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Article

An Asymmetric Bargaining Model for Natural-Gas Distribution

1
Department of Civil Engineering, The Ibadat International University, Islamabad 54590, Pakistan
2
Department of Unmanned Vehicle Engineering, Sejong University, Seoul 05006, Korea
3
Department of Robotics and Intelligent Machine Engineering (RIME), School of Mechanical and Manufacturing Engineering (SMME), National University of Sciences and Technology (NUST) H-12, Islamabad 44000, Pakistan
4
Department of Electrical Engineering, The Ibadat International University, Islamabad 54590, Pakistan
5
Department of Electrical and Electronics, Global College of Engineering and Technology, Muscat 112, Oman
6
State Key Laboratory of Ocean Engineering, Shanghai Jiao Tong University, Shanghai 200240, China
7
Department of Civil Engineering, Wah Engineering College, University of Wah, Wah Cantt 47040, Pakistan
8
Department of Data Science, College of Software Convergence, Sejong University, Seoul 05006, Korea
9
Sungkyunkwan University School of Medicine, Suwon 16419, Korea
*
Authors to whom correspondence should be addressed.
These authors contributed equally as the first author to this work.
Appl. Sci. 2022, 12(11), 5677; https://doi.org/10.3390/app12115677
Submission received: 28 March 2022 / Revised: 27 May 2022 / Accepted: 31 May 2022 / Published: 2 June 2022

Abstract

:
For the sustainable socio-economic growth, the energy supply is one of the foundations for any country. The gas shortage is one of the most significant impediments to any emerging country’s economic progress, making it a contested and disputed resource. In the middle of a supply–demand mismatch, distributing limited available gas across administrative units/provinces with competing requirements is a key challenge. In this work, an asymmetric gas allocation bargaining model is proposed under gas shortage to resolve natural gas-related disputes among Pakistan’s administrative units/provinces. Each administrative unit/province is characterized by its gas demand. Results show that the Nash bargaining theory, when applied under equal and bargaining weights, can address the supply–demand mismatches of the gas sector in Pakistan. Such an approach could help policymakers to make a fair gas-supply management system during gas shortage periods and would help in resolving the disputes between the provinces.

