Prediction of CO2 Emission in China’s Power Generation Industry with Gauss Optimized Cuckoo Search Algorithm and Wavelet Neural Network Based on STIRPAT model with Ridge Regression
Abstract
:1. Introduction
2. Materials and Methods
2.1. STIRPAT Model
2.2. Ridge Regression
2.3. Wavelet Neural Network Prediction Model
2.4. Gauss Optimized Cuckoo Search Algorithm
2.4.1. Cuckoo Search Algorithm
- (1)
- The number of eggs produced by a cuckoo per time is 1.
- (2)
- The host bird’s nest where high-quality eggs are located is the optimal solution and will be retained for the next generation.
- (3)
- The number of host nests is certain, and the probability that cuckoo eggs are found by nest owners is .
2.4.2. Gauss Optimization
2.5. The Prediction Model of RR-STIRPAT-GCS-WNN
3. Results
3.1. Analysis on Influencing Factors of CO2 Emission in Power Generation Industry
3.2. Prediction of CO2 Emission in Power Generation Industry
3.2.1. Prediction of Influencing Factors Based on GCS-WNN
3.2.2. Prediction of CO2 Emission Based on RR-STIRPAT Model
4. Discussion and Conclusions
- (1)
- The CO2 emission of power generation industry is affected by many factors. It is concluded that the key factors that directly affect CO2 emissions are population, per capita GDP, standard coal consumption and proportion of thermal power.
- (2)
- Based on the STIRPAT model, the CO2 emission factors analysis model of power generation industry is established. Besides, the collinearity test of the model shows that if the ordinary least squares algorithm is applied, the multicollinearity will be serious. However, the ridge regression method can solve this problem to a certain extent.
- (3)
- The WNN model is used to predict the influencing factors. In order to improve the convergence speed and prediction accuracy of the model, Gauss optimized cuckoo search algorithm is added into the model parameter optimization. Compared with other models, it is found that the optimized model has higher prediction accuracy.
- (4)
- The GCS-WNN model is used to predict the population, per capita GDP, standard coal consumption and the proportion of thermal power in the past 2018–2022 years. The predicted results of each factor are plugged into the RR-STIRPAT model, and finally the CO2 emission prediction value of 2018–2022 years power generation industry is obtained. It is predicted that the CO2 emission from the power generation industry will increase gradually in the next five years. However, with the slowdown of population growth and the development of power generation technology, CO2 emissions in power generation industry will grow slower and slower.
Supplementary Files
Supplementary File 1Acknowledgments
Author Contributions
Conflicts of Interest
References
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Year | CO2 Annual Emissions (million tons) | Population (million people) | Per Capita GDP (yuan) | Standard Coal Consumption (g/kWh) | Proportion of Thermal Power |
---|---|---|---|---|---|
1995 | 915.36 | 1211.21 | 5091 | 412 | 0.795 |
1996 | 1005.78 | 1223.89 | 5898 | 410 | 0.813 |
1997 | 1022.69 | 1236.26 | 6481 | 408 | 0.815 |
1998 | 1021.78 | 1247.61 | 6860 | 404 | 0.795 |
1999 | 1053.64 | 1257.86 | 7229 | 399 | 0.798 |
2000 | 1082.86 | 1267.43 | 7942 | 392 | 0.822 |
2001 | 1145.20 | 1276.27 | 8717 | 385 | 0.799 |
2002 | 1300.08 | 1284.53 | 9506 | 383 | 0.809 |
2003 | 1542.09 | 1292.27 | 10,666 | 380 | 0.827 |
2004 | 1822.60 | 1299.88 | 12,487 | 376 | 0.815 |
2005 | 2036.69 | 1307.56 | 14,368 | 370 | 0.819 |
2006 | 2321.18 | 1314.48 | 16,738 | 367 | 0.827 |
2007 | 2538.77 | 1321.29 | 20,505 | 356 | 0.830 |
2008 | 2625.22 | 1328.02 | 24,121 | 345 | 0.805 |
2009 | 2793.57 | 1334.50 | 26,222 | 340 | 0.803 |
2010 | 3099.39 | 1340.91 | 30,876 | 333 | 0.792 |
2011 | 3537.78 | 1347.35 | 36,403 | 329 | 0.813 |
