A Cross-Sectoral Investigation of the Energy–Environment–Economy Causal Nexus in Pakistan: Policy Suggestions for Improved Energy Management
Abstract
:1. Introduction
1.1. Energy-Driven Air Pollution in Pakistan
1.2. Cross-Sectoral Energy Consumption in Pakistan
1.3. Energy, Environment and Economic Growth Correlation in Pakistan
2. Theoretical and Methodological Framework
2.1. Development of GTA Based on Modified PC Algorithm
- The algorithm initially constructs an undirected graph G, which is said to be a directed acyclic graph (DAG) if it contains only directed edges and has no directed cycles. Graph G is constructed according to graph theory containing V variables/nodes and E edges representing an association between a pair of variables. The links between the pair of variables without arrowheads are called undirected edges (A→B), while the link between two variables through a straight-line having an arrowhead is called a directed edge (A→B), which gives us the direction of causality. A graph showing only the nodes and strips away all arrowheads from the edges is called the skeleton. Furthermore, if node A is linked to node B by an arrow originating from A to B, i.e., (A→B) then node A is the parent of node B, and B is the child of A. It is shown in Figure 4 that has two parents and , three ancestors () and no children. Finally, the direction of causality between pairs of variables depends on the unshielded collider and screen-off.
- The following assumptions are set when applying the modified PC causality algorithm:
- Causal Markov Condition: Let G be a causal graph relating a set of variables V with a probability distribution P. Let W be a subset of V. G and P satisfy the causal Markov condition if, and only if, for every W in V, W is independent of every set of variables that does not contain its descendants, conditional on its parents [87].
- Faithfulness Condition: A graph G and probability distribution P is said to be faithful if and only if there is a one-to-one correspondence between the conditional independence relationship implied by causal Markov condition and the probability distribution [87].
- Developing the modified PC algorithm involves five steps for detecting causality. The first three steps relate to the construction of a skeleton graph (undirected graph), while in the last two steps arrows heads are oriented to construct the final causal graph, otherwise known as the directed graph. These steps are described below:
- Initially, the algorithm develops the skeleton graph in which all variables are connected through undirected links.
- The algorithm then starts testing the unconditional correlation and removes the insignificant links between any two variables.
- In the third step, the algorithm tests correlations between every two variables conditional on a third variable and deletes the insignificant links between the pairs of variables.
- In step four, if two variables are correlated conditional on the third variable, arrows from the two variables are oriented to the third variable and is said to be an unshielded collider.
- In the final step, arrows are oriented based on the screening relationship. If two nodes and are not directly connected but are connected through a third node i.e., →→,this shows that the link from to (third node) is directed while the link between nodes and is undirected. Therefore, the resulting graph will orient the second link as →→, because orienting the arrowhead toward indicates the unshielded collider which is already revealed in step 4. Thus, the intervening node or variable is a screen and not an unshielded collider, so the arrow cannot point toward node .
2.2. Monte Carlo Simulation Experiment: Testing the Performance of PC and Modified PC Algorithm
3. Results and Discussion
3.1. Energy–Environment–Economy Causal Nexus According to Sector
3.2. Performance Evaluation of PC and Modified PC Algorithms
3.2.1. Size Analysis
Non-Stationary Series
Stationary Series
3.2.2. Power Comparison
Non-Stationary Series
Stationary Series
4. Concluding Remarks and Policy Recommendations
- Significant changes are required in the energy fuel mix by including more and more RERs across all the sectors.
- Energy efficiency programs initiated throughout the building sector following the installation of solar power panels, improved designs, and adoption of energy-smart measures.
- Large-scale utilization of indigenous coal resources to be guided by state-of-the-art coal-energy conversion technologies, i.e., making it the safest and cleanest input fuel in the future.
- Carbon capture and storage technologies coupled with the upcoming coal-based energy projects to reduce the emissions produced.
- GHGs emissions reduction following carbon taxation and other policy-run regimes implemented especially targeting the industrial and transportation sectors.
- In order to enable sustainable energy transition nationally, the country’s nuclear industry should be updated to include the highest safety protocols.
- Decarbonization policies, for instance fuel substitution in electricity generation sector, using cleaner fuels, waste-to-energy conversion, solarization of industries, etc.
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Fazal, R.; Rehman, S.A.U.; Bhatti, M.I.; Rehman, A.U.; Arooj, F.; Hayat, U. A Cross-Sectoral Investigation of the Energy–Environment–Economy Causal Nexus in Pakistan: Policy Suggestions for Improved Energy Management. Energies 2021, 14, 5495. https://doi.org/10.3390/en14175495
Fazal R, Rehman SAU, Bhatti MI, Rehman AU, Arooj F, Hayat U. A Cross-Sectoral Investigation of the Energy–Environment–Economy Causal Nexus in Pakistan: Policy Suggestions for Improved Energy Management. Energies. 2021; 14(17):5495. https://doi.org/10.3390/en14175495
Chicago/Turabian StyleFazal, Rizwan, Syed Aziz Ur Rehman, Muhammad Ishaq Bhatti, Atiq Ur Rehman, Fariha Arooj, and Umar Hayat. 2021. "A Cross-Sectoral Investigation of the Energy–Environment–Economy Causal Nexus in Pakistan: Policy Suggestions for Improved Energy Management" Energies 14, no. 17: 5495. https://doi.org/10.3390/en14175495
APA StyleFazal, R., Rehman, S. A. U., Bhatti, M. I., Rehman, A. U., Arooj, F., & Hayat, U. (2021). A Cross-Sectoral Investigation of the Energy–Environment–Economy Causal Nexus in Pakistan: Policy Suggestions for Improved Energy Management. Energies, 14(17), 5495. https://doi.org/10.3390/en14175495