Research Area:  Metaheuristic Computing
Optimization is an art that is best performed by a well-tuned algorithm. Nature – instead of being fully deterministic – is evolutionary, vibrant and resourceful. The nature-inspired algorithms use the best combination and evolution strategy in a given situation. In this work, a new metaheuristic algorithm is developed by using social behavior in human dynasties. The motivation, conceptual framework, mathematical model, pseudocode and working of the algorithm are described in this paper and the adjoining papers. The proposed dynastic optimization algorithm (DOA) has evolved with the wind turbine micrositing (WTM) problem in mind. The proposed DOA has been successfully applied to the traditional WTM and encouraging results have been obtained. It is demonstrated that the proposed approach is equally viable as other existing algorithms, like the Genetic algorithm (GA) and Differential evolution algorithm (DEA). The main advantage of the proposed DOA is that it is simple, unique, fast, unbiased and versatile in comparison with others. The validation of results has been made with respect to a few other mainstream algorithms in the literature, besides statistical sensitivity analysis is also performed. The 95% confidence interval forecasts for the power enhancement and cost reduction by using DOA against GA and DEA are encouraging and guarantee an adequate amount of mean increase in power output and a considerable average cost reduction.
Keywords:  
Metaheuristic optimization algorithm
inspired
human dynasties
wind turbine micrositing problem
Author(s) Name:  Shafiq-ur-Rehman Massan, Asim Imdad Wagan, Muhammad Mujtaba Shaikh
Journal name:  Applied Soft Computing
Conferrence name:  
Publisher name:  Elsevier
DOI:  10.1016/j.asoc.2020.106176
Volume Information:  Volume 90, May 2020, 106176
Paper Link:   https://www.sciencedirect.com/science/article/abs/pii/S1568494620301162