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OPERATIONAL MODEL UPDATING OF LOW-ORDER HAWT MODELS FOR STRUCTURAL HEALTH MONITORING APPLICATIONS

机译:用于结构健康监测应用的低阶铁壳模型的操作模型更新

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For the past decade, wind turbines have become the largest source of installed renewable-energy capacity in the United States. Economical, maintenance and operation are critical issues when dealing with such large slender structures, particularly when these structures are sited remotely. Because of the chaotic nature of non-stationary rotating-machinery systems such as the horizontal-axis wind turbines (HAWTs), in-operation modeling and computer-aided numerical characterization is typically troublesome, and tends to be imprecise while predicting the real content of the actual aerodynamic loading. Loading environment under operation conditions is usually substantially different from those driven by modal testing or computer-aided model characterization and difficult to measure directly in the field. In addition, rotational machinery such as HAWTs exhibit complex and nonlinear dynamics (i.e., precession and Coriolis effects, torsional coupling, nonlinear geometries, plasticity of composite materials); and are subjected to nonlinear constrained conditions (i.e., aeroelastic interaction). For those reasons, modal-aeroelastic and computer-aided models reproduced under controlled conditions may fail to predict the correct non-stationary loading and resistance patterns of wind turbines in actual operation. Operational techniques for extracting modal properties under actual non-stationary loadings are needed in order to (1) improve computer-aided elasto-aerodynamic models to better characterize the actual behavior of HAWTs in operational scenarios, (2) improve and correlate models, (3) monitor and diagnose the system for integrity and damage through time, or even (4) optimize control systems. For structural health monitoring (SHM) applications, model updating of stochastic aerodynamic problems has gained interest over the past decades. For situations where optimizing objective functions are not differentiable, convex or continuous in nature that is the case of gradient methods such as Modal Assurance Criterion (MAC), global optimization (metaheurstic) methods based on probability principles have emerged. These search engine techniques are promising suitable to cope with non-stationary-stochastic system identification methods for model updating of HAWT systems. A probability theory framework is employed in this study to update the wind turbine model using such a stochastic global optimization approach. Structural identification is addressed under regular wind turbine operation conditions for non-stationary, unmeasured, and uncontrolled excitations by means of the eigensystem realization theory (ERA). This numerical framework is then tied up with an adaptive simulated annealing (ASA) numerical engine for solving the problem of model updating. Numerical results are presented for an experimental deployment of a small HAWT structure. Results are benchmarked and validated with other empirical mode-decomposition and time-domain solutions.
机译:在过去的十年中,风力涡轮机已成为在美国安装的可再生能源容量的最大来源。有这么大的细长结构打交道时,特别是当这些结构远处的经济,维护和操作非常关键的问题。因为非平稳旋转-机械系统,如水平轴风力涡轮机(的HAWT)的混沌性质的,在操作建模和计算机辅助数值表征通常是麻烦的,并趋向于不精确而预测的实际内容实际的空气动力学负荷。操作条件下加载环境通常是那些由模态测试或计算机辅助模型表征和难以从动基本上不同的直接在现场进行测量。此外,旋转机械如的HAWT表现出复杂和非线性动力学(即,进动和科里奥利效应,扭转耦合,非线性几何形状,复合材料的可塑性);并经受非线性约束条件(即,气动弹性交互)。由于这些原因,模态-气动弹性和计算机辅助模型控制的条件下也能再生可能无法预测的风力涡轮机的正确的非平稳装载和耐药模式在实际操作。是需要的,以便用于提取下实际非平稳载量的模态特性的操作技术,以(1)提高计算机辅助弹空气动力学模型,以更好地表征的操作场景的HAWT的实际行为,(2)提高和关联模型,(3 )监测和通过时间的诊断系统的完整性和损害,或甚至(4)优化控制系统。对于结构健康监测(SHM)应用中,随机空气动力学问题模型更新已经获得了在过去几十年的兴趣。对于其中优化目标函数情况是不可微的,凸的或在自然界中是已经出现的梯度的方法,例如模态置信度(MAC),全局优化(metaheurstic)基于概率的原理的方法的情况下是连续的。这些搜索引擎技术是有希望的合适的以应付HAWT系统的模型修正非平稳随机的系统识别方法。概率论框架采用在这项研究中,更新使用这样的随机全局优化方法的风力发电机组模型。结构鉴定由特征系统实现理论(ERA)的装置,用于非静态,不可测量的,不受控制的和定期激励风力涡轮机运行的条件下处理。然后该数值框架捆绑与求解模型更新的问题的自适应模拟退火(ASA)数值发动机。数值结果给出了一个小HAWT结构的实验性部署。结果基准,并与其他经验模式分解和时域解验证。

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