91一级特黄大片|婷婷中文字幕在线|av成人无码国产|日韩无码一二三区|久久不射强奸视频|九九九久久久精品|国产免费浮力限制

課題組研究的動(dòng)態(tài)多目標(biāo)優(yōu)化算法發(fā)表在中科院1區(qū)Expert Systems with Applications,歡迎指導(dǎo)交流
來源: 歐陽海濱/
廣州大學(xué)
57
1
0
2025-07-25

Dynamic multi-objective optimization using historical evolutionary learning with global alignment local descriptor matching and collaborative guidance

 

Abstract:Dynamic multi-objective optimization problems involve conflicting objectives that evolve over time, necessitating algorithms capable of efficiently tracking the dynamic Pareto optimal set and preserving solution diversity. To address this, the paper proposes a framework for dynamic multi-objective optimization algorithms based on Historical Evolutionary Learning (EHEL). The framework employs four strategies: using global alignment and local descriptor matching to improve the accuracy of historical individual searches; adopting a multi-history experience collaborative guidance strategy to integrate historical information and enhance the reliability of evolutionary direction; introducing a dynamic quadratic correction strategy to revise less-potential solutions; and proposing a shrinking boundary strategy to preserve directional information and enhance boundary exploration capability. Experiments on the CEC 2018 benchmark test set show that EHEL exhibits superior optimization capabilities across various dynamic environments, significantly enhancing convergence diversity and solution quality compared to existing algorithms. This research provides a robust and adaptive solution strategy for dynamic multi-objective optimization by effectively integrating historical experience with adaptive mechanisms.


登錄用戶可以查看和發(fā)表評(píng)論, 請(qǐng)前往  登錄 或  注冊(cè)。
SCHOLAT.com 學(xué)者網(wǎng)
免責(zé)聲明 | 關(guān)于我們 | 聯(lián)系我們
聯(lián)系我們: