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Profit Based Unit Commitment Problems with Emission Constraints Using Swarm Intelligence Technique

T. Venkatesan, S. M. Janani

Abstract


Unit Commitment (UC) problem is a significant optimizing task in daily operational planning of power systems which can be mathematically expressed as a large scale nonlinear mixed integer minimization problem for which there is no particular solution technique. The solution for the problem can be gained only by complete enumeration, often at a prohibitively computation time requirement for realistic power systems. This optimization involves many constraints such as system power and reserve, unit generation limit, unit minimum ON/OFF duration and ramping constraints. In this paper, the particle swarm optimization is proposed to solve the Profit Based Unit Commitment problem below deregulated environment with emission limitation. The bi-objective function optimization problem is expressed as a maximization of the Generation Companies profit and a minimization of the emission output of the thermal units, while all of the constrains should be fulfilled. This work, considers the new softer demand constraint to allocate fixed and transitional cost to the scheduled hours. The IEEE 10 unit 39 bus system with 24h data is engaged as the input for simulation using MATLAB software. From the results obtained, it is observed that the proposed system achieves maximum profit and minimum emission level with less computational time compared to other techniques.


Keywords


Unit Commitment, Particle Swarm Optimization, Emission limitations, Deregulation market, Swarm intelligence, Optimizing Power System.

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References


Logenthiran.T and Dipti Srinivasan, “Particle Swarm Optimization for Unit Commitment Problem,” IEEE Transactions on Power System, July 2010.

Javad Ebrahimi, Seyed Hossein Hosseinian, and Gevorg B. Gharehpetian, “Unit Commitment Problem Solution Using Shuffled Frog Leaping Algorithm,” IEEE Transactions On Power Systems, vol. 26, no. 2, May 2011.

Prateek Kumar Singhal and R. Naresh Sharma, “Dynamic Programming Approach for Solving Power Generating Unit Commitment Problem,” International Conference on Computer & Communication Technology, 2011.

Anup Shukla, Vivek Nandan Lal, and S. N. Singh, “Profit-Based Unit Commitment Problem Using PSO with Modified Dynamic Programming,” IEEE Transactions on Evolutionary Computation, 2015.

K.S. Swarup and S. Yamashiro, “Unit Commitment Solution Methodology Using Genetic Algorithm,” IEEE Transactions on Power Systems, vol. 17, no. 1, February 2002.

Shanmuga sundaram, M. Sudhakaran, R. Selvakumar and R.G. Natarajan “solution to profit based unit commitment using swarm intelligence technique,” International Conference on Computation of Power, Energy, Information and Communication (ICCPEIC) 2014.

M. Y. El-Sharkh1, N. S. Sisworahardjo and A. A. El-Kei “Fuzzy Unit Commitment Using the Ant Colony Search Algorithm,” IEEE Electrical Power & Energy systems, 2010.

Grzegorz Dudek, “Adaptive simulated annealing schedule to the unit commitment problem,” Elsevier Journal on Electric Power Systems Research, vol 80, issue 4, Pages 465–472,April 2010.

United Nations Framework Convention on Climate Change, UNFCCC. Kyoto protocol [online]. .

Palanichamy C and Babu NS. “Day–night weather-based economic power dispatch,” IEEE Transactions on Power Systems (17) pp.469–75, 2002.

Sam Harison and T. Sreerengaraja, “Swarm Intelligence to the Solution of Profit-Based Unit Commitment Problem with Emission Limitations,” Arabian Journal for Science and Engineering,vol. 38, issue 6, pp 1415–1425, June 2013.

Venkatesan.T and M.Y. Sanavullah , “SFLA approach to solve PBUC problem with emission limitation,” Elsevier Journal on Electrical Power and Energy Systems, Volume 46, Pages 1–9,March 2013.




DOI: http://dx.doi.org/10.36039/AA022017003.

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