Achieving Cost Minimization and Fairness in Multi-Supplier Smart Grid Environment
Abstract
:1. Introduction
1.1. Related Work
1.2. Motivation
1.3. Contributions
- We first formulate a consumer-to-utility assignment problem such that multiple users can be served by each utility while a particular consumer can be assigned to one and only one supplier in a given time.
- A dual decomposition-based solution is presented such that the overall cost is minimized subject to the limited available capacity of each utility. In the proposed solution, a user can choose different utilities in different time slots, thus, each utility has an independent set of users in each time.
- Later, a low complexity sub-optimal solution is proposed to minimize the sum system cost. In this algorithm, utilities are assigned to different users in sequential manner such that supplier with minimum price is selected first and users are assigned until the maximum capacity is reached.
- Then, a fair cost minimization problem is formulated as min–max optimization under the same constraints. The complex min–max problem is first re-formulated to standard minimization problem and then duality theory is exploited to obtain the an efficient solution where dual problem is solved though sub-gradient method.
- Similar to the sum cost minimization, a low complexity algorithm for fair cost minimization is also designed.
- Finally, simulation results are presented to validate the performance of the proposed schemes.
1.4. System Model
1.5. Organization of manuscript
2. Total Cost Minimization
2.1. Proposed Scheme
2.2. Suboptimal Scheme for Total Cost Minimization
Algorithm 1 Suboptimal scheme for sum cost minimization. |
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3. Fair Cost Minimization
3.1. Proposed Solution
3.2. Suboptimal Scheme for Fair Cost Minimization
Algorithm 2 Suboptimal scheme for fair cost minimization. |
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4. Simulation Results
- OptSol: This refers to the proposed solutions in Section 2.1 and Section 3.1.
- SubOptSol: Low complexity sub-optimal schemes proposed in Section 2.2 and Section 3.2.
- NonOptSol: In this solution, users are selected randomly and are assigned to a randomly selected utility for the entire time horizon. This allocation stay continued until utility is unable to serve more consumers. Then another utility is selected and this scenario is continued until all the consumers are scheduled for all time slots.
4.1. Simulation Results For Total Cost Minimization
4.2. Simulation Results For Fair Cost Minimization
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Electricity price of ith energy provider in jth hour. | |
Binary variable associated to the allocation of kth user to ith utility in jth hour. | |
Energy consumption of kth user in jth hour. | |
Generation capacity of ith energy provider. | |
t | Auxiliary variable associated to the fairness constraint. |
Dual variables. | |
M | Number of consumers in the system. |
N | Total energy providers in the system. |
H | Total number of time slots. |
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Malik, A.; Ali, Z.; Awan, A.B.; Abo-Khalil, A.G.; Sidhu, G.A.S. Achieving Cost Minimization and Fairness in Multi-Supplier Smart Grid Environment. Energies 2018, 11, 1367. https://doi.org/10.3390/en11061367
Malik A, Ali Z, Awan AB, Abo-Khalil AG, Sidhu GAS. Achieving Cost Minimization and Fairness in Multi-Supplier Smart Grid Environment. Energies. 2018; 11(6):1367. https://doi.org/10.3390/en11061367
Chicago/Turabian StyleMalik, Amna, Zain Ali, Ahmed Bilal Awan, Ahmed G. Abo-Khalil, and Guftaar Ahmad Sardar Sidhu. 2018. "Achieving Cost Minimization and Fairness in Multi-Supplier Smart Grid Environment" Energies 11, no. 6: 1367. https://doi.org/10.3390/en11061367
APA StyleMalik, A., Ali, Z., Awan, A. B., Abo-Khalil, A. G., & Sidhu, G. A. S. (2018). Achieving Cost Minimization and Fairness in Multi-Supplier Smart Grid Environment. Energies, 11(6), 1367. https://doi.org/10.3390/en11061367