The New Policy for Innovative Transformation in Regional Industrial Chains, the Conversion of New and Old Kinetic Energy, and Energy Poverty Alleviation
Abstract
:1. Introduction
2. Mechanism Analysis
2.1. The Impact of the New Policy for Innovative Transformation in Regional Industrial Chains on Energy Poverty Alleviation
2.2. The Impact of the Conversion of New and Old Kinetic Energy on Energy Poverty Alleviation
2.3. The Mediating Effect of the Conversion of New and Old Kinetic Energy
2.3.1. The New Policy for Innovative Transformation in Regional Industrial Chains → the Conversion of New and Old Kinetic Energy → the Energy Poverty Alleviation in the Heating Segment
2.3.2. The New Policy for Innovative Transformation in Regional Industrial Chains → the Conversion of New and Old Kinetic Energy → the Energy Poverty Alleviation in the Food and Accommodation Segment
2.3.3. The New Policy for Innovative Transformation in Regional Industrial Chains → the Conversion of New and Old Kinetic Energy → the Energy Poverty Alleviation in the Household Electricity Service Segment
2.3.4. The New Policy for Innovative Transformation in Regional Industrial Chains → the Conversion of New and Old Kinetic Energy → the Energy Poverty Alleviation in the Transportation Segment
2.4. The Causal Mediating Effect of the Conversion of New and Old Kinetic Energy: A Counterfactual Framework Analysis
2.5. The Summary, Connection, and Validation Ideas of Mechanism Hypotheses
3. Quasi-Natural Experiment Design, Variable Interpretation, and Data Sources
3.1. Quasi-Natural Experiment Design and Model Construction
3.1.1. Construction of Spatial Difference-in-Difference Model
3.1.2. Construction of Double Machine Learning Model
- (1)
- Benchmark Regression Model Based on Double Machine Learning Model
- (2)
- Testing the Mediating Effect of the Conversion of New and Old Kinetic Energy Based on Double Machine Learning Model
- (3)
- Testing the Causal Mediating Effect under Counterfactual Framework Based on Double Machine Learning Model
3.2. Variable Interpretation and Sources
3.2.1. Explained Variable: Energy Poverty Alleviation Index (EPA) of Provinces in China
3.2.2. Explanatory Variable: Treatment Variable of the New Policy for Innovative Transformation in Regional Industrial Chains (DID)
3.2.3. Explanatory Variable/Mechanism Variable: Conversion of New and Old Kinetic Energy (Conv)
3.2.4. Control Variables
3.2.5. Spatial Weight Matrix
4. Empirical Analysis
4.1. Empirical Analysis Based on Spatial Difference-in-Difference Model
4.1.1. Spatial Autocorrelation Test—Based on Global Moran’s I and Local Moran Scatter Plot
4.1.2. Model Selection and Applicability Test
4.1.3. Empirical Results Report of Spatial Difference-in-Difference Model
4.1.4. Parallel Trend Test
4.2. Empirical Analysis Based on Double Machine Learning Model
4.2.1. Benchmark Regression Analysis
4.2.2. Mediating Effect Analysis Based on Stepwise Regression
4.2.3. Robustness Test
4.2.4. Heterogeneity Analysis
- (1)
- Construction Period Heterogeneity
- (2)
- Geographical Division Heterogeneity
4.2.5. Causal Mediating Effect Analysis Based on Counterfactual Framework
5. Conclusions and Policy Suggestions
5.1. Conclusions
5.2. Policy Suggestions
- (1)
- It is recommended to promote the expansion of domestic demand in China and fully unleash potential consumption behaviors. Primarily, a multifaceted approach should be adopted to increase residents’ disposable incomes, bolstering their tangible consumption capacities while stabilizing and broadening the middle-income demographic. To realize this goal, there is a pressing need to vigorously cultivate strategic emerging industries and those on the cusp of future development, infusing the job market with heightened dynamism and significantly elevating residents’ earning potential and proclivity to consume. Simultaneously, a measured expansion of consumer credit facilities can empower residents with greater capacity for intertemporal consumption, propelling the economy towards a trajectory of high-quality growth. In addition, continuous efforts must be directed toward enhancing the domestic consumption market’s ambiance and diversifying the purview of consumption activities. This serves to amplify consumers’ sense of attainment, contentment, and security and catalyzes the bolstering of their consumption drive. By continually refining consumption policies and bolstering measures aimed at safeguarding consumer rights, especially within the realm of e-commerce after-sales services, the legitimate interests of consumers can be effectively upheld. Through the implementation of these impactful initiatives, the creation of a congenial, secure, and trust-inspiring consumption environment is envisaged, fostering heightened consumer willingness and, in turn, perpetuating the exploration of a broader domestic consumption market. Lastly, concerted endeavors are essential in crafting novel consumption scenarios to enrich the consumption experiences of Chinese citizens. Going forward, China stands to leverage cutting-edge digital technologies such as artificial intelligence, big data, and cloud computing to propel technological innovation forward. These technologies are poised to serve as linchpins in overhauling industrial structures and enhancing product supply quality. By pioneering innovative consumption scenarios and consistently refining the consumption experience, China can substantially elevate consumption standards, thereby catalyzing the dual upgrading of industrial structures and residents’ consumption patterns.
