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Article

Model Construction and Scenario Analysis for Carbon Dioxide Emissions from Energy Consumption in Jiangsu Province: Based on the STIRPAT Extended Model

1
Jiangsu Mineral Resources and Geological Design and Research Institute, China National Administration of Coal Geology, Xuzhou 221006, China
2
Sichuan Tianshengyuan Environmental Services Co., Ltd., Chengdu 610213, China
3
Key Laboratory of Coalbed Methane Resources and Reservoir Formation Process, Ministry of Education, China University of Mining and Technology, Xuzhou 221008, China
4
School of Resources and Geosciences, China University of Mining and Technology, Xuzhou 221116, China
*
Authors to whom correspondence should be addressed.
Sustainability 2025, 17(19), 8961; https://doi.org/10.3390/su17198961
Submission received: 28 August 2025 / Revised: 3 October 2025 / Accepted: 7 October 2025 / Published: 9 October 2025

Abstract

Against the backdrop of China’s “dual carbon” strategy (carbon peaking and carbon neutrality), provincial-level carbon emission research is crucial for the implementation of related policies. However, existing studies insufficiently cover the driving mechanisms and scenario prediction for energy-importing provinces. This study can provide theoretical references for similar provinces in China to conduct research on carbon dioxide emissions from energy consumption. The carbon dioxide emissions from energy consumption in Jiangsu Province between 2000 and 2023 were calculated using the carbon emission coefficient method. The Tapio decoupling index model was adopted to evaluate the decoupling relationship between economic growth and carbon dioxide emissions from energy consumption in Jiangsu. An extended STIRPAT model was established to predict carbon dioxide emissions from energy consumption in Jiangsu, and this model was applied to analyze the emissions under three scenarios (baseline scenario, low-carbon scenario, and enhanced low-carbon scenario) during 2024–2030. The results show the following: (1) During 2000–2023, the carbon dioxide emissions from energy consumption in Jiangsu Province ranged from 215.22428 million tons to 783.94270 million tons, with an average of 549.96280 million tons. (2) The decoupling status between carbon dioxide emissions from energy consumption and economic development in Jiangsu was dominated by weak decoupling, accounting for 91.304%, while a small proportion (8.696%) of expansive coupling was also observed. (3) Under the baseline scenario, the carbon dioxide emissions from energy consumption in Jiangsu in 2030 will reach 796.828 million tons; under the low-carbon scenario, the emissions will be 786.355 million tons; and under the enhanced low-carbon scenario, the emissions will be 772.293 million tons. Furthermore, countermeasures and suggestions for reducing carbon dioxide emissions from energy consumption in Jiangsu are proposed, mainly including strengthening the guidance of policies and institutional systems, optimizing the energy consumption structure, intensifying technological innovation efforts, and enhancing government promotion and publicity.

