Optimization of Controller for Islanded AC Microgrid System

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dc.contributor.author Islam, Quazi Nafees Ul
dc.date.accessioned 2020-12-28T06:30:28Z
dc.date.available 2020-12-28T06:30:28Z
dc.date.issued 2020-01-25
dc.identifier.citation [1] C. Colson and M. Nehrir, “A review of challenges to real-time power management of microgrids,” in 2009 IEEE Power & Energy Society General Meeting. IEEE, 2009, pp. 1–8. [2] A. K. Basu, S. Chowdhury, S. Chowdhury, and S. Paul, “Microgrids: Energy management by strategic deployment of ders—a comprehensive survey,” Renewable and Sustainable Energy Reviews, vol. 15, no. 9, pp. 4348–4356, 2011. [3] F. Katiraei, R. Iravani, N. Hatziargyriou, and A. Dimeas, “Microgrids management,” IEEE power and energy magazine, vol. 6, no. 3, pp. 54–65, 2008. [4] A. Al-Awami, E. Sortomme, and M. El-Sharkawi, “Optimizing economic/ environmental dispatch with wind and thermal units,” in 2009 IEEE Power & Energy Society General Meeting. IEEE, 2009, pp. 1–6. [5] C.-T. Hsu, R. Korimara, T.-J. Cheng, L.-J. Tsai, and H.-M. Huang, “Cost power curtailment analysis for optimum pv size and the energy potential for the desalination plant on the island distribution system,” Journal of Clean Energy Technologies, vol. 5, no. 3, 2017. [6] Y. Agarwal, T. Weng, and R. K. Gupta, “Understanding the role of buildings in a smart microgrid,” in 2011 Design, Automation & Test in Europe. IEEE, 2011, pp. 1–6. [7] M. Agrawal and A. Mittal, “Micro grid technological activities across the globe: A review,” Int. J. Res. Rev. Appl. Sci, vol. 7, no. 2, pp. 147–152, 2011. [8] H.-C. Chen, P.-H. Chen, L.-Y. Chang, andW.-X. Bai, “Stand-alone hybrid generation system based on renewable energy,” International Journal of Environmental Science and Development, vol. 4, no. 5, p. 514, 2013. [9] X. Li, D. Hui, and X. Lai, “Battery energy storage station (bess)-based smoothing control of photovoltaic (pv) and wind power generation fluctuations,” IEEE transactions on sustainable energy, vol. 4, no. 2, pp. 464–473, 2013. 84 [10] S. V. Iyer, M. N. Belur, and M. C. Chandorkar, “A generalized computational method to determine stability of a multi-inverter microgrid,” IEEE Transactions on Power Electronics, vol. 25, no. 9, pp. 2420–2432, 2010. [11] N. Pogaku, M. Prodanovic, and T. C. Green, “Modeling, analysis and testing of autonomous operation of an inverter-based microgrid,” IEEE Transactions on power electronics, vol. 22, no. 2, pp. 613–625, 2007. [12] S. Hemamalini and S. Simon, “Maclaurin series-based lagrangian method for economic dispatch with valve-point effect,” IET generation, transmission & distribution, vol. 3, no. 9, pp. 859–871, 2009. [13] H. Farhangi, “The path of the smart grid,” IEEE power and energy magazine, vol. 8, no. 1, pp. 18–28, 2009. [14] J. Hetzer, C. Y. David, and K. Bhattarai, “An economic dispatch model incorporating wind power,” IEEE Transactions on energy conversion, vol. 23, no. 2, pp. 603–611, 2008. [15] K. Prabakar, F. Li, and B. Xiao, “Controller hardware-in-loop testbed setup for multi-objective optimization based tuning of inverter controller parameters in a microgrid setting,” in 2016 Clemson University Power Systems Conference (PSC). IEEE, 2016, pp. 1–8. [16] H. Ishibuchi, Y. Nojima, and T. Doi, “Comparison between single-objective and multi-objective genetic algorithms: Performance comparison and performance measures,” in 2006 IEEE International Conference on Evolutionary Computation. IEEE, 2006, pp. 1143–1150. [17] A. A. El-Fergany and H. M. Hasanien, “Single and multi-objective optimal power flow using grey wolf optimizer and differential evolution algorithms,” Electric Power Components and Systems, vol. 43, no. 13, pp. 1548–1559, 2015. [18] D. E. Goldberg and J. H. Holland, “Genetic algorithms and machine learning,” Machine learning, vol. 3, no. 2, pp. 95–99, 1988. [19] J. Kennedy and R. Eberhart, “Particle swarm optimization (pso),” in Proc. IEEE International Conference on Neural Networks, Perth, Australia, 1995, pp. 1942– 1948. [20] L. J. Fogel, “Aj owens, and mj walsh,” Artificial Intelligence through Simulated Evolution. Wiley, New York, 1966. [21] M. Dorigo and M. Birattari, Ant colony optimization. Springer, 2010. [22] J. Kennedy, “Particle swarm optimization,” Encyclopedia of machine learning, pp. 760–766, 2010. 