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[9] Ambhore, N., Kamble, D. Experimental investigation of tool wear and induced vibration in turning high hardness AISI52100 steel using cutting parameters and tool acceleration. Facta Universitatis, Series: Mechanical Engineering, 18(4):623-637, 2020. [https://doi.org/10.22190/FUME200116018A https://doi.org/10.22190/FUME200116018A] | [9] Ambhore, N., Kamble, D. Experimental investigation of tool wear and induced vibration in turning high hardness AISI52100 steel using cutting parameters and tool acceleration. Facta Universitatis, Series: Mechanical Engineering, 18(4):623-637, 2020. [https://doi.org/10.22190/FUME200116018A https://doi.org/10.22190/FUME200116018A] | ||
− | [10] Krichene, N. World crude oil and natural gas: a demand and supply model. 24(6):557-576, 2002. [https://doi.org/10.1016/S0140-9883(02)00061-0 https://doi.org/10.1016/S0140-9883(02)00061-0] | + | [10] Krichene, N. World crude oil and natural gas: a demand and supply model. Energy Economics, 24(6):557-576, 2002. [https://doi.org/10.1016/S0140-9883(02)00061-0 https://doi.org/10.1016/S0140-9883(02)00061-0] |
[11] Brown, S.P., Yucel, M.K. What drives natural gas prices? The Energy Journal, 29(2):45-60, 2008. [https://doi.org/10.5547/ISSN0195-6574-EJ-Vol29-No2-3 https://doi.org/10.5547/ISSN0195-6574-EJ-Vol29-No2-3] | [11] Brown, S.P., Yucel, M.K. What drives natural gas prices? The Energy Journal, 29(2):45-60, 2008. [https://doi.org/10.5547/ISSN0195-6574-EJ-Vol29-No2-3 https://doi.org/10.5547/ISSN0195-6574-EJ-Vol29-No2-3] |
Abstract: The paper examines the primary drivers and factors influencing the volatility of natural gas prices in the world from January 2007 to July 2020. In addition to the narrow dependence and spillover of crude oil and natural gas prices, the impact of demand shocks as well as structural shocks when it comes to supply or global supply in the natural gas market and the impact of renewable energy production and coal production at the price of natural gas has been shown, with special reference to the outbreak of the COVID-19 pandemic. For that purpose, the method of multiple linear regression was used. The results show that the sensitivity of natural gas prices significantly depends on the regime and type of the shock in the natural gas market, and that the total production of energy from renewable sources, production of coal and natural gas and the price of crude oil have a significant impact on the price of gas.
Keywords: Energy Prices; Natural Gas; Multiple Linear Regressions; Renewable Energy; Price Volatility; Energy Consumption; COVID-19
Natural gas is a mixture of hydrocarbons and methane and due to the fact that it mixes easily with air and has a high combustion rate without smoke, soot and solid residues, it has a significant environmental advantage over conventional fuels such as oil and coal. In the same way that oil replaced coal in industrial production at the beginning of the twentieth century, gas suppressed oil at the beginning of the twenty-first century and became an increasingly common fuel used to start the industry. Due to the fact that natural gas is a much cleaner energy source, this tendency in many developed countries is regulated by law, so some industrial sectors are forced to start their production with the help of natural gas. Given the world’s growing concern about the effects of carbon dioxide emissions from fossil fuels, and the impact on climate change and low carbon content in natural gas compared to other fossil fuels, natural gas has become a major energy source in many economies across the globe. Recent research shows that the consumption of natural gas plays an important role in facilitating economic growth in both short and long term [1] and that disruptions in the supply of natural gas entails huge economic costs [2,3]. Fluctuations in energy prices are also becoming increasingly important in influencing risk reduction and strategic investments [4,5].
The largest recorded shock demand in the history of global natural gas markets happened in the first half of 2020. Faced with historically mild temperatures during the first months of the year, the COVID-19 pandemic hit the already declining demand for gas. Gas consumption is expected to fall by 4% in 2020, due to successive lower demand for warm winter heating, the implementation of lockdown measures in almost all countries and territories, to slow the spread of the virus and lower activity generated by the macroeconomic crisis caused by the pandemic. Faced with this unprecedented shock, natural gas markets are undergoing strong supply and demand adjustments, resulting in historically low spot prices and high volatility. Demand for natural gas is expected to gradually recover in 2021, but the COVID-19 crisis will have a longer-term impact on natural gas markets, as major medium-term drivers are subject to great uncertainty [6,7].
With the above mentioned, the contribution of our work to literature is that by using multiple linear regression (MLR) [8,9] we prove that selected independent variables are important and necessary in determining the dependent variable and that there is a significant relationship and interaction between selected factors and natural gas prices. We also prove that fluctuations in natural gas prices are correlated with certain global economic events. We show how the two most significant depressions in recent history - the global economic crisis and COVID-19, have affected the price of natural gas, which can be useful in further research, forecasting prices and consumption in the energy markets, especially when it comes to increased risk of potentially new infectious diseases in the global market in the near future.