1. Introduction

Large-scale greenhouse gas emissions are the primary driver of global warming, and fossil energy consumption constitutes the main source of carbon dioxide emissions [1,2,3]. At present, global warming and environmental deterioration have become key issues of concern to policymakers worldwide, who are committed to achieving environmental governance by reducing carbon dioxide emissions [4,5]. Against this backdrop, there is an urgent need in current research to construct carbon dioxide emission prediction models and further improve the global ecosystem by integrating the optimization of carbon peaking paths, industrial technology upgrading, and the implementation of policy supervision [6,7,8].
Scholars at home and abroad have successively adopted the IPAT (impact, population, affluence, and technology) model, IPBAT (impact, population, affluence, behavior, and technology) model, ImPACT (the emphasis on the expression Impact in the IPAT equation) model, and STIRPAT (Stochastic Impacts by Regression on Population, Affluence, and Technology) model to predict carbon dioxide emissions under different scenarios in countries, provinces, or key cities [9,10,11,12,13,14]. Among these models, the IPAT model clearly defines a linear identity between environmental pressure and population, affluence, and technology. However, it has the limitation of being unable to quantify the elasticity coefficients of various factors [15]. The IPBAT model was constructed by incorporating the “behavioral factor (B, Behavior)” into the IPAT identity [16]. The ImPACT model focuses on decomposing “technology” into “energy consumption per unit of GDP” and “carbon emissions per unit of energy”. Meanwhile, a limitation of both the IPAT and ImPACT models is that they cannot be applied to the nonlinear relationships of variables [17,18]. The STIRPAT model profoundly explains the core breakthrough of converting the IPAT model into a logarithmic form: it quantifies the impact intensity of various factors through elasticity coefficients and allows for nonlinear relationships of variables [19]. Furthermore, it supplements the expansion of the model (e.g., incorporating variables such as urbanization rate and industrial structure) and has been widely applied in fields such as case studies and environmental governance [20,21,22].
In existing studies, Shi et al. conducted an analysis of the relationship between demographic variables and CO2 emissions across multiple countries over a 20-year period based on the STIRPAT framework, confirming that population dynamics constitute a core driving factor behind the trajectory of carbon emissions [23]. Shahbaz et al. focused on energy-related CO2 emissions in Malaysia and explored the impacts of urbanization, affluence, and trade openness, revealing that urbanization is the dominant inducement for emission growth [24]. Abou-Ali et al. targeted the Arab region, incorporating “fertility rate, industrialization level, urbanization level, government effectiveness, and energy production and consumption” into an extended STIRPAT model. Their findings indicated that in addition to regulating energy production and consumption, enhancing government effectiveness is also crucial for emission reduction [25]. Roy et al. integrated “energy intensity, energy demand, and energy structure” into the STIRPAT model and applied it to a study on India. The results showed that all driving factors in the model have a significant impact on environmental degradation, among which economic growth contributes the most [26]. Wang and He applied this framework to analyze the determinants of energy consumption in 30 provinces in mainland China, pointing out that population exerts a positive linear impact on energy use, while its marginal effects exhibit significant heterogeneity [24,27]. Lu et al. further integrated the STIRPAT model with the Tapio decoupling index [17], and their study on the Suzhou–Wuxi–Changzhou metropolitan area showed that economic expansion has the most prominent impact on energy-induced carbon footprints [28]. Zhao et al. combined the STIRPAT model with scenario analysis to predict the carbon emission peaks of Henan Province, covering four aspects, including energy consumption, food consumption, agricultural activities, and waste disposal [29]. Wang et al., based on the extended STIRPAT model, showed that Jilin Province’s carbon emission peak may occur between 2029 and 2045 [30]. Zheng et al. found that the growth of per capita GDP had the strongest promoting effect on CO2 emissions, followed by energy structure and the number of civil vehicles, while energy intensity was the key factor inhibiting the growth of emissions [31]. Liu et al. screened the driving factors of carbon emission reduction in coastal cities through the extended STIRPAT model, pointing out that per capita GDP, energy structure, energy intensity, urbanization rate, and industrial structure are the core influencing factors [32]. Dan et al., based on China’s economic and social development and energy consumption data from 1980 to 2022, combined the extensible STIRPAT model with ridge regression analysis to identify seven main factors affecting CO2 emissions from energy consumption [33]. Among them, five factors—population, urbanization rate, the proportion of the secondary industry, per capita GDP, and electrification rate—exerted positive driving effects, while two factors—the proportion of fossil energy and energy intensity—had negative driving effects [33]. Huang et al. identified key factors through ridge regression and constructed a STIRPAT carbon emission prediction model, confirming that energy structure, industrial structure, and urbanization rate are the significant factors affecting carbon emissions in Guangxi [34]. Lian et al. (2025), based on the improved STIRPAT model, found that population, per capita GDP, and industrial structure had positive driving effects on carbon emissions in Fujian Province, while energy intensity, energy structure, and foreign trade degree showed negative driving effects [35]. Existing carbon emission studies mostly focus on the national or regional level, and there is insufficient analysis of the driving mechanisms of carbon emissions in economically developed and energy-importing provinces. In addition, provincial-scale studies mostly concentrate on 3–5 driving factors, with insufficient exploration of the interaction effects between energy consumption structure and technological innovation [36]. Moreover, the application of ridge regression in the multi-factor extended STIRPAT model remains relatively scarce [37].
The Action Plan for Carbon Peaking Before 2030, issued by the Chinese government, points out that provincial-level units serve as key carriers for the implementation of carbon reduction policies, and research on the driving mechanisms and prediction of their carbon emissions plays a supporting role in the achievement of national goals. Jiangsu Province has ranked second in China in terms of GDP for 14 consecutive years, yet its per capita carbon emissions are higher than the national average. Although Jiangsu has the fiscal and technological foundations required for early carbon peaking, its rapid economic expansion has simultaneously driven up energy demand and CO2 emissions [38,39]. Empirical studies have shown that population aging, economic growth, and urbanization are all statistically significant driving factors of provincial CO2 emissions [40], and the impact intensity of these factors varies significantly depending on the stage of socioeconomic development and urbanization paths [41,42]. As an “energy-importing province”, Jiangsu has long had a coal consumption ratio exceeding 60%, while the installed capacity of renewable energy has grown rapidly, showing typical characteristics of energy structure transformation [43]. Meanwhile, Jiangsu is China’s first “pilot province for carbon peaking” and has issued the Implementation Plan for Carbon Peaking in Jiangsu Province.
Consequently, this study will conduct the following work: (i) The carbon emission factor method is adopted to clarify the carbon emissions generated from energy consumption in Jiangsu Province from 2000 to 2023. (ii) The Tapio Decoupling Index Model is applied to identify the decoupling state between economic development and carbon emissions from energy consumption in Jiangsu Province. (iii) Based on the extended STIRPAT model, a prediction model for CO2 emissions from energy consumption in Jiangsu Province is constructed by incorporating factors such as urbanisation rate, proportion of tertiary industry, population size, carbon emission intensity, energy structure, and per capita GDP. (iv) Under three scenarios (baseline scenario, low-carbon scenario, and enhanced low-carbon scenario), the variation trends in CO2 emissions from energy consumption in Jiangsu Province from 2024 to 2030 are predicted. (v) Targeted emission reduction strategies are proposed in combination with policy analysis to provide scientific support for Jiangsu Province to achieve carbon peaking. This study aims to offer guidance for the trends in CO2 emissions from energy consumption in Jiangsu Province, and meanwhile, provide a theoretical reference for similar provinces that conduct comparable CO2 emission research.

