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Risk assessment of atmospheric emissions using machine learning

机译:使用机器学习对大气排放的风险评估

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Supervised and unsupervised machine learning algorithms are used to perform statistical and logical analysis of several transport and dispersion model runs which simulate emissions from a fixed source under different atmospheric conditions. First, a clustering algorithm is used to automatically group the results of different transport and dispersion simulations according to specific cloud characteristics. Then, a symbolic classification algorithm is employed to find complex non-linear relationships between the meteorological input conditions and each cluster of clouds. The patterns discovered are provided in the form of probabilistic measures of contamination, thus suitable for result interpretation and dissemination. The learned patterns can be used for quick assessment of the areas at risk and of the fate of potentially hazardous contaminants released in the atmosphere.
机译:监督和无监督的机器学习算法用于执行几种运输和分散模型运行的统计和逻辑分析,该运行模拟不同大气条件下的固定源排放。首先,群集算法用于根据特定云特性自动分组不同传输和色散模拟的结果。然后,采用符号分类算法来在气象输入条件和每个云群之间找到复杂的非线性关系。发现的模式以概率的污染措施的形式提供,因此适用于结果解释和传播。学习的模式可用于快速评估风险的区域,以及在大气中释放的潜在危险污染物的命运。

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