1. Introduction

In today’s modern society, natural gas is one of the main energy sources. The majority of the natural gas globally is supplied to customers/end consumers through a pipeline-based distribution system [1]. Natural gas is a major energy source in Pakistan, followed by hydroelectricity, liquid fuels, coal, and nuclear energy. According to the annual reports of the Government of Pakistan (GoP) and the national electric power regulatory authority (NEPRA), the share of natural gas crossed 50% of the primary energy supply in the country in 2004 [2]. The demand for natural gas in Pakistan due to the surge in population has increased, resulting in the serious shortage of gas supply. As a result, the supply has failed to match the demand [3]. Due to shortage and rapidly diminishing indigenous gas supply in Pakistan, liquified natural gas (LNG) is being imported to cover this supply–demand mismatch. As per latest report of Pakistan Economic Survey in 2019, the share of LNG in Pakistan has now reached 20% in the gas-supply mix. Pakistan is now the 13th largest LNG importing county of the world [4].
Pakistan’s socio-economic development is heavily dependent on the gas supply. Therefore, the allocation of gas among the provinces must be fair and efficient. The shortage of gas and its allocation among different stakeholders can be addressed from different perspectives. One such technique is the Game-theoretic approach which can be helpful for equitable resource allocation among the stakeholders. This approach can help the decision-makers, stakeholders, and planners make the right decision by analyzing and addressing the supply–demand gap for different sectors. Natural resources shared among the countries, states, or provinces can be a major source of conflict and cooperation [5,6,7], and natural gas is one of these resources.
Nash bargaining solution and bankruptcy concept are the two approaches that allocate the scarce resource among the various stakeholders. Bankruptcy is described in economics as a scenario in which all resources are insufficient to fulfill the stakeholders’ demands. The condition during the gas shortage is similar to the concept of bankruptcy. Therefore, the bankruptcy problem concept can be utilized for gas distribution among various Pakistan provinces. In a typical bankruptcy problem, the scarce resources are distributed among the various gas demanding clients/stakeholders using the classical bankruptcy rules and Nash bargaining solution. The constrained equal award, proportional, and constrained equal loss are the most utilized bankruptcy rules [8,9,10]. These rules satisfy several desirable properties, and each rule can be used in different bankruptcy scenarios. Bankruptcy theory and Nash bargaining has been applied to various resource allocation scenarios by various researchers [5,11,12,13,14,15,16,17,18,19,20,21,22,23,24,25,26].
The available approaches of resources optimal allocation mainly focus on mathematical programming based on group rationality, nucleolus solution concept, and noncooperative game based on individual rationality and of cooperative game based on both individual rationality and group rationality [27]. Cooperative game is a suitable method for the natural resource allocation which achieves both individual profit optimization and group profit optimization [28]. Cooperative game is a transferable utility game which requires strict conditions and requires all the agents to cooperate. The Nash bargaining approach is able to achieve the cooperation among the agents through a noncooperative way. In Nash bargaining solution, two or more players or agents infinitely offer an allocation scheme of payoff or cost from a joint collaboration until both parties accept or disagree with the scheme. If an agreement-of-allocation scheme is achieved, it means that this game has a cooperative deal, and the problem has a cooperative solution, i.e., a Nash bargaining solution (NBS); however, if it comes out with a breakdown, it won’t lead to cooperation [29]. The bargaining problems can be solved by various methods, but much desired properties, such as flexibility, invariance under change of scale, unanimity, and pareto optimality, can be satisfied by the Nash bargaining solution [30,31]. Various other researchers [28,32,33,34,35] used the Nash bargaining solution for the management and allocation of scarce resources. Also, game theory, in recent years, has been used in increasingly more diverse scenarios and applications. For example, it has been applied in the implementation and construction of biogas plants [36]. Apart from this, game theory has also been applied to solve matrix games with hesitant fuzzy payoffs and to determine the market share of competitors in the telecommunication industry [37,38].
The motivation behind this study is to address the potential shortage of indigenous natural-gas supply in Pakistan. As per reports, natural-gas demand will rise about three times during 2012–2030 [39]. The urgent need of gas policy revision has also been asserted by various authors [2,40]. In the backdrop of depletion of natural-gas resources, its sensible allocation becomes very crucial. Historical variations in the gas-allocation policy within the country need to be understood in a statistical way to for the proper gas allocation. In this paper, the bankruptcy concept and Nash bargaining solution have been applied to address the supply–demand gap in the gas sector.
The rest of the article is organized as follows. Section 2 discusses the current conditions of gas supply in Pakistan. Section 3 discusses the current gas supply–demand gap in Pakistan. Section 4 discusses the Nash bargaining theory. Finally, Section 5 and Section 6 discuss the result and conclude the paper.

2. The Natural-Gas Scenario in Pakistan

Pakistan has witnessed a significant rise in energy demand in the last two decades. The supply–production of energy has failed to cope with the demands, resulting in an increase in the supply–demand gap. As per the latest population census of 2020, Pakistan’s population has reached 200 million [41]. This energy crisis has also affected the country’s economic growth [42,43]. Pakistan largely depends on gas and oil resources to meet its escalating energy demands. The natural-gas industry of Pakistan, with an offshore area of 827,268 square kilometers, is equipped with numerous exploration and production companies. Since its operations in 1952, the gas industry of Pakistan has discovered a significant gas field at Sui in the province of Baluchistan with a reserve of 0.31 trillion cubic meters (Tcm) [44]. In those days, a 16-inch transmission line used to bring gas from the province of Baluchistan to Karachi, Sindh, over a total length of 559 km. By 1960, the gas industry in Pakistan matured very quickly, and various other gas transmission and distribution lines were designed and installed by indigenous sources. The gas industry of Pakistan is the most developed industry in Pakistan. It has the earliest transmission system in the country, with more than 50 years of operational experience [44].
The natural-gas reserves of Pakistan are less than those of Russia and Iran. Pakistan, having a gas potential of 0.5 Tcm, is currently ranked at 29th position for its gas reserves in the world. The gas reserves in Pakistan account for almost 0.2% of the world’s gas reserves [45]. The GoP is further enhancing the gas reserves by investments in the development and drilling of existing gas–supply systems and the discovery of new gas reservoirs. In the coming years, the demand for natural gas will surge. Therefore, the supply–demand gap will also increase. The main gas fields of the country include Sui, Uch, Zamzama, Badin, Manzalai, Mari, Kandhkot, Bhit, Sawan, and Qadirpur. Out of the four provinces of Pakistan, Sindh is the highest gas supplier with 64% of the total gas, followed by Baluchistan with 17%. In contrast, Khyber Pakhtunkhwa (KPK) and Punjab supply 9 and 3%, respectively [46].