2. Research Methods and Data Sources

2.1. Research Methods

2.1.1. Calculation of CO2 Emissions from Energy Consumption

The most widely adopted approach for estimating CO2 emissions is the carbon-emission-factor method [10]. Its underlying principle is to quantify the carbon released during the combustion of each energy carrier on the basis of its intrinsic physicochemical properties [2,6]. By integrating differentiated emission factors with the corresponding energy-consumption data, this method yields precise estimates of CO2 emissions [11]. Notably, it is also the recommended procedure in the IPCC Guidelines for National Greenhouse Gas Inventories (see Equation (1)).
TE C O 2 = i = 1 n β × FEC i × EF i
where TE C O 2 denotes total CO2 emissions from energy consumption (104 t); FECi represents the consumption of the i energy type (104 t); EFi is the standard-coal conversion factor for the i energy type (kg ce kg−1); β is the CO2 emission coefficient per tonne of standard coal (2.493 t CO2 t ce−1); n is the number of energy categories; and i indexes individual fuels. The standard-coal conversion factors adopted for the principal fuels are: Coal (0.714), coke (0.971), crude oil (1.429), gasoline (1.471), kerosene (1.471), diesel (1.457), fuel oil (1.429) and liquefied petroleum gas (1.714). For example, the calculation process of CO2 emissions from energy consumption in Jiangsu Province in 2023 is as follows: TE C O 2 = β (2.493)*FECcoal (8243.970)*EFcoal (0.714) + β (2.493)*FECcoke (311.110)*EFcoke (0.971) + β (2.493)*FECcrude oil (1383.590)*EFcrude oil (1.429) + β (2.493)*FECgasoline (26.940)*EFgasoline (1.471) + β (2.493)*FECkerosene (26.010)*EFkerosene (1.471) + β (2.493)*FECdiesel (62.900)*EFdiesel (1.457) + β (2.493)*FECfuel oil (165.030)*EFfuel oil (1.429) + β (2.493)*FECliquefied petroleum gas (35.200)*EFliquefied petroleum gas (1.714).

2.1.2. Scope and Definition of Decoupling

In 2005, Tapio introduced the Tapio decoupling-index model while investigating the elasticity among economic growth, transport activity, and CO2 emissions in Europe [44], and, for the first time, delineated eight distinct decoupling states (Table 1). This parsimonious taxonomy has since provided scholars with a lucid and unambiguous framework for characterizing the nexus between economic development and environmental protection. Second, the Tapio framework accommodates multi-dimensional drivers, yielding a more comprehensive representation and, consequently, a more accurate characterization of the decoupling between economic growth and carbon emissions [45,46]. Scholars predominantly employ the Tapio decoupling index model by constructing an elasticity indicator to scrutinize the decoupling relationship among variables [7,44,45,46]. Notably, the model is dimension-free; its estimates remain invariant to changes in measurement units, thereby preserving both applicability and cross-context comparability and enhancing its operational robustness and generalizability. The precise formulation is given in Equation (2).
DI = Δ TE / TE Δ GDP / GDP = ( TE 1 - TE 0 ) / TE 0 ( GDP 1 - GDP 0 ) / GDP 0
where DI denotes the decoupling index, ΔTE/TE is the percentage change in energy-related CO2 emissions between two periods, and ΔGDP/GDP is the corresponding percentage change in economic output. Specifically, TE0 and TE1 represent CO2 emissions at times t0 and t1, respectively, while GDP0 and GDP1 denote gross domestic product at the same two time points.
The core value of the Tapio decoupling-index model lies in its analytical logic characterized by “quantification, dynamics, and multidimensionality,” which breaks the limitations of the linear cognition of the “growth-environmental pressure” relationship [7,10]. Against the backdrop of the “dual carbon” goals, the decoupling model has become a key bridge connecting “macro development goals” and “micro practical actions,” and plays an irreplaceable role in promoting the transformation of the economy and society toward “green, low-carbon, and sustainable” development [45,46].

2.1.3. STRIPAT Extended Model

The IPAT model is commonly used to analyze issues related to carbon emissions [11,12]. First proposed by Ehrlich and Holdren, the model attributes environmental pressure to the product of three factors: population, income, and technology [15]. The canonical specification is presented in Model (3):
I   =   PAT
In Equation (3), I, P, A, and T denote environmental impact, population, affluence, and technology level, respectively;
York, Rosa, and Dietz assigned different exponents to population size, per capita income, and technology level, and on this basis, proposed the STIRPAT model [18,19]. The canonical specification is presented in Model (4):
I   =   a P b A c T d e
In Equation (4), a is the constant coefficient; b, c, and d are the elasticities to be estimated; and e represents the stochastic error term.
Taking the natural logarithm of both sides of Model (4) yields Model (5):
ln I   =   ln a   +   b ln P   +   c ln A   +   d ln T   +   ln e
To identify the determinants of Jiangsu’s energy-related CO2 emissions (TE), the standard STIRPAT model is extended to reflect the province’s specific socio-economic context. The population dimension (P) is decomposed into demographic structure and scale, represented by urbanization rate (UR) and year-end population size (PS). The affluence dimension (A) is split into development level and economic structure, proxied by per capita GDP (PCG) and the tertiary-industry share of output (PTI). The technology dimension (T) is operationalized through advances in new-energy deployment and improvements in fossil-energy conversion efficiency, captured by energy structure (ES) and carbon intensity (CI). Extending Model (5) accordingly yields Model (6):
ln TE   =   ln a + α 1 ln UR + α 2 ln PS + α 3 ln PCG + α 4 ln PTI + α 5 ln ES + α 6 ln CI + ln e
In the equation, α1, α2, α3, α4, α5 and α6 denote elasticity coefficients, indicating that a 1% change in UR, PS, PCG, PTI, ES and CI induces a α1%, α2%, α3%, α4%, α5% and α6% change, respectively.

2.2. Data Sources

The data is sourced from the Jiangsu Statistical Yearbook from 2001 to 2024, which calculates parameters such as urbanization rate (UR), population size (PS), industry proportion, and gross domestic product (GDP) that can represent the activity level, energy consumption, and economic development of Jiangsu Province. The data on gross domestic product (GDP) is extracted from the annual statistical yearbook of Jiangsu Province, with a value of CNY 100 million. The carbon emission intensity (CI) uses the ratio of CO2 emissions from energy consumption to GDP in Jiangsu Province, measured in tons per CNY 10,000. The population size (PS) is based on the annual resident population of Jiangsu Province, ten thousand people. The energy structure (ES) adopts the ratio of fossil energy consumption to total energy consumption, %. Per capita GDP (PCG) adopts the ratio of Jiangsu Province’s GDP to its population size, measured in CNY per person. The urbanization rate (UR) is calculated as the ratio of non-agricultural household registration to the total population, expressed as a percentage. The proportion of the tertiary industry (PTI) refers to the ratio of the gross domestic product (GDP) of the tertiary industry region to the gross domestic product (GDP), expressed as a percentage.
For the purpose of this study, energy-related CO2 emissions are computed exclusively from the combustion of fossil fuels. any CO2-equivalent releases attributable to electricity consumption or to clean-energy sources (wind, hydro, solar, and nuclear) are deliberately excluded.