85 [23] Y. Gao, W. Du, and G. Yan, “Selectively-informed particle swarm optimization,” Scientific Reports, vol. 5, no. 1, pp. 9295–9295, 2015. [24] D. Karaboga and B. Basturk, “A powerful and efficient algorithm for numerical function optimization: artificial bee colony (abc) algorithm,” Journal of global optimization, vol. 39, no. 3, pp. 459–471, 2007. [25] X.-S. Yang and N.-I. M. Algorithms, “Luniver press,” Beckington, UK, pp. 242– 246, 2008. [26] X.-S. Yang, “Firefly algorithms for multimodal optimization,” in International symposium on stochastic algorithms. Springer, 2009, pp. 169–178. [27] T. Apostolopoulos and A. Vlachos, “Application of the firefly algorithm for solving the economic emissions load dispatch problem,” International journal of combinatorics, vol. 2011, 2010. [28] A. Chatterjee, G. K. Mahanti, and A. Chatterjee, “Design of a fully digital controlled reconfigurable switched beam concentric ring array antenna using firefly and particle swarm optimization algorithm,” Progress in Electromagnetics Research, vol. 36, pp. 113–131, 2012. [29] M. Sayadi, R. Ramezanian, and N. Ghaffari-Nasab, “A discrete firefly metaheuristic with local search for makespan minimization in permutation flow shop scheduling problems,” International Journal of Industrial Engineering Computations, vol. 1, no. 1, pp. 1–10, 2010. [30] M.-H. Horng, Y.-X. Lee, M.-C. Lee, and R.-J. Liou, “Firefly metaheuristic algorithm for training the radial basis function network for data classification and disease diagnosis,” Theory and new applications of swarm intelligence, vol. 4, no. 7, pp. 115–132, 2012. [31] M.-H. Horng, “Vector quantization using the firefly algorithm for image compression,” Expert Systems with Applications, vol. 39, no. 1, pp. 1078–1091, 2012. [32] B. Basu and G. K. Mahanti, “Fire fly and artificial bees colony algorithm for synthesis of scanned and broadside linear array antenna,” Progress In Electromagnetics Research, vol. 32, pp. 169–190, 2011. [33] M. A. Zaman, A. Matin et al., “Nonuniformly spaced linear antenna array design using firefly algorithm,” International Journal of Microwave Science and Technology, vol. 2012, 2012. [34] S. Tilahun and H. C. Ong, “Modified firefly algorithm,” Journal of Applied Mathematics, vol. 467631, 11 2012. 86 [35] S. Palit, S. N. Sinha, M. A. Molla, A. Khanra, and M. Kule, “A cryptanalytic attack on the knapsack cryptosystem using binary firefly algorithm,” in 2011 2nd International conference on computer and communication technology (ICCCT- 2011). IEEE, 2011, pp. 428–432. [36] S. M. Farahani, A. Abshouri, B. Nasiri, and M. Meybodi, “A gaussian firefly algorithm,” International Journal of Machine Learning and Computing, vol. 1, no. 5, p. 448, 2011. [37] L. dos Santos Coelho, D. L. de Andrade Bernert, and V. C. Mariani, “A chaotic firefly algorithm applied to reliability-redundancy optimization,” in 2011 IEEE congress of evolutionary computation (CEC). Ieee, 2011, pp. 517–521. [38] A. Abdullah, S. Deris, M. S. Mohamad, and S. Z. M. Hashim, “A new hybrid firefly algorithm for complex and nonlinear problem,” in Distributed Computing and Artificial Intelligence. Springer, 2012, pp. 673–680. [39] S. Mirjalili and A. Lewis, “The whale optimization algorithm,” Advances in engineering software, vol. 95, pp. 51–67, 