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Legislative optimization algorithm for real power loss diminishing and voltage reliability escalation

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Abstract

In this paper Legislative Optimization (LO) algorithm has been applied for solving the power loss lessening problem. Legislative Optimization (LO) algorithm is stimulated by the election procedure legislative body. Every citizen in the country had a wish and will to vote in order to elect a democratic government. There will be formation of political party, identification of constituency for contesting, campaign for the election etc. In this paper these procedure are imitated and mathematically formulated to design the Legislative Optimization (LO) algorithm. Exclamation stratagem is based on discrete arguments, is integrated in the Legislative Optimization (LO) algorithm. Exclamation stratagem will overcome the inadequacies dwindling into local optimal solution. Subsequent to the usage of the exclamation stratagem a derivative optimum solution is engendered and it equated with the elucidation engendered by Legislative Optimization (LO) algorithm. If the elucidation is superior to engendered solutions by LO approach, then it will be swapped; or else, the solution engendered by Legislative Optimization (LO) algorithm will be engaged. Procurement of a virtuous equilibrium between exploration and exploitation is the important constituent of optimization methods. Comprehensive exploration includes the examination of new-fangled probable zones. Consecutively, it is risky to uphold the multiplicity of the populace. Confined exploitation encompasses probing for a great meticulousness elucidation in a minor zone, which is exposed through comprehensive examination. Extreme comprehensive exploration leads to sluggish convergence promptness, however disproportionate confined exploitation fallouts in early convergence..In initial period of iterations, a loftier Acclimatize factor value can create a superior stride, which points to sturdier comprehensive exploration. At this period, the deteriorating promptness of Acclimatize factor requires to be loftier. In last phase iterations, a minor Acclimatize factor value can create a minor stride, which points to sturdier confined exploitation. Nevertheless, the minor Acclimatize factor value tip-offs to an inferior populace multiplicity and fallouts in an upper possibility at confined optimum value. Legitimacy of the Legislative Optimization (LO) algorithm is corroborated in IEEE test systems.

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Correspondence to Lenin Kanagasabai.

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Kanagasabai, L. Legislative optimization algorithm for real power loss diminishing and voltage reliability escalation. Int J Syst Assur Eng Manag 14, 1197–1207 (2023). https://doi.org/10.1007/s13198-023-01913-4

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