3. Results and Discussion

3.1. CO2 Emissions from Energy Consumption

Energy-related CO2 emissions in Jiangsu Province rose from 215.224 million tons in 2000 to 783.943 million tons in 2023, averaging 549.963 million tons (Figure 1A). Annual growth rates ranged from −3.850% to 23.682%, with a mean of 6.007%. In terms of fuel-specific contributions (Figure 1B), coal dominated throughout the period, accounting for 60.229–71.099% (mean 66.686%). Coke, crude oil, and fuel oil contributed 3.501–17.463% (11.295%), 16.619–24.303% (19.602%), and 0.119–2.946% (1.079%), respectively. Gasoline, kerosene, diesel, and liquefied petroleum gas (LPG) together represented minor shares: gasoline 0.046–0.475% (0.246%), kerosene 0.002–1.016% (0.079%), diesel 0.237–1.337% (0.652%), and LPG 0.216–0.709% (0.360%).

3.2. Decoupling Status of CO2 Emissions from Energy Consumption

To neutralize scale and unit effects, all explanatory variables and the CO2 emission series were subjected to natural-logarithmic transformation prior to estimation (Table 2).
According to Equation (2), calculate the CO2 emissions generated by energy consumption in Jiangsu Province from 2001 to 2023 and the decoupling elasticity index of economic development, and divide the decoupling status (calculate the actual GDP of each year based on the year 2000). Among them, weak decoupling accounted for 21 stages (91.304%), and expansive coupling accounted for 2 stages (8.696%) (Table 3). These trajectories are closely linked to the suite of policy measures implemented since China’s 10th Five-Year Plan, under which Jiangsu has vigorously restructured its energy portfolio, promoted circular-economy initiatives, strengthened environmental governance, and tightened regulatory oversight. Nevertheless, the determinants of energy-related CO2 emissions exhibit pronounced temporal and spatial heterogeneity [47]. Moreover, as Jiangsu’s economy is still undergoing industrial transformation, a residual cohort of high-energy, high-polluting enterprises persists, rendering the decoupling elasticity inherently unstable [48,49].

3.3. Prediction Model for CO2 Emissions Generated by Energy Consumption

Pearson correlation analysis between provincial CO2 emissions (TE) and the six candidate drivers yields the following coefficients: rTE–PS = 0.920, rTE–UR = 0.953, rTE–CI = –0.857, rTE–PCG = 0.954, rTE–PTI = 0.835, and rTE–ES = −0.748, all of which are statistically significant. However, to ascertain whether these correlations can underpin a reliable forecasting model, multicollinearity diagnostics were performed. Variance-inflation factors (VIF) are 259.701 for UR, 151.739 for PS, 265.508 for PCG, 140.165 for PTI, and 27.253 for ES—far exceeding the critical threshold of 10—indicating severe multicollinearity. Consequently, the direct use of simple correlation-based specifications for projecting Jiangsu’s energy-related CO2 emissions is inappropriate.
This paper compares the advantages and disadvantages of ridge regression, LASSO (Least Absolute Shrinkage and Selection Operator) regression, and the grey prediction model in collinearity handling (Table 4).
Among these models, the core advantage of LASSO regression lies in variable selection. However, the six extended variables in this study all have explicit theoretical support, and forced selection may lead to the elimination of key variables [50]. The grey prediction model relies on data trend extrapolation and fails to consider the driving relationships between variables (e.g., the impact of per capita GDP growth on carbon emissions). Furthermore, this study uses 24 years of continuous data (2000–2023), which constitutes a large sample and thus does not align with the “small sample” applicable scenario of grey prediction [51]. In addition, the collinearity level in this study is “moderate”, and the “moderate coefficient shrinkage” of ridge regression is sufficient to address this issue, making radical variable elimination unnecessary [10]. The ridge trace (Figure 2) indicates that the estimated coefficients stabilize when the biasing parameter reaches k = 0.136. Consequently, the final ridge estimates reported in Table 4 are obtained at k = 0.136.
Ridge-regression results reveal that lnPS, lnUR, and lnPCG are significant at the 1% level, while lnPTI is significant at the 5% level. The model attains an R2 of 0.926, and the F-statistic is significant at the 1% level (Table 5). These findings confirm the systematic relationship between Jiangsu’s energy-related CO2 emissions and the selected drivers, yielding the predictive specification presented in Model (7):
ln TE   =   1.848 ln PS   +   0.849 ln UR   +   0.025 ln CI   +   0.202 ln PCG     -   0.309 ln PTI   +   0.345 ln ES   -   11.811
Table 5 indicates that population size exerts the largest influence: a 1% increase in PS raises Jiangsu’s energy-related CO2 emissions by 1.848%. Elasticities for the remaining drivers are 0.849% (UR), 0.025% (CI), 0.202% (PCG) and 0.345% (ES). By contrast, a 1% expansion in the tertiary-industry share (PTI) reduces emissions by 0.309%.
To validate the predictive power of Model (6), we generated retrospective forecasts for 2000–2023 and subjected them to an independent-samples t-test against observed values. At the 95% confidence level, the test yields p = 0.874, and the correlation between actual and predicted emissions reaches 0.998 (Table 6). Consequently, the model is deemed unbiased and highly accurate, and is therefore employed to project Jiangsu’s energy-related CO2 emissions for 2024–2030.

