SECURITY CONSTRAINED OPTIMAL POWER FLOW BASED ON AN ARTIFICIAL INTELLIGENCE TECHNIQUE

Ayman Almansory, Kassim Al-Anbarri
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引用次数: 0

Abstract

In the past, artificial intelligence techniques were successfully adopted for obtaining optimal power flow in a power system. However, this optimality is limited to the economic aspects of the system's operating conditions. The other aspects of the operation, like security conditions, have been given limited attention. Hence, this paper presents an attempt to dispatch the power generation in electrical power systems optimally by taking into consideration both economic and secure operations, so that modern power systems can operate reliably and effectively. Security-constrained optimal power flow is addressed in this paper as a multi-objective optimization problem, consisting of four objective functions: minimizing power generation costs; minimizing voltage deviation; minimizing power losses; and alleviating the overloading on transmission lines. A detailed steady-state generator model is adopted in the present formulation. A metaheuristic optimization technique, namely, differential evolution, is used to obtain the security constraint optimal power dispatch. Additionally, the operating states of a power system have been addressed in this paper. The identification of the operating states is vital to the assessment of the security of the EPS. Improvements and appropriate security assessments have been made in some cases. The proposed algorithm is applied to a typical power system with different operating strategies. The obtained results are compared to those obtained from previous studies in the literature to demonstrate the suggested method's validity and effectiveness.
基于人工智能技术的安全约束最优潮流
过去,人工智能技术已成功地用于电力系统的最优潮流求解。然而,这种最优性仅限于系统运行条件的经济方面。该行动的其他方面,如安全条件,受到的关注有限。因此,本文试图在兼顾经济运行和安全运行的前提下,对电力系统的发电量进行优化调度,使现代电力系统可靠有效地运行。本文将安全约束下的最优潮流作为一个多目标优化问题来研究,该问题包括四个目标函数:发电成本最小化;电压偏差最小;尽量减少功率损耗;并减轻输电线路的过载。在本公式中采用了详细的稳态发电机模型。采用一种元启发式优化技术,即差分进化,求解安全约束下的最优电力调度。此外,本文还讨论了电力系统的运行状态。EPS运行状态的识别对其安全性评估至关重要。在某些情况下已作出改进和适当的安全评估。将该算法应用于具有不同运行策略的典型电力系统。将所得结果与以往文献的研究结果进行比较,验证了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
0.70
自引率
0.00%
发文量
74
审稿时长
50 weeks
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