2016. [40] N. M. Laskar, K. Guha, I. Chatterjee, S. Chanda, K. L. Baishnab, and P. K. Paul, “Hwpso: A new hybrid whale-particle swarm optimization algorithm and its application in electronic design optimization problems,” Applied Intelligence, vol. 49, no. 1, pp. 265–291, 2019. [41] I. N. Trivedi, P. Jangir, A. Kumar, N. Jangir, and R. Totlani, “A novel hybrid pso–woa algorithm for global numerical functions optimization,” in Advances in Computer and Computational Sciences. Springer, 2018, pp. 53–60. [42] M. Abdel-Basset, G. Manogaran, D. El-Shahat, and S. Mirjalili, “A hybrid whale optimization algorithm based on local search strategy for the permutation flow shop scheduling problem,” Future Generation Computer Systems, vol. 85, pp. 129–145, 2018. [43] N. Singh and H. Hachimi, “A new hybrid whale optimizer algorithm with mean strategy of grey wolf optimizer for global optimization,” Mathematical and Computational Applications, vol. 23, no. 1, p. 14, 2018. [44] N. Singh and S. Singh, “A modified mean gray wolf optimization approach for benchmark and biomedical problems,” Evolutionary Bioinformatics, vol. 13, 2017. [45] Z. Xu, Y. Yu, H. Yachi, J. Ji, Y. Todo, and S. Gao, “A novel memetic whale optimization algorithm for optimization,” in International Conference on Swarm Intelligence. Springer, 2018, pp. 384–396. 87 [46] M. M. Mafarja and S. Mirjalili, “Hybrid whale optimization algorithm with simulated annealing for feature selection,” Neurocomputing, vol. 260, pp. 302–312, 2017. [47] M. A. El Aziz, A. A. Ewees, and A. E. Hassanien, “Whale optimization algorithm and moth-flame optimization for multilevel thresholding image segmentation,” Expert Systems with Applications, vol. 83, pp. 242–256, 2017. [48] A. N. Jadhav and N. Gomathi, “Wgc: hybridization of exponential grey wolf optimizer with whale optimization for data clustering,” Alexandria engineering journal, vol. 57, no. 3, pp. 1569–1584, 2018. [49] S. Khalilpourazari and S. Khalilpourazary, “Scwoa: an efficient hybrid algorithm for parameter optimization of multi-pass milling process,” Journal of Industrial and Production Engineering, vol. 35, no. 3, pp. 135–147, 2018. [50] S. T. Revathi, N. Ramaraj, and S. Chithra, “Brain storm-based whale optimization algorithm for privacy-protected data publishing in cloud computing,” Cluster Computing, vol. 22, no. 2, pp. 3521–3530, 2019. [51] A. Kaveh and M. Rastegar Moghaddam, “A hybrid woa-cbo algorithm for construction site layout planning problem,” Scientia Iranica, vol. 25, no. 3, pp. 1094– 1104, 2018. [52] A. Kaveh and V. R. Mahdavi, “Colliding bodies optimization: a novel metaheuristic method,” Computers & Structures, vol. 139, pp. 18–27, 2014. [53] N. Srinivas and K. Deb, “Muiltiobjective optimization using nondominated sorting in genetic algorithms,” Evolutionary computation, vol. 2, no. 3, pp. 221–248, 1994. [54] K. Deb, A. Pratap, S. Agarwal, and T. Meyarivan, “A fast and elitist multiobjective genetic algorithm: Nsga-ii,” IEEE transactions on evolutionary computation, vol. 6, no. 2, pp. 182–197, 2002. [55] K. Deb, S. Agrawal, A. Pratap, and T. Meyarivan, “A fast elitist non-dominated sorting genetic algorithm for multi-objective optimization: Nsga-ii,” in International conference on parallel problem solving from nature. Springer, 2000, pp. 849–858. [56] Y. A.-R. I. Mohamed and E. F. El-Saadany, “Adaptive decentralized droop controller to preserve power sharing stability of paralleled inverters in distributed generation microgrids,” IEEE Transactions on Power Electronics, vol. 23, no. 6, pp. 2806–2816, 2008. 88 [57] M. Ahmed, A. Vahidnia, L. Meegahapola, and M. Datta, “Small signal stability analysis of a hybrid ac/dc microgrid with static and dynamic loads,” in 2017 Australasian Universities Power Engineering Conference (AUPEC). IEEE, 2017, pp. 1–6. [58] A. A. A. Radwan and Y. A.