Prediction Model of Electric Power Carbon Emissions Based on Extended System Dynamics
Abstract
:1. Introduction
2. Factor Decomposition and EKC Analysis of Carbon Emissions of Power Sector Based on Extended STIRPAT Model
2.1. Analysis of the Impact of Carbon Emission Changes in China’s Power Sector
2.2. EKC Analysis
2.3. Dynamics Modeling of Electricity Carbon Emissions
2.3.1. Diagram of Electricity Carbon Emission System
2.3.2. Stock-Flow Diagram of Electricity Carbon Emission System
2.3.3. Model Equation of Electricity Carbon Emissions
2.4. Scenario Analysis of Electricity Carbon Emissions Based on SD Model
3. Results and Discussion
3.1. Model Validity Test
3.2. Prediction of Carbon Peaking
3.3. Predicted Carbon Emissions
3.4. Scenario Simulation of Electricity Carbon Neutrality Target
4. Conclusions
- (1)
- The established extended system dynamics carbon emission forecasting model has high forecasting accuracy. Calculations show that China’s economic development and carbon emissions show an “inverted U-shaped” curve relationship, and the curve inflection point appeared in 2011, indicating that the relevant policies implemented in China after 2011 are conducive to reducing carbon emissions, but it is still unable to achieve the 2030 goal of carbon peaking.
- (2)
- From now until 2029 is the critical period for China’s carbon peak. If the economic growth rate is maintained at about 6.0%, the average decline of thermal power is maintained at 1.3~1.6 per year, and the growth rate of urbanization is controlled at 2%, it will enable China’s power sector. The carbon peak will be reached in 2029, corresponding to a peak value of about 5 billion tons. The peak time of electricity carbon in this article is in line with the government’s goal of carbon peak. Due to the government’s lack of clear indication of peak carbon emissions, this article compares it with the peak carbon emissions from reference [33]. Shu et al. predicted a carbon peak of 4.5 billion tons in the zero carbon scenario, which is similar to the carbon peak predicted in this article. Reference [34] used a grey neural network model to predict carbon emissions in the United States, and it is expected that the country’s carbon emissions will also peak before 2030. The estimated carbon emissions of the United States in the next 30 years show a trend of first increasing and then gradually decreasing year after year, with a clear inverted U-shaped curve, which is consistent with some conclusions in this article. These indicate that the variable parameters for carbon peak in this article are reasonably set, providing a theoretical basis for the peak path. Furthermore, the carbon emissions from electricity before reaching the peak can serve as a constraint for optimizing the configuration of power sources before reaching the peak, providing a basis for optimizing the configuration of power sources.
- (3)
- The period from 2030 to 2060 is the deep low-carbon stage of the power sector. The use of CCUS and other related carbon sink technologies can enable the power sector to achieve carbon neutrality in 2057, assuming that 15% of coal-fired power is maintained. If all coal-fired power plants use the CCUS technology, the corresponding carbon emissions can be reduced by about 1.275 billion tons compared to a 50% penetration rate.
5. Policy Recommendation
5.1. Synergistic Use of Power and Energy to Build a New Power System
5.2. Promote Low-Carbon Technology Innovation to Provide Multiple Options for Carbon Neutrality