- (2)
- There is a need to enhance policy support for provinces with relatively underdeveloped innovation environments and expedite the implementation of policies. To address the construction period heterogeneity, on the one hand, the new policy for innovative transformation in regional industrial chains should be extended to provinces with fewer pilot cities to address issues such as the weak innovation development foundation in emerging regions due to the lack of pilot cities. This will help unlock the full innovation potential of these areas, alleviate regional development imbalances, and have a positive impact on national industrial upgrading. On the other hand, for provinces newly included in the pilot program, expediting the policy implementation process is crucial to swiftly boost their innovation levels and accelerate the establishment of core hubs for technology innovation and emerging industry clusters driven by innovation.
- (3)
- Policy formulation should consider regional disparities, guiding tailored policy-driven development models with local characteristics in each area. Recognizing the geographical division heterogeneity in policy impact, policies need to account for variations in innovation levels among provinces to foster coordinated and equitable development across regions. Simultaneously, provinces should adopt the new policy for innovative transformation in regional industrial chains as a strategic guide, leveraging unique local resources, industrial structures, development levels, and locational advantages to establish regionally distinctive innovation platforms. Moreover, prioritizing the innovation-driven growth of the western regions is crucial from the perspective of advancing national innovation. This entails bolstering policy support to facilitate industrial structural upgrades in western provinces. Additionally, there should be a concerted effort to establish a radiating mechanism, gradually extending from China’s eastern and central regions to the west, in order to facilitate the balanced development of industrial chain innovation transformation nationwide.
6. Discussion
6.1. Marginal Contribution
6.2. Research Deficiencies and Future Prospects
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Year | Moran’s I | E (I) | Sd (I) | z | Significance Level (p) |
---|---|---|---|---|---|
2009 | 0.383 *** | −0.034 | 0.089 | 4.674 | 0.000 |
2010 | 0.378 *** | −0.034 | 0.090 | 4.587 | 0.000 |
2011 | 0.376 *** | −0.034 | 0.092 | 4.457 | 0.000 |
2012 | 0.388 *** | −0.034 | 0.092 | 4.589 | 0.000 |
2013 | 0.386 *** | −0.034 | 0.092 | 4.578 | 0.000 |
2014 | 0.378 *** | −0.034 | 0.092 | 4.471 | 0.000 |
2015 | 0.364 *** | −0.034 | 0.092 | 4.313 | 0.000 |
2016 | 0.351 *** | −0.034 | 0.092 | 4.184 | 0.000 |
2017 | 0.139 * | −0.034 | 0.092 | 1.884 | 0.060 |
2018 | 0.293 *** | −0.034 | 0.093 | 3.526 | 0.000 |
2019 | 0.294 *** | −0.034 | 0.093 | 3.525 | 0.000 |
2020 | 0.284 *** | −0.034 | 0.093 | 3.414 | 0.001 |
2021 | 0.276 *** | −0.034 | 0.093 | 3.331 | 0.001 |
Test | Statistics | p-Value |
---|---|---|
Spatial lag: | ||
Lagrange multiplier | 84.739 *** | 0.000 |
Robust Lagrange multiplier | 48.734 *** | 0.001 |
Spatial error: | ||
Lagrange multiplier | 40.621 *** | 0.000 |
Robust Lagrange multiplier | 4.616 ** | 0.036 |
SDM or SAR: | ||
Wald Test | 44.14 *** | 0.0000 |
