Abst'/> Accurately early warning to water quality pollutant risk by mobile model system with optimization technology
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Accurately early warning to water quality pollutant risk by mobile model system with optimization technology

机译:利用优化技术的移动模型系统对水质污染物风险进行准确的预警

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AbstractA fast and accurate water quality pollutant risk assessment and early warning system, which has great practical significance for decision making in accident management, is urgently needed for water protection and management. Based on a fast mobile early warning system named MEWSUB, this paper modified its framework to make it generate data more automatically and accurately. By adapting manning formula and particle swarm optimization (PSO) for parameters optimization, the accuracy of water quantity and water quality simulation results has been improved. The modified system was successfully applied in an antimony tailings dam leakage accident that happened in China. The coefficient of determination (R2) of the prediction result was higher than 0.9 and relative error (ree) was less than 0.1, which indicated that the accuracy of MEWSUB was high enough for realistic water quality pollutant risk early warning.Graphical abstractDisplay OmittedHighlightsA mobile system with optimization technology was developed for early warning.The water quantity and quality model parameters were optimized.The software accurately simulated an antimony pollution accident in China.The improved system is accurate enough for practical accident management.
机译: 摘要 快速准确的水质污染物风险评估和预警系统对事故管理中的决策具有重要的现实意义,因此迫在眉睫。水保护和管理所需。基于名为MEWSUB的快速移动预警系统,本文对其框架进行了修改,使其可以更自动,更准确地生成数据。通过将配员公式和粒子群优化(PSO)应用于参数优化,提高了水量和水质模拟结果的准确性。改进后的系统成功地应用于我国发生的锑尾矿坝渗漏事故。预测结果的确定系数(R 2 )大于0.9,相对误差( ree )为小于0.1,表明MEWSUB的准确性足以用于现实的水质污染物风险预警。 图形摘要 省略显示 突出显示 开发了具有优化技术的移动系统来进行预警。 •< / ce:label> 优化了水量和水质模型参数。 该软件准确地模拟了中国的锑污染事故。 改进后的系统对于实际的事故管理来说足够准确。

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