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Ensemble modeling of transport and dispersion simulations guided by machine learning hypotheses generation

机译:由机器学习假设生成指导的运输和扩散模拟的集成建模

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摘要

In this article an approach is presented where machine learning classifiers are used to drive an ensemble modeling method of multiple atmospheric transport and dispersion simulations. The goal is to achieve a higher spread of the results with a lower number of ensemble simulations. Symbolic machine learning algorithms are used to define choices for the variation of meteorological input data, model parameters, model physics, based on their combined effects on the final dispersion calculations (i.e., construction of ensembles). The methodology uses an iterative approach with the aim to identify ensemble members leading to a more balanced distribution of results.The methodology is tested using real meteorological data from Istanbul, Turkey, simulating atmospheric releases along the Bosphorus channel. In an extensive evaluation, different settings of the approach are compared in a series of experiments. The results indicate that the desired effect of more balanced results of the ensemble members can be achieved by the approach.
机译:在本文中,提出了一种方法,其中使用机器学习分类器来驱动多种大气传输和扩散模拟的集成建模方法。目的是通过较少数量的集成仿真来实现结果的更高分布。符号化机器学习算法用于根据气象输入数据,模型参数,模型物理的变化对最终色散计算的综合影响(即合奏的构造)来定义选择。该方法采用迭代方法,旨在识别导致结果更均衡分配的集合成员。该方法使用来自土耳其伊斯坦布尔的真实气象数据进行了测试,以模拟沿博斯普鲁斯海峡通道的大气释放。在广泛的评估中,在一系列实验中比较了该方法的不同设置。结果表明,通过该方法可以实现合奏成员的更平衡结果的期望效果。

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