The rest of the work is organized as follows: Section 1 – Introduction; Section 2 - Data on energy consumption and natural gas reserves; Section 3 - Movement of natural gas prices in the selected period; Section 4 - Literature overview; Section 5 - Selected data; Section 6 - Methodology used in the research; Section 7 - Results with discussion, and Section 8 - Conclusions. Finally, in section 8, we provide a list of literature that was used during the preparation of this paper.
The development of society is significantly conditioned by the increase in energy consumption. Primary energy consumption is constantly growing. During the period from 1870 until 1970 year, energy consumption in the world increased 32 times with an average growth rate of 3.5%. Only in the course of the last twenty years (1950-1970) of the period in question, the energy consumption was higher than the total consumption from the year 1850 until the year of 1950. In the period from 1973 to 2019, energy consumption more than doubled (Table 1). The total energy consumption of the world in 2019, was 14,858 Mtoe. Primary energy consumption is not uniform in the world, nor proportional to the population size of various regions. Developed countries consume over 50% of the world's total energy today, and at the same time, their citizens amount to approximately 20% of the total population.
Table 1. The world’s energy consumption by fuel type
No. | Type of fuel | 1960 | 1973 | 2019 |
3.345 Mtoe | 6.036 Mtoe | 14.858 Mtoe | ||
Amount % | Amount % | Amount % | ||
1. | Oil | 29 | 45 | 31.7 |
2. | Coal | 41 | 25 | 28.1 |
3. | Natural gas | 12 | 16 | 21.6 |
4. | Renew. Eng. Source | 14 | 11 | 9.7 |
5. | Hydro energy | 4 | 2 | 2.5 |
6. | Nuclear energy | 0 | 1 | 4.9 |
7. | Rest | 0 | 0 | 1.5 |
Source: Several different annual IEA reports (annual editions of Key World Energy Statistics) |
The most significant change, in percentage, in the structure of the total energy consumption, by type of fuel in the period 1960-2019 has natural gas as a fuel, which has increased its share from 12% to 21.6%. Oil as a fuel recorded a decline in its share in the structure of total energy consumption of the world from 45% in 1973 to 31.7% in 2019. Gas as an energy source in the period of four and a half decades (1973-2019) increased from 16% to 21.6%. This increase in the gas consumption shows its increasingly pronounced and significant role in the energy market today. Based on the current trend of the past sixty years, but also all available data and indicators, the prevailing expert opinion is that its role and position in the coming decades will be even more pronounced and dominant in the energy market (EIA - Energy Information Administration).
Figure 1 shows 15 countries that are the largest consumers of natural gas in the world.
Figure 1. The largest consumers of natural gas in 2019 (in billion m3), Source: EIA Beta (https://www.eia.gov/beta/international/)
When it comes to the world’s reserves and resources, two terms are not interchangeable, first meaning the amount that can be processed, and second the entire amount of material that exists in a country. Estimates of the world’s reserves of energy of fossil origin are different. There are over 700 oil and gas basins in the world, and about 400 have been explored so far, of which 160 are being exploited. The reserves of these energy sources are extremely unevenly distributed within the basins as well. Natural gas occupies a significant place of the world's energy resources. Observed from the aspect of current possibility of exploitation and production of natural gas, at the existing level of technical-technological development and economic profitability, all gas deposits in nature can be grouped into conventional and unconventional. Conventional gas deposits are those deposits from which, at present moment, gas can be exploited in an economically viable manner with a constant supply of fuel.
Figure 2 shows the 15 largest natural gas producers in the world in 2019.
Figure 2. The largest producers of natural gas in 2019 (in billion m3), Source: EIA Beta (https://www.eia.gov/beta/international/)
About 80% of the world's conventional gas reserves are located in only 10 basins. Estimates of total gas reserves in the world tend to increase steadily. In 1995, total conventional reserves were estimated at 142.36 x 1012 m3. Five years later, total reserves were approximated at 158.46 x 1012 m3. In 2005, they were estimated to be 175.66 x 1012 m3, while it was believed that the total gas reserves were 192.46 x 1012 m3 in 2010 worldwide. While it was roughly calculated that the total conventional gas reserves are two hundred and two trillion m3 back in 2019.
The total estimated gas reserves of the first ten countries of the world (with highest reserves) in 2019 amounted to 157,658 x 1012 m3, which represents 78.3% of the total world reserves of this energy source that were estimated. The estimated total reserves, in all other countries of the world together, amount to 44.908 billion m3 (21.7% of the total gas reserves in the world). Of the total world’s gas reserves, in percentage terms, Russia has the largest reserves with 25.5%; followed by Iran 16.9%; then Qatar 12.3%; after which comes Turkmenistan 5.0%; succeeded by USA 4.4%; and last Saudi Arabia with 4.3%. Figure 3 shows the 15 countries in the world with the largest estimated natural gas reserves in 2019.
