Integrating Health on Air Quality Assessment—Review Report on Health Risks of Two Major European Outdoor Air Pollutants: PM and NO2

2014 ◽  
Vol 17 (6) ◽  
pp. 307-340 ◽  
Author(s):  
Solange Costa ◽  
Joana Ferreira ◽  
Carlos Silveira ◽  
Carla Costa ◽  
Diogo Lopes ◽  
...  
Author(s):  
Petr Hájek ◽  
Vladimír Olej

The chapter presents an overview of current methods for air quality assessment, i.e. air stress indices and air quality indices. Traditional air quality assessment is realized using air quality indices which are determined as mean values of selected air pollutants. Thus, air quality assessment depends on strictly given limits without taking into account specific local conditions and synergic relations between air pollutants and other meteorological factors. The stated limitations can be eliminated, e.g. using systems based on neural networks and fuzzy logic. Therefore, the chapter presents a design of a model for air quality assessment based on a combination of Kohonen’s self-organizing feature maps and fuzzy logic neural networks. The model makes it possible to analyze the structure of data, to find localities with similar air quality, and to interpret the classification results by means of fuzzy logic. Due to its generalization ability, it is also possible to classify unknown localities into classes assessing their air quality.


Author(s):  
Amalina Abu Mansor ◽  
Ain Natasha Badrul Hisham ◽  
Samsuri Abdullah ◽  
Nur Nazmi Liyana Mohd Napi ◽  
Ali Najah Ahmed ◽  
...  

2021 ◽  
Vol 3 (4) ◽  
Author(s):  
David A. Wood

Medium-term air quality assessment, benchmarking it to recent past data can usefully complement short-term air quality index data for monitoring purposes. By using daily and monthly averaged data, medium-term air quality benchmarking provides a distinctive perspective with which to monitor air quality for sustainability planning and ecosystem perspectives. By normalizing the data for individual air pollutants to a standard scale they can be more easily integrated to generate a daily combined local area benchmark (CLAB). The objectives of the study are to demonstrate that medium-term air quality benchmarking can be tailored to reflect local conditions by selecting the most relevant pollutants to incorporate in the CLAB indicator. Such a benchmark can provide an overall air quality assessment for areas of interest. A case study is presented for Dallas County (U.S.A.) applying the proposed method by benchmarking 2020 data for air pollutants to their trends established for 2015 to 2019. Six air pollutants considered are: ozone, carbon monoxide, nitrogen dioxide, sulfur dioxide, benzene and particulate matter less than 2.5 micrometres. These pollutants are assessed individually and in terms of CLAB, and their 2020 variations for Dallas County compared to daily trends established for years 2015 to 2019. Reductions in benzene and carbon monoxide during much of 2020 are clearly discernible compared to preceding years. The CLAB indicator shows clear seasonal trends for air quality for 2015 to 2019 with high pollution in winter and spring compared to other seasons that is strongly influenced by climatic variations with some anthropogenic inputs. Conducting CLAB analysis on an ongoing basis, using a relevant nearpast time interval for benchmarking that covers several years, can reveal useful monthly, seasonal and annual trends in overall air quality. This type of medium-term, benchmarked air quality data analysis is well suited for ecosystem monitoring.


2006 ◽  
Vol 3 (1) ◽  
pp. 36-43 ◽  
Author(s):  
Joung Ae Lee ◽  
John C. Johnson ◽  
Stephen J. Reynolds ◽  
Peter S. Thorne ◽  
Patrick T. O'shaughnessy

Author(s):  
Attila Simo ◽  
Simona Dzitac ◽  
Ioan Dzitac ◽  
Mihaela Frigura-Iliasa ◽  
Flaviu Mihai Frigura-Iliasa

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