A New Hybrid Method for China’s Energy Supply Security Forecasting Based on ARIMA and XGBoost
Abstract
:1. Introduction
2. Literature Review
3. Determining Energy Supply Security
3.1. Definition of Energy Supply Security
3.2. Evaluation of Energy Supply Security
3.2.1. Energy Supply Security Index Construction
3.2.2. Indicator Normalization
3.2.3. Weighting and Aggregation
3.2.4. Evaluation Criteria
4. Hybrid Forecasting Method for China’s Energy Supply Security
4.1. Principles and Processes for Forecasting
4.2. Forecasting Method
4.2.1. ARIMA Model
4.2.2. XGBoost Model
5. Results and Discussion
5.1. Determination of Optimal Hybrid ARIMA-XGBoost Model
5.2. Dimensional Forecasting Results
5.2.1. Availability Forecasting
5.2.2. Affordability Forecasting
5.2.3. Environmental Safety Forecasting
5.2.4. Energy Technology and Efficiency Forecasting
5.3. Energy Supply Security Index Forecasting Results
6. Conclusions
Author Contributions
Acknowledgments
Conflicts of Interest
References
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No. | Source | Themes | Dimension | No. of Countries | Time Frame | No. of Indicator | Assessment Method | Provide Rank | ||
---|---|---|---|---|---|---|---|---|---|---|
Normalization | Weighting | Model | ||||||||
1 | Coq [53] | Energy supply security | Oil, Gas, Coal | 24 | 1 | 3 | —— | —— | Aggregation | √ |
2 | Sovacool [32] | Energy security, Energy supply | Availability, Affordability, Technology development, Sustainability and regulation | 10 | 5 | 20 | —— | —— | Subjective scoring | √ |
3 | Malavika [54] | Energy security, Energy supply | Security of energy supply, Climate change, Energy efficiency, New energy technologies, Self-sufficiency and trade. | 1 | —— | 16 | —— | —— | Questionnaire survey | √ |
4 | Hippel [55] | Energy security, Energy supply | Security of supply, Economic | 1 | —— | 29 | —— | —— | Forum discussion | —— |
5 | Sovacool [56] | Energy security, Energy supply | Availability, Affordability, Technology development, Sustainability | 1 | —— | 320 | —— | —— | Questionnaire survey, Literature review | —— |
6 | Ang [36] | Energy security, Energy supply | Economic, Energy supply chain, Environment | 1 | 5 | 22 | —— | Subjective Weight | Aggregation | √ |
7 | Geng [57] | Energy supply security | Availability, Affordability, Energy technologies and energy efficiency, Energy resource reserves | 1 | 8 | 7 | Min-Max | —— | Aggregation | √ |
8 | Zhang [58] | Coal security | Safe, Green and Efficient. | —— | —— | 22 | Min-Max | AHP | Aggregation | √ |
9 | Ren [59] | Energy security | Availability, Accessibility, Affordability, Acceptability | 1 | 1 | 24 | —— | —— | Fuzzy DEMATEL | —— |
10 | Brown [60] | Energy security, Energy supply | Availability, Affordability, Efficiency, Environment | 22 | 40 | 10 | —— | —— | Aggregation | √ |
11 | Ren and Sovacool [61] | Energy security | Availability, Affordability, Accessibility Acceptability | 1 | 1 | 10 | AHP | TOPSIS | —— | |
12 | Narula [62] | Energy security, Energy supply | Availability, Affordability, Acceptability, Efficiency | 1 | 3 | 16 | Min-Max | Subjective Weight | Multi-objective decision model | —— |
13 | Vivoda V [63] | Energy security, Energy supply | Energy supply, Demand management, Efficiency, Economic, ethnological | 10 | 1 | 44 | —— | —— | —— | —— |
14 | Lucas [64] | Energy security, Energy supply | Energy supply, Environment | 22 | 1 | 12 | —— | —— | Econometrics | —— |
15 | Erahman [65] | Energy security | Availability, Affordability, Accessibility, Acceptability and efficiency. | 71 | 6 | 14 | Min-Max | PCA | Aggregation | √ |
16 | Li [66] | Energy security | Vulnerability, Efficiency, Sustainability | 4 | 13 | 9 | —— | Equal weight | Aggregation | √ |
17 | Cohen [67] | Energy security, Energy supply | Diversification | 27 | —— | —— | —— | —— | Aggregation | √ |
18 | Pavlović [68] | Energy supply security | Energy Import Dependency Index, Energy Intensity, Gross Inland Consumption… | 1 | 15 | 6 | —— | Subjective Weight | Aggregation | √ |