Figure 3. Countries with the largest estimated natural gas reserves in 2019 (in trillions of m3), Source: EIA Beta (https://www.eia.gov/beta/international/)
Unconventional natural gas deposits are those deposits from which it is currently impossible to produce a constant supply, or in economically viable quantities by classical technologies, without using hydraulic fracturing stimulation of the reservoir, horizontal drilling, multilateral drilling or other techniques. Unconventional deposits do not currently enable significant technically-technologically economically viable exploitation, but they represent a real potential for the future. They occur regardless of whether they are shallow or deep deposits, high or low gas pressures in the well, high or low fluid temperatures; different forms of bearings; homogeneous and naturally fractured; single-layer or multi-layer bearings. Currently, there is very little production from these energy sources due to technical and economic reasons.
It is impossible to talk about a single price of natural gas, taking into account the division of markets in which this energy source is sold. Unlike crude oil, which is traded on stock exchanges and whose prices are fairly uniform worldwide, natural gas prices vary by the region. The difference in the price of natural gas is due to different costs of production and transportation, as well as different degrees of liberalization of national natural gas markets. The price of natural gas can be discussed at different levels of the supply chain. The final price of gas at the point of consumption is the sum of the price of production, the price of transportation and the price of local distribution. The price also varies depending on the final consumer, so the industrial sector will usually have a lower price for gas than households do. Thus, in 2007, the average price of natural gas at the level of the European Union was 36% higher for the household sector compared to the industrial sector. Another unavoidable factor that contributes to different levels of natural gas prices are taxes that vary from country to country.
The price of natural gas is experiencing a constant escalation in the market, especially during 2009 as a consequence of the global financial crisis of 2008, when the price of natural gas in September was $ 2.99 per million Btu. This was followed by a market recovery and a relative price stability during 2010 and subsequent years (Henry Hub, Natural Gas Spot Price).
However, natural gas prices fell sharply since the beginning of 2020 due to weak demand and abundant supply. European natural gas prices fell to a decade-long low and have fallen by almost 40% since early 2020. U.S. natural gas prices have fallen slightly, in part because they had already been low. Price differences between regional benchmarks for natural gas continued to decline, mostly driven by increasing availability of liquefied natural gas. However, the fall in prices of natural gas and coal is smaller than the price of crude oil, which has fallen by about 65% since January 2020. Natural gas and coal are primarily used for electricity generation and industrial purposes, not for transportation. As such, lockdowns and travel restrictions had less of an impact on demand for these products than for crude oil.
The onset of the COVID-19 pandemic created an unprecedented shock to the global energy system, and gas consumption around the world was significantly affected. Demand for natural gas has fallen in the electricity sector due to a lower electricity usage, and in the industrial and commercial sectors due to the shutdown of factories and businesses. The demand for gas among the population did not decrease while people stayed at home. These impacts varied by region. In Europe, gas demand fell by 7% year-on-year during the first five months of 2020. In the first quarter, the decline was driven by mild winters and higher production from renewable sources. However, lockdown measures began to affect gas demand from March on, where May consumption was already 11% lower than in March. Natural gas and coal have seen significant reductions in demand, as lockdown measures have reduced industrial activity and electricity consumption, while extremely warm winters have also reduced demand in early 2020. The International Energy Agency estimates that lockdown measures have reduced electricity demand to at least 15 % in several major economies, including France, Italy, Spain and the United Kingdom. In the United States, the U.S. Energy Information Administration expects U.S. demand for electricity to fall by about 5 percent, and a moderate decline in housing use will offset a greater decline in commercial and industrial use - sectors affected by lockdowns.
Natural gas prices are expected to recover from the current lows, but will still be about 25% lower than in 2019. Demand for natural gas is expected to gradually recover from current low levels after lifting the lockdown, but will remain below 2019 levels. Demand for coal is likely to remain weaker, as a part of the ongoing transition from coal to natural gas in global electricity generation. (www.worldbank.org: https://blogs.worldbank.org/opendata/will-natural-gas-and-coal-prices-recover-coronavirus-covid-19-slump).
Global gas demand could fall by 4% annually in 2020. This would be the largest drop in gas demand ever recorded since the development of the gas industry in the second half of the 20th century. By comparison, gas demand fell by 2% in 2009 due to the global financial crisis. About 75% of demand loss is likely to occur in developed gas markets across Europe, North America, the Commonwealth of Independent States (CIS), and Asia due to lower electricity demand, declining industrial activity, and lower space heating needs in the commercial sector [7].
Production and consumption of natural gas from January 2007 - September 2020 is given in Figure 4, production of coal and energy from renewable sources from January 2007 - September 2020 in Figure 5, while prices of crude oil and natural gas from January 2007 - September 2020 in Figure 6.
