SSC的重要来源。这些关系的不确定性还可以通过这些项目的后验分布和变异系数(CV)来估算。总体而言,我们的结果表明,TP浓度是湖湾黑潮的最重要驱动因素,而其他因子(如DO,DEP和CHLA)与其他水生因子协同作用。研究结果为进一步发展黑花病防治提供了依据。

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