3.4. Scenario Parameter Settings in Predictive Models

Scenario design is the cornerstone of any robust CO2 emission projection. Drawing exclusively on authoritative provincial documents—the 14th Five-Year Plan and the 2035 Long-Range Objectives for Jiangsu Province, ancillary policy briefs, and the Jiangsu Population Forecast Compendium (2011–2030)—we derived internally consistent trajectories for all six exogenous drivers (Table 7).
Urbanisation rate (UR). Pursuant to the Outline of the 14th Five-Year Plan and the 2035 Long-Range Objectives for Jiangsu Province, the province targets 75% urbanisation by 2025 and over 80% by 2030. Accordingly, the baseline scenario assumes annual increments of 1.400% during 2024–2025 and 1.100% during 2026–2030. These trajectories are closely aligned with historical trends; proportional downward adjustments are applied for the low-carbon and enhanced low-carbon scenarios.
Proportion of tertiary industry (PTI). According to the Action Plan for Accelerating the Building of a Manufacturing-Strong Province issued by Jiangsu, the combined value added of manufacturing and producer services is expected to reach approximately 70% of regional GDP. Under the baseline scenario, the tertiary sector’s share is therefore assumed to rise by 4.500% per annum in 2024–2025 and by 5.500% per annum in 2026–2030. Correspondingly, the low-carbon and enhanced low-carbon scenarios apply additional increments of +0.500 and +1.000 percentage points per year, respectively.
Population size (PS). The Outline of the 14th Five-Year Plan and the 2035 Long-Range Objectives for Jiangsu Province set a permanent-resident target of 90 million by 2035. Cross-referencing the Jiangsu Population Forecast Compendium (2011–2030) and accounting for net migration, the province’s total population is projected to reach 88.940 million by 2030. Consequently, the baseline scenario assumes annual growth rates of 0.360% in 2024–2025 and 0.320% in 2026–2030; the low-carbon and enhanced low-carbon scenarios apply symmetric reductions of 0.400 and 0.800 percentage points per annum, respectively.
The carbon emission intensity (CI). Aligned with the national mandate of cutting carbon intensity by at least 65% relative to 2005 by 2030—the target reaffirmed in both the 14th Five-Year Plan of the People’s Republic of China and the corresponding Jiangsu provincial plan—the baseline scenario assumes annual declines of 2.500% for 2024–2025 and 3.000% for 2026–2030. For the low-carbon and enhanced low-carbon scenarios, these rates are accelerated by 1.000 and 1.500 percentage points per annum, respectively.
The energy structure (ES). In accordance with the Jiangsu Provincial Government’s Notice on Several Policy Measures for Accelerating the Comprehensive Green Transformation of Economic and Social Development, the province targets approximately 100 GW of renewable-power capacity and a non-fossil share of around 25% in total energy consumption by 2030. Under the baseline scenario, the fossil-energy share is therefore set to decline by 1.000% per annum in 2024–2025 and by 0.600% per annum in 2026–2030. Correspondingly, the low-carbon and enhanced low-carbon scenarios apply steeper annual reductions of 0.300% and 0.500%
Per capita GDP (PCG). The Outline of the 14th Five-Year Plan and the 2035 Long-Range Objectives for Jiangsu Province target a doubling of real per capita GDP relative to the 2020 level (CNY 127,000). This implies a 2035 benchmark of CNY 254,000 per capita. Under the baseline scenario, annual growth rates are therefore set at 6.000% for 2024–2025 and 5.000% for 2026–2030; the low-carbon and enhanced low-carbon scenarios apply symmetric reductions of 0.500 and 1.000 percentage points per annum, respectively.

3.5. Characteristics of Scenario Analysis

Based on the extended STIRPAT model, CO2 emissions from energy consumption in Jiangsu Province from 2024 to 2030 were predicted using three differentiated parameter settings (baseline scenario, low-carbon scenario, and enhanced low-carbon scenario). The result is shown in Figure 3.
In the baseline scenario, the CO2 emissions from energy consumption in Jiangsu Province in 2025 will be 791.709 million tons, and in 2030, the CO2 emissions will be 796.828 million tons. Under the low-carbon scenario, the CO2 emissions from energy consumption in Jiangsu Province in 2025 and 2030 will be 786.876 million tons and 786.355 million tons, respectively. Compared with the baseline scenario, the CO2 emissions from energy consumption in 2030 will decrease by 10.473 million tons, with a reduction rate of 1.314%. Under the strengthened low-carbon scenario, the CO2 emissions from energy consumption in Jiangsu Province will be 783.092 million tons in 2025 and 772.293 million tons in 2030. Compared to the baseline scenario, CO2 emissions will decrease by 24.535 million tons in 2030, with a reduction rate of 3.120%.