LR Test | 41.76 *** | 0.0000 |
SDM or SEM: | ||
Wald Test | 42.01 *** | 0.0000 |
LR Test | 39.98 *** | 0.0000 |
EPA | EPA | |||||
---|---|---|---|---|---|---|
Spatial Direct Effect | Spatial Spillover Effect | Total Effect | Spatial Direct Effect | Spatial Spillover Effect | Total Effect | |
DID | 0.0113 * | 0.00539 | 0.0166 | −0.0661 *** | −0.0349 | −0.101 *** |
(1.83) | (0.41) | (1.16) | (−4.62) | (−1.12) | (−3.51) | |
Conv | 0.0115 ** | 0.0284 ** | 0.0399 *** | 0.00669 | 0.0222 ** | 0.0289 *** |
(2.10) | (2.53) | (3.02) | (1.27) | (2.39) | (2.73) | |
DID × Conv | 0.0415 *** | 0.0245 * | 0.0660 *** | |||
(6.40) | (1.85) | (4.93) | ||||
RIS | 0.000417 ** | 0.00188 ** | 0.00230 *** | 0.000453 ** | 0.00166 ** | 0.00211 *** |
(2.09) | (2.39) | (2.81) | (2.30) | (2.39) | (3.10) | |
RGR | −0.00248 | −0.0221 *** | −0.0246 *** | −0.000435 | −0.0192 *** | −0.0196 *** |
(−1.48) | (−5.28) | (−5.70) | (−0.28) | (−4.91) | (−5.01) | |
GGR | −0.156 *** | −0.0995 | −0.255 ** | −0.107 ** | −0.0419 | −0.149 |
(−3.14) | (−0.88) | (−2.25) | (−2.17) | (−0.41) | (−1.55) | |
Open | 0.00000342 | −0.0000135 | −0.0000101 | 0.00000484 * | −0.00000186 | 0.00000298 |
(1.36) | (−1.19) | (−0.88) | (1.88) | (−0.18) | (0.29) | |
HE | −0.00349 * | 0.00552 | 0.00202 | −0.00268 | 0.00661 | 0.00393 |
(−1.83) | (1.04) | (0.38) | (−1.61) | (1.26) | (0.78) | |
GI | 0.700 | 1.647 | 2.347 * | 0.757 | 1.445 | 2.202 * |
(1.37) | (1.37) | (1.82) | (1.56) | (1.35) | (1.92) | |
Fixed area | yes | yes | yes | yes | yes | yes |
Fixed time | yes | yes | yes | yes | yes | yes |
ρ | −0.302 *** | −0.192 ** | ||||
(−3.49) | (−2.22) | |||||
Variance | ||||||
sigma2_e | 0.000599 *** | 0.000682 *** | ||||
(13.81) | (13.89) | |||||
N | 390 | 390 | ||||
R2 | 0.341 | 0.364 |
Model 4 | Model 5 | |
---|---|---|
EPA | EPA | |
DID | 0.0644 *** | |
(5.83) | ||
Conv | 0.0517 *** | |
(9.36) | ||
_cons | −0.000290 | −0.000224 |
(−0.13) | (−0.11) | |
Control variable | yes | yes |
Fixed individual | yes | yes |
Fixed time | yes | yes |
N | 390 | 390 |
R2 | - | - |
Mediating Path | Dependent Variable | Policy | Mediating Variable | Control Variable | Fixed Area | Fixed Time | Mediating Proportion | Sobel (Z Statistic) | Aroian (Z Statistic) | Goodman (Z Statistic) |
---|---|---|---|---|---|---|---|---|---|---|
DID → Conv → EPA | EPA | 0.0644 *** | Yes | Yes | Yes | 31.6% | 3.490 *** | 3.469 *** | 3.511 *** | |
(5.83) | ||||||||||
Conv | 0.445 *** | Yes | Yes | Yes | ||||||
(3.85) | ||||||||||
EPA | 0.0498 *** | 0.0457 *** | Yes | Yes | Yes | |||||
(5.57) | (8.24) | |||||||||
DID → Conv → Heat | Heat | 0.115 *** | Yes | Yes | Yes | 35.9% | 3.458 *** | 3.436 *** | 3.481 *** | |
(4.69) | ||||||||||
Conv | 0.445 *** | Yes | Yes | Yes | ||||||
(3.85) | ||||||||||
Heat | 0.0857 *** | 0.0930 *** | Yes | Yes | Yes | |||||
(4.14) | (7.85) | |||||||||
DID → Conv →F&A | F&A | 0.0171 *** | Yes | Yes | Yes | No mediating effect | — | — | — | |
(5.12) | ||||||||||
Conv | 0.445 *** | Yes | Yes | Yes | ||||||
(3.85) | ||||||||||
F&A | 0.0130 ** | 0.00208 | Yes | Yes | Yes | |||||
(2.54) | (0.58) | |||||||||
DID → Conv → Elec | Elec | 0.0426 *** | Yes | Yes | Yes | 15.1% | 1.919 * | 1.862 * | 1.982 ** | |
(3.45) | ||||||||||
Conv | 0.315 *** | Yes | Yes | Yes | ||||||
(3.21) | ||||||||||
Elec | 0.0322 ** | 0.0204 ** | Yes | Yes | Yes | |||||
