Long-Term Scenario Analysis of Electricity Supply and Demand in Iran: Time Series Analysis, Renewable Electricity Development, Energy Efficiency and Conservation
Abstract
:1. Introduction
2. Iran Energy Structure
3. Theory and Methods
3.1. Trend Continuation
- Classical statistical linear time series, e.g., autoregression (AR), moving average (MA), ARIMA, ES;
- Non-linear time series, e.g., generalized autoregressive conditional heteroskedasticity (GARCH), autoregressive conditional heteroskedasticity (ARCH);
- Time series with supervised machine learning, e.g., Bayesian, decision trees, support vector machines (SVM);
- Time series with deep learning, e.g., long short-term memory (LSTM), RNN, convolutional neural networks (CNN), feed-forward neural networks (FNN).
3.1.1. ARIMA
3.1.2. Exponential Smoothing
3.2. Renewable Electricity Development
3.2.1. Photovoltaics
3.2.2. Solar Thermal
3.2.3. Wind
3.2.4. Geothermal
3.2.5. Tide
3.2.6. Bioenergy
3.3. Energy Efficiency and Conservation
3.3.1. Economic Analysis
3.3.2. Environmental Analysis
4. Results and Discussion
4.1. Trend Continuation
4.2. Renewable Electricity Development
4.3. Energy Efficiency and Conservation
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Nomenclature
Symbols | |
b | Trend factor |
c | Seasonal index |
C | Cost |
C’ | Cost per unit of energy/power |
F | Saved fuel |
i | Interest rate |
k | Constant |
kc | Capacity factor |
kh | Equals 8760 h a year |
kL | Loss factor |
L | Length of seasonal change cycle |
L(V) | Maximum value of the likelihood function of the model |
m | Number of time steps for a single seasonal period |
N | Number of values |
P | Power |
s | Smoothed observation |
S | Income |
S’ | Price per unit of energy |
t | Time |
V | Vector of model parameters |
y | Value of observation/forecast |
Greek letters | |
α | Data smoothing factor |
β | Trend smoothing factor |
γ | Seasonal change smoothing factor |
ε | White noise error terms |
η | Efficiency |
θ | Moving average model parameters |
Φ | Autoregressive model parameters |
Superscripts | |
C | Cumulative |
CC | Combined cycle |
G | Government |
GT | Gas turbine |
P | Private sector |
Subscripts | |
a | Actual |
b | Buying/buyer |
d | Order of the moving average term |
D | Seasonal difference order |
e | Estimated parameters |
inv | Investment |
n | Nominal |
o | Observation |
p | Order of the autoregressive term |
P | Seasonal autoregressive order |
q | Order of the differencing required to make the time series stationary |
Q | Seasonal moving average order |
s | Selling/seller |
t | Time |
te | Test |
Acronyms | |
ACF | Autocorrelation function |
AIC | Akaike information criterion |
AR | Autoregression |
ARCH | Autoregressive conditional heteroskedasticity |
ARIMA | Autoregressive integrated moving average |
ARIMAX | Autoregressive integrated moving average with exogenous variables |
ARMA | Autoregressive moving average |
BAU | Business as usual |
BIC | Bayesian information criterion |
CNN | Convolutional neural network |
CO2 | Carbon dioxide |
COP | Coefficient of performance |
EMD | Empirical mode decomposition |
ES | Exponential smoothing |
FNN | Feed-forward neural network |
GARCH | Generalized autoregressive conditional heteroskedasticity |
GRU | Gated recurrent unit |
IREMA | Iran electricity market |
LSTM | Long short-term memory |
MA | Moving average |
MAPE | Mean absolute percentage error |
MSE | Mean squared error |
PACF | Partial autocorrelation function |
PV | Photovoltaic |
RMSE | Root mean squared error |
RNN | Recurrent neural networks |
SARIMA | Seasonal autoregressive integrated moving average |
SARIMAX | Seasonal autoregressive integrated moving average with exogenous variables |
SATBA | Renewable Energy and Energy Efficiency Organization |
SES | Simple exponential smoothing |
SVM | Support vector machine |
Units | |
$ | Dollar |
€ | Euro |
H | Hour |
IRR | Iranian rial |
M | Meter |
Mt | Million ton |
S | Second |
T | Ton |
W | Watt |
Wp | Watt-peak |
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Scenario | Objective | Method |
---|---|---|
Trend continuation | The current trend is followed. | Time series algorithms |
Renewable electricity development | Future electricity generation developments are exclusively renewable. | Historical data of developed countries |
Energy efficiency and conversion | All active gas turbine power plants are integrated into combined cycles. | Economic and environmental analysis |
Exponential Smoothing | Level | Seasonality | Trend |
---|---|---|---|
Simple exponential smoothing | ✓ | ✓ | - |
Double exponential smoothing | ✓ | - | ✓ |
Triple exponential smoothing (Holt) | ✓ | ✓ | ✓ |
Spain | Germany | China | Iran | |
---|---|---|---|---|
