Integration of Regression Analysis and Monte Carlo Simulation for Probabilistic Energy Policy Guidelines in Pakistan
Abstract
:1. Introduction
1.1. Problem Statement
1.2. Literature Review
2. Methodology
- Step 1: Data sources
- Step 2: Statistical analysis
- Step 3: Stochastic analysis
- Step 4: Development of Energy policy guidelines
3. Results and Discussion
4. Conclusions and Policy Implications
- •
- Inclusion of data uncertainty in energy policymaking
- •
- Inclusion of success likelihood in the energy-policy formulation
- •
- Development of capacity building programs
- •
- Exploration and optimization of indigenous resources utilization
- •
- Emphasis on renewable energy resources
- •
- Energy losses and theft control
- •
- Pakistan’s population and a coordinated energy policymaking
- •
- Corruption-free energy projects
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Year | Oil † | Gas † | LPG † | Coal † | Hydro Electricity † | Nuclear Electricity † | Imported Electricity † | Renewable Energy †,‡ |
---|---|---|---|---|---|---|---|---|
1972 | 6.163 | 3.232 | 0.042 | 0.809 | 0.643 | 0.009 | - | - |
1973 | 6.152 | 3.706 | 0.043 | 0.795 | 0.695 | 0.026 | - | - |
1974 | 6.475 | 4.226 | 0.046 | 0.808 | 0.740 | 0.039 | - | - |
1975 | 5.645 | 4.557 | 0.046 | 0.863 | 0.803 | 0.052 | - | - |
1976 | 5.750 | 4.564 | 0.043 | 0.703 | 0.835 | 0.052 | - | - |
1977 | 6.064 | 4.943 | 0.046 | 0.800 | 0.900 | 0.036 | - | - |
1978 | 7.009 | 5.178 | 0.056 | 0.834 | 1.045 | 0.020 | - | - |
1979 | 7.240 | 5.733 | 0.059 | 0.858 | 1.210 | 0.009 | - | - |
1980 | 7.713 | 6.727 | 0.066 | 1.046 | 1.288 | 0.000 | - | - |
1981 | 8.045 | 7.765 | 0.066 | 1.051 | 1.369 | 0.013 | - | - |
1982 | 8.773 | 8.374 | 0.071 | 1.167 | 1.506 | 0.016 | - | - |
1983 | 8.587 | 8.990 | 0.072 | 1.073 | 1.675 | 0.020 | - | - |
1984 | 8.813 | 8.979 | 0.077 | 1.246 | 1.854 | 0.028 | - | - |
1985 | 9.430 | 9.372 | 0.082 | 1.492 | 1.949 | 0.030 | - | - |
1986 | 10.429 | 9.846 | 0.086 | 1.468 | 2.165 | 0.037 | - | - |
1987 | 10.196 | 10.426 | 0.096 | 1.507 | 2.426 | 0.043 | - | - |
1988 | 10.590 | 11.326 | 0.111 | 1.833 | 2.825 | 0.022 | - | - |
1989 | 10.506 | 11.797 | 0.115 | 1.691 | 3.198 | 0.003 | - | - |
1990 | 10.892 | 10.561 | 0.093 | 1.830 | 4.040 | 0.070 | - | - |
1991 | 10.849 | 11.030 | 0.110 | 2.005 | 4.369 | 0.092 | - | - |
1992 | 12.077 | 11.662 | 0.096 | 2.326 | 4.451 | 0.100 | - | - |
1993 | 13.146 | 12.407 | 0.107 | 2.115 | 5.039 | 0.139 | - | - |
1994 | 14.493 | 13.137 | 0.089 | 2.301 | 4.639 | 0.119 | - | - |
1995 | 14.993 | 13.264 | 0.145 | 2.082 | 5.456 | 0.122 | - | - |
1996 | 16.485 | 14.085 | 0.184 | 2.338 | 5.539 | 0.115 | - | - |
1997 | 16.598 | 15.068 | 0.157 | 2.142 | 4.979 | 0.083 | - | - |
1998 | 17.479 | 15.116 | 0.164 | 2.045 | 5.266 | 0.089 | - | - |
1999 | 17.838 | 16.139 | 0.181 | 2.147 | 5.358 | 0.068 | - | - |
2000 | 18.741 | 17.488 | 0.208 | 2.047 | 4.604 | 0.095 | - | - |
2001 | 19.268 | 18.402 | 0.144 | 2.010 | 4.104 | 0.477 | - | - |
2002 | 18.388 | 19.253 | 0.172 | 2.200 | 4.521 | 0.547 | - | - |
