基于深度学习的海上风电机组全工况非线性长期振动响应预测

IF 4.3 2区 工程技术 Q1 ENGINEERING, OCEAN
Hong Bai , Jianhua Zhang , Ke Sun , Won-Hee Kang
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引用次数: 0

摘要

海上风力发电机振动响应的有效预测对于主动识别潜在的振动危害和实时调整运行策略起着至关重要的作用。仿真方法受计算时间长的限制。此外,纯数据驱动的预测模型对未知条件的适应性有限,缺乏基于物理机制的约束。提出了一种结合深度学习和OpenFAST仿真的海上风力发电机组非线性长期振动响应预测新方法。该方法旨在涵盖所有操作条件。首先,设计了一种多层堆叠的BiLSTM结构,用于捕获长序列的时间序列数据。递归计算采用滑动时窗方法实现,独立并行计算采用多处理技术实现。随后,通过OpenFAST分析获得68种不同风浪荷载场景的时间序列数据,并利用深度学习框架预测振动响应。最后,将该方法得到的多输入递归BiLSTM与已有的时间序列模型进行了比较。结果表明,所提出的模型准确地复制了不同海上风力涡轮机数据集的全局和局部时程响应特征。平均计算时间仅为仿真模型计算时间的1/744.97。此外,在10 s的预测持续时间内,该模型在所有操作条件下保持91.94%的平均在线预测精度。在极端条件下,该模型的预测精度比端到端BiLSTM模型和RNN模型分别提高29.71%和17.52%。该方法特别适合于传统数值方法有限的应用,例如复杂海洋环境中操作条件实时变化的快速模拟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nonlinear long-term vibration response prediction of offshore wind turbines under full operating conditions based on deep learning
Efficient prediction of the vibration response of offshore wind turbines plays a crucial role in proactively identifying potential vibration hazards and enabling real-time adjustments to operational strategies. The simulation methods are limited by lengthy computation times. In addition, pure data-driven prediction models suffer from limited adaptability to unseen conditions and lack constraints based on physical mechanisms. This paper presents a new method combining deep learning and OpenFAST simulation to predict the nonlinear long-term vibration response of offshore wind turbines. The approach is designed to encompass all operating conditions. Firstly, a multi-layer stacked BiLSTM architecture is designed to capture long sequences of time-series data. Recursive calculations are implemented using a sliding time window approach, while independent parallel computations are achieved through the multiprocessing technology. Subsequently, the time series data of 68 different wind-wave load scenarios are obtained through OpenFAST analysis, and the vibration response is predicted using the deep learning framework. Furthermore, the multi-input recursive BiLSTM obtained from the novel method is compared with the existing time series model. The results demonstrate that the proposed model accurately replicates both global and local features of time-history responses across diverse offshore wind turbine datasets. The average computation time is only 1/744.97 of that required by simulation models. Moreover, within a 10 s forecast duration, the model maintains an average online prediction accuracy of 91.94 % across all operational conditions. Under extreme conditions, the prediction accuracy is 29.71 % and 17.52 % higher than those of the end-to-end BiLSTM and RNN models, respectively. This proposed method is particularly suitable for applications where traditional numerical methods are limited, such as rapid simulations under real-time changes in operating conditions within complex marine environments.
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来源期刊
Applied Ocean Research
Applied Ocean Research 地学-工程:大洋
CiteScore
8.70
自引率
7.00%
发文量
316
审稿时长
59 days
期刊介绍: The aim of Applied Ocean Research is to encourage the submission of papers that advance the state of knowledge in a range of topics relevant to ocean engineering.
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