3. Pakistan’s Natural-Gas Production, Consumption, and Supply–Demand Gap

According to the BP Statistical Review of World Energy Report published in June 2017, the total natural-gas consumption in the world reached 3.551 Tcm in 2016 with an annual growth of 0.3%. According to a report [4], the share of natural gas in energy resources is going to increase globally. Some of the world’s largest gas producers are Iran, the United States, and Russia. Pakistan’s gas production in 2016, in comparison with some of the major gas-producing nations, is shown in Table 1. In 2016, Pakistan shared 1.2% of the global gas production. In 2016, 1464 BCF natural gas was produced by Pakistan, which increased to 1658 in 2020. Currently, Pakistan faces a huge shortfall of gas due to non-efficient distribution. The country’s economy has also been affected due to this inefficient allocation of gas. Figure 1 shows that gas reserves in Pakistan have been in sharp decline since 2005. It is evident from the figure that gas production and consumption were almost equal in 2015. The consumption and production trends, however, started to separate in 2016. To cope with this supply–demand gap, the government and policymakers must ensure that the gas allocation is done among the provinces of Pakistan in the most efficient way.
Table 1. Natural-gas production of the major gas producing countries compared with Pakistan [4].
Table 1. Natural-gas production of the major gas producing countries compared with Pakistan [4].
CountryTotal Gas
Production (Bcm)
Per cent of World
Production
Pakistan41.51.2
China138.43.9
Russia579.416.3
Canada152.04.3
United States749.221.1
Qatar181.25.1
Iran202.45.7
Norway116.63.3
Figure 1. Pakistan’s natural-gas production, reserves, and consumption trend [45].
Figure 1. Pakistan’s natural-gas production, reserves, and consumption trend [45].
Applsci 12 05677 g001
As per the report of the “Development Plan of Pakistan Oil and Gas Industry” in 2020, the supply–demand balance for years 2020–2028 [46], are shown in Table 2. It can be seen from the table that domestic natural-gas production in Pakistan continues to decrease whereas the overall gas supply is increasing due to LNG supply, Iran–Pakistan gas pipeline, and The Turkmenistan–Afghanistan–Pakistan–India Pipeline (TAPI), also known as the Trans-Afghanistan Pipeline. TAPI is a natural-gas pipeline developed by the Galkynysh—TAPI Pipeline Company Limited, with the participation of the Asian Development Bank. However, despite increasing gas imports, the shortfall increases [46]. Because provincial demands are increasing swiftly, the supply is not coping with the demand.