(2.27) | (2.39) | |||||||||
DID → Conv → Trans | Trans | 0.0240 ** | Yes | Yes | Yes | 27.3% | 1.842 * | 1.796 * | 1.892 * | |
(2.28) | ||||||||||
Conv | 0.445 *** | Yes | Yes | Yes | ||||||
(3.85) | ||||||||||
Trans | 0.0193 * | 0.0147 ** | Yes | Yes | Yes | |||||
(1.87) | (2.10) |
Robustness Test | Dependent Variable | Policy | Mediating Variable | Covariate | Fixed Area | Fixed Time | Mediating Proportion | Sobel (Z Statistic) | Aroian (Z Statistic) | Goodman (Z Statistic) |
---|---|---|---|---|---|---|---|---|---|---|
Excluding the first year | EPA | 0.0782 *** | Yes | Yes | Yes | 33.3% | 4.547 *** | 4.521 *** | 4.574 *** | |
(7.10) | ||||||||||
Conv | 0.622 *** | Yes | Yes | Yes | ||||||
(5.87) | ||||||||||
EPA | 0.0522 *** | 0.0419 *** | Yes | Yes | Yes | |||||
(5.08) | (7.18) | |||||||||
Excluding parallel policy interference | EPA | 0.0487 *** | Yes | Yes | Yes | 26.0% | 2.488 ** | 2.469 ** | 2.508 ** | |
(4.19) | ||||||||||
Conv | 0.298 *** | Yes | Yes | Yes | ||||||
(2.64) | ||||||||||
EPA | 0.0353 *** | 0.0425 *** | Yes | Yes | Yes | |||||
(3.54) | (7.54) | |||||||||
Sample split changed to 1:7 | EPA | 0.0647 *** | Yes | Yes | Yes | 20.1% | 2.829 *** | 2.811 *** | 2.847 *** | |
(5.85) | ||||||||||
Conv | 0.290 *** | Yes | Yes | Yes | ||||||
(3.01) | ||||||||||
EPA | 0.0515 *** | 0.0449 *** | Yes | Yes | Yes | |||||
(6.08) | (8.33) | |||||||||
Sample split changed to 1:3 | EPA | 0.0688 *** | Yes | Yes | Yes | 26.7% | 3.269 *** | 3.250 *** | 3.289 *** | |
(5.72) | ||||||||||
Conv | 0.350 *** | Yes | Yes | Yes | ||||||
(3.55) | ||||||||||
EPA | 0.0507 *** | 0.0504 *** | Yes | Yes | Yes | |||||
(5.61) | (8.36) | |||||||||
Algorithm changed to gradient boosting (gradboost) | EPA | 0.0482 *** | Yes | Yes | Yes | 18.3% | 2.232 ** | 2.212 ** | 2.254 ** | |
(4.18) | ||||||||||
Conv | 0.242 ** | Yes | Yes | Yes | ||||||
(2.36) | ||||||||||
EPA | 0.0392 *** | 0.0364 *** | Yes | Yes | Yes | |||||
(3.92) | (6.85) | |||||||||
Algorithm changed to support vector machine (svm) | EPA | 0.0835 *** | Yes | Yes | Yes | 30.9% | 4.888 *** | 4.865 *** | 4.912 *** | |
(7.69) | ||||||||||
Conv | 0.713 *** | Yes | Yes | Yes | ||||||
(8.13) | ||||||||||
EPA | 0.0578 *** | 0.0360 *** | Yes | Yes | Yes | |||||
(5.40) | (6.12) |
Sample Differentiation | Dependent Variable | Policy | Mediating Variable | Covariate | Fixed Area | Fixed Time | Mediating Proportion | Sobel (Z Statistic) | Aroian (Z Statistic) | Goodman (Z Statistic) |
---|---|---|---|---|---|---|---|---|---|---|
Emerging regions | EPA | 0.0379 | Yes | Yes | Yes | No mediating effect | — | — | — | |
(0.70) | ||||||||||
Conv | −0.313 | Yes | Yes | Yes | ||||||
(−0.63) | ||||||||||
EPA | 0.0531 | 0.0426 *** | Yes | Yes | Yes | |||||
(1.46) | (5.95) | |||||||||
Mature regions | Heat | 0.115 *** | Yes | Yes | Yes | 29.1% | 3.026 *** | 2.990 ** | 3.063 *** | |
(4.69) | ||||||||||
Conv | 0.445 *** | Yes | Yes | Yes | ||||||
(3.85) | ||||||||||
Heat | 0.0857 *** | 0.0930 *** | Yes | Yes | Yes | |||||
(4.14) | (7.85) |
Sample Differentiation | Dependent Variable | Policy | Mediating Variable | Covariate | Fixed Area | Fixed Time | Mediating Proportion | Sobel (Z Statistic) | Aroian (Z Statistic) | Goodman (Z Statistic) |
---|---|---|---|---|---|---|---|---|---|---|
Eastern regions | EPA | 0.0654 *** | Yes | Yes | Yes | 50.6% | 3.348 *** | 3.313 *** | 3.383 *** | |