19 | Duenas [69] | Energy supply security | Strategic energy policy, Adequacy, Firmness, Security | 1 | 54 | —— | —— | —— | Coordination scheduling model | √ |
20 | Mohsin [70] | Energy security, supply risk | Supply risk, Infrastructure risk, Market risk; Transportation risk; Dependence risk | 7 | 5 | 11 | —— | —— | DEA | √ |
21 | Castro [71] | Security of supply | The loss of load duration, the loss of load occurrence the energy not supplied | 1 | 2 | 6 | —— | —— | Monte Carlo Simulation (MCS) | —— |
First Grade Indexes | Second Grade Indexes | Equation | Variable Description | Indicator Source |
---|---|---|---|---|
Availability | Reserve and production ratio | ri- Reserve and production ratio of energy i, pi -Proportion of energy i produced in energy sources’ production | [32,56,57,65,74,75] | |
Production diversity index | pi -Proportion of energy i produced in energy sources’ production | [36,55,56,63,64,74,76] | ||
Energy dependence | Qeit-Energy import quantum, Qest-TPES | [32,56,59,66,72,74] | ||
Affordability | Energy price index | ---------- | Purchase price index of fuel and power by industrial producers | [36,56,59,60,72,74] |
The economic vulnerability index | EIEV is the economic vulnerability index of crude oil imports, Co represents the cost of crude oil import; Qoip, Qoit, and Qet represent the amount of crude oil import, crude oil consumption, and the total energy consumption, respectively; Po represents the international crude oil prices, using the Brent spot price. | [44,57] | ||
Environment | Waste water emissions | ---------- | Total waste water emissions | [32,36,55,56,59,76] |
SO2 emissions | ---------- | Total sulfur dioxide emissions | [36,55,60,63,66,72,76] | |
NOx emissions | ---------- | Total NOx emissions | [32,36,55,56,60,63,64,66,72,76] | |
CO2 emissions | ---------- | Total carbon dioxide emissions | [55,56,64,72] | |
Energy technology and efficiency | Clean power generation | ---------- | The proportion of clean power generation in power-generation capacity | [32,36,59,65,66,72] |
Domestic infrastructure | ---------- | Investment in fixed assets of energy industry | [44,77] | |
Energy efficiency | GDP/Ec | Ec-Total energy consumption | [32,36,56,57,60,63,64,65,66,78] |
Number | Security Grade | Score Range | Basic Characteristics |
---|---|---|---|
1 | I | 0.8–1 | There were a few unsafe factors, and overall it was in a security state |
2 | II | 0.6–0.8 | There were some unsafe factors, but overall it was in a basic security state |
3 | III | 0.4–0.6 | There were many unsafe factors and an overall weak security state |
4 | IV | 0.2–0.4 | The safety factor had either been close to or exceeded half and overall was not in a safe state |
5 | V | 0–0.2 | There were mainly unsafe factors and overall it was in a serious state of insecurity |
Indicator | Optimal ARIMA Parameters | Indicator | Optimal ARIMA Parameters |
---|---|---|---|
ARIMA(12, 3, 6) | ARIMA(12, 3, 6) | ||
ARIMA(11, 2, 1) | ARIMA(10, 2, 11) | ||
ARIMA(1, 2, 1) | ARIMA(11, 2, 8) | ||
ARIMA(12, 1, 1) | ARIMA(9, 1, 1) | ||
ARIMA(11, 1, 8) | ARIMA(10, 2, 2) | ||
ARIMA(7, 2, 4) | ARIMA(11, 2, 1) | ||
ESSI | ARIMA(10, 2, 1) |
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Li, P.; Zhang, J.-S. A New Hybrid Method for China’s Energy Supply Security Forecasting Based on ARIMA and XGBoost. Energies 2018, 11, 1687. https://doi.org/10.3390/en11071687
Li P, Zhang J-S. A New Hybrid Method for China’s Energy Supply Security Forecasting Based on ARIMA and XGBoost. Energies. 2018; 11(7):1687. https://doi.org/10.3390/en11071687
Chicago/Turabian StyleLi, Pin, and Jin-Suo Zhang. 2018. "A New Hybrid Method for China’s Energy Supply Security Forecasting Based on ARIMA and XGBoost" Energies 11, no. 7: 1687. https://doi.org/10.3390/en11071687
APA StyleLi, P., & Zhang, J.-S. (2018). A New Hybrid Method for China’s Energy Supply Security Forecasting Based on ARIMA and XGBoost. Energies, 11(7), 1687. https://doi.org/10.3390/en11071687