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Identification of source information for sudden water pollution incidents in rivers and lakes based on variable-fidelity surrogate-DREAM optimization

机译:基于可变保真代理梦想优化的河流和湖泊突然水污染事件的源信息识别

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摘要

For sudden water pollution incidents in rivers and lakes, the ability to quickly identify the pollution source is of great importance for providing early accident warning and implementing emergency control measures. Based on Bayesian reasoning, a variable-fidelity surrogate-differential evolution adaptive metropolis optimization (DREAM) optimization model for coupled inversion process is established in the posterior space of the pollution source. In order to verify the effectiveness of the algorithm, this paper takes lake A as the research area, and gives a hypothetical water pollution emergency, the pollution source location, release time and released mass of water pollutants suddenly released into water bodies were determined according to the method proposed in this paper. The results show that in the case of ensuring the accuracy of calculation, the algorithm can accelerate more than 200 times and effectively improves the computational efficiency of the traditional method for obtaining the source information of sudden water pollution events.
机译:对于河流和湖泊的突然水污染事件,快速识别污染源的能力对于提供早期事故警告和实施应急控制措施具有重要意义。基于贝叶斯推理,在污染源的后空间中建立了一种耦合反演过程的可变保真代理 - 差分演进自适应大都市优化(梦想)优化模型。为了验证算法的有效性,本文将A湖成为研究区,并给出假设的水污染力,污染源位置,释放时间和释放的水污染物突然释放到水体中依照本文提出的方法。结果表明,在确保计算准确性的情况下,该算法可以加速大于200倍并有效提高传统方法的计算效率,以获得突然的水污染事件的源信息。

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