The forecasting of time series data is essential by following statistical and intelligent techniques. Particular matter (PM10) is a time series dataset used to scale the air pollution as a dependent variable while there are many types of pollutants used as independent variables. MLR model has been used as a traditional linear approach to forecasting PM10 data. Combining NF as a nonlinear intelligent method with MLR in a hybrid MLR-NF method has been proposed for improving PM10 forecasts and handling the nonlinearity of datasets. The forecasting results reflected that the hybrid method outperformed the traditional method. Although a multiple linear regression (MLR) model has been used for air quality forecasting depending on several meteorol...
Fuzzy time series (FTS) forecasting models show a great performance in predicting time series, such ...
In the paper we discuss the analysis of multidimensional data. We consider the relationship between ...
Air pollution has become one of the most significant problems impacting human health. Particulate ma...
The forecasting of time series data is essential by following statistical and intelligent techniques...
Nowadays, pollutants continue to be released into the atmosphere in increasing amounts with each pas...
Air pollution is a major global issue. In Thailand, this issue continues to increase every year, sim...
For many years, improving air quality has been great attention of the whole world. It has been recog...
The arising air pollution has addressed much attention globally due to its detrimental effects on hu...
This research aims to propose hybrid machine learnings for forecasting and monitoring air pollution ...
Malaysia has been facing transboundary haze events every year in which the air contains particulate ...
Air pollution is defined as a phenomenon harmful to the ecological system and the normal conditions ...
As air pollution is a complex mixture of toxic components with considerable impact on humans, foreca...
There is a very extensive literature on the design and test of models of environmental pollution, es...
The usual practices of air quality time-series forecasting are based on applying the models that dea...
Air quality time series consists of complex linear and non-linear patterns and are difficult to fore...
Fuzzy time series (FTS) forecasting models show a great performance in predicting time series, such ...
In the paper we discuss the analysis of multidimensional data. We consider the relationship between ...
Air pollution has become one of the most significant problems impacting human health. Particulate ma...
The forecasting of time series data is essential by following statistical and intelligent techniques...
Nowadays, pollutants continue to be released into the atmosphere in increasing amounts with each pas...
Air pollution is a major global issue. In Thailand, this issue continues to increase every year, sim...
For many years, improving air quality has been great attention of the whole world. It has been recog...
The arising air pollution has addressed much attention globally due to its detrimental effects on hu...
This research aims to propose hybrid machine learnings for forecasting and monitoring air pollution ...
Malaysia has been facing transboundary haze events every year in which the air contains particulate ...
Air pollution is defined as a phenomenon harmful to the ecological system and the normal conditions ...
As air pollution is a complex mixture of toxic components with considerable impact on humans, foreca...
There is a very extensive literature on the design and test of models of environmental pollution, es...
The usual practices of air quality time-series forecasting are based on applying the models that dea...
Air quality time series consists of complex linear and non-linear patterns and are difficult to fore...
Fuzzy time series (FTS) forecasting models show a great performance in predicting time series, such ...
In the paper we discuss the analysis of multidimensional data. We consider the relationship between ...
Air pollution has become one of the most significant problems impacting human health. Particulate ma...