The objective of this paper is to apply time series analysis to ozone data in order to obtain the optimal forecasting model. Different ARMA models are fitted to the ozone data and the best fitted model, ARMA(20,2), is found to produce the best predictions with MAPE = 42%. Applying simple exponential smoothing to the time series, however, results in even higher accuracy for predictions. This leads us to believe that in certain cases depending on the characteristics of the time series, naive methods of forecasting may produce more accurate results
In this paper we analysed the ozone time series data collected by the local monitoring network in th...
Time series analysis and forecasting has become a major tool in many applications in air pollution a...
[1] The potential of ensemble techniques to improve ozone forecasts is investigated. Ensembles with ...
The objective of this paper is to apply time series analysis to Ozone data in order to obtain the op...
The objective of this paper is to apply time series analysis to Ozone data in order to obtain the op...
Using techniques of nonparametric regression, we develop a nonparametric approach in the context of ...
Novel statistical approaches to prediction have recently been shown to perform well in several scien...
The objective of this paper is to apply time series analysis and regression methods to air quality d...
The objective of this paper is to apply time series analysis and regression methods to air quality d...
Copyright 2010 by the American Geophysical UnionA novel additive model analysis of multimodel trends...
One of the main concerns in air pollution is excessive tropospheric ozone concentration. The aim of ...
The recent change in the Environmental Protection Agency's surface ozone regulation, lowering the su...
This thesis investigates the hypothesis that ensemble methods and Kalman-filter (KF) post-processing...
This study is focused on the development of prediction models of the Ozone concentration time series...
Present paper endeavors to develop predictive artificial neural network model for forecasting the me...
In this paper we analysed the ozone time series data collected by the local monitoring network in th...
Time series analysis and forecasting has become a major tool in many applications in air pollution a...
[1] The potential of ensemble techniques to improve ozone forecasts is investigated. Ensembles with ...
The objective of this paper is to apply time series analysis to Ozone data in order to obtain the op...
The objective of this paper is to apply time series analysis to Ozone data in order to obtain the op...
Using techniques of nonparametric regression, we develop a nonparametric approach in the context of ...
Novel statistical approaches to prediction have recently been shown to perform well in several scien...
The objective of this paper is to apply time series analysis and regression methods to air quality d...
The objective of this paper is to apply time series analysis and regression methods to air quality d...
Copyright 2010 by the American Geophysical UnionA novel additive model analysis of multimodel trends...
One of the main concerns in air pollution is excessive tropospheric ozone concentration. The aim of ...
The recent change in the Environmental Protection Agency's surface ozone regulation, lowering the su...
This thesis investigates the hypothesis that ensemble methods and Kalman-filter (KF) post-processing...
This study is focused on the development of prediction models of the Ozone concentration time series...
Present paper endeavors to develop predictive artificial neural network model for forecasting the me...
In this paper we analysed the ozone time series data collected by the local monitoring network in th...
Time series analysis and forecasting has become a major tool in many applications in air pollution a...
[1] The potential of ensemble techniques to improve ozone forecasts is investigated. Ensembles with ...