2003 | 18.016 | 20.590 | 0.182 | 2.520 | 5.335 | 0.415 | 0.0001 | - |
2004 | 15.221 | 25.254 | 0.206 | 3.300 | 6.431 | 0.420 | 0.017 | - |
2005 | 16.330 | 27.953 | 0.252 | 4.228 | 6.127 | 0.667 | 0.026 | - |
2006 | 16.412 | 29.203 | 0.400 | 4.050 | 7.366 | 0.593 | 0.035 | - |
2007 | 18.188 | 29.324 | 0.471 | 4.427 | 7.627 | 0.546 | 0.041 | - |
2008 | 19.206 | 29.875 | 0.419 | 5.784 | 6.852 | 0.735 | 0.048 | - |
2009 | 20.103 | 30.256 | 0.402 | 4.733 | 6.632 | 0.386 | 0.054 | 0.001 |
2010 | 19.806 | 30.809 | 0.396 | 4.622 | 6.706 | 0.691 | 0.060 | 0.002 |
2011 | 20.675 | 30.683 | 0.340 | 4.351 | 7.593 | 0.816 | 0.064 | 0.004 |
2012 | 19.806 | 32.033 | 0.321 | 4.285 | 6.807 | 1.257 | 0.066 | 0.006 |
2013 | 20.969 | 31.144 | 0.310 | 3.863 | 7.127 | 1.087 | 0.090 | 0.047 |
2014 | 21.790 | 30.737 | 0.349 | 4.373 | 7.852 | 0.700 | 0.090 | 0.089 |
2015 | 22.195 | 31.464 | 0.358 | 4.472 | 8.035 | 0.721 | 0.097 | 0.096 |
2016 | 22.599 | 32.191 | 0.366 | 4.572 | 8.219 | 0.743 | 0.105 | 0.122 |
Year | Domestic † | Commercial † | Industrial † | Agriculture † | Transport † | Streetlights † | Other government † | CPI ‡ |
---|---|---|---|---|---|---|---|---|
1990 | 3.428 | 0.455 | 6.547 | 0.708 | 4.931 | 0.020 | 0.586 | - |
1991 | 3.506 | 0.497 | 6.611 | 0.734 | 5.097 | 0.023 | 0.521 | - |
1992 | 3.330 | 0.515 | 7.238 | 0.769 | 5.915 | 0.027 | 0.510 | - |
1993 | 3.598 | 0.562 | 7.559 | 0.758 | 6.421 | 0.026 | 0.560 | - |
1994 | 3.778 | 0.593 | 7.893 | 0.791 | 6.744 | 0.026 | 0.558 | - |
1995 | 4.326 | 0.650 | 7.881 | 0.789 | 6.984 | 0.028 | 0.570 | 10.000 |
1996 | 4.748 | 0.631 | 8.739 | 0.806 | 7.496 | 0.033 | 0.727 | 30.000 |
1997 | 4.824 | 0.664 | 8.025 | 0.857 | 7.539 | 0.034 | 0.721 | 23.000 |
1998 | 5.351 | 0.685 | 8.001 | 0.820 | 7.742 | 0.033 | 0.731 | 10.000 |
1999 | 5.344 | 0.757 | 8.291 | 0.717 | 8.303 | 0.019 | 0.701 | 25.000 |
2000 | 5.709 | 0.780 | 8.663 | 0.675 | 8.785 | 0.021 | 0.672 | 27.000 |
2001 | 5.826 | 0.778 | 8.608 | 0.666 | 8.686 | 0.018 | 0.692 | 22.000 |
2002 | 5.895 | 0.809 | 8.809 | 0.692 | 8.612 | 0.018 | 0.786 | 22.000 |
2003 | 6.092 | 0.852 | 9.318 | 0.695 | 8.771 | 0.021 | 0.584 | 23.000 |
2004 | 6.279 | 0.928 | 11.099 | 0.734 | 9.281 | 0.023 | 0.658 | 26.000 |
2005 | 6.813 | 1.080 | 12.760 | 0.717 | 10.071 | 0.026 | 0.663 | 25.000 |
2006 | 7.055 | 1.248 | 14.654 | 0.733 | 9.494 | 0.030 | 0.762 | 21.000 |
2007 | 7.605 | 1.377 | 15.792 | 0.767 | 9.721 | 0.033 | 0.742 | 21.000 |
2008 | 8.046 | 1.456 | 16.804 | 0.804 | 11.567 | 0.036 | 0.736 | 22.000 |
2009 | 8.092 | 1.460 | 14.846 | 0.789 | 11.372 | 0.037 | 0.786 | 24.000 |
2010 | 8.360 | 1.530 | 15.605 | 0.850 | 11.655 | 0.039 | 0.769 | 25.000 |
2011 | 8.725 | 1.521 | 14.957 | 0.773 | 12.019 | 0.039 | 0.847 | 24.000 |
2012 | 9.361 | 1.585 | 15.034 | 0.720 | 12.562 | 0.041 | 0.763 | 23.000 |
2013 | 10.119 | 1.645 | 14.256 | 0.660 | 12.713 | 0.039 | 0.792 | 25.000 |
2014 | 9.576 | 1.649 | 16.427 | 0.742 | 12.836 | 0.039 | 0.821 | 22.700 |
2015 | 9.854 | 1.704 | 16.881 | 0.741 | 13.155 | 0.040 | 0.832 | 28.000 |
2016 | 10.133 | 1.759 | 17.336 | 0.740 | 13.474 | 0.041 | 0.843 | 29.000 |