-R. I. Mohamed, “Stabilization of medium-frequency modes in isolated microgrids supplying direct online induction motor loads,” IEEE Transactions on Smart Grid, vol. 5, no. 1, pp. 358–370, 2013. [59] A. Kahrobaeian and Y. A.-R. I. Mohamed, “Analysis and mitigation of lowfrequency instabilities in autonomous medium-voltage converter-based microgrids with dynamic loads,” IEEE Transactions on Industrial Electronics, vol. 61, no. 4, pp. 1643–1658, 2013. [60] T. Jain et al., “Impact of load dynamics and load sharing among distributed generations on stability and dynamic performance of islanded ac microgrids,” Electric Power Systems Research, vol. 157, pp. 200–210, 2018. [61] I.-Y. Chung, W. Liu, D. A. Cartes, and K. Schoder, “Control parameter optimization for a microgrid system using particle swarm optimization,” in 2008 IEEE International Conference on Sustainable Energy Technologies. IEEE, 2008, pp. 837–842. [62] I.-Y. Chung, W. Liu, D. A. Cartes, and S.-I. Moon, “Control parameter optimization for multiple distributed generators in a microgrid using particle swarm optimization,” European Transactions on Electrical Power, vol. 21, no. 2, pp. 1200–1216, 2011. [63] M. Hassan and M. Abido, “Optimal design of microgrids in autonomous and grid-connected modes using particle swarm optimization,” IEEE Transactions on power electronics, vol. 26, no. 3, pp. 755–769, 2010. [64] K. Yu, Q. Ai, S. Wang, J. Ni, and T. Lv, “Analysis and optimization of droop controller for microgrid system based on small-signal dynamic model,” IEEE Transactions on Smart Grid, vol. 7, no. 2, pp. 695–705, 2015. [65] I. Abdulwahab, Y. Jibril, and Y. Shu’aibu, “Determination of optimal droop controller parameters for an islanded microgrid system using artificial fish swarm algorithm (afsa),” 03 2017. [66] R. Wang, S. Wu, C. Wang, S. An, Z. Sun, W. Li, W. Xu, S. Mu, and M. Fu, “optimized operation and control of microgrid based on multi-objective genetic algorithm,” in 2018 International Conference on Power System Technology (POWERCON). IEEE, 2018, pp. 1539–1544. 89 [67] R.-F. Yuan, Q. Ai, and X. He, “Research on dynamic load modelling based on power quality monitoring system,” IET Generation, Transmission & Distribution, vol. 7, no. 1, pp. 46–51, 2013. [68] Y. Li and Y. W. Li, “Power management of inverter interfaced autonomous microgrid based on virtual frequency-voltage frame,” IEEE Transactions on Smart Grid, vol. 2, no. 1, pp. 30–40, 2011. [69] J. M. Uudrill, “Dynamic stability calculations for an arbitrary number of interconnected synchronous machines,” IEEE Transactions on Power Apparatus and Systems, no. 3, pp. 835–844, 1968. [70] M. N. Marwali, J.-W. Jung, and A. Keyhani, “Control of distributed generation systems-part ii: Load sharing control,” IEEE Transactions on power electronics, vol. 19, no. 6, pp. 1551–1561, 2004. [71] M. Prodanovic, “Power quality and control aspects of parallel connected inverters in distributed generation,” Ph.D. dissertation, Imperial College London (University of London), 2004. [72] M. N. Marwali and A. Keyhani, “Control of distributed generation systems-part i: Voltages and currents control,” IEEE Transactions on power electronics, vol. 19, no. 6, pp. 1541–1550, 2004. [73] S. Anand and B. Fernandes, “Reduced-order model and stability analysis of lowvoltage dc microgrid,” IEEE Transactions on Industrial Electronics, vol. 60, no. 11, pp. 5040–5049, 2012. [74] S. R. Mudaliyar and S. S. Sahoo, “Comparison of different eigenvalue based multi-objective functions for robust design of power system stabilizers,” 2015. [75] G. Verma, A. Kumar, and K. K. Mishra, “A novel non-dominated sorting algorithm,” in International Conference on Swarm, Evolutionary, and Memetic Computing. Springer, 2011, pp. 274–281. [76] C. R. Raquel and P. C. Naval Jr, “An effective use of crowding distance in multiobjective particle swarm optimization,” in Proceedings of the 7th annual conference on Genetic and evolutionary computation. ACM, 2005, pp. 257–264. [77] P. D. P. Reddy, V. V. Reddy, and T. G. Manohar, “Optimal renewable resources placement in distribution networks by combined power loss index and whale optimization algorithms,” J. Electr. Syst. Inf. Technol, vol. 28, pp. 669–678, 2017. [78] M. B. Brown and A. B. Forsythe, “Robust tests for the equality of variances,” Journal of the American Statistical Association, vol. 69, no. 346, pp. 364–367, 1974. 90 en_US
