To read this content please select one of the options below:

Generation scheduling with large-scale integration of renewable energy sources using grey wolf optimization

R. Saravanan (Department of Electrical and Electronics Engineering, Parisutham Institute of Technology and Science, Thanjavur, India)
S. Subramanian (Department of Electrical Engineering, Annamalai University, Cuddalore, India)
S. SooriyaPrabha (Department of Electrical and Electronics Engineering, Parisutham Institute of Technology and Science, Thanjavur, India)
S. Ganesan (Department of Electrical Engineering, Annamalai University, Cuddalore, India)

International Journal of Energy Sector Management

ISSN: 1750-6220

Article publication date: 16 October 2018

Issue publication date: 23 October 2018

121

Abstract

Purpose

Generation scheduling (GS) is the most prominent and hard-hitting problem in the electrical power industry especially in an integrated power system. Countless techniques have been used so far to solve this GS problem for proper functioning of the units in the power system to dispatch the load economically to consumers at once. Therefore, this work aims to study for the best possible function of integrated power plants to obtain the most favourable solution to the GS problem.

Design/methodology/approach

An appropriate method works in a proper way and assures to give the best solution to the GS problem. The finest function of incorporated power plants should be mathematically devised as a problem and via that the aim of the GS problem to minimize the total fuel cost subject to different constraints will be achieved. In this research work, the latest meta-heuristic and swarm intelligence-based technique called grey wolf optimization (GWO) technique is used as an optimization tool that will work along with the formulated problem for correct scheduling of generating units and thus achieve the objective function.

Findings

The recommended GWO technique provides the best feasible solution which is optimal in its performance for different test cases in the GS problem of integrated power plant. It is further found that the obtained solutions using GWO method are better than the former reports of other traditional methods in terms of solution excellence. The GWO method is found to be unique in its performance and having superior computational efficiency.

Practical implications

Decision making is significant for effective operation of integrated power plants in an electrical power system. The recommended tactic implements a modern meta-heuristic procedure that is applied to diverse test systems. The method that is proposed is efficient in providing the best solutions of solving GS problems. The suggested method surpasses the early techniques by offering the most excellent feasible solutions. Thus, it is obvious that the proposed method may be the appropriate substitute to attain the optimal operation of GS problem.

Social implications

Renewable energy sources are discontinuous and infrequent in nature, and it is tough to predict them in general. Further, integrating renewable energy source-based plants with the conventional plant is extremely difficult to operate and maintain. Operation of integrated power system is full of challenges and complications. To handle those complications and challenges, the GWO algorithm is suggested for solving the GS problem and thus obtain the optimal solution in integrated power systems by considering the reserve requirement, load balance, equality and inequality constraints.

Originality/value

The proposed system should be further tested on diverse test systems to evaluate its performance in solving a GS problem and the results should be compared. Computation results reveal that the proposed GWO method is efficient in attaining best solution in GS problem. Further, its performance is effectively established by comparing the result obtained by GWO with other traditional methods.

Keywords

Citation

Saravanan, R., Subramanian, S., SooriyaPrabha, S. and Ganesan, S. (2018), "Generation scheduling with large-scale integration of renewable energy sources using grey wolf optimization", International Journal of Energy Sector Management, Vol. 12 No. 4, pp. 675-695. https://doi.org/10.1108/IJESM-07-2016-0001

Publisher

:

Emerald Publishing Limited

Copyright © 2018, Emerald Publishing Limited

Related articles