基于神经网络的复杂地形重污染工业区环境SO2浓度短期预测方法

Marija Boznar, Martin Lesjak, Primoz Mlakar
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引用次数: 270

摘要

提出了一种基于神经网络的短期大气污染预测新方法。它是为预测斯洛文尼亚最大的Sostanj热电厂周围的二氧化硫污染而开发的。由于SO2的高排放,需要一种可靠的空气污染预测方法,以便在关键气象条件下降低污染物浓度峰值。在复杂地形中,传统的空气污染模拟方法不太可靠。这种新方法得到的结果是很有希望的。该方法稍加修改,也可用于其他重要的空气污染物,其浓度可以连续测量。
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A neural network-based method for short-term predictions of ambient SO2 concentrations in highly polluted industrial areas of complex terrain

A new method for short-term air pollution prediction is described, based on the neural network. It was developed for prediction for SO2 pollution around the biggest Slovenian thermal power plant at Sostanj. Because of the high SO2 emissions, there is a need for a reliable air pollution prediction method that would enable lowering the peaks of pollutant concentrations in critical meteorological situations. In complex topography, classical methods for air pollution modelling are not reliable enough. The results obtained by this new method are very promising.

The method can also be used, with slight modifications, for other important air pollutants, the concentrations of which can be measured continuously.

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