4. An Asymmetric Hybrid Bankruptcy and Nash Bargaining Model for Gas Distribution

In this work, a hybrid model based upon bankruptcy theory with the Nash bargaining solution is proposed to tackle the gas-allocation problem [28,32,33,34,35].
A bankruptcy situation, or a claims problem, is defined by a tuple (N, E, c), where N = {1, …, n} is the set of stakeholders, E is the total gas available to satisfy the demands of all stakeholders and c = {c1, …, cn} are the claims [47,48]. To allocate the estate E among the agents in N, we define an allocations vector x = {x1, …, xn} as a real valued vector respecting the following properties: (1) rationality, (2) claim boundedness, and (3) efficiency. The asymmetric Nash bargaining theory is linked with the bankruptcy theory for gas distribution. While applying this methodology, the agent’s bargaining weights ( w i , i = 1 , . , n ) and disagreement allocation points ( m i , i = 1 , . , n ) are also considered to ensure self-enforceability and equity in a bounded space. In such optimization problem, apart from satisfying a set of desirable properties, offers a unique solution and maximizes the area between the Pareto-optimal frontier (x) and the disagreement point (mi). Therefore, this optimization technique helps us to prevent conflicts among the agents.
In this study, x is the agent’s allocated gas amount. The following three bankruptcy conditions must be satisfied provided in Equations (1)–(3):
i = 1 n x i = E
Equation (1) requires that the sum of available resources must be precisely allocated between all the stakeholders/agents and is called the Pareto efficiency.
x i c i
Equation (2) helps to prevent the overuse of resources which might cause the tragedy of the commons and is called the Claim boundedness. Equation (3) ensures the non-negativity of the resources.
x i 0
In this study, disagreement points vector (d1, d2, …, di) are defined as the benefits of minimum gas allocation (I1, I2, …, In) to the riparians. It represents the minimum threshold value of the agent’s benefits. Therefore, the individual rationality requirements must be reflected before the cooperation of the followers so that the maximal and minimal solutions are satisfied.
The bankruptcy theory can solve the situation of minimum gas distribution to every province, which is applied in a gas-shortage period. The formula of minimum gas allocation to each province is given by Equation (4) below.
m i = max 0 ,   E k   i c i
Subject to:
E < i = 1 n c i
While using Equation (4), the minimum amount of gas allocated to any province may become zero, especially for the provinces with more minor claims. However, in reality, each province will have a minimum threshold value of gas λi in the process of gas distribution. For example, suppose we use bankruptcy theory. In that case, the minimum province allocated gas may be less than its threshold gas required value. Therefore, to avoid these circumstances, a formula is proposed to consider for the province minimum requirement:
m i = max ( λ i ,   E k   i c i )
In Equation (6), λi is the minimum gas requirement of each province. In this work, it is assumed that the minimum requirement of each province is half of the total gas demand.
In this optimization problem, the upper bound core of the problem is the respective gas claim of each province. According to [49], the gas-distribution optimization problem under the bankruptcy scenario can be defined as follows:
Maximize  N w i = x 1 E i N / 1 c i w 1   x 2 E i N / 2 c i w 2   x 3 E i N / 3 c i w 3   x n E i   N / n c i w n  
The model presented in Equation (7) is constraint by individual feasibility and rationality. As discussed above, the disagreement points and province claims serve as the lower and upper bounds, respectively. Therefore, Equation (7) can be reformulated as:
Maximize   N w i = x p E i N / P c i w p .   x s E i N / S c i w S . x B E i N / B c i w B .   x K E i N / K c i w K .   x o t E i   N / O t c i w O t