2012 | 3600.12 | 1354.04 | 40,007 | 326 | 0.781 |
2013 | 3749.21 | 1360.72 | 43,852 | 321 | 0.789 |
2014 | 3904.66 | 1367.82 | 47,203 | 318 | 0.752 |
2015 | 4042.31 | 1374.62 | 50,251 | 318 | 0.737 |
2016 | 4162.96 | 1382.71 | 53,817 | 312 | 0.716 |
Model | R | R2 | Adjusted R2 | Std. Error of the Estimate |
---|---|---|---|---|
1 | 0.996 | 0.992 | 0.991 | 0.05326 |
Model | Sum of Squares | df | Mean Square | F | Significance (Sig.) | |
---|---|---|---|---|---|---|
1 | Regression | 6.299 | 4 | 1.575 | 555.098 | 0.000 |
Residual | 0.048 | 17 | 0.003 | |||
Total | 6.347 | 21 |
Model | Unstandardized Coefficients | Standardized Coefficients | t | Sig. | Collinearity Statistics | |||
---|---|---|---|---|---|---|---|---|
B | Std. Error | Beta | Tolerance | VIF | ||||
1 | (Constant) | −16.678 | 21.648 | −0.770 | 0.452 | |||
ln P | −0.547 | 1.529 | −0.039 | −0.358 | 0.725 | 0.038 | 26.232 | |
ln A | 1.227 | 0.205 | 1.770 | 5.995 | 0.000 | 0.005 | 194.998 | |
ln T1 | 4.020 | 1.665 | 0.695 | 2.413 | 0.027 | 0.005 | 185.319 | |
ln T2 | 1.191 | 0.424 | 0.081 | 2.813 | 0.012 | 0.533 | 1.878 |
Model | Dimension | Eigenvalue | Condition Index | Variance Proportions | ||||
---|---|---|---|---|---|---|---|---|
(Constant) | ln P | ln A | ln T1 | ln T2 | ||||
1 | 1 | 4.976 | 1.000 | 0.00 | 0.00 | 0.00 | 0.00 | 0.00 |
2 | 0.020 | 15.721 | 0.00 | 0.00 | 0.00 | 0.00 | 0.48 | |
3 | 0.004 | 36.975 | 0.00 | 0.00 | 0.01 | 0.00 | 0.33 | |
4 | 9.050 × 10−7 | 2344.946 | 0.03 | 0.15 | 0.98 | 0.79 | 0.03 | |
5 | 1.718 × 10−7 | 5382.577 | 0.97 | 0.85 | 0.01 | 0.21 | 0.15 |
Mult R | R2 | Adjusted R2 | SE |
---|---|---|---|
0.9801579272 | 0.9607095623 | 0.9514647534 | 0.1211139063 |
df | SS | MS | F Value | Sig. F | |
---|---|---|---|---|---|
Regress | 4.000 | 6.097 | 1.524 | 103.9188127 | 0.0000000 |
Residual | 17.000 | 0.249 | 0.015 |
B | SE(B) | Beta | B/SE(B) | |
---|---|---|---|---|
ln P | 3.92423625 | 0.30690079 | 0.27792333 | 12.78666051 |
ln A | 0.21204247 | 0.01169894 | 0.30586681 | 18.12492455 |
ln T1 | −1.65055241 | 0.09696411 | −0.28521636 | −17.02230296 |
ln T2 | −0.16815311 | 0.51870654 | −0.01150223 | −0.32417772 |
Constant | −26.39759673 | 3.47936456 | 0.00000000 | −7.58690166 |
Year | Population (million people) | Per Capita GDP (yuan) | Standard Coal Consumption (g/kWh) | Proportion of Thermal Power |
---|---|---|---|---|
2018 | 1379.12 | 59,894 | 307.4795 | 0.6879 |
2019 | 1380.15 | 61,761 | 304.9642 | 0.6698 |
2020 | 1381.56 | 64,597 | 301.4681 | 0.6514 |
2021 | 1383.69 | 66,717 | 299.1497 | 0.6498 |
2022 | 1385.14 | 69,486 | 297.3476 | 0.6389 |
Year | CO2 (Unit: million tons) |
---|---|
2018 | 4347.48 |
2019 | 4468.63 |
2020 | 4638.16 |
2021 | 4760.55 |
2022 | 4883.71 |
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Zhao, W.; Niu, D. Prediction of CO2 Emission in China’s Power Generation Industry with Gauss Optimized Cuckoo Search Algorithm and Wavelet Neural Network Based on STIRPAT model with Ridge Regression. Sustainability 2017, 9, 2377. https://doi.org/10.3390/su9122377
Zhao W, Niu D. Prediction of CO2 Emission in China’s Power Generation Industry with Gauss Optimized Cuckoo Search Algorithm and Wavelet Neural Network Based on STIRPAT model with Ridge Regression. Sustainability. 2017; 9(12):2377. https://doi.org/10.3390/su9122377
Chicago/Turabian StyleZhao, Weibo, and Dongxiao Niu. 2017. "Prediction of CO2 Emission in China’s Power Generation Industry with Gauss Optimized Cuckoo Search Algorithm and Wavelet Neural Network Based on STIRPAT model with Ridge Regression" Sustainability 9, no. 12: 2377. https://doi.org/10.3390/su9122377
APA StyleZhao, W., & Niu, D. (2017). Prediction of CO2 Emission in China’s Power Generation Industry with Gauss Optimized Cuckoo Search Algorithm and Wavelet Neural Network Based on STIRPAT model with Ridge Regression. Sustainability, 9(12), 2377. https://doi.org/10.3390/su9122377