3.6. Suggestions and Limitations for Carbon Reduction

(1)
Strengthen the guidance of policies and institutional systems. In the short-term phase (2025–2026), the Jiangsu Provincial Government may actively launch special subsidies for the “coal-to-electricity” transition, promote technological transformation in the iron and steel as well as chemical industries, and establish a two-level (provincial-municipal) carbon emission monitoring platform. Policies shall be formulated to reduce the proportion of coal consumption in the province by 1.5% annually, with the proportion dropping to below 55% by 2026. In the medium-term phase (2027–2030), efforts shall be intensified to construct gigawatt-scale offshore wind farms (e.g., in Yancheng and Lianyungang), implement a “carbon labeling” system, and prioritize the procurement of low-carbon products. The share of renewable energy installed capacity shall reach 40%, and the carbon productivity of industrial enterprises above the designated size shall increase by 20%. In the long-term phase (2031-), the Provincial Government and the Department of Ecology and Environment may actively build a “carbon trading + carbon tax” mechanism, develop pilot “zero-carbon parks,” and achieve a stable decline in carbon emissions from energy consumption after reaching the peak, with net carbon emissions decreasing by 10% compared with the peak level.
(2)
Optimize the energy-consumption structure. Under the baseline scenario, fossil fuels are expected to account for 75.630% of Jiangsu’s total energy demand in 2030, whereas the enhanced low-carbon scenario reduces this share to 69.550%. To accelerate this transition, Jiangsu should aggressively expand the deployment of renewables and other clean-energy sources while systematically phasing out coal and other high-carbon fuels. Consequently, Jiangsu must substantially scale up the deployment of renewable and clean-energy sources to diminish its reliance on coal and other polluting fuels, accelerate the optimization and upgrading of its energy-consumption mix, and promptly phase out or replace backward capacities characterized by high energy intensity and high pollution [52,53].
(3)
Scale up technology acquisition and innovation while aligning market and policy mechanisms. First, it is recommended to establish a Special Scientific Research Fund for Carbon Reduction Technologies in Jiangsu Province, with an annual investment of CNY 1.500 billion to support joint research and development efforts between universities and enterprises. The fund shall focus on achieving breakthroughs in key technologies such as “low-carbon metallurgy” and “industrial waste heat recovery”, and mandate that the achievements of the funded projects must be applied in industrialization within 2 years. Second, establish a Carbon Reduction Technology Trading Platform, which connects with the Jiangsu National Independent Innovation Demonstration Zone. Implement a “value-added tax (VAT) immediate refund upon collection” policy for carbon reduction technologies purchased by enterprises, with an annual maximum refund limit of CNY 50 million per enterprise. Meanwhile, propose the Special Program for Carbon Reduction Technology Talents: provide a CNY 5 million settlement subsidy for introduced high-level overseas talents (e.g., academician teams in the new energy field). Furthermore, the province must deepen cooperative exchanges with other regions and organisations on CO2 mitigation technologies to secure robust technical support for its emission-reduction goals [54,55].
(4)
Accelerate the diffusion of energy-saving and carbon-mitigation technologies. The provincial government should publish an annually updated catalogue of proven, scalable low-carbon technologies and mandate that large enterprises, especially those with high-energy and high-emission properties, act as first movers in its promotion and deployment [7,56,57]. Fiscal incentives and concessional finance should be directed toward research and development of next-generation low-carbon products and processes, while competitive grants establish demonstration plants and carbon-saving pioneer posts to showcase best practices. To close current market gaps, Jiangsu must also pioneer domestic carbon-sink trading and develop carbon-futures and other derivative instruments, thereby deepening the province’s carbon-finance ecosystem.
Moreover, the limitations of this study are as follows: (i) The lack of statistical data on some subdivided energy varieties (e.g., biomass energy) leads to incomplete coverage of all energy consumption within the accounting scope. (ii) The availability of carbon emission data for cities in Jiangsu Province is insufficient, making it impossible to conduct city-level scale analysis. (iii) The extended STIRPAT model does not incorporate spatial spillover effects (e.g., the impact of carbon emissions from neighboring provinces on Jiangsu), which may underestimate the inter-regional correlation effects. (iv) The scenario analysis fails to consider the impact of “extreme events” (e.g., energy price fluctuations, epidemics).

4. Conclusions

(1)
Jiangsu’s energy-related CO2 emissions surged from 215.224 million tons in 2000 to 783.943 million tons in 2023, averaging 549.963 million tons. Since the 13th Five-Year Plan period, the effects of emission reduction policies have initially emerged. Coal consumption remains the main source of carbon emissions (accounting for over 60%), while the proportion of natural gas and renewable energy has increased slowly. Therefore, the transformation of energy structures is still the key measure for emission reduction.
(2)
Over the same period, the decoupling relationship between energy-related CO2 emissions and economic growth was predominantly weak decoupling (91.304%), with only a minority of years exhibiting expansive coupling (8.696%). The weak decoupling state indicates that “economic growth still relies on the drive of energy consumption”, and it is necessary to achieve “strong decoupling” through technological innovation and structural optimization.
(3)
Under the baseline scenario, Jiangsu’s energy-related CO2 emissions are projected to reach 796.828 million tons in 2030. Under the low-carbon scenario, CO2 emissions decline to 786.355 million tons, and under the enhanced low-carbon scenario, CO2 emissions fall further to 772.293 million tons.
(4)
Jiangsu Province needs to promote carbon peaking with “energy structure transformation as the core, technological innovation as the support, and policy coordination as the guarantee”. The research conclusions can provide references for economically developed provinces in eastern China, such as Zhejiang and Guangdong. Meanwhile, in the future, “satellite remote sensing data” can be combined to supplement municipal-scale data and improve spatial accuracy; the “spatial STIRPAT model” can be introduced to analyze regional spillover effects; or the “system dynamics model” can be adopted to integrate the impact of extreme events, so as to optimize scenario prediction.

Author Contributions

Conceptualization, Y.L. (Ying Liu) and J.H.; methodology, L.Y.; software, D.L. and L.Y.; validation, J.H., W.W., Y.L. (Yunpeng Li), R.H., D.L. and H.T.; formal analysis, Y.L. (Ying Liu); investigation, J.H.; resources, L.Y.; data curation, Y.L. (Ying Liu), R.H., D.L. and H.T.; writing—original draft preparation, Y.L. (Ying Liu), L.Y., M.W. and J.H.; writing—review and editing, Y.L. (Ying Liu), L.Y., M.W. and J.H.; visualization, L.Y.; supervision, J.H.; project administration, W.W.; funding acquisition, Y.L. (Ying Liu), M.W. and W.W. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the Jiangsu Province Carbon Peak and Carbon Neutrality Technology Innovation Special Fund (BE2023855), Annual Xuzhou Innovation Leadership and Demonstration Special Project in 2023 (KC23381), the Xuzhou Science and Technology Bureau’s Key Social Development Project (KC21147), Young Scientists and Technologists Talent Project of Jiangsu Province (JSTJ-2025-327).