5.3. Playing the Coordinating Role of Market Mechanisms
5.4. Encourage Various Social Entities to Participate in the Investment and Construction of Low-Carbon Electricity Transformation
5.5. How These Policy Recommendations Might Be Effectively Implemented
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Unstandardized Coefficients | Standard Coefficient | t | Sig. | Collinearity Statistics | |||
---|---|---|---|---|---|---|---|
B | Standard Error | Beta | Tolerance | VIF | |||
Constant | −120.002 | 26.309 | −4.561 | 0.070 | |||
lnPp | 9.139 | 2.110 | 1.296 | −0.04 | 0.912 | 0.004 | 117.213 |
lnRu | 0.860 | 0.483 | 0.525 | 7.446 | 0.874 | 0.005 | 124.361 |
lnAGp | −0.147 | 0.166 | −0.522 | 5.622 | 0.000 | 0.003 | 312.102 |
lnAin(2) | 0.814 | 0.410 | 0.350 | −0.405 | 0.227 | 0.021 | 37.634 |
lnAin(3) | 0.757 | 0.416 | 0.407 | 0.526 | 0.545 | 0.016 | 44.312 |
lnAe | 0.051 | 0.104 | 0.090 | 1.376 | 0.000 | 0.005 | 127.075 |
lnTe | 0.185 | 0.136 | −0.099 | 0.416 | 0.891 | 0.037 | 98.716 |
lnTf | 1.227 | 0.497 | 0.438 | −0.210 | 0.614 | 0.022 | 58.448 |
R | R2 | Adjust R2 | Standard Estimate Error |
---|---|---|---|
0.975 | 0.956 | 0.939 | 0.0514 |
Model Parameters | Cubic Function | log Cubic Function |
---|---|---|
β1 | 4.22825 × 105 ± 1.67644 × 10−6 | 5.52732 ± 1.1411 |
β2 | −9.4007 × 1010 ± 6.63015 × 10−1 | 1.05056 ± 0.21418 |
β3 | 6.01733 × 10 −15 ± 6.24555 × 10−1 | −0.0504 ± 0.01004 |
R2 | 0.80241 | 0.91734 |
Whether it is “inverted U” | Yes | Yes |
Time/Year | GDP Per Capita/Yuan | Electricity Carbon Intensity |
---|---|---|
2008 | 24,100 | 0.830 |
2009 | 26,180 | 0.790 |
2010 | 30,808 | 0.600 |
2011 | 36,277 | 0.620 |
2012 | 39,771 | 0.560 |
2013 | 43,497 | 0.534 |
2014 | 46,912 | 0.520 |
2015 | 49,922 | 0.530 |
2016 | 53,783 | 0.502 |
2017 | 5592 | 0.436 |
2018 | 65,534 | 0.443 |
2019 | 70,328 | 0.420 |
2020 | 72,000 | 0.410 |
Variable | Shorthand | Operation Formula |
---|---|---|
GDP/trillion USD | AG | (111,398/12) + INTEG(rGDP × 0.14 × 111,398/12) |
GDP increment/trillion USD | ΔAGC | AG × rGDP |
Adjustment rate of the proportion of the secondary industry/Dmnl | rin(2) | (Ain(2) − DELAY1L(Ain(2), 1, 0.454))/DELAY1L(Ain(2), 1, 0.454) |
Electricity consumption of secondary industry/100 million kWh | Uin(2) | In(1) × Sein(2) |
Industrial electricity consumption/100 million kWh | Uin | Uin(1) + Uin(2) + Uin(3) |
Total population/billion people | Pp | INTEG(−ΔPpi + ΔPpc, Pp0) |
Population growth/100 million people | ΔPpc | Pp × rb |
Population reduction/100 million people | ΔPpi | Pp × rd |
Population growth rate/100 million people | rpop | rb − rd |
GDP per capita/person/10,000 USD | AGp | AG/Pp |
GDP growth rate per capita/Dmnl | rA | (AGp(2) − DELAY1L(AGp, 1, 0.71412))/DELAY1L(AGp, 1, 0.71412) |
Urbanization Growth Rate/Dmnl | rgu | (Ru − DELAY1L(Ru, 1, 0.3671))/DELAY1L(Ru, 1, 0.3671) |
Urban electricity consumption increase/Dmnl | ΔUur(2) | Ue × rge |
Urban electricity consumption growth rate/Dmnl | rge | 0.156941 + rpop × 36.6383 + rgu × 5.6793 + rin(2) × 1.68273 + rA × 0.76914 |
Domestic electricity consumption/100 million kWh | Ulife | Ue+ Urural |
Total electricity consumption/100 million kWh | Uz | Ulife+ Uin |
Electricity intensity/(kWh/10,000 USD) | Sue | Uz/AG |
Thermal power generation/100 million kWh | Gfire | Uz × tfire |
Thermal power speed increase/Dmnl | Fg | 0.009597 + rpop × 0.16537 + rgu × 0.014037 + rin(2) × 0.0197714 + rA × 0.0164598 − rfg × 0.0231657 − Tn × 0.3 |
