Toward unique electrical ladder network model synthesis of a transformer winding high-frequency modeling using K-means and metaheuristic-based method

COMPEL Pub Date : 2024-02-16 DOI:10.1108/compel-05-2023-0207
Abdallah Chanane, Hamza Houassine
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Abstract

Purpose

Although, numerous optimization algorithms have been devoted to construct an electrical ladder network model (ELNM), they suffer from some frail points such as insufficient accuracy as well as the majority of them are unconstrained, which result in optimal solutions that violate certain security operational constraints. For this purpose, this paper aims to propose a flexible-constraint coyote optimization algorithm; the novelty lies in these points: penalty function is introduced in the objective function to discard any unfeasible solution, an advanced constraint handling technique and empirical relationship between the physical estimated parameters and their natural frequencies.

Design/methodology/approach

Frequency response analysis (FRA) is very significant for transformer winding diagnosis. Interpreting results of a transformer winding FRA is quite challenging. This paper proposes a new methodology to synthesize a nearly unique ELNM physically and electrically coupled for power transformer winding, basing on K-means and metaheuristic algorithm. To this end, the K-means method is used to cluster the setting of control variables, including the self-mutual inductances/capacitances, and the resistances parameters. Afterward, metaheuristic algorithm is applied to determine the cluster centers with high precision and efficiency.

Findings

FRA is performed on a power transformer winding model. Basing on the proposed methodology, the prior knowledge in selecting the initial guess and search space is avoided and the global solution is ensured. The performance of the abovementioned methodology is compared using evaluation expressions to verify its feasibility and accuracy.

Originality/value

The proposed method could be generalized for diagnosis of faults in power transformer winding.

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使用基于 K-均值和元搜索的方法合成变压器绕组高频建模的独特电气梯形网络模型
目的 虽然已有许多优化算法被用于构建梯形电网模型(ELNM),但它们都存在一些缺陷,如精度不够,以及大多数算法都是无约束的,从而导致最优解违反了某些安全操作约束。为此,本文旨在提出一种灵活约束的土狼优化算法;其新颖之处在于以下几点:在目标函数中引入惩罚函数以摒弃任何不可行的解决方案、先进的约束处理技术以及物理估计参数与其固有频率之间的经验关系。解释变压器绕组频率响应分析的结果相当具有挑战性。本文提出了一种新方法,基于 K-means 和元启发式算法,为电力变压器绕组合成物理和电气耦合的近乎唯一的 ELNM。为此,采用 K-means 方法对控制变量(包括自偶电感/电容和电阻参数)的设置进行聚类。随后,采用元启发式算法来确定聚类中心,以实现高精度和高效率。根据提出的方法,在选择初始猜测和搜索空间时避免了先验知识,并确保了全局解。利用评价表达式对上述方法的性能进行了比较,以验证其可行性和准确性。
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