Influencing Factors and Development Trend Analysis of China Electric Grid Investment Demand Based on a Panel Co-Integration Model
Abstract
:1. Introduction
2. Literature Review
2.1. Literature Review about Influence Factors of Electric Grid Investment
2.2. Research Methods for Influencing Factors of Electric Grid Investment
3. Research Methods
3.1. Panel Co-Integration
3.2. Pooled Regression Model
4. China Electric Grid Investment Co-Integration Analysis
4.1. Variables and Data Characteristics
4.2. Analysis of Co-Integration Results
5. Development Trend Forecast of the Electric Grid
5.1. Scenario Design of Electric Grid Investment
5.2. Simulation of the Scale of Electric Grid Investment in 23 Provinces
6. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Author | Influencing Factors | Influencing Factors List |
---|---|---|
Ji Liwei, Yang Liping, Fei Gaiying [1] | GDP, industrial structure, power consumption, line loss per unit, power distribution reliability, profit margin, population scale | GDP
Total electricity consumption Installed capacity Profit Population scale Peak load Financial contribution Price index Industrial structure Line loss per unit Power distribution reliability Substation capacity Investment level Regulatory risk Public resistance Lower market concentration Innovation-stimulus mechanisms |
Zhao Huiru, Yang Lu, Li Chunjie, Ma Xin [2] | GDP, total electricity consumption, power supply volume, power sale quantity, peak load | |
Wei Zijie [3] | GDP, population scale, substation capacity, total electricity consumption, peak load, increasing amount of power supply unit investment, property/earnings ratio, installed capacity | |
Xia Huali, Ye Jinshu [4] | GDP, price index, investment level, financial contribution, electric power consumption level | |
Xunpeng Shi, Xiying Liu, Lixia Yao [5] | Financial incentives, fiscal incentives, elimination of market distortions | |
Katja Keller, Jorg Wild [6] | Regulatory risk, public resistance | |
Kucsera, D., Rammerstorfer, M. [7] | Renewable energy installed capacity | |
Chen, K., Li, X.Z., Huang, K.R. [8] | Price index, total electricity consumption | |
Cambini C., Meletiou A., Bompard E., Masera M. [9] | Lower market concentration, regulatory incentive, innovation-stimulus mechanisms |
Author | Object of Study | Research Methods |
---|---|---|
Deng Guojun [10] | Influencing factors of electric grid investment in America | Elastic coefficient method, cointegration theory, HP filtering, VAR model |
Hu Baichu, Hu Gang, Hu Chaohua, Qing Song, Li Mingwei, and Peng Chao [11] | Grid infrastructure investment | Analytic hierarchy process, gray model |
Li Wei, Yin Xiudi, Zhang Qianyuan, Liu Jiannan [12] | Informatization investment efficiency of grid enterprise | Fuzzy comprehensive evaluation method |
Zeng Ming, Yan Fan, Tian Kuo, Dong Jun [13] | Investment efficiency analysis of grid enterprises | Triangular fuzzy number, adjustment factor, fuzzy comprehensive evaluation method |
He Kelei, Zeng Ming, Qiao Hong [14] | Evaluation of electric grid investment | System dynamics, analog simulation |
Zhang Xingping, Niu Yuqin, Zhao Xu [15] | Relationship between electricity consumption and fixed investments, per capita disposable income, price level | Granger examination, Vector Error Correction Model |
Fernando Oliveira [16] | Assumptions of investment in electricity markets and how information influences investment | A dynamic investment game model, the open-loop Cournot model, the Nash value of complete information |
Constantinos Taliotis, Abhishek Shivakumar, Eunice Ramos, Mark Howells, Dimitris Mentis, Vignesh Sridharan, Oliver Broad, Linus Mofor [17] | Scenarios of power plant investments based on potential for electricity trade and long-term energy planning to develop least cost system configurations | Open Source energy modelling system |
Sun-Kyo Kim, Jun-Hyung Park, Ho-Chul Lee, Geun-Pyo Park [18] | Method that evaluates the economic efficiency between the investment in electric power generators in an existing monopoly formation and the investment made after reform | Propose a general framework |
Cannistraro, G., Cannistraro, M., Cannistraro, A., Galvagno, A., Trovato, G. [19] | Evaluation for the replacement of the district heating system with high efficiency heat generators or with heat pumps | Compare costs for heating and hot water supplied by district heating |
Cannistraro, G., Cannistraro, M., Cannistraro, A., Galvagno, A., Trovato, G. [20] | Evaluation for the technical and economic feasibility of a proposed intervention in the integration of a cogeneration and trigeneration system fueled with natural gas in the north of Italy. | Economic and financial assessments |