(5.72) | ||||||||||
Conv | 0.597 *** | Yes | Yes | Yes | ||||||
(5.49) | ||||||||||
EPA | 0.0311 *** | 0.0555 *** | Yes | Yes | Yes | |||||
(2.62) | (4.22) | |||||||||
Central regions | EPA | 0.0739 *** | Yes | Yes | Yes | 27.4% | 1.760 * | 1.696 * | 1.832 * | |
(3.77) | ||||||||||
Conv | 0.372 ** | Yes | Yes | Yes | ||||||
(2.26) | ||||||||||
EPA | 0.0541 *** | 0.0491 *** | Yes | Yes | Yes | |||||
(2.66) | (2.81) | |||||||||
Western regions | EPA | 0.0386 ** | Yes | Yes | Yes | No mediating effect | — | — | — | |
(2.27) | ||||||||||
Conv | 0.225 | Yes | Yes | Yes | ||||||
(1.06) | ||||||||||
EPA | 0.0362 ** | 0.0197 | Yes | Yes | Yes | |||||
(2.46) | (1.44) |
Mediating Path | Dir. Treat | Dir. Control | Indir. Treat | Indir. Control |
---|---|---|---|---|
DID → Conv → EPA | 0.045 *** | 0.041 *** | 0.019 *** | 0.014 ** |
p-value = 0.001 | p-value = 0.005 | p-value = 0.002 | p-value = 0.088 | |
DID → Dem → EPA | 0.092 *** | −3.025 | 3.117 | 0.001 |
p-value = 0.000 | p-value = 0.319 | p-value = 0.305 | p-value = 0.573 | |
DID → Sup → EPA | 0.030 *** | 0.032 *** | 0.047 *** | 0.049 *** |
p-value = 0.004 | p-value = 0.005 | p-value = 0.000 | p-value = 0.000 | |
DID → Str → EPA | 0.084 *** | 0.078 *** | 0.013 ** | 0.006 *** |
p-value = 0.000 | p-value = 0.000 | p-value = 0.028 | p-value = 0.000 |
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Dimension | Three-Level Evaluation Index | Measure Method | Index Attribute |
---|---|---|---|
Energy poverty alleviation of heating segment (Heat) | Personal heating business energy consumption | Domestic coal consumption per capita | Positive |
Average number of air conditioners per hundred urban households at the end of the year | Positive | ||
Average number of air conditioners per hundred rural households at the end of the year | Positive | ||
Energy poverty alleviation of food and accommodation segment (F&A) | Personal cooking business energy consumption | Total gas consumption per capita | Positive |
Total consumption of liquefied petroleum gas per capita | Positive | ||
Urban gas pipelines per capita | Positive | ||
Gas penetration rate | Positive | ||
Public food and accommodation business energy consumption | Consumption of living energy per capita | Positive | |
Value added of accommodation and catering industry | Positive | ||
Energy poverty alleviation of household electricity service segment (Elec) | Personal electricity consumption | Living electricity consumption of urban residents per capita | Positive |
Total power of agricultural machinery per capita in rural areas | Positive | ||
Proportion of new energy generation | Positive | ||
Installed capacity of electricity generation per capita | Positive | ||
Average number of refrigerators per hundred urban households at the end of the year | Positive | ||
Average number of refrigerators per hundred rural households at the end of the year | Positive | ||
Average number of computers per hundred urban households at the end of the year | Positive | ||
Average number of computers per hundred rural households at the end of the year | Positive | ||
Energy poverty alleviation of transportation segment (Trans) | Personal transportation energy consumption | Urban domestic oil consumption per capita | Positive |
Rural domestic oil consumption per capita | Positive | ||