Year | Population (Million) | Distribution Losses (%) |
---|---|---|
1960 | 44.912 | - |
1961 | 45.988 | - |
1962 | 47.123 | - |
1963 | 48.313 | - |
1964 | 49.555 | - |
1965 | 50.849 | - |
1966 | 52.195 | - |
1967 | 53.594 | - |
1968 | 55.046 | - |
1969 | 56.546 | - |
1970 | 58.094 | - |
1971 | 59.690 | 26.255 |
1972 | 61.341 | 26.255 |
1973 | 63.062 | 23.732 |
1974 | 64.874 | 23.158 |
1975 | 66.791 | 25.259 |
1976 | 68.818 | 28.023 |
1977 | 70.954 | 28.105 |
1978 | 73.204 | 27.976 |
1979 | 75.576 | 25.455 |
1980 | 78.072 | 29.084 |
1981 | 80.692 | 25.794 |
1982 | 83.428 | 24.864 |
1983 | 86.265 | 25.080 |
1984 | 89.183 | 25.095 |
1985 | 92.165 | 20.289 |
1986 | 95.207 | 20.286 |
1987 | 98.302 | 21.771 |
1988 | 101.421 | 21.674 |
1989 | 104.531 | 20.083 |
1990 | 107.608 | 20.726 |
1991 | 110.634 | 19.851 |
1992 | 113.616 | 22.190 |
1993 | 116.581 | 22.799 |
1994 | 119.565 | 22.764 |
1995 | 122.600 | 22.812 |
1996 | 125.698 | 23.432 |
1997 | 128.846 | 24.611 |
1998 | 132.014 | 30.414 |
1999 | 135.158 | 26.684 |
2000 | 138.250 | 24.267 |
2001 | 141.282 | 26.064 |
2002 | 144.272 | 26.475 |
2003 | 147.252 | 25.202 |
2004 | 150.268 | 24.568 |
2005 | 153.356 | 24.037 |
2006 | 156.524 | 22.311 |
2007 | 159.768 | 19.592 |
2008 | 163.097 | 21.171 |
2009 | 166.521 | 19.880 |
2010 | 170.044 | 16.226 |
2011 | 173.670 | 16.883 |
2012 | 177.392 | 17.032 |
2013 | 181.193 | 17.032 |
2014 | 185.044 | 20.189 |
2015 | 188.925 | 20.044 |
2016 | 181.832 | 19.899 |
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Number | Energy Variable | Definition | Units |
---|---|---|---|
1 | Oil | Oil represents the energy obtained from liquid fossil-based hydrocarbon fuels (carbon and hydrogen compounds). Significant examples are furnace oil, gasoline, and diesel fuels. | MTOE |
2 | Natural gas | Natural gas indicates the energy obtained from gaseous fossil-based fuels. These fuels mainly consist of methane (CH4), and other compounds are propane, ethane, butane, and pentane. | MTOE |
3 | LPG | This factor indicates the energy obtained from LPG. LPG stands for liquified petroleum gas (LPG) and is a mixture of gaseous fuels such as butane and propane. | MTOE |
4 | Coal | It indicates the energy obtained by the burning of coal. Coal is a combustible fossil-based solid fuel. Consisting mainly of carbon and hydrogen, oxygen, sulphur, and nitrogen. | MTOE |
5 | Hydroelectricity | It is the form of energy produced from flowing water such as from dams. | MTOE |
6 | Nuclear | Nuclear energy is the energy obtained from controlled nuclear reactions such as fission. | MTOE |
7 | Imported electricity | It indicates the electricity that Pakistan imports from other countries. | MTOE |
8 | Domestic | This variable indicates energy use for household purposes such as space and water heating, lighting, cooking, washing, drying, air conditioning, space cooling, and other electrical appliances. | MTOE |
9 | Commercial | It represents the energy needed for nonmanufacturing business units such as restaurants, retail stores, hotels, educational institutions, motels, wholesalers, health, and social institutions. | MTOE |
