Neural network modeling methods for predicting the air parameters in the city of Tuzla

D. Agić́, H. Makic, G. Tadic, M. Gligoric, S. Agic
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Abstract

According to the report of the World Health Organization, the city of Tuzla is the second in the world, and the first in Europe in terms of the number of diseases caused by air pollution. Tuzla Canton since 2003 has continuous air monitoring. Concentrations of individual pollutants exceed hourly, daily and annual limit values. In this paper, based on the existing results of air monitoring and meteorological data, using statistical methods and neural network modeling methods, unique and reliable models for predicting the concentration of NO2 in the air for the City of Tuzla have been developed. The results obtained using these models can be used in strategic decision-making processes and activities related to air quality control and management. This paper, on the example of the City of Tuzla, showed that using existing air monitoring data, concentrations of pollutants can be predicted for a longer period of time, using artificial intelligence methods. Reliable models with a high correlation coefficient can be obtained. In the case of a short or long interruption of the measurement of pollutant concentrations for the City of Tuzla with the help of models, which are the result of this work, it is possible to predict the concentrations of pollutants and plan to take measures based on them.
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预测图兹拉市空气参数的神经网络建模方法
根据世界卫生组织的报告,就空气污染引起的疾病数量而言,图兹拉市在世界上排名第二,在欧洲排名第一。图兹拉州自2003年开始进行连续空气监测。个别污染物的浓度超过小时、日和年限制值。本文在现有大气监测成果和气象资料的基础上,运用统计方法和神经网络建模方法,建立了图兹拉市大气NO2浓度预测的独特、可靠的模型。使用这些模型获得的结果可用于与空气质量控制和管理有关的战略决策过程和活动。本文以图兹拉市为例,表明利用现有的空气监测数据,利用人工智能方法可以预测更长的时间内污染物的浓度。可以得到具有高相关系数的可靠模型。在利用这项工作的结果模型对图兹拉市的污染物浓度进行测量的情况下,如果有短期或长期的中断,就有可能预测污染物的浓度,并根据这些浓度计划采取措施。
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