基于元启发式算法的非凸约束多燃料发电机最优负荷调度

D. Rao, Chiranjeevi Tulluri, Bharath Kumar Narukullapati, Haqqani Arshad, Raju Mv
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引用次数: 0

摘要

任何发电系统的主要目标都是在不损害系统经济可行性的前提下向消费者提供足够的电力。电网的现代化导致了电力需求的显著增加,这增加了生产电能的成本。当产出成本上升时,向终端消费者输送能源的成本也会上升。因此,必须优化电力系统各阶段的能量输出。因此,在保持负荷需求要求和传输损耗的同时,降低了单位热能输出的成本。根据以往的研究,这些具有多种燃料的复杂非线性二次函数导致了蒸汽热力发电系统的非凸问题。理想的经济负荷调度(ELD)模型的蒸汽火力发电机组的多种燃料是可能的。由于增量成本函数的急剧变化和中断是可能的,使用现有技术很难简化非凸问题。本研究采用基于对立教学的学习优化(OTLBO)来解决对立教学问题。在不同的负载需求下,将所提出的解决方案应用于6单元测试系统、10单元测试系统和14单元测试系统,并使用基于教学的优化(TLBO)算法对结果进行评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Nonconvex Constrained based Optimal Load Scheduling of Generators with Multiple Fuels using meta-heuristic Algorithms
The primary goal of any electric power generation system is to provide a sufficient amount of electricity to consumers without jeopardizing the system's economic viability. The modernization of the power grid has resulted in a significant rise in power demand, which has increased the cost of producing electrical energy. When the cost of output rises, so does the cost of transferring energy to the end consumer. As a result, the output of energy at various stages of a power system must be optimized. As a result, the cost per unit of thermal energy output is reduced while load demand requirements and transmission losses are maintained. These complex non-linear quadratic functions with Multiple Fuels lead to a non-Convex problem for steam thermal generating systems, according to previous studies. Perfect Economic Load Dispatch (ELD) modelling for steam thermal generating units is possible with multiple fuels. Because acute variations and disruptions in the incremental cost function are possible, it is difficult to simplify the non-convex problem using existing techniques. Oppositional Teaching Learning Based Optimization (OTLBO) is used to address the ELD problem in this research. Under various load demands, the proposed solution was applied to a 6-unit test system, a 10-unit test system, and a 14-unit test system, and the results were evaluated using the Teaching Learning Based Optimization (TLBO) algorithm.
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