导管架平台和固定式海上风力发电机波浪冲击随机波筛选的有效指标

T. Bunnik, J. Scharnke, E. Ridder
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引用次数: 4

摘要

由于各种原因,人们对波浪影响评估的兴趣重新高涨:•北海一些现有移动装置的气隙低•COSL Innovator事件以及与该主题相关的新DNV-GL指南(OTG 13和OTG 14)。•在北海越来越深的水域为风力涡轮机安装了许多大直径单桩基础。•在北海越来越深的水域安装了许多大直径风力涡轮机。•海底下沉(可能由于全球变暖导致水位上升)及其对固定平台气隙减少的影响。波浪影响评估一直是最近许多研究和研究项目的主题,在过去十年中,无论是在模型测试还是数值(CFD)分析(Huang等人(2017),de Ridder等人(2017),Vestbøstad等人(2017),Bunnik等人),都有很强的知识和工具开发。(2018))。然而,目前仍然缺乏有效的方法和工具来正确分析海浪的影响,并得出这些结构在其生命周期中所暴露的海况中这些影响的统计变化。为了减少在估计与极端波浪有关的设计载荷时自然产生的统计不确定性,必须收集足够的数据。为了估计设计荷载,通常的做法不是调查所有可能的海况(即长期分析),而是调查一些海况,并假设设计值在相同概率水平的海况中以规定的概率水平出现(即等高线方法)。在该概率水平上的设计值的估计是基于这些海况的有限数量的随机实现的结果。对于线性或弱非线性响应类型,可以用相当有限的实现数来准确估计设计载荷。然而,对于强非线性问题,这是不可能的,因为在最大观测值中有很大的统计变化,这是随机非线性过程固有的。准确估计负荷分布的尾部需要更多的实现。这种方法受到时间和成本的限制,最终人们可能不得不接受具有较大统计不确定性的估计设计负载,并以更高的安全裕度来解释不确定性。本文将提出一种改进的方法来估计与极端波浪冲击有关的设计载荷。该方法是基于筛选许多3小时实现的设计海况,采用简化、快速但足够准确的方法,并只关注潜在的关键事件,使用包含更完整物理描述的模型。这可以是一个模型测试或非线性冲击模拟(即CFD分析)。通过这样做,可以评估更多的罕见/关键事件,减少设计负载估计中的统计不确定性。本文将介绍一种用于导管架平台和固定式海上风力涡轮机的筛选方法/波浪冲击指示器。利用已有的模型试验数据显示指标与实际冲击事件之间的相关性,推导出冲击指标的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Indicators for Screening of Random Waves for Wave Impacts on a Jacket Platform and a Fixed Offshore Wind Turbine
Renewed interest in wave impact assessment has risen for various reasons: • The low airgap of some existing Mobile Units in the North Sea • The COSL Innovator incident and related to this topic the new DNV-GL guidelines (OTG 13 and OTG 14). • the installation of many large-diameter monopile foundations for wind turbines in increasingly deep water in the North Sea. • The installation of many large-diameter wind turbines in increasingly deep water in the North Sea. • Seabed subsidence (and maybe water level rises due to global warming) and their effect on the decreasing airgap of fixed platforms. Wave impact assessment has been the subject of many recent studies and research projects, and there has been a strong knowledge and tool development during the last decade, both within model testing and numerical (CFD) analysis (Huang et.al (2017), de Ridder et.al, (2017), Vestbøstad et. al. (2017), Bunnik et.al. (2018)). However, there is still a lack of efficient methods and tools to properly analyze wave impacts and derive the statistical variation of these impacts in the sea states to which these structures are exposed during their lifetime. To reduce the statistical uncertainties that are naturally arising in estimates of design loads related to extreme waves, sufficient data must be gathered. In order to estimate the design loads it is common practice not to investigate all possible sea states (i.e. long-term analysis) but to investigate a few sea states and assume that the design value occurs at a prescribed probability level in the sea states with the same probability level (i.e. contour line approach). The estimate of the design value at that probability level is then based on results from a limited number of random realizations of these sea states. For linear or weakly nonlinear response types it is possible to estimate design loads accurately with a quite limited number of realizations. For strongly nonlinear problems however this is not possible due to the large statistical variation in the maximum observations, inherent to a random nonlinear process. Estimating accurately the tail of the load distribution requires many more realizations. This approach is restricted by time and costs and eventually one may have to accept an estimated design load with a large statistical uncertainty and account for the uncertainty with a higher safety margin. In this paper an improved methodology for estimating design loads related to extreme wave impacts will be presented. The methodology is based on screening many 3-hour realizations of the design sea states with simplified, fast but sufficiently accurate methods and to focus only on the potentially critical events with a model containing a more complete description of the physics. This can be either a model test or a non-linear impact simulation (i.e. CFD analysis). By doing this many more rare/critical events can be assessed, reducing the statistical uncertainty in the estimate of the design load. A screening method/wave impact indicator will be presented for a jacket platform and for a fixed offshore wind turbine. Existing model test data is used to show the correlation between indicator and actual impact events and to derive the efficiency of the impact indicators.
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