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Freshwater Algal Bloom Prediction by Support Vector Machine in Macau Storage Reservoirs

机译:支持向量机在澳门储层淡水藻华的预测。

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摘要

Understanding and predicting dynamic change of algae population in freshwater reservoirs is particularly important, as algae-releasing cyanotoxins are carcinogens that would affect the health of public. However, the high complex nonlinearity of water variables and their interactions makes it difficult to model the growth of algae species. Recently, support vector machine (SVM) was reported to have advantages of only requiring a small amount of samples, high degree of prediction accuracy, and long prediction period to solve the nonlinear problems. In this study, the SVM-based prediction and forecast models for phytoplankton abundance in Macau Storage Reservoir (MSR) are proposed, in which the water parameters of pH, SiO_2, alkalinity, bicarbonate (HCO_3~-), dissolved oxygen (DO), total nitrogen (TN), UV_(254), turbidity, conductivity, nitrate, total nitrogen (TN), orthophosphate (PO_4~(3-)), total phosphorus (TP), suspended solid (SS) and total organic carbon (TOC) selected from the correlation analysis of the 23 monthly water variables were included, with 8-year (2001-2008) data for training and the most recent 3 years (2009-2011) for testing. The modeling results showed that the prediction and forecast powers were estimated as approximately 0.76 and 0.86, respectively, showing that the SVM is an effective new way that can be used for monitoring algal bloom in drinking water storage reservoir.
机译:了解和预测淡水水库中藻类种群的动态变化尤为重要,因为释放藻类的氰毒素是致癌物质,会影响公众健康。然而,水变量及其相互作用的高度复杂的非线性使得难以对藻类物种的生长进行建模。最近,据报道,支持向量机(SVM)具有只需要少量样本,高预测精度和长预测周期来解决非线性问题的优点。本研究提出了基于支持向量机的澳门储水库浮游植物丰度预测模型,其中水的pH,SiO_2,碱度,碳酸氢根(HCO_3〜-),溶解氧(DO),总氮(TN),紫外线(254),浊度,电导率,硝酸盐,总氮(TN),正磷酸盐(PO_4〜(3-)),总磷(TP),悬浮固体(SS)和总有机碳(TOC) )包括从23个每月水变量的相关性分析中选择的),用于培训的8年(2001-2008)数据和用于测试的最近3年(2009-2011)的数据。建模结果表明,预测能力和预测能力分别约为0.76和0.86,这表明SVM是一种有效的新方法,可用于监测饮用水蓄水池中的藻华。

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  • 来源
    《Mathematical Problems in Engineering》 |2012年第11期|397473.1-397473.12|共12页
  • 作者单位

    Faculty of Science and Technology, University of Macau, Taipa, Macau;

    Faculty of Science and Technology, University of Macau, Taipa, Macau;

    Laboratory & Research Center, Macao Water Supply Co. Ltd., Conselheiro Borja, Macau;

    Faculty of Science and Technology, University of Macau, Taipa, Macau;

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