dc.identifier.uri http://hdl.handle.net/123456789/743
dc.description Supervised by Dr. Ashik Ahmed (Supervisor) Professor Electrical and Electronic Engineering Department, Islamic University of Technology (IUT), Gazipur. en_US
dc.description.abstract Global optimization algorithms are becoming popular in a fast rate as they are able to solve different real life challenges. Swarm based nature inspired optimization techniques are developing in a fast pace due to its global acceptance and their capability in replicating various real life challenges and solving them efficiently with a better computation rate. Hybridization of these swarm based intelligent techniques with multiobjective based solution techniques is creating a wide door in the field of optimization as many real problems include multiple objectives which needs to be optimized. In this dissertation, two nature inspired hybrid optimizing algorithm is proposed incorporating swarm intelligence based firefly algorithm (FA) with multi objective based non-dominated sorting technique to form Non-dominated Sorting Firefly Algorithm (NSFA) and Non-dominated Sorting Whale Optimization Algorithm (NSWOA) where swarm based intelligence technique of Whale Optimization is hybridized with nondominated sorting technique. This study also demonstrates their application in optimization of controller parameter of islanded microgrid . Moreover, how the optimized parameter affects the dynamic performance of microgrid during load variation is also demonstrated in this dissertation. The purpose of incorporating FA and WOA with non-dominated sorting technique to form NSFA and NSWOA respectively is to enhance global searching capability of conventional FA and Whale Optimization Algorithm (WOA) for complex optimization problems. Based on statistical tool, SPSS software, statistical analysis was carried out where the performance of the proposed hybrid NSWOA algorithm is compared with the performance of multi objective Nondominated sorting genetic algorithm (NSGA) and Strength Pareto Evolutionary Algorithm (SPEA) in optimizing the controller parameters for the microgrid model used in this study. Similarly performance of NSFA is also compared with NSGA-II to analyze the ability of NSFA. This dissertation shows that NSWOA and NSFA is able to stabilize the system with faster computation rate with lesser number of iteration. Moreover, the system optimized using NSWOA and NSFA techniques provides better damping performance compared to NSGA-II. From this study it is obtained that NSWOA and NSFA requires 4:033 and 2:3667 iterations respectively to reach to best optimum solution which is significantly less than other existing algorithms. Moreover, the computational time required by NSWOA and NSFA is 2:9201 sec: and 4:5459 sec: respectively which proves that they reach to convergence at a much faster rate which is significantly less than existing NSGA-II and SPEA algorithms. en_US
dc.language.iso en en_US
dc.publisher Department of Electrical and Electronic Engineering, Islamic University of Technology,Board Bazar, Gazipur, Bangladesh en_US
dc.title Optimization of Controller for Islanded AC Microgrid System en_US
dc.type Thesis en_US


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