Figure 4. Fluctuation of production and consumption of natural gas from January 2007 - September 2020 (general trends). Source: U.S. Energy Information Administration - Monthly Energy Review
Figure 5. Fluctuation of production of coal and energy from renewable sources from January 2007 - September 2020 (general trends). Source: U.S. Energy Information Administration - Monthly Energy Review
Figure 6. Fluctuation of prices of crude oil and natural gas from January 2007 - September 2020 (general trends), Source: FRED Graph Observations, and Henry Hub Natural Gas Spot Price, respectively
Much of the literature on the natural gas market is devoted to examining the relationship between natural gas prices and the crude oil market, suggesting that oil price fluctuations are important determinants of natural gas prices [10-23]. Only a few studies examined the role of supply and demand factors in determining prices in the U.S. natural gas market. Some recent studies show that, unlike globally defined crude oil markets, natural gas markets are regionally segmented, suggesting that natural gas prices are formed by regional supply-demand relationships [24-27]. Following the recent decoupling of the relationship between the crude oil and natural gas markets [17], it is crucial to understand how natural gas prices respond to supply and demand in times of natural gas market shocks, and to identify the relative contribution factors of each. Accordingly, authors Nick and Thoenes [28] use a structural VAR model to examine price volatility in the German natural gas market. They conclude that supply shocks have a significant impact on the German natural gas market, and that temperature, storage and supply shocks lead to relatively short-term effects, while oil and coal price shocks result in more lasting effects on gas prices.
The relationship between the prices of natural gas and coal was also investigated by Everts et al. [29]. The study used a basic market price replication model with an analysis of the impact of changes on the individual price drivers such as coal prices or subsidies for renewable energy production. The study showed the fall in electricity prices in Germany in the period 2008-2014 can be attributed to market effects such as a reduction in coal use and gas prices as well as a reduction in electricity demand (50%). Only approximately 30% of price reductions could be directly related to subsidies for energy from renewable sources such as wind and solar energy. Authors Mosquera-López and Nursimulu [30] came to qualitatively similar conclusions. They found that in the short and medium term, the main drivers of prices differ and vary in time. In the case of the spot market, determinants of prices were renewable sources and demand for electricity, while in the future markets the main drivers of natural gas prices were the supply and price of coal.
Mu [31] identifies a demand for natural gas in relation to weather conditions as an important factor influencing the movement of gas prices. Hulshof et al. [32] conclude that natural gas prices are mainly determined by the weather conditions and availability of stored quantities, while supply has no significant effect. The availability of natural gas in storage and the outside temperature negatively affected the price of natural gas. They also concluded that the price of natural gas was related to the production of electricity from wind.
The outbreak of the COVID-19 pandemic has shaken global financial markets, commodity markets, economic activities, employment and GDP, in almost all countries of the world. Only a few studies have analyzed the effect of this global pandemic on natural gas prices [33-35]. For this reason, there is a need to study the impact of this phenomenon on the volatility of natural gas prices.
To identify the dependence of natural gas prices on different shocks in the natural gas market, monthly time intervals were used during the period from January 2007 to September 2020. This period was used to cover two major shocks in the natural gas market: the 2008 global economic crisis and the COVID-19 virus pandemic. Monthly data have sufficient frequency to analyze effects of price dependence and market spillovers over time [36]. As a source of data for total production and total consumption of natural gas in billions of cubic feet, a database published by the EIA (U.S Energy Information Administration) was used.
The price of crude oil (in dollars per barrel) is from the FRED (Federal Reserve Economic Data), and for the actual price of natural gas (Dollars per million Btu) the data published by Henry Hub Natural Gas Spot Price was used. Data on coal production (in thousands of tons) as well as data on energy production from renewable energy sources (RES) in trillions of Btu were taken from the EIA.
We conducted an analysis using the Multiple Linear Regression model. Using a mathematical expression of this model [37] follows, Eq. (1):
|
(1) |
where Y is the dependent variable, β0 – regression constant, x1, x2 … xk – independent variables, ε - standard error i.e. residues, β - unknown parameter to be evaluated (regression parameter).
Values of the regression parameters with each independent variable show how much the dependent variable changes on average when the observed independent variable increases by one of its units, and all other independent variables remain unchanged.
In this model, all assumptions apply as in the simple regression model with two additional assumptions, so that the parameter estimates have their desired properties:
Sample estimates of unknown parameters are obtained by applying the method of least squares. In the case of models with two independent variables, the following function needs to be minimized, Eq. (2):
|
(2) |
Minimization of the function F is achieved by equalizing its partial derivatives of the first order by parameters, with zero, Eq. (3):
|
(3) |
By arranging these equations, a system of normal equations is obtained, Eq. (4) and Eq. (5):
|
(4) |
|
(5) |
whose solution yields sample grades b0, b1,…,bk, of unknown parameters β0,…,βk.
The equations of the observed system can be presented in matrix notation, Eq. (6):
|
(6) |
Wherein X ' transposed matrix of matrix X, follows, Eq. (7abc):
(7a)
(7b)
(7c)
By solving the matrix equation, a solution for the evaluation vector is obtained , Eq. (8):
|
(8) |
To test the significance of the estimated regression parameters, it is necessary to know their distributions. In case the model assumptions are met, these parameters have the following distribution, Eq. (9):
|
(9) |
Wherein β vector of regression population parameters. In that case, testing the significance of the mentioned parameters can be performed using the following distribution, Eq. (10):
|
(10) |
This random variable, in the case of the correct hypothesis H0: βj, has a T distribution with n – k – 1 degrees of freedom, where the k is number of independent variables, аnd aii is i-th diagonal element of the matrix (X’X)-1.