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Data are contained within the article.

Conflicts of Interest

Author Lvhan Yang was employed by the company Sichuan Tianshengyuan Environmental Services Co., Ltd. The remaining authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Abbreviations

STIRPATStochastic Impacts by Regression on Population, Affluence, and Technology
IPATImpact, Population, Affluence, Technology
IPBATImpact, population, affluence, behavior, and technology
ImPACTThe emphasis on the expression Impact in the IPAT equation
TAPIOTapio Decoupling Index
LASSOLeast Absolute Shrinkage and Selection Operator
VIFVariance Inflation Factor
GDPGross Domestic Product
CO2Carbon Dioxide
TETotal CO2 emissions from energy consumption
DIThe decoupling index
URUrbanization rate
PSPopulation size
PCGPer capita GDP
PTIThe tertiary-industry share of output
ESEnergy structure
CICarbon intensity
LPGLiquefied petroleum gas
BSBaseline scenario
LCSLow-carbon scenario
SLCSEnhanced low-carbon scenarios
FECiThe consumption of the i energy type (104 t)
EFiThe standard-coal conversion factor for the i energy type (kg ce kg−1)
kRidge parameter
βCO2 emission coefficient per tonne of standard coal (2.493 t CO2 t ce−1)
nThe number of energy categories
iIndividual fuels