Average number of household cars per hundred urban households at the end of the year | Positive | ||
Average number of motorcycles per hundred rural households at the end of the year | Positive | ||
Public transportation energy consumption | Transportation, storage and postal energy consumption per capita | Positive | |
Public transportation passenger volume | Positive | ||
Number of public transportation vehicles per ten thousand people | Positive | ||
Railway coverage rate | Positive | ||
Road coverage rate | Positive |
Dimension | Index Name | Measure Method | Index Attribute | |
---|---|---|---|---|
Conventional energy index (CEI) | Demand side (DeC) | The external demand kinetic energy based on comparative advantages | Total export value of goods/Gross regional product | Positive |
Supply side (SuC) | The kinetic energy of capital investment | Total investment in fixed assets/Gross regional product | Positive | |
The kinetic energy of financial development | Balance of deposits and loans at the end of the year/GDP | Positive | ||
Structural side (StC) | The structural conversion kinetic energy based on Baumol effect | Value added of tertiary industry/GDP | Positive | |
The kinetic energy of capital market development | Amount of venture capital investment/Fixed capital stock | Positive | ||
New energy Index (NEI) | Demand side (DeN) | The internal demand kinetic energy based on Engel effect | Non-food expenditure of residents per capita/Consumption expenditure per capita | Positive |
Supply Side (SuN) | The technical progress kinetic energy of human capital | Number of employees in high-tech industries/Total employment | Positive | |
The innovative kinetic energy based on Schumpeterian effect | Internal R&D expenditures of industrial enterprises above scale/Main business income | Positive | ||
The precise release of kinetic energy from financing pressures through the integration of technology and finance | Financial technology index | Positive | ||
Structural side (StN) | The kinetic energy of advanced industrial structure | Sales revenue of new products in high-tech industries/Main business income of industrial enterprises above scale | Positive | |
The value ascension kinetic energy of industrial chain | Export Complexity of Products | Positive |
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Chen, D.; Huang, Q. The New Policy for Innovative Transformation in Regional Industrial Chains, the Conversion of New and Old Kinetic Energy, and Energy Poverty Alleviation. Energies 2024, 17, 2667. https://doi.org/10.3390/en17112667
Chen D, Huang Q. The New Policy for Innovative Transformation in Regional Industrial Chains, the Conversion of New and Old Kinetic Energy, and Energy Poverty Alleviation. Energies. 2024; 17(11):2667. https://doi.org/10.3390/en17112667
Chicago/Turabian StyleChen, Dongli, and Qianxuan Huang. 2024. "The New Policy for Innovative Transformation in Regional Industrial Chains, the Conversion of New and Old Kinetic Energy, and Energy Poverty Alleviation" Energies 17, no. 11: 2667. https://doi.org/10.3390/en17112667
APA StyleChen, D., & Huang, Q. (2024). The New Policy for Innovative Transformation in Regional Industrial Chains, the Conversion of New and Old Kinetic Energy, and Energy Poverty Alleviation. Energies, 17(11), 2667. https://doi.org/10.3390/en17112667