Specific PV power output (kWh/kWp/day) | 3.08–4.91 | 2.32–3.24 | 2.21–5.82 | 3.31–5.48 |
Specific PV power output for the 10% sunniest area (kWh/m2/day) | 4.66 | 3.17 | 4.98 | 5.28 |
Specific PV power output for the 25% sunniest area (kWh/m2/day) | 4.59 | 3.03 | 4.62 | 5.11 |
PV electricity generation (GWh, 2020) | 15,552 | 50,600 | 269,718 | 435 |
Annual growth of PV electricity generation per capita (kWh/capita/year, 2000–2020) | 16.40 | 30.39 | 9.56 | - * |
Spain | China | |
---|---|---|
Solar thermal electricity generation (GWh, 2020) | 4992 | 1317 |
Annual growth of solar thermal electricity generation per capita (kWh/capita/year, 2000–2020) | 5.27 | 0.05 |
Spain | Germany | China | Sweden | Iran | |
---|---|---|---|---|---|
Mean power density for the 10% windiest area (W/m2) | 716.56 | 594.96 | 668.89 | 742.92 | 743.75 |
Mean power density for the 20% windiest area (W/m2) | 582.80 | 543.62 | 556.26 | 591.82 | 602.63 |
Wind electricity generation (GWh, 2020) | 56,273 | 130,965 | 471,175 | 27,526 | 555 |
Annual growth of wind electricity generation per capita (kWh/capita/year, 2000–2020) | 53.58 | 73.05 | 16.67 | 130.40 |
Germany | China | |
---|---|---|
Geothermal electricity generation (GWh, 2020) | 217 | 125 |
Annual growth of geothermal electricity generation per capita (kWh/capita/year, 2000–2020) | 0.13 | 0.00 |
China | UK | Iran | |
---|---|---|---|
Length of shorelines (km) | 14,500 | 12,429 | 3200 |
Tidal electricity generation (GWh, 2020) | 12 | 11 | - |
Annual growth of tidal electricity generation per capita (kWh/capita/year, 2000–2020) | 0.00 | 0.01 | - |
Spain | Germany | China | Sweden | Iran | |
---|---|---|---|---|---|
Electricity generation by type of bioenergy (GWh, 2020) | |||||
Liquid biofuels | 12 | 383 | - | 9 | - |
Municipal waste | 686 | 5811 | - | 1767 | - |
Biogas | 847 | 33,041 | - | 12 | 22 |
Primary solid biofuels | 4099 | 11,327 | 113,961 | 7649 | - |
Industrial waste | 344 | 772 | 10,301 | 39 | - |
Annual growth of electricity generation per capita by type of bioenergy (kWh/capita/year, 2000–2020) | |||||
Liquid biofuels | 0.01 | 0.23 | - | 0.04 | - |
Municipal waste | 0.31 | 2.37 | - | 8.00 | - |
Biogas | 0.50 | 18.84 | - | −0.12 | - |
Primary solid biofuels | 3.29 | 6.32 | 3.94 | 14.57 | - |
Industrial waste | 0.03 | −1.94 | 0.37 | −0.38 | - |
System | Owner | Actual Capacity (MW) | Average Efficiency (%) |
---|---|---|---|
Gas turbine | Government | 5291 | 28.9 |
Private sector | 11,544 | 33.5 | |
Combined cycle | Government | 4397 | 44.7 |
Private sector | 17,670 | 45.2 |
Model | MSE (Million) | MAPE (%) |
---|---|---|
ARIMA(1,2,2) | 0.1071 | 0.23 |
SES | 0.9321 | 1.26 |
Holt | 0.1560 | 0.47 |
Model | MSE (TWh) | MAPE (%) |
---|---|---|
ARIMA(0,1,3) | 38.16 | 1.98 |
SES | 170.00 | 4.43 |
Holt | 22.35 | 1.44 |
Model | MSE (Mt) | MAPE (%) |
---|---|---|
ARIMA(3,1,4) | 32.77 | 3.24 |
SES | 63.30 | 4.12 |
Holt | 42.54 | 3.98 |
Target Amount in 2040 (GWh) | Target Share in 2040 | Annual Target (GWh/Year) | Capital Cost (Million $) | |
---|---|---|---|---|
PV | 64,724 | 11.06% | 3236 | 25,686 |
Solar thermal | 11,131 | 1.90% | 557 | 5718 |
Wind | 113,867 | 19.46% | 5693 | 14,229 |
Geothermal | 0.24 | 0.00% | 0.01 | 0.055 |
Tide | 0.31 | 0.00% | 0.02 | - * |
Industrial waste | 54 | 0.01% | 3 | - |
Primary solid biofuels | 30,778 | 5.26% | 1539 | - |
Biogas | 39,818 | 6.81% | 1991 | 9540 |
Municipal waste | 660 | 0.11% | 33 | 112 |
Liquid biofuels | 27 | 0.00% | 1 | - |
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Asadi, M.; Larki, I.; Forootan, M.M.; Ahmadi, R.; Farajollahi, M. Long-Term Scenario Analysis of Electricity Supply and Demand in Iran: Time Series Analysis, Renewable Electricity Development, Energy Efficiency and Conservation. Sustainability 2023, 15, 4618. https://doi.org/10.3390/su15054618
Asadi M, Larki I, Forootan MM, Ahmadi R, Farajollahi M. Long-Term Scenario Analysis of Electricity Supply and Demand in Iran: Time Series Analysis, Renewable Electricity Development, Energy Efficiency and Conservation. Sustainability. 2023; 15(5):4618. https://doi.org/10.3390/su15054618
Chicago/Turabian StyleAsadi, Mahdi, Iman Larki, Mohammad Mahdi Forootan, Rouhollah Ahmadi, and Meisam Farajollahi. 2023. "Long-Term Scenario Analysis of Electricity Supply and Demand in Iran: Time Series Analysis, Renewable Electricity Development, Energy Efficiency and Conservation" Sustainability 15, no. 5: 4618. https://doi.org/10.3390/su15054618
APA StyleAsadi, M., Larki, I., Forootan, M. M., Ahmadi, R., & Farajollahi, M. (2023). Long-Term Scenario Analysis of Electricity Supply and Demand in Iran: Time Series Analysis, Renewable Electricity Development, Energy Efficiency and Conservation. Sustainability, 15(5), 4618. https://doi.org/10.3390/su15054618