Here, i = 1 n w i = 1
In Equation (8):
x p = Punjab’s gas optimized distribution value.
IP = Punjab’s minimum gas requirement.
x s = Sindh’s gas optimized distribution value.
IS = Sindh’s minimum gas requirement.
x B = Baluchistan’s gas optimized distribution value.
IB = Baluchistan’s minimum gas requirement.
x K = Khyber Pakhtunkhwa’s (KPK) gas optimized distribution value.
IK = KPK’s minimum gas requirement.
x o t = Other area’s gas optimized distribution value.
Iot = Other area’s minimum gas requirement.
For the above gas-allocation model, the following constraints are set:
  • The gas allocation of each province must be equal to or more than its lower threshold value.
x i   m i   i = 1 , 2 , .. , n
2.
The gas allocation of each province must be equal to or less than its upper threshold value (claim) but more than or equal to its lower threshold value.
m i x i c i
3.
The total gas allocation must be equal to or less than the total available gas.
i = 1 n x i     E
After defining the objective function (Equation (8)) and setting the constraints (Equations (9)–(11)), the allocation of gas among the agents (provinces and administrative units) is done using the Nash bargaining solution. Figure 2 illustrates the working of the proposed approach under a gas shortage period. When the gas demand and its availability change with time, the disagreement points are defined again, using Nash bargaining theory, and resource allocation is done again.
Nine different scenarios (from 2020 to 2028) are considered for gas allocation, as mentioned in Table 3. First, the gas allocation for each year is computed using the Nash bargaining solution with equal weights. After that, the reallocation of gas is done using higher ‘gas production’. The province which generates/produces more gas would be given higher priority in allocation.
The core solutions are defined by rationality, efficiency, and marginality in a cooperative game, which are already defined in Equations (1)–(3). The rationality principle defines the lower bound of the user, whereas the marginality principle defines the upper bound. The lower core values are defined using Equation (6). Results are summarized in Table 3, in which x(i) represents the gas allocation for the ith user expressed in Mm3/y. The upper and lower core bounds, as stated in Table 3, can be considered the limits of “feasible values” that each stakeholder could accept.
Table 3. Gas-Allocation Core Solutions Scenarios (BCF/y with respect to available natural-gas resources).
Table 3. Gas-Allocation Core Solutions Scenarios (BCF/y with respect to available natural-gas resources).
Year 2020Year 2021Year 2022
x(Pun) + x (Sin) + x(Bal) + x(Kpk) + x(Ot) = 1658
631 ≤ x(P) ≤ 922
376 ≤ x(S) ≤ 667
92≤ x(B) ≤ 184
48 ≤ x(K) ≤ 95
41 ≤ x(Ot) ≤ 81
x(Pun) + x (Sin) + x(Bal) + x(Kpk) + x(Ot) = 1801
721 ≤ x(P) ≤ 968
452 ≤ x(S) ≤ 699
97 ≤ x(B) ≤ 194
50 ≤ x(K) ≤ 99
44 ≤ x(Ot) ≤ 88
x(Pun) + x (Sin) + x(Bal) + x(Kpk) + x(Ot) = 1701
568 ≤ x(P) ≤ 1013
367 ≤ x(S) ≤ 734
103 ≤ x(B) ≤ 205
51 ≤ x(K) ≤ 102
46 ≤ x(Ot) ≤ 92
Year 2023Year 2024Year 2025
x(Pun) + x (Sin)+ x(Bal) + x(Kpk) + x(Ot) = 1603
533 ≤ x(P) ≤ 1066
385 ≤ x(S) ≤ 770
108 ≤ x(B) ≤ 215
55 ≤ x(K) ≤ 109
48 ≤ x(Ot) ≤ 95
x(Pun) + x (Sin) + x(Bal)+ x(Kpk) + x(Ot)= 1870
619 ≤ x(P) ≤ 1119
405 ≤ x(S) ≤ 809
113 ≤ x(B) ≤ 226
59 ≤ x(K) ≤ 117
50 ≤ x(Ot) ≤ 99
x(Pun) + x (Sin) + x(Bal) + x(Kpk) + x(Ot) = 1987
673 ≤ x(P) ≤ 1176
426 ≤ x(S) ≤ 851
119 ≤ x(B) ≤ 237
60 ≤ x(K) ≤ 120
53 ≤ x(Ot) ≤ 106
Year 2026Year 2027Year 2028
x(Pun) + x (Sin) + x(Bal) + x(Kpk) + x(Ot) = 2107
731 ≤ x(P) ≤ 1236
447 ≤ x(S) ≤ 893
124 ≤ x(B) ≤ 247
64 ≤ x(K) ≤ 127
55 ≤ x(Ot) ≤ 109
x(Pun) + x (Sin) + x(Bal) + x(Kpk) + x(Ot) = 2063
650 ≤ x(P) ≤ 1299
470 ≤ x(S) ≤ 939
131 ≤ x(B) ≤ 261
67 ≤ x(K) ≤ 134
59 ≤ x(Ot) ≤ 117
x(Pun) + x (Sin) + x(Bal) + x(Kpk) + x(Ot) = 2026
682 ≤ x(P) ≤ 1363
492 ≤ x(S) ≤ 985
136 ≤ x(B) ≤ 272
71 ≤ x(K) ≤ 141
62 ≤ x(Ot) ≤ 124