10 | Industrial | It denotes the energy utilized in processes in which raw materials are converted into other valuable products at a large scale. | MTOE |
11 | Agriculture | It denotes the energy used in the cultivation of livestock and plants. | MTOE |
12 | Transport | Transport shows the energy used to move products and people from one location to another through various means such as airlines, railroads, trucking, logistic firms, and shipping. | MTOE |
13 | Infrastructure | It indicates the energy required for the physical structure and facilities that support day-to-day government and private operations in Pakistan, such as roads and buildings. | MTOE |
14 | Government properties | It indicates the energy needed for immovable properties owned and operated by the Government of Pakistan and commonly known as state properties. | MTOE |
15 | Population | This variable indicates the total number of humans living in Pakistan. | Number of people |
16 | Transmission losses | It describes the energy, power, or voltage loss of a transmitted current while passing along a transmission path through an electric circuit. | MTOE |
17 | Corruption Perception Index (CPI) | The corruption perception index (CPI), annually published by Transparency International, ranks countries based on the corruption level of their governments. CPI scores range from 0 to 100, where 0 denotes a high level of corruption in government businesses, while 100 shows a low level of corruption [38]. | Dimensionless |
Variables (MTOE) | Assigned Distribution | Parameters (MTOE) |
---|---|---|
Oil | Normal Distribution | Mean 22.48, Standard Deviation 2.25 |
Gas | Triangular | Minimum 29.63, Likeliest 32.92, Maximum 36.21 |
LPG | Normal Distribution | Mean 0.57, Standard Deviation 0.06 |
Coal | Gamma Distribution | Location 6.65, Scale 0.67, Shape 2 |
Hydroelectricity | Gamma Distribution | Location 8.26, Scale 0.83, Shape 2 |
Nuclear | Normal Distribution | Mean 0.80, Standard Deviation 0.08 |
Imported Electricity | Normal Distribution | Mean 0.11, Standard Deviation 0.01 |
Transmission Losses | BetaPERT Distribution | Minimum 14.69, Likeliest 16.32, Maximum 17.95 |
Renewable Energy | Normal Distribution | Mean 0.13, Standard Deviation 0.01 |
Variables (MTOE) | Assigned Distribution | Parameters (MTOE) |
---|---|---|
Domestic | Normal Distribution | Mean 13.28, Standard Deviation 1.33 |
Commercial | Gamma Distribution | Location 2.87, Scale 0.29, Shape 2 |
Industrial | Triangle Distribution | Minimum value 18.17, Likeliest value 20.19, Maximum value 22.21 |
Agriculture | Normal Distribution | Mean 0.83, Standard Deviation 0.08 |
Transport | BetaPERT Distribution | Minimum 12.35, Likeliest 13.73, Maximum 15.10 |
Infrastructure (Streetlights) | Normal Distribution | Mean 0.06, Standard Deviation 0.01 |
Other government properties | Student’s t distribution | Midpoint 0.85, Scale, 0.08, Degree of Freedom 5 |
Distribution Type | Definition |
---|---|
