A Solution Method for Non-Linear Underdetermined Equation Systems in Grounding Grid Corrosion Diagnosis Based on an Enhanced Hippopotamus Optimization Algorithm.

IF 3.4 3区 医学 Q1 ENGINEERING, MULTIDISCIPLINARY
Jinhe Chen, Jianyu Qi, Yiyang Ao, Keying Wang, Xin Song
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Abstract

As power grids scale and aging assets edge toward obsolescence, grounding grid corrosion has become a critical vulnerability. Conventional diagnosis must fit high-dimensional electrical data to a physical model, typically yielding a nonlinear under-determined system fraught with computational burden and uncertainty. We propose the Enhanced Biomimetic Hippopotamus Optimization (EBOHO) algorithm, which distills the river-dwelling hippo's ecological wisdom into three synergistic strategies: a beta-function herd seeding that replicates the genetic diversity of juvenile hippos diffusing through wetlands, an elite-mean cooperative foraging rule that echoes the way dominant bulls steer the herd toward nutrient-rich pastures, and a lens imaging opposition maneuver inspired by moonlit water reflections that spawn mirror candidates to avert premature convergence. Benchmarks on the CEC 2017 suite and four classical design problems show EBOHO's superior global search, robustness, and convergence speed over numerous state-of-the-art meta-heuristics, including prior hippo variants. An industrial case study on grounding grid corrosion further confirms that EBOHO swiftly resolves the under-determined equations and pinpoints corrosion sites with high precision, underscoring its promise as a nature-inspired diagnostic engine for aging power system infrastructure.

基于改进河马优化算法的接地网腐蚀诊断非线性欠定方程组求解方法。
随着电网规模的扩大和老化资产的淘汰,接地网腐蚀已成为一个关键的脆弱性。传统诊断必须将高维电数据拟合到物理模型中,这通常会产生一个充满计算负担和不确定性的非线性欠定系统。本文提出了一种增强仿生河马优化算法(Enhanced Biomimetic Hippopotamus Optimization, EBOHO),该算法将河中河马的生态智慧提炼为三种协同策略:一种贝塔功能的群体播种,复制了在湿地中扩散的幼年河马的遗传多样性,一种精英平均的合作觅食规则,与占统治地位的公牛引导群体走向营养丰富的牧场的方式相似,还有一种透镜成像对抗策略,灵感来自月光下的水反射,产生镜像候选物,以避免过早收敛。CEC 2017套件和四个经典设计问题的基准测试表明,EBOHO比许多最先进的元启发式算法(包括先前的河马变体)具有卓越的全局搜索、鲁棒性和收敛速度。一个关于接地网腐蚀的工业案例研究进一步证实,EBOHO可以快速解决未确定的方程,并高精度地确定腐蚀部位,强调了其作为老化电力系统基础设施的自然启发诊断引擎的前景。
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
Biomimetics
Biomimetics Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
3.50
自引率
11.10%
发文量
189
审稿时长
11 weeks
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