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Figure 1. Characteristic map of CO2 emissions from energy consumption in Jiangsu Province from 2000 to 2023. (A) Energy consumption, CO2 emissions, and growth rate chart; (B) proportion of CO2 emissions from various fossil fuels. Data Source: Based on the data from Jiangsu Statistical Yearbook 2001–2024 and Jiangsu Energy Statistical Yearbook 2024, which were accounted for and organized using the carbon emission factor method.
Figure 1. Characteristic map of CO2 emissions from energy consumption in Jiangsu Province from 2000 to 2023. (A) Energy consumption, CO2 emissions, and growth rate chart; (B) proportion of CO2 emissions from various fossil fuels. Data Source: Based on the data from Jiangsu Statistical Yearbook 2001–2024 and Jiangsu Energy Statistical Yearbook 2024, which were accounted for and organized using the carbon emission factor method.
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Figure 2. Analysis trace map of ridge regression.
Figure 2. Analysis trace map of ridge regression.
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Figure 3. Predicted trends of CO2 emissions from energy consumption in Jiangsu Province under three scenarios.
Figure 3. Predicted trends of CO2 emissions from energy consumption in Jiangsu Province under three scenarios.
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Table 1. Identification table for decoupling status.
Table 1. Identification table for decoupling status.
TEGDPDIDecoupling Status
<0>0DI < 0Strong decoupling
>0>00 ≤ DI < 0.800Weak decoupling
<0<0DI ≥ 1.200Recessive decoupling
>0<0DI < 0Strong negative decoupling
<0<00 ≤ DI < 0.800Weak negative decoupling
>0>0DI ≥ 1.200Expansive negative decoupling
>0>00.800 ≤ DI < 1.200Expansive coupling
<0<00.800 ≤ DI < 1.200Recessive coupling
Table 2. Logarithmic observations of variables used in the STIRPAT model.
Table 2. Logarithmic observations of variables used in the STIRPAT model.
YearlnPSlnURlnCIlnPCGlnPSIlnESlnTE
20008.8993.7260.9239.3653.5814.5859.977
20018.9043.7520.8729.4613.5974.57510.027
20028.9103.8000.8659.5703.6034.59210.134
20038.9173.8460.8649.7223.5864.57710.293
20048.9263.8750.9019.8893.5584.58110.505
20058.9343.9220.80010.0813.5814.54610.605
20068.9433.9490.76810.2313.6004.58510.731
20078.9523.9740.67810.4243.6274.58610.844
20088.9573.9950.46810.5933.6514.49010.808
20098.9634.0180.40810.6953.6794.47410.856
20108.9714.1040.33810.8703.7234.50310.968
20118.9904.1270.24611.0173.7474.50911.042
20129.0024.1430.15811.0993.7704.47111.049
20139.0114.1650.11911.1913.8094.52011.111
20149.0224.1850.04111.2683.8394.50811.121
20159.0264.212−0.06511.3593.8634.48011.109
20169.0344.233−0.09311.4333.9024.50711.164
20179.0394.251−0.22711.5323.9064.46511.134
20189.0414.265−0.30111.6113.9204.47211.142
20199.0444.284−0.35911.6663.9424.44211.140
20209.0454.296−0.44011.7063.9554.39811.101
20219.0484.303−0.50911.8263.9344.39311.155
20229.0504.309−0.55711.8733.9324.36111.156
20239.0514.317−0.49211.9213.9444.37611.270
Table 3. Decoupling status between CO2 emissions from energy consumption and economic development in Jiangsu province from 2001 to 2023.
Table 3. Decoupling status between CO2 emissions from energy consumption and economic development in Jiangsu province from 2001 to 2023.
YearTE/(×104 tons)GDP/(×102 million yuan, CNY)TE/%GDP/%DIDecoupling States
200021,522.428 8553.690----
200122,622.851 9456.8405.113 10.559 0.484 Weak decoupling
200225,187.477 10,606.850 17.029 24.003 0.709 Weak decoupling
200329,519.724 12,442.870 37.158 45.468 0.817 Expansive coupling
200436,510.528 14,823.130 69.639 73.295 0.950 Expansive coupling
200540,331.369 18,121.330 87.392 111.854 0.781 Weak decoupling
200645,772.292 21,240.790 112.673 148.323 0.760 Weak decoupling
200751,214.816 25,988.360 137.960 203.826 0.677 Weak decoupling
200849,400.793 30,945.450 129.532 261.779 0.495 Weak decoupling
200951,846.231 34,471.670 140.894 303.003 0.465 Weak decoupling
201058,003.913 41,383.870 169.504 383.813 0.442 Weak decoupling
201162,472.534 48,839.210 190.267 470.972 0.404 Weak decoupling
201262,901.700 53,701.920 192.261 527.822 0.364 Weak decoupling
201366,873.566 59,349.410 210.716 593.846 0.355 Weak decoupling
201467,571.319 64,830.510 213.958 657.924 0.325 Weak decoupling
201566,787.552 71,255.930 210.316 733.043 0.287 Weak decoupling
201670,510.040 77,350.850 227.612 804.298 0.283 Weak decoupling
201768,457.434 85,869.760 218.075 903.891 0.241 Weak decoupling
201869,000.830 93,207.550 220.600 989.677 0.223 Weak decoupling
201968,881.762 98,656.820 220.046 1053.383 0.209 Weak decoupling
202066,230.120 10,2807.680 207.726 1101.910 0.189 Weak decoupling
202169,926.452 11,6364.200 224.900 1260.398 0.178 Weak decoupling
202269,970.723 12,2089.280 225.106 1327.329 0.170 Weak decoupling
202378,394.270 12,8222.160 264.245 1399.027 0.189 Weak decoupling
Table 4. Characteristics of common collinearity handling methods.
Table 4. Characteristics of common collinearity handling methods.
MethodCollinearity Handling
Capability
Data RequirementsPrediction AccuracyApplicable Scenarios
Ridge regressionStrong (by compressing coefficients via the λ value)Large sample (≥20 observations)Relatively high (suitable for linear relationships)Multivariate collinearity and linear prediction
LASSO regressionRelatively strong (by compressing coefficients to zero)Large sampleRelatively high (suitable for variable selection)Scenarios requiring the elimination of redundant variables
grey forecasting modelWeak (incapable of handling collinearity)Small sample (≥4 observations)Relatively low (suitable for trend extrapolation)Scarce data and absence of obvious driving factors
Table 5. Results of ridge regression analysis.
Table 5. Results of ridge regression analysis.
FactorsUnstandardized CoefficientStandard Errort-Statisticp-ValueVIF
lna−11.8114.315−2.7370.014 **-
lnPS1.8480.2676.9110.000 ***0.254
lnUR0.8490.0978.7320.000 ***0.416
lnCI0.0250.0270.9310.3650.033
lnPCG0.2020.0229.3880.000 ***0.428
lnPTI−0.3090.168−1.8360.084 *0.116
lnES0.3450.4390.7850.4430.062
Note: R2 = 0.926, F-Statistic = 35.432, Sig.(F) = 0.000, *** represents p < 0.01, ** represents p < 0.05, * represents p < 0.10.
Table 6. Independent sample t-test of model-predicted values and actual values.
Table 6. Independent sample t-test of model-predicted values and actual values.
ClassificationThe Average Value of CO2 Emissions/104 tp-Valuet-StatisticSig.
Predicted value54,609.2240.874−0.0090.993
Actual value54,996.280 −0.0090.993
Table 7. The growth rate settings of various influencing factors in the CO2 emission prediction model for energy consumption in Jiangsu Province under different scenarios (%/year).
Table 7. The growth rate settings of various influencing factors in the CO2 emission prediction model for energy consumption in Jiangsu Province under different scenarios (%/year).
YearScenarioPSURCIPCGPTIES
2024–2025BS0.3601.400−2.5006.0004.500−1.000
LCS0.3201.200−3.5005.5004.500−1.200
SLCS0.2801.000−4.0005.0004.000−1.500
2026–2030BS0.3201.100−3.0005.0005.000−0.600
LCS0.2801.000−4.5004.5004.500−0.800
SLCS0.2400.900−5.0004.0004.500−1.000
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Liu, Y.; Yang, L.; Wu, M.; He, J.; Wang, W.; Li, Y.; Huang, R.; Liu, D.; Tan, H. Model Construction and Scenario Analysis for Carbon Dioxide Emissions from Energy Consumption in Jiangsu Province: Based on the STIRPAT Extended Model. Sustainability 2025, 17, 8961. https://doi.org/10.3390/su17198961

AMA Style

Liu Y, Yang L, Wu M, He J, Wang W, Li Y, Huang R, Liu D, Tan H. Model Construction and Scenario Analysis for Carbon Dioxide Emissions from Energy Consumption in Jiangsu Province: Based on the STIRPAT Extended Model. Sustainability. 2025; 17(19):8961. https://doi.org/10.3390/su17198961

Chicago/Turabian Style

Liu, Ying, Lvhan Yang, Meng Wu, Jinxian He, Wenqiang Wang, Yunpeng Li, Renjiang Huang, Dongfang Liu, and Heyao Tan. 2025. "Model Construction and Scenario Analysis for Carbon Dioxide Emissions from Energy Consumption in Jiangsu Province: Based on the STIRPAT Extended Model" Sustainability 17, no. 19: 8961. https://doi.org/10.3390/su17198961

APA Style

Liu, Y., Yang, L., Wu, M., He, J., Wang, W., Li, Y., Huang, R., Liu, D., & Tan, H. (2025). Model Construction and Scenario Analysis for Carbon Dioxide Emissions from Energy Consumption in Jiangsu Province: Based on the STIRPAT Extended Model. Sustainability, 17(19), 8961. https://doi.org/10.3390/su17198961

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