Variable | Unit | N | Mean | StDev | Min | Max |
---|---|---|---|---|---|---|
GDP index | / | 299 | 111.34 | 2.84 | 97.5 | 117.4 |
POP | 10,000 people | 299 | 4314.49 | 2584.55 | 539 | 9946.64 |
SEC | 10,000 kWh | 299 | 16,319,353.5 | 21,166,849.1 | 1,605,033 | 145,844,200 |
EIC | 10,000 kW | 299 | 3076.34 | 2190.11 | 370.83 | 10,941.79 |
PL | 10,000 kW | 299 | 1961.83 | 1528.55 | 224 | 8886 |
Statistic | Prob. | Weighted Statistic | Prob. | |
---|---|---|---|---|
Panel v-statistic | –1.972551 | 0.9757 | −4.410807 | 1.0000 |
Panel rho-statistic | 4.316769 | 1.0000 | 4.225413 | 1.0000 |
Panel PP-statistic | –6.081687 | 0.0000 | –13.52441 | 0.0000 |
Panel ADF-statistic | –1.387338 | 0.0827 | –5.235396 | 0.0000 |
Group rho-statistic | 6.134689 | 1.0000 | ||
Group PP-statistic | –17.59534 | 0.0000 | ||
Group ADF-statistic | –3.174253 | 0.0008 |
Variable | Coefficient | Std. Error | t-Statistic | Prob. |
---|---|---|---|---|
ln(GDP) | 0.582800 | 0.095145 | 6.125367 | 0.0000 |
ln(POP) | –0.036786 | 0.060289 | –0.610164 | 0.5422 |
ln(SEC) | 0.049978 | 0.092376 | 0.541027 | 0.5889 |
ln(EIC) | 0.003494 | 0.083502 | 0.041849 | 0.9666 |
ln(PL) | 0.904619 | 0.116268 | 7.780467 | 0.0000 |
Constant | 2.956670 | 0.961816 | 3.074048 | 0.0023 |
Variable | Coefficient | Std. Error | t-Statistic | Prob. |
---|---|---|---|---|
ln(GDP) | 0.260678 | 0.164232 | 1.587255 | 0.1157 |
ln(POP) | 0.023405 | 0.213368 | 0.109694 | 0.9129 |
ln(SEC) | –0.032222 | 0.116152 | –0.277413 | 0.7820 |
ln(EIC) | –0.030280 | 0.154517 | –0.195965 | 0.8450 |
ln(PL) | 0.891828 | 0.157245 | 5.671594 | 0.0000 |
Constant | 5.981604 | 1.157340 | 5.168407 | 0.0000 |
Variable | Coefficient | Std. Error | t-Statistic | Prob. |
---|---|---|---|---|
ln(GDP) | 0.952669 | 0.151635 | 6.282653 | 0.0000 |
ln(POP) | 0.386049 | 0.202981 | 1.901897 | 0.0601 |
ln(SEC) | –0.153487 | 0.431762 | –0.355490 | 0.7230 |
ln(EIC) | 0.418419 | 0.257140 | 1.627205 | 0.1069 |
ln(PL) | 0.374573 | 0.410293 | 0.912941 | 0.3635 |
Constant | 1.136679 | 4.193798 | 0.271038 | 0.7869 |
Variable | Coefficient | Std. Error | t-Statistic | Prob. |
---|---|---|---|---|
ln(GDP) | 0.683244 | 0.271942 | 2.512468 | 0.0136 |
ln(POP) | 0.019344 | 0.114745 | 0.168580 | 0.8665 |
ln(SEC) | 0.924933 | 0.402610 | 2.297341 | 0.0237 |
ln(EIC) | –0.131614 | 0.256927 | –0.512263 | 0.6096 |
ln(PL) | 0.331801 | 0.419268 | 0.791382 | 0.4306 |
Constant | –6.788440 | 3.989523 | –1.701567 | 0.0920 |
Number | Province | Number | Province | Number | Province |
---|---|---|---|---|---|
1 | Beijing | 9 | Hubei | 17 | Shaanxi |
2 | Shanghai | 10 | Hunan | 18 | Sichuan |
3 | Jiangsu | 11 | Henan | 19 | Chongqing |
4 | Zhejiang | 12 | Jiangxi | 20 | Qinghai |
5 | Liaoning | 13 | Jilin | 21 | Ningxia |
6 | Shandong | 14 | Heilongjiang | 22 | Gansu |
7 | Tianjin | 15 | Shanxi | 23 | Xinjiang |
8 | Fujian | 16 | Anhui |
Regions | Influencing Factor | Scene A | Scene B | Scene C |
---|---|---|---|---|
Beijing, Tianjin, Liaoning, Shanghai, Jiangsu, Zhejiang, Fujian, Shandong | PL | growth rate > 10% | 4% ≤ growth rate ≤ 10% | growth rate < 4% |
Shanxi, Jilin, Heilongjiang, Anhui, Jiangxi, Henan, Hubei, Hunan | GDP | growth rate > 8% | 5% ≤ growth rate ≤ 8% | growth rate < 5% |
Sichuan, Chongqing, Shaanxi, Gansu, Ningxia, Qinghai, Xinjiang | GDP | growth rate > 8% | 5% ≤ growth rate ≤ 8% | growth rate < 5% |
SEC | growth rate > 5% | 2% ≤ growth rate ≤ 5% | growth rate < 2% |
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Li, J.; Chen, L.; Xiang, Y.; Li, J.; Peng, D. Influencing Factors and Development Trend Analysis of China Electric Grid Investment Demand Based on a Panel Co-Integration Model. Sustainability 2018, 10, 256. https://doi.org/10.3390/su10010256
Li J, Chen L, Xiang Y, Li J, Peng D. Influencing Factors and Development Trend Analysis of China Electric Grid Investment Demand Based on a Panel Co-Integration Model. Sustainability. 2018; 10(1):256. https://doi.org/10.3390/su10010256
Chicago/Turabian StyleLi, Jinchao, Lin Chen, Yuwei Xiang, Jinying Li, and Dong Peng. 2018. "Influencing Factors and Development Trend Analysis of China Electric Grid Investment Demand Based on a Panel Co-Integration Model" Sustainability 10, no. 1: 256. https://doi.org/10.3390/su10010256
APA StyleLi, J., Chen, L., Xiang, Y., Li, J., & Peng, D. (2018). Influencing Factors and Development Trend Analysis of China Electric Grid Investment Demand Based on a Panel Co-Integration Model. Sustainability, 10(1), 256. https://doi.org/10.3390/su10010256