Bargaining Weights Determination

The optimization problem presented in Equation (8) is utilized for the gas-distribution problem in Pakistan, and three cases are analyzed for each year. First of all (first case), equal bargaining weights are considered to optimize the function. However, each province is different regarding its socio-economic and gas production status. Therefore, various bargaining weights are considered depending upon each province’s gas production to emphasize the significance of various bargaining weights in the second case. As per the latest available data, the gas production, along with the bargaining weights of Pakistan’s every province, is shown in Table 4 [2,3,44,46]. The bargaining weights for Punjab, Sindh, Baluchistan, KPK, and other areas come out to be 0.04, 0.626, 0.214, 0.11, and 0.01, respectively. All the mentioned bargaining weights are directly proportional to their gas production. Therefore, the greater the province’s gas production, the high bargaining weight. In the last case, the number of consumers (domestic, commercial, and industrial) are considered for computing the bargaining weights of the provinces, as shown in Table 4.

5. Results and Discussion

Figure 3 shows the results of the Nash bargaining solution. The Nash bargaining is applied for all three cases from 2020–2028. In the first case, equal bargaining weights are assigned to each province. Whereas in the second case, the parameter of gas production is used to assign the bargaining weights. In the last case, the number of consumers (domestic, commercial, and industrial) are used to assign the bargaining weights for each province. Figure 3 shows the gas distribution among each province as a percentage of gas demand under all three cases for the years 2020–2028 using the Nash bargaining solution. Table 5a–c show the results in tabular form.
It can be seen from Figure 3 and Table 5a–c that when the gas allocation is done using the homogenous weights, the allocation of Punjab and Sindh is reduced, whereas the smaller provinces/administrative units get 100% of their claims. It is due to the reason that the claims of these provinces are already less. In the second case, when the allocation of gas is done using bargaining weights 2 (based on the gas production), the allocation of Punjab is considerably reduced, whereas the allocations for Sindh and Baluchistan are considerably increased for all the years. It is because these two provinces have the country’s largest gas reserves, which is also evident in Table 4. Finally, in the third case, when the gas allocation is done using the heterogeneous weights 1 (based on the number of gas consumers), the allocations of Punjab and Sindh are increased. It is due to the reason that both these two provinces have the largest number of consumers. On the other hand, other provinces have considerably fewer consumers than Punjab and Sindh; hence, their allocation is reduced.

6. Conclusions and Recommendations

In this work, the hybrid Nash bargaining theory and the bankruptcy concept are applied for the efficient reallocation of gas among Pakistan’s provinces/administrative units. This approach considers the principles of sustainability, efficiency, and equity. These three critical properties are incorporated to ensure that resource allocation is reasonable and equitable. While using equal weights, factors such as the population of each province, its socio-economic condition, and gas production are not taken into consideration. Therefore, some agents (provinces) may not accept this allocation. It is therefore recommended that the resource allocation rules must incorporate these factors. Therefore, in this study, the allocation of gas among the provinces/administrative units is also done using heterogeneous weights that take into account the ‘number of gas consumers’ and the ‘gas production’. However, the gas allocation among the agents is a complex task that cannot be solely solved by applying mathematical methods. Therefore, negotiations between the agents are recommended, which would help them to reach an agreement.
The limitations of this study may be addressed in in future studies and some additional influential factors should be considered, such as the socio-political aspects of the provinces, the reliable relative weights of the provinces based on their political influence. It is also recommended to apply multi-criteria decision analysis (MCDA) to combine all the relative weights to be considered. Historical gas consumption structure in Pakistan consists of seven main consumer groups, that is, residential, commercial, cement industry, fertilizer, power, general industry, and transport. Industrial sector includes general industry and cement industry. Miscellaneous sector includes commercial consumers and transport consumers (compressed natural gas, CNG). Therefore, sectoral based gas allocations should also be considered for future studies.
The study also has some immediate policy implications. It can be seen that despite the increase in gas production and gas import, the supply–demand gap will continue to increase and, hence, the disputes between the provinces will increase. It is therefore, expected that the research findings will help a great deal in resolving the gas disputes between the administrative units/provinces of Pakistan and other countries having similar problem of gas shortage. Apart from this, in the negotiation process, the bargaining power of the agents (provinces), will play a role to ensure fair and equitable allocation of gas.

Author Contributions

Conceptualization, S.J. and M.U.A.; formal analysis, S.J., M.U.A. and K.D.K.; funding acquisition, S.W.L.; investigation, H.G.; methodology, S.J. and M.U.A.; project administration, S.J.H.; software, H.G. and S.J.H.; supervision, A.Z. and S.W.L.; validation, S.J. and M.U.A.; writing—original draft, S.J., M.U.A. and H.G.; writing—review and editing, A.Z., S.J.H., K.D.K. and S.W.L. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the National Research Foundation of Korea, grant number NRF-2021R1I1A2059735.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