Thermal power ratio adjustment rate/Dmnl | rfg | (tfire − DELAY1L(tfire, 1, 0.726))/DELAY1L(tfire, 1, 0.726) |
Natural gas consumption/100 million tons of standard coal | Dgas | Ggas × Tf |
Oil consumption/100 million tons of standard coal | Doil | Goil × Tf |
Coal consumption/100 million tons of standard coal | Dcoal | Gcoal × Tf |
Technological progress impact factor/Dmnl | Tt | 0.99 |
Electricity carbon emissions/100 million tons | C | Dgas × fgas + Doil × foil + Dcoal × fcoal |
Carbon capture/gigaton | CC | Gfire × α × β |
Actual electricity carbon emissions/100 million tons | Cr | C − CC |
Electricity carbon emission intensity/ton/10,000 USD | SC | Cr/AG |
Carbon reduction policy/Dmnl | N | IF THEN ELSE(Time > 2015:AND:(SC − Cit) > 0, 1, 0) |
Carbon reduction measures/Dmnl | Tn | N × 0.01 |
Program | Years | rGDP | △Fg | △Tf | △Tt | △Ru |
---|---|---|---|---|---|---|
1 | 2020–2025 2026–2030 2031–2035 2036–2040 | 7.3% 6.8% 6.5% 6.0% | −0.19 −0.55 −0.85 −1.18 | −0.4 −0.5 −0.6 −0.7 | +0.2% | +2.5% |
2 | 2020–2025 2026–2030 2031–2035 2036–2040 | 7.1% 6.5% 6.3% 5.8% | −0.19 −0.55 −0.85 −1.18 | −0.55 −0.6 −0.65 −0.75 | +0.25% | +2.5% |
3 | 2020–2025 2026–2030 2031–2035 2036–2040 | 7.0% 6.3% 5.8% 5.5% | −1.0 −1.14 −1.52 −1.97 | −0.7 −0.9 −1.0 −1.2 | +0.3% | +2.3% |
4 | 2020–2025 2026–2030 2031–2035 2036–2040 | 6.8% 6.2% 5.5% 5.0% | −1.21 −1.4 −1.92 −2.2 | −0.7 −1.0 −1.2 −1.3 | +0.35% | +2% |
5 | 2020–2025 2026–2030 2031–2035 2036–2040 | 6.5% 6.0% 5.0% 4.5% | −1.55 −1.76 −2.26 −2.55 | −0.8 −1.1 −1.3 −1.4 | +0.5% | +2% |
Year | GDP (Trillion USD) | Population (100 Million People) | ||||
---|---|---|---|---|---|---|
Actual Value | Simulated Values | Error % | Actual Value | Simulated Values | Error % | |
2016 | 10.509 | 10.636 | 1.20 | 13.964 | 13.810 | −1.1 |
2017 | 11.715 | 11.299 | −3.54 | 14.001 | 13.902 | −0.7 |
2018 | 12.943 | 12.001 | −7.27 | 14.054 | 13.958 | −0.68 |
2019 | 13.890 | 13.147 | −5.35 | 14.100 | 14.027 | −0.52 |
Year | Total Electricity Consumption (100 Million kWh) | Electricity Carbon Emissions (100 Million tons) | ||||
---|---|---|---|---|---|---|
Actual Value | Simulated Values | Error % | Actual Value | Simulated Values | Error % | |
2016 | 59,168 | 61,203 | 3.44 | 37.33 | 61,203 | 5.57 |
2017 | 63,077 | 67,350 | 6.77 | 38.91 | 67,350 | 4.62 |
2018 | 68,449 | 72,114 | 5.35 | 40.75 | 72,114 | 3.09 |
2019 | 72,255 | 76,726 | 6.19 | 41.45 | 76,726 | 2.79 |
Variable | Years | |||||||||
---|---|---|---|---|---|---|---|---|---|---|
2021 | 2022 | 2023 | 2024 | 2025 | 2026 | 2027 | 2028 | 2029 | 2030 | |
AG/trillion USD | 15.573 | 16.801 | 18.007 | 18.817 | 19.455 | 20.167 | 21.114 | 22.324 | 23.548 | 24.358 |
AGp/USD | 11,000.79 | 11,817.63 | 12,625.82 | 13,143.16 | 13,549.81 | 14,009.91 | 14,623.86 | 15,461.83 | 16,270.41 | 16,812.73 |
In(2)/trillion USD | 4.9083 | 5.3266 | 5.4736 | 5.4985 | 5.6501 | 6.0158 | 6.4342 | 6.5811 | 6.6061 | 6.7577 |
Uin(2)/100 million kWh | 55,343.7 | 58,399.71 | 59,846.61 | 61,450 | 64,492.0 | 67,548.0 | 68,994.9 | 70,598.3 | 73,640.3 | 76,696.3 |
Sein(2)/kWh/USD | 1.12718 | 1.096012 | 1.09303 | 1.111915 | 1.141025 | 1.122494 | 1.071943 | 1.072369 | 1.1144 | 1.134564 |
Uin/100 million kWh | 67,701.5 | 71,919.3 | 76,896.1 | 82,544.1 | 88,957.5 | 95,434.1 | 102,463 | 110,084 | 119,031 | 129,323 |
Sue/kWh/USD | 0.4346 | 0.4279 | 0.4269 | 0.4385 | 0.4571 | 0.4731 | 0.4851 | 0.4926 | 0.5053 | 0.5307 |
Uz/100 million kWh | 79,598.7 | 84,596.5 | 90,173.6 | 96,411.7 | 103,404 | 110,461 | 118,144 | 126,474 | 136,046 | 147,046 |