The basic assumption in the formation of a multilinear regression model is the normal distribution of residual variable models. Table 2. shows the minimum and the maximum values of all variables and their standard deviations (Standard Deviation) between the minimum and the maximum values in the observed period.
Table 2. Original variables with parameters from descriptive statistics.
Variable | Minimum | Maximum | Mean | Std. deviation |
Natural Gas Price | 1.63 | 12.69 | 3.95 | 1.96 |
Crude Oil Price | 16.55 | 133.88 | 71.73 | 23.73 |
Natural Gas Production | 1878.00 | 3.620.71 | 2.603,39 | 426.78 |
Natural Gas Consumption | 1460.04 | 3.417.20 | 2192.16 | 450.96 |
Renew. Eng. Source Prod. | 483.32 | 1063.77 | 789.28 | 142.78 |
Coal Production | 36934.07 | 104389.50 | 77.800.98 | 15804.46 |
We will use software to build regression models SPSS and XLSTAT.
In order to assess the quality of the acquired regression models, i.e. to assess the reliability and the impartiality, we need to perform several econometric tests. The first test is to examine the absence of multicollinearity. This test uses two determinants: Variance Inflation Factor (VIF) and Tolerance Factor (TOL). If the tolerance value is less than 0.2 or 0.1 and at the same time the VIF value is 10 or more, then multicollinearity is problematic. The problem of multicollinearity does not exist when the values of VIF are <5 and 10, respectively, while the values of TOL are <0.2 and 0.1, respectively. Variables whose VIF values are greater than 10 and TOL> 0.4 indicate a multicollinearity problem and should not be in the model. The second test refers to the normal distribution of variables in the model, which will be tested using Shapiro-Wilk and values of two coefficients: asymmetry (skewness) and flatness (kurtosis) for which acceptable values of variables are approximately ± 1. The third assumption of the standard model refers to the control of the random error of homoskedasticity or heteroskedasticity. It is necessary that random errors show the same level of distribution around their mean value. When random variances of errors differ significantly from each other, it is a case of heteroskedasticity. This testing will be performed by Breusch-Pagan (based on testing the dependence of residual variation on the height of all regressors) and White's test (based on comparing the variance of estimators obtained by the method of least squares under conditions of homoskedasticity and heteroskedasticity). Autocorrelation of residues is a common occurrence in the case of economic time series, which is the fourth test or assumption of the standard model. We will apply the Durbin-Watson test to detect autocorrelation. Values of this test can range from 0 to 4. Values greater than 2 indicate negative, while values less than 2 indicate positive autocorrelation.
Results of the Pearson correlation coefficient show a relatively strong statistical relationship between the price of natural gas and the price of crude oil, natural gas production, renewable energy production and coal production, except for gas consumption where the natural gas price relationship is weak. The highest level of positive correlation with the dependent variable is achieved by coal production (0.654), followed by the price of crude oil (0.527), while the gas production (-0.629) and energy production from renewable sources (-0.663) variables are highly correlated, but with the opposite sign. The correlation matrix is given in Table 3.
Table 3. Pearson correlation matrix.
Variable | (1) | (2) | (3) | (4) | (5) | (6) |
(1) | 1.000 | 0.527 | -0.629 | -0.264 | -0.663 | 0.654 |
(2) | 0.527 | 1.000 | -0.490 | -0.284 | -0.404 | 0.635 |
(3) | -0.629 | -0.490 | 1.000 | 0.425 | 0.865 | -0.848 |
(4) | -0.264 | -0.284 | 0.425 | 1.000 | 0.406 | -0.447 |
(5) | -0.663 | -0.404 | 0.865 | 0.406 | 1.000 | -0.843 |
(6) | 0.654 | 0.635 | -0.848 | -0.447 | -0.843 | 1.000 |
(1) Natural Gas Price, (2) Crude Oil Price, (3) Natural Gas Production, (4) Natural Gas Consumption, (5) Renewable Energy Source Production, (6) Coal Production |
Table 4. shows the Skewness and Kurtosis coefficients. Results for all variables are within the acceptable value of ± 1. The value of the Shapiro -Wilk test is also within the acceptable limit values, so we can conclude that a normal distribution of variables in the model has been achieved.
Table 4. Checking the normality of the distribution of dependent variables in the model.
