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A statistical analysis in optimization of wind penetrated non convex dynamic power dispatch problem using different strategies of differential evolution algorithm

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Abstract

Economy plays a major role in almost all areas of engineering and hence it is necessary to plan for the proper allocation of generating units for the variable power demand. It is also important to look forward to the renewable energy support for satisfying the power demand which is more economical. Here in this article proposed a statistical analysis of Dynamic power dispatch considering wind power penetration under uncertainties. In order to frame the problem to be more realistic, various non smooth constraints like valve point loading, Ramp Rate limits and Prohibited Operating Zones were included. The optimization is performed using various strategies of Differential Evolution Algorithm and the validation of results was achieved by comparing the results with other methods for 10 and 15 unit system.

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Correspondence to B. Padmanabhan.

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Padmanabhan, B., Premalatha, L. A statistical analysis in optimization of wind penetrated non convex dynamic power dispatch problem using different strategies of differential evolution algorithm. J Ambient Intell Human Comput (2019). https://doi.org/10.1007/s12652-019-01562-1

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