The data presented in this study are available on request from the corresponding authors.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 2. Flow chart for resource allocation under scarcity.
Figure 2. Flow chart for resource allocation under scarcity.
Applsci 12 05677 g002
Figure 3. Gas allocation as a percentage of demand using Nash bargaining solution under equal and bargaining weights (for years 2020–2028).
Figure 3. Gas allocation as a percentage of demand using Nash bargaining solution under equal and bargaining weights (for years 2020–2028).
Applsci 12 05677 g003
Table 2. Gas demand and supply scenario from 2020–2028 [46].
Table 2. Gas demand and supply scenario from 2020–2028 [46].
202020212022202320242025202620272028
Committed and anticipated
Supply/domestic supply (BCF)
122011441044946859783692649612
LNG supply (BCF)438657657657657657657657657
Iran–Pakistan (BCF)0000096274274274
TAPI (BCF)0000354451484484484
Total supply (BCF)165818011701195719672026211320692033
Punjab’s demand (BCF)9229681013106611191176123612991363
Sindh’s demand (BCF)667699734770809851893939985
Baluchistan’s demand (BCF)184194205215226237247261272
KPK’s demand (BCF)9599102109117120127134141
Other’s demand (BCF)8188929599106109117124
Total demand (BCF)194920482146225523702490261227502885
Gap/shortfall (BCF)291247445298403464499681852
Table 4. Production of gas in provinces of Pakistan, number of consumers, and their bargaining weights.
Table 4. Production of gas in provinces of Pakistan, number of consumers, and their bargaining weights.
Provinces
PunjabSindhBaluchistanKPKOther AreasTotal
Percentage share in total production462.621.4111100
Bargaining weight0.040.6260.2140.110.011.00
Number of consumers (domestic,
commercial and industrial), in millions
5.802.700.280.870.29.85
Bargaining weight0.5880.2740.0280.0880.0221.00
Table 5. (a) Gas allocation in BCM using equal weights for years 2020–2028. (b) Gas allocation in BCM using bargaining weights (Gas Production) for years 2020–2028. (c) Gas allocation in BCM using bargaining weights (Number of gas consumers) for years 2020–2028.
Table 5. (a) Gas allocation in BCM using equal weights for years 2020–2028. (b) Gas allocation in BCM using bargaining weights (Gas Production) for years 2020–2028. (c) Gas allocation in BCM using bargaining weights (Number of gas consumers) for years 2020–2028.
(a)
PunjabSindhBaluchistanKPKOthers
Year 2020
7775221849581
Year 2021
8455761949988
Year 2022
75155120510292
Year 2023
70250220510292
Year 2024
82160722611799
Year 2025
886639237120106
Year 2026
954670247127109
Year 2027
865686261134117
Year 2028
839650272141124
(b)
PunjabSindhBaluchistanKPKOthers
Year 2020
6636671849547
Year 2021
7566991949988
Year 2022
60573420510255
Year 2023
55268220910753
Year 2024
65880922611760
Year 2025
71585123712064
Year 2026
77489324712766
Year 2027
67992326113466
Year 2028
70585726113568
(c)
PunjabSindhBaluchistanKPKOthers
Year 2020
8544781849547
Year 2021
9865781109054
Year 2022
90152211910159
Year 2023
8125151219759
Year 2024
98657613011464
Year 2025
105960613711867
Year 2026
113463514312470
Year 2027
105365815012774
Year 2028
102565215212275
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Janjua, S.; Ali, M.U.; Kallu, K.D.; Zafar, A.; Hussain, S.J.; Gardezi, H.; Lee, S.W. An Asymmetric Bargaining Model for Natural-Gas Distribution. Appl. Sci. 2022, 12, 5677. https://doi.org/10.3390/app12115677

AMA Style

Janjua S, Ali MU, Kallu KD, Zafar A, Hussain SJ, Gardezi H, Lee SW. An Asymmetric Bargaining Model for Natural-Gas Distribution. Applied Sciences. 2022; 12(11):5677. https://doi.org/10.3390/app12115677

Chicago/Turabian Style

Janjua, Shahmir, Muhammad Umair Ali, Karam Dad Kallu, Amad Zafar, Shaik Javeed Hussain, Hasnain Gardezi, and Seung Won Lee. 2022. "An Asymmetric Bargaining Model for Natural-Gas Distribution" Applied Sciences 12, no. 11: 5677. https://doi.org/10.3390/app12115677

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