Variables | Skewness | Kurtosis | ||
Statistic | Std. Error | Statistic | Std. Error | |
Crude Oil Price | 0.208 | 0.190 | -0.739 | 0.377 |
Natural Gas Production | 0.655 | 0.190 | -0.394 | 0.377 |
Natural Gas Consumption | 0.636 | 0.190 | -0.392 | 0.377 |
Ren. Eng. Source Prod. | -0.128 | 0.190 | -0.781 | 0.377 |
Coal Production | -0.515 | 0.190 | -0.694 | 0.377 |
Shapiro-Wilk: 0,961 |
Results of the regression model are given in Table 5. The value of the multiple determination coefficient (R Square) is relatively high and states that the model explains 52.3% of the dependent variable. The value of the standard error of the estimate (Std. Error of the Estimate) indicates that the set model is accurate, while the Durbin-Watson test indicates a positive autocorrelation (the result is less than 2), which is a good sign for our regression model.
Table 5. Multiple correlation, determination and autocorrelation coefficients.
Model Summaryb | ||||||
R | R Square | Adjusted R Square | Std. error of the Estimate | Change Statistics | Durbin-Watson | |
R Square Change | F Change | |||||
0.723a | 0.523 | 0.507 | 1.37743 | 0.523 | 34.586 | 0.238 |
a. Predictors: (Constant), Coal Production, Natural Gas Consumption, Oil Price, R.E.S. Production, Natural Gas Production
b. Dependent Variable: Natural Gas Price |
The ANOVA method was used to test the null hypothesis on the coefficient of multiple determinations. We have come to results that indicate that we can reject the null hypothesis i.e., it makes sense to use this model to explain the dependent variable (Table 6).
Table 6. Estimation of significance of partial regression coefficients.
Model | Sum of Squares | Df | Mean Square | F | Sig. |
Regression | 328.105 | 5 | 65.621 | 34.586 | 0.000 |
Residual | 299.776 | 159 | 1.897 | ||
Total | 627.881 | 164 |
The significance of partial regression coefficients was determined by performing a T-test. From Table 7. it is possible to conclude on the basis of coefficients in the column Sig. to make a unique contribution to the model, i.e. that the statistically significant variables “Crude Oil price” and “RES Production” (the same conclusion can be reached on basis of 95% confidence interval, which only in the case of the mentioned variables does not include 0). As values of the inflation factor of variance - VIF and the tolerance factor (Tol.) are within acceptable limits, we conclude that all variables can be part of the regression model, so the value of the independent variable Y is the sum of the values of the coefficient B other than zero.
Table 7. Estimation of significance of partial regression coefficients.
(1) | (2) | (3) | (4) | (5) | Collinearity Statistics | (6) | (7) | ||
Lower Bound | Upper Bound | ||||||||
(Constant) | 7.568 | 2.541 | 2.978 | 0.003 | 2.549 | 12.587 | |||
Crude oil price | 0.025 | 0.006 | 0.301 | 4.001 | 0.000 | 0.013 | 0.037 | 0.535 | 1.870 |
Nat. Gas Production | 0.000 | 0.001 | -0.063 | -0.515 | 0.608 | -0.001 | 0.001 | 0.202 | 4.957 |
Nat. Gas Consumption | 0.000 | 0.000 | 0.057 | 0.920 | 0.359 | 0.000 | 0.001 | 0.793 | 1.262 |
RES Production | -0.007 | 0.002 | -0.495 | -3.930 | 0.000 | -0.010 | -0.003 | 0.191 | 5.246 |
Coal Production | 0.000 | 0.000 | 0.018 | 0.130 | 0.897 | 0.000 | 0.000 | 0.162 | 6.168 |
(1) Unstandard Coefficients B, (2) Stand. Coefficients - Std. Error, (3) t – Beta, (4) Sig., (5) 95.0% Confidence Interval for B, (6) Tol., (7) VIF |
Based on Table 7, natural gas price can be estimate using Eq. (12):
|
(12) |
Based on values in Table 8, we can conclude that the homogeneity of variances and predictive values deviates from the limit values, so that in this case we have a pronounced heteroskedasticity.
Table 8. Heteroskedasticity tests
Heteroskedasticity Test: | Breusch-Pagan | White |
Critical value | 3.8414588 | 5.9914645 |
Observed value*R-squared | 16.1229036 | 20.6487180 |
As the influence of non-constant variance of errors on the efficiency of estimation by the least squares method as well as the validity of its conclusions, depends on several factors including sample size, degree of predictor variation, regressor values and the relationship between error variance and independent variables, it is not possible to reach full general conclusions relating to the consequences produced by heteroskedasticity in this case. Some authors believe that heteroskedasticity is not a big problem in econometric research. One of them is N. Gregori Mankiw who argues that “heteroskedasticity has never been a reason to reject an otherwise good model.” [38].
On the other hand, John Fox [39] points out that “unequal variances of errors should be corrected only if the problem is serious.” As previous tests have led to the conclusion that the regression model in work is good, we believe that there is no need to correct the data by applying possible forms of transformation.
Obtained results on the connection and the influence of selected factors on the formation of the price of natural gas on the global market are generally in line with the existing results obtained by foreign authors. Investigating the period that includes two major shocks in the energy markets, we concluded that fluctuations in the price of certain energy sources as well as the volume of their production and consumption have a significant impact on the price of the observed energy source.
