海上风电机组疲劳可靠性高效分析的自适应代理集合

IF 9.1 1区 工程技术 Q1 ENERGY & FUELS
Jinsheng Wang , Chao Chen , Philippe Duffour , Paul Fromme
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引用次数: 0

摘要

海上风力涡轮机(owt)对于全球向可再生能源的过渡至关重要,但它们在恶劣的海洋条件下运行,其中由风和波浪引起的载荷引起的疲劳损伤是一个关键的设计问题。由于环境和结构参数的不确定性,评估疲劳可靠性变得更加复杂,而传统的方法,如蒙特卡罗模拟(MCS)仍然非常昂贵。为了解决这一挑战,本研究开发了一种自适应代理集合(AEOS),该集合集成了克里格、贝叶斯支持向量回归和多项式混沌克里格。一种新的平衡局部和全局误差度量的加权策略,结合基于奖励的学习函数分配方案和混合停止准则,实现了有效和准确的主动学习。提出的AEOS在基准问题和单桩支持的OWT案例研究中得到了验证,与MCS相比,实现了相对误差小于1.5%的故障概率估计,同时将计算成本降低了95%以上。敏感性分析进一步揭示了风条件和疲劳强度参数对疲劳可靠性结果的影响。AEOS为疲劳可靠性评估提供了高效、准确和灵活的框架,支持海上风电基础设施的风险维护、寿命延长和可持续运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive ensemble of surrogates for efficient fatigue reliability analysis of offshore wind turbines
Offshore wind turbines (OWTs) are crucial to the global transition towards renewable energy, but they operate under harsh marine conditions where fatigue damage from wind- and wave-induced loads is a critical design concern. Assessing fatigue reliability is further complicated by uncertainties in environmental and structural parameters, and conventional approaches such as Monte Carlo simulation (MCS) remain prohibitively expensive. To address this challenge, this study develops an adaptive ensemble of surrogates (AEOS) that integrates Kriging, Bayesian support vector regression, and polynomial chaos Kriging. A novel weighting strategy that balances local and global error measures, together with a reward-based learning function allocation scheme and a hybrid stopping criterion, enables efficient and accurate active learning. The proposed AEOS is validated on benchmark problems and a monopile-supported OWT case study, achieving failure probability estimates with less than 1.5% relative error while reducing computational cost by more than 95% compared to MCS. Sensitivity analysis further reveals that wind conditions and fatigue strength parameters dominate fatigue reliability outcomes. AEOS provides an efficient, accurate, and flexible framework for fatigue reliability assessment, supporting risk-informed maintenance, life extension, and sustainable operation of offshore wind infrastructure.
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来源期刊
Renewable Energy
Renewable Energy 工程技术-能源与燃料
CiteScore
18.40
自引率
9.20%
发文量
1955
审稿时长
6.6 months
期刊介绍: Renewable Energy journal is dedicated to advancing knowledge and disseminating insights on various topics and technologies within renewable energy systems and components. Our mission is to support researchers, engineers, economists, manufacturers, NGOs, associations, and societies in staying updated on new developments in their respective fields and applying alternative energy solutions to current practices. As an international, multidisciplinary journal in renewable energy engineering and research, we strive to be a premier peer-reviewed platform and a trusted source of original research and reviews in the field of renewable energy. Join us in our endeavor to drive innovation and progress in sustainable energy solutions.
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