| Literature DB >> 34661842 |
Mohammed Redha Qader1, Shahnawaz Khan2, Mustafa Kamal3, Muhammad Usman4,5, Mohammad Haseeb6.
Abstract
Global warming and climate change have become one of the most embarrassing and explosive problems/challenges all over the world, especially in third-world countries. It is due to a rapid increase in industrialization and urbanization process that has given the boost to the volume of greenhouse gases (GHGs) emissions. In this regard, carbon dioxide (CO2) is considered a significant driver of GHGs and is the major contributing factor for global warming. Considering the goal of mitigating environmental pollution, this research has applied multiple methods such as neural network time series nonlinear autoregressive, Gaussian Process Regression, and Holt's methods for forecasting CO2 emission. It attempts to forecast the CO2 emission of Bahrain. These methods are evaluated for performance. The neural network model has the root mean square errors (RMSE) of merely 0.206, while the Gaussian Process Regression Rational Quadratic (GPR-RQ) Model has RMSE of 1.0171, and Holt's method has RMSE of 1.4096. Therefore, it can be concluded that the neural network time series nonlinear autoregressive model has performed better for forecasting the CO2 emission in the case of Bahrain.Entities:
Keywords: CO2 emission; Gaussian Process Regression; Holt’s method; Neural network; Time series forecasting
Mesh:
Substances:
Year: 2021 PMID: 34661842 PMCID: PMC8522133 DOI: 10.1007/s11356-021-16960-2
Source DB: PubMed Journal: Environ Sci Pollut Res Int ISSN: 0944-1344 Impact factor: 5.190
Fig. 1Trend comparison of CO2 emissions per capita of GCC countries
Fig. 2Periodic comparison CO2 emissions per capita of GCC countries
Periodic CO2 emission per capita of GCC countries
| Location | 1970 | 1980 | 1990 | 2000 | 2010 | 2019 |
|---|---|---|---|---|---|---|
| Bahrain | 13.93 | 20.92 | 24.17 | 26.73 | 23.24 | 21.64 |
| Saudi Arabia | 8.06 | 19.25 | 10.60 | 12.73 | 17.44 | 18.00 |
| United Arab Emirates | 82.54 | 39.45 | 30.60 | 28.01 | 20.78 | 22.99 |
| Kuwait | 51.34 | 23.62 | 15.53 | 26.75 | 28.77 | 23.29 |
| Qatar | 134.39 | 65.18 | 35.69 | 53.59 | 39.23 | 38.82 |
| Oman | 10.13 | 11.16 | 8.60 | 11.17 | 17.26 | 18.55 |
Fig. 3CO2 emission of Bahrain (1933 to 2019)
Fig. 4Nonlinear autoregressive neural network structure
Fig. 5GPR-RQ model response plot
Fig. 6GPR-RQ model predicted vs. actual response plot
Fig. 7Prediction by neural network time series nonlinear autoregressive using Bayesian regularization
Fig. 8Prediction using Holt’s method
Performance comparison for forecasting model
| Method | Root mean square error |
|---|---|
| Neural network time series nonlinear autoregressive | 0.206 |
| Gaussian Process Regression Rational Quadratic Model | 1.0171 |
| Holt’s forecasting method | 1.4096 |
CO2 emission data forecast till 2025 for Bahrain
| Year | Predicted CO2 emission |
|---|---|
| 2020 | 34.602373 |
| 2021 | 35.393697 |
| 2022 | 36.199162 |
| 2023 | 37.018644 |
| 2024 | 37.623421 |
| 2025 | 38.414745 |