Natural gas is one of the most commonly used non-renewable hydrocarbons. Like almost any non-renewable energy source, it releases carbon dioxide during combustion. Therefore, one of the most important factors influencing prices of natural gas is green energy or energy obtained from renewable sources (solar energy, wind energy, etc.). Namely, the presence of this factor in the model is statistically significant with a high correlation coefficient with the price of natural gas - with a negative sign as the volume of natural gas production. Traditionally, a significant factor is the price of crude oil, which is statistically significant in the model and has a positive high correlation coefficient as well as coal production. Natural gas consumption has been identified as a factor that has a low correlation coefficient that cannot be a significant factor in long-term natural gas price forecasting.
Currently, one of the most important factors in forming the price of energy is the coronavirus, which strongly influences the price war and energy consumption. While household consumption increased due to lockdown policies and restrictions on movement, industrial consumption declined sharply. It is difficult to predict the expected volatility of natural gas prices in the future because factors of influence depend on global crises and shocks as well as on the geopolitical situation in the world. Investors in the natural gas market can use models formulated in this way to make investment decisions. Our findings highlight the importance of including pandemic risk in forecasting global gas supply and demand. The results of the research will help policymakers assess the impact of the COVID-19 pandemic on natural gas price volatility and formulate appropriate plans and strategies to reduce the impact and improve forecasting models that should include pandemics, natural and economic disasters.
This research has been supported by the Ministry of Education, Science, and Technological Development of the Republic of Serbia.
The authors declare no conflict of interest. All authors have approved the final version of this paper.
[1] Apergis, N., Payne, J.E. Natural gas consumption and economic growth: A panel investigation of 67 countries. Applied Energy, 87(8):2759-2763, 2010. https://doi.org/10.1016/j.apenergy.2010.01.002
[2] Leahy, E., Devitt, C., Lyons, S., Tol, R.S. The cost of natural gas shortages in Ireland. Energy Policy, 46:153-169, 2012. https://doi.org/10.1016/j.enpol.2012.03.047
[3] Alcarazа, C., Villalvazo, S. The effect of natural gas shortages on the Mexican economy. Energy Economics, 66:147-153, 2017. https://doi.org/10.1016/j.eneco.2017.06.006
[4] Sadorsky, P. (2001). Risk factors in stock returns of Canadian oil and gas companies. Energy Economics, 23(1):17-28, 2001. https://doi.org/10.1016/S0140-9883(00)00072-4
[5] Henriques, I., Sadorsky, P. The effect of oil price volatility on strategic investment. Energy Economics, 33(1):79-87, 2011. https://doi.org/10.1016/j.eneco.2010.09.001
[6] IEA (2020), Gas 2020, OECD Publishing, Paris. https://doi.org/10.1787/df4b275f-en (accessed 11 April 2021)
[7] International Gas Union (2020). https://igu.org/resources/global-gas-report-2020/ (accessed 23 November 2020)
[8] Vieira, P.C., Silva, W.T.M. Elastoplastic analysis of steel frames with interaction surfaces in stress resultants obtained for multiple linear regression. Revista Internacional de Métodos Numéricos para Cálculo y Diseño en Ingeniería, 35(4), 2019. https://doi.org/10.1016/10.23967/j.rimni.2019.09.009
[9] Ambhore, N., Kamble, D. Experimental investigation of tool wear and induced vibration in turning high hardness AISI52100 steel using cutting parameters and tool acceleration. Facta Universitatis, Series: Mechanical Engineering, 18(4):623-637, 2020. https://doi.org/10.22190/FUME200116018A
[10] Krichene, N. World crude oil and natural gas: a demand and supply model. Energy Economics, 24(6):557-576, 2002. https://doi.org/10.1016/S0140-9883(02)00061-0
[11] Brown, S.P., Yucel, M.K. What drives natural gas prices? The Energy Journal, 29(2):45-60, 2008. https://doi.org/10.5547/ISSN0195-6574-EJ-Vol29-No2-3
[12] Ramberg, D.J., Parsons, J.E. The weak tie between natural gas and oil prices. The Energy Journal, 33(2):13-35, 2012. https://doi.org/10.5547/ISSN0195-6574-EJ-Vol29-No2-3
[13] Atil, A., Lahiani, A., Nguyen, D.K. Asymmetric and nonlinear pass-through of crude oil prices to gasoline and natural gas prices. Energy Policy, 65:567-573. 2014. https://doi.org/10.1016/j.enpol.2013.09.064
[14] Brigida, M. The switching relationship between natural gas and crude oil. Energy Economics, 43:48-55, 2014. https://doi.org/10.1016/j.eneco.2014.01.014