Normal distribution | It is a function that shows the distribution of random variables as a symmetrical graph, also known as a bell-shaped curve. It is defined using mean and standard deviation. |
Triangular distribution | It is the probability distribution having three points, namely, minimum, maximum, and likeliest values. |
Gamma distribution | It indicates the probability distribution that is right-skewed and consists of location, shape, and scale parameters. |
BetaPERT distribution | This distribution is a smooth version of triangular distribution and is represented using maximum, minimum, and likeliest values. |
Student’s t distribution | It is also known as t distribution and is a probability distribution used to estimate the parameters of a small sample size or when the variance of the population is unknown. With the increase in sample size, it becomes similar to the normal distribution. It is defined using the degree of freedom, midpoint, and scale. |
Variable Category | Time-Dependent Model ✦ | Nature of the Model |
---|---|---|
Population † | 3 × 10−22+0.0272(t) | Exponential |
Oil * | 806.760ln(t)–6116 | Logarithmic |
Gas * | 0.72701(t)–1433.4 | Linear |
LPG * | 3 × 10−51+0.0574(t) | Exponential |
Coal * | 3 × 10−41+0.0472(t) | Exponential |
Hydroelectricity * | 0.18340(t)–361.656 | Linear |
Nuclear * | 0.02130(t)–42.165 | Linear |
Imported electricity * | 0.00743(t)–14.865 | Linear |
Renewable energy * | 0.01924(t)–38.681 | Linear |
Corruption Perception Index (CPI) ‡ | 0.30420(t)–587.179 | Linear |
Transmission distribution losses ** | 1 × 1045t−13.25 | Non-linear Power series |
Variable Category | Time-Dependent Model ✦ | Nature of the Model |
---|---|---|
Domestic * | 4 × 10−41+0.0474(t) | Exponential |
Commercial * | 2 × 10−51+0.0584(t) | Exponential |
Industrial * | 1 × 10−279 t84.82 | Power |
Agriculture * | 6.25291 × 10−0.001(t) | Exponential |
Transport * | 0.31860(t)–628.891 | Linear |
Infrastructure (streetlights) * | 0.00091(t)–1.759 | Linear |
Other government * | 21.76ln(t)–164.730 | Logarithmic |
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Sajid, Z.; Javaid, A.; Khan, M.K.; Sadiq, H.; Hamid, U. Integration of Regression Analysis and Monte Carlo Simulation for Probabilistic Energy Policy Guidelines in Pakistan. Resources 2021, 10, 88. https://doi.org/10.3390/resources10090088
Sajid Z, Javaid A, Khan MK, Sadiq H, Hamid U. Integration of Regression Analysis and Monte Carlo Simulation for Probabilistic Energy Policy Guidelines in Pakistan. Resources. 2021; 10(9):88. https://doi.org/10.3390/resources10090088
Chicago/Turabian StyleSajid, Zaman, Asma Javaid, Muhammad Kashif Khan, Hamad Sadiq, and Usman Hamid. 2021. "Integration of Regression Analysis and Monte Carlo Simulation for Probabilistic Energy Policy Guidelines in Pakistan" Resources 10, no. 9: 88. https://doi.org/10.3390/resources10090088
APA StyleSajid, Z., Javaid, A., Khan, M. K., Sadiq, H., & Hamid, U. (2021). Integration of Regression Analysis and Monte Carlo Simulation for Probabilistic Energy Policy Guidelines in Pakistan. Resources, 10(9), 88. https://doi.org/10.3390/resources10090088