Ulife/100 million kWh | 11,897.2 | 12,677.2 | 13,277.5 | 13,867.6 | 14,447.3 | 15,027.5 | 15,680.7 | 16,389.8 | 17,015.6 | 17,723.4 |
Urural/100 million kWh | 9980.37 | 10,122.84 | 10,457.77 | 10,743.9 | 10,955.2 | 11,097.7 | 11,432.6 | 11,718.8 | 11,930.1 | 12,072.6 |
Ru/% | 0.628 | 0.651 | 0.674 | 0.697 | 0.713 | 0.736 | 0.759 | 0.782 | 0.805 | 0.828 |
Pp/100 million people | 14.1560 | 14.217 | 14.262 | 14.317 | 14.358 | 14.395 | 14.438 | 14.450 | 14.473 | 14.488 |
rb/% | 0.0076 | 0.0076 | 0.0076 | 0.0076 | 0.0076 | 0.0076 | 0.0076 | 0.0076 | 0.0076 | 0.0076 |
rd/% | 0.00718 | 0.00718 | 0.00718 | 0.00718 | 0.00718 | 0.00718 | 0.00718 | 0.00718 | 0.00718 | 0.00718 |
tfire/% | 67 | 66 | 65 | 64 | 63 | 61.86 | 60.72 | 59.58 | 58.44 | 57.3 |
Gfire/100 million kWh | 53,331.13 | 55,833.69 | 58,612.84 | 61,703.49 | 65,145.02 | 68,331.55 | 71,737.40 | 75,353.57 | 79,505.63 | 84,257.70 |
Fg | −1.0 | −1.0 | −1.0 | −1.0 | −1.0 | −1.14 | −1.14 | −1.14 | −1.14 | −1.14 |
Tf /g/kWh | 305.3 | 304.6 | 303.9 | 303.2 | 302.5 | 301.6 | 300.7 | 299.8 | 298.9 | 298 |
SC/ton/10,000 USD | 2.81 × 10−4 | 2.67 × 10−4 | 2.56 × 10−4 | 2.49 × 10−4 | 2.46 × 10−4 | 2.4 × 10−4 | 2.32 × 10−4 | 2.21 × 10−4 | 2.11 × 10−4 | 2.05 × 10−4 |
C/100 million tons | 43.7233 | 44.9202 | 46.0756 | 46.9587 | 47.7885 | 48.4465 | 49.03 | 49.4887 | 49.748 | 49.8891 |
Stock Map Parameters | Parameter Value | Stock Map Parameters | Parameter Value |
---|---|---|---|
GDP | 18,648.8 hundred million dollars | Thermal power ratio | 55% |
GDP growth rate | 0.0411 Dmnl | Proportion of natural gas power generation | 9% |
Proportion of primary industry | 5% | Proportion of oil power generation | 2% |
The proportion of secondary industry | 26% | Proportion of coal power generation | 44% |
The proportion of tertiary industry | 69% | Average standard coal consumption for power supply of thermal power units | 2.8 Dmnl |
Industrial electricity consumption | 12.9675 trillion kWh | Residential electricity consumption | 1.8525 trillion kWh |
Total population | 1.4468 billion people | Total electricity consumption | 14.82 trillion kWh |
Urban population | 1.017 billion people | Electricity carbon intensity | 0.053 tons/10,000 USD |
Urbanization rate | 70.3% | Electricity carbon emissions | 4.95774 billion tons |
Scene | Thermal Power Ratio | CCUS Technical Scale |
---|---|---|
1 | From 44% coal, 9% gas (2029) to 26% coal, 9% gas (2060) | No CCUS technology |
2 | From 44% coal, 9% gas (2029) to 19% coal, 7% gas (2060) | Partly using CCUS technology |
3 | From 44% coal, 9% gas (2029) to 15% coal, 7% gas (2060) | CCUS technology is widely used |
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Wu, Z.; Wang, Z.; Yang, Q.; Li, C. Prediction Model of Electric Power Carbon Emissions Based on Extended System Dynamics. Energies 2024, 17, 472. https://doi.org/10.3390/en17020472
Wu Z, Wang Z, Yang Q, Li C. Prediction Model of Electric Power Carbon Emissions Based on Extended System Dynamics. Energies. 2024; 17(2):472. https://doi.org/10.3390/en17020472
Chicago/Turabian StyleWu, Zhenfen, Zhe Wang, Qiliang Yang, and Changyun Li. 2024. "Prediction Model of Electric Power Carbon Emissions Based on Extended System Dynamics" Energies 17, no. 2: 472. https://doi.org/10.3390/en17020472
APA StyleWu, Z., Wang, Z., Yang, Q., & Li, C. (2024). Prediction Model of Electric Power Carbon Emissions Based on Extended System Dynamics. Energies, 17(2), 472. https://doi.org/10.3390/en17020472