计算机科学
惯性
智能电网
控制(管理)
网格
人工智能
生态学
物理
几何学
数学
经典力学
生物
作者
Nirmala John,Varaprasad Janamala,Joseph Rodrigues
标识
DOI:10.22266/ijies2022.0430.22
摘要
Due to numerous operational restrictions and economic purposes, optimal load management for energy balance in the smart grid (SG) is one of the compensating responsibilities.This research provides a novel multiobjective optimization technique for attaining energy balance in SG, with the goal of avoiding fines due to excessive upstream network power extraction beyond contractual demand.Due to a lack of capacity to create the whole optimization towards the global optimum after each run, optimal load control (OLC) is a prevalent challenge.Adaptive-TLBO, the most recent variation of Teaching Learning Based Optimization (TLBO), comprises both alterations during the exploitation and exploration phases (ATLBO).Because the ATLBO is used on a modified IEEE 33-bus system, the results obtained in this mode are extraordinary.The energy balance has improved in addition to the enhancement of the voltage profile and the reduction of distribution losses.As evidenced by comparisons with PSO, basic TLBO, backtracking search algorithm (BSA), and cuckoo search algorithms, the suggested ATLBO algorithm has precedence over any other proposed algorithm (CSA).
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