[15] Hartley, P.R., Medlock III, K.B. The relationship between crude oil and natural gas prices: The role of the exchange rate. The Energy Journal, 35(2), 2014. https://doi.org/10.5547/01956574.35.2.2
[16] Jadidzadeh, A., Serletis, A. How does the US natural gas market react to demand and supply shocks in the crude oil market? Energy Economics, 63:66-74. https://doi.org/10.1016/j.eneco.2017.01.007
[17] Batten, J.A., Ciner, C., Lucey, B.M. The dynamic linkages between crude oil and natural gas markets. Energy Economics, 62:155-170, 2017. https://doi.org/10.1016/j.eneco.2016.10.019
[18] Caporin, M., Fontini, F. The long-run oil–natural gas price relationship and the shale gas revolution. Energy Economics, 64:511-519, 2017. https://doi.org/10.1016/j.eneco.2016.07.024
[19] Ji, Q., Zhang, H.Y., Geng, J.B. What drives natural gas prices in the United States?-A directed acyclic graph approach. Energy Economics, 69:79-88, 2018. https://doi.org/10.1016/j.eneco.2017.11.002
[20] Hailemariam, A., Smyth, R. What drives volatility in natural gas prices? Energy Economics, 71:5-31, 2019. https://doi.org/10.1016/j.eneco.2019.02.011
[21] Nyga-Łukaszewska, H., Aruga, K. Energy prices and COVID-immunity: The case of crude oil and natural gas prices in the US and Japan. Energies, 13:6300, 2020. https://doi.org/10.3390/en13236300
[22] Foglia, M., Angelini, E. Volatility connectedness between clean energy firms and crude oil in the COVID-19 era. Sustainability, 12:9863, 2020. https://doi.org/10.3390/su12239863
[23] Czech, K.; Wielechowski, M. Is the alternative energy sector COVID-19 resistant? Comparison with the conventional energy sector: Markov-Switching model analysis of stock market indices of energy companies. Energies, 14:988, 2021. https://doi.org/10.3390/en14040988
[24] Siliverstovs, B., L’Hegaret, G., Neumann, A., Von Hirschhausen, C. IEA - Key World Energy Statistics 2005.
[25] Renou-Maissant, P. Toward the integration of European natural gas markets: A time-varying approach. Energy Policy, 51:779-790, 2012. https://doi.org/10.1016/j.enpol.2012.09.027
[26] Mohammadi, H. Market integration and price transmission in the US natural gas market: From the wellhead to end use markets. Energy Economics, 33(2):227-235, 2011. https://doi.org/10.1016/j.eneco.2010.08.011
[27] Wiggins, S., Etienne, X.L. Turbulent times: Uncovering the origins of US natural gas price fluctuations since deregulation. Energy Economics, 64:196-205, 2017. https://doi.org/10.1016/j.eneco.2017.03.015
[28] Nick, S., Thoenes, S. What drives natural gas prices?-A structural VAR approach. Energy Economics, 45:517-527, 2014. https://doi.org/10.1016/j.eneco.2014.08.010
[29] Everts, M., Claus, H., Eike, B.W. Politics vs markets: How German power prices hit the floor. Journal of World Energy Law and Business, 9(2):116-123. 2016. https://doi.org/10.1093/jwelb/jww005
[30] Mosquera-López, S., Nursimulu, A. Drivers of electricity price dynamics: Comparative analysis of spot and futures markets. Energy Policy 126:76-87, 2019. https://doi.org/10.1016/j.enpol.2018.11.020
[31] Mu, X. Weather, storage, and natural gas price dynamics: Fundamentals and volatility. Energy Economics, 29(1):46-63, 2007. https://doi.org/10.1016/j.eneco.2006.04.003
[32] Hulshof, D., Van der Maat, J.P., Mulder, M. Market fundamentals, competition and natural-gas prices. Energy Policy, 94:480-491, 2016. https://doi.org/10.1016/j.enpol.2015.12.016
[33] Belaid, F., Youssef, A., Chiao, B., Guesm, K. The Impacts of COVID-19 on China’s domestic natural gas market, IAEE Energy Forum, 107-111, 2020.
[34] Meher, B.K., Hawaldar, I.T., Mohapatra, L., Adel, M., Sarea, A.M. The impact of COVID-19 on price volatility of crude oil and natural gas listed on multi commodity exchange of India. International Journal of Energy Economics and Policy, 10(5):422-431, 2020. https://doi.org/10.32479/ijeep.10047
[35] Koloshkin E. EU natural gas market in the context of the global economic crisis due to the COVID-19 pandemic (in Russian). Финансовая экономика, 9:45-50, 2020.
[36] Lin B, Li J. The spillover effects across natural gas and oil markets: Based on the VEC–MGARCH framework. Applied Energy 155:229–241, 2015. https://doi.org/10.1016/j.apenergy.2015.05.123
[37] Freedman, D. Statistical Models: Theory and Practice, Cambridge University Press, 2009.
[38] Mankiw, N.G. A quick refresher course in macroeconomics. Journal of Economic Literature, 28:1648, 1990. https://doi.org/10.3386/w3256
[39] Fox, J. Applied Regression Analysis, Linear Models, and Related Methods, Sage Publications, 1997.
Published on 15/12/21
Accepted on 02/12/21
Submitted on 12/04/21
Volume 37, Issue 4, 2021
DOI: 10.23967/j.rimni.2021.12.002
Licence: CC BY-NC-SA license
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