The importance of mesoscale to forecast air pollution
نویسندگان
چکیده
The importance of meteorological scales to forecast air pollution scenarios on a complex-terrain coastal site of the Iberian Peninsula J. L. Palau, G. Pérez-Landa, J. J. Diéguez, C. Monter, and M. M. Millán Fundación Centro de Estudios Ambientales del Mediterráneo (CEAM), València, Spain Received: 25 May 2005 – Accepted: 1 June 2005 – Published: 12 July 2005 Correspondence to: J. L. Palau ([email protected]) © 2005 Author(s). This work is licensed under a Creative Commons License.
منابع مشابه
The fuzzy logic in air pollution forecasting model
In the paper a model to predict the concentrations of particulate matter PM10, PM2.5, SO2, NO, CO and O3 for a chosen number of hours forward is proposed. The method requires historical data for a large number of points in time, particularly weather forecast data, actual weather data and pollution data. The idea is that by matching forecast data with similar forecast data in the historical data...
متن کاملThe importance of meteorological scales to forecast air pollution scenarios on coastal complex terrain
Some of the meteorological approaches commonly considered in urban air pollution models do not take into account the importance of the smaller scales in the meteorology of complex-terrain coastal sites. The aim of this work is to estimate the impact of using the proper meteorological scales when simulating the behaviour of the pollutant concentrations emitted in the lower layers over coastal co...
متن کاملبررسی جریانهای محلی روی تهران با استفاده از مدل میان مقیاس WRF و شرایط جوی ایدهآل
Wind is the carrier of pollutants and any other gaseous or particle matters in the atmosphere. Stable atmosphere with low wind provides favourable conditions for high contamination of pollutants in urban areas. The importance of mesoscale atmospheric flows in air pollution dispersion has been recognized in the past three decades and has been the focus of intensive research both observational ...
متن کاملArtificial neural network forecast application for fine particulate matter concentration using meteorological data
Most parts of the urban areas are faced with the problem of floating fine particulate matter. Therefore, it is crucial to estimate the amounts of fine particulate matter concentrations through the urban atmosphere. In this research, an artificial neural network technique was utilized to model the PM2.5 dispersion in Tehran City. Factors which are influencing the predicted value consi...
متن کاملForecasting Ozone Density in Tehran Air Using a Smart Data-Driven Approach
Introduction: As a metropolitan area in Iran, Tehran is exposed to damage from air pollution due to its large population and pollutants from various sources. Accordingly, research on damage induced by air pollution in this city seems necessary. The main purpose of this study was to forecast ozone in the city of Tehran. Considering the hazards of ozone (O3) gas on human health and the environmen...
متن کامل