{"title":"基于优化Bi-LSTM的海上风电叶片变工况健康评估与预测","authors":"Linli Li;Qifei Jian","doi":"10.1109/JSEN.2025.3554645","DOIUrl":null,"url":null,"abstract":"Blades are essential components for harnessing wind energy in turbines. Their failure can result in severe accidents, costly maintenance, and high replacement expenses. This study introduces an integrated model combining principal component analysis (PCAs), Tree Seed Optimization [tree-seed algorithm (TSA)], and bidirectional long short-term memory (BiLSTM) for identifying blade damage and predicting health status. By integrating vibration mechanics, signal processing techniques, and machine-learning algorithms, we have developed a robust and generalizable detection tool. PCA is employed to extract multiple fault indicators and determine the weights of significant indicators, forming a health index that quantifies the extent of blade damage. The critical feature parameter matrix serves as input to construct the PCA-TSA-BiLSTM prediction model, which accomplishes short-to-medium-term predictions of the health index by leveraging TSA’s global search capability and BiLSTM’s superior ability to capture nonlinear temporal relationships. The effectiveness of fault indicator extraction is validated through a time-frequency comparative analysis of healthy and damaged states. Comparative analysis with other LSTM-based combination algorithms confirms that the proposed prediction model exhibits higher accuracy, with a root-mean-squared error (RMSE) of less than 0.064 and a mean absolute error (MAE) of less than 0.409. Through exponential fitting, the overall degradation trend of the system was obtained, and four health levels were delineated. The health index below 0.3 indicates a critical fault. This facilitates real-time monitoring of blades and forecasting of future health index trends, thereby supporting decision-making for maintenance strategies.","PeriodicalId":447,"journal":{"name":"IEEE Sensors Journal","volume":"25 10","pages":"18223-18235"},"PeriodicalIF":4.3000,"publicationDate":"2025-03-31","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Health Assessment and Prognosis of Offshore Wind Turbine Blades Under Variable Operating Conditions via Optimized Bi-LSTM\",\"authors\":\"Linli Li;Qifei Jian\",\"doi\":\"10.1109/JSEN.2025.3554645\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Blades are essential components for harnessing wind energy in turbines. Their failure can result in severe accidents, costly maintenance, and high replacement expenses. This study introduces an integrated model combining principal component analysis (PCAs), Tree Seed Optimization [tree-seed algorithm (TSA)], and bidirectional long short-term memory (BiLSTM) for identifying blade damage and predicting health status. By integrating vibration mechanics, signal processing techniques, and machine-learning algorithms, we have developed a robust and generalizable detection tool. PCA is employed to extract multiple fault indicators and determine the weights of significant indicators, forming a health index that quantifies the extent of blade damage. The critical feature parameter matrix serves as input to construct the PCA-TSA-BiLSTM prediction model, which accomplishes short-to-medium-term predictions of the health index by leveraging TSA’s global search capability and BiLSTM’s superior ability to capture nonlinear temporal relationships. The effectiveness of fault indicator extraction is validated through a time-frequency comparative analysis of healthy and damaged states. Comparative analysis with other LSTM-based combination algorithms confirms that the proposed prediction model exhibits higher accuracy, with a root-mean-squared error (RMSE) of less than 0.064 and a mean absolute error (MAE) of less than 0.409. Through exponential fitting, the overall degradation trend of the system was obtained, and four health levels were delineated. The health index below 0.3 indicates a critical fault. 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引用次数: 0
摘要
叶片是涡轮机中利用风能的重要部件。它们的故障可能导致严重的事故、昂贵的维护和高昂的更换费用。本研究提出了一种结合主成分分析(pca)、树种子优化(Tree Seed Optimization, TSA)和双向长短期记忆(bidirectional long - short- memory, BiLSTM)的叶片损伤识别和健康状态预测的集成模型。通过整合振动力学、信号处理技术和机器学习算法,我们开发了一种鲁棒且可推广的检测工具。采用主成分分析法提取多个故障指标,确定重要指标的权重,形成量化叶片损伤程度的健康指数。将关键特征参数矩阵作为构建PCA-TSA-BiLSTM预测模型的输入,利用TSA的全局搜索能力和BiLSTM捕获非线性时间关系的优越能力,完成健康指数的中短期预测。通过健康状态和损坏状态的时频对比分析,验证了故障指示器提取的有效性。与其他基于lstm的组合算法的对比分析表明,该预测模型具有较高的预测精度,均方根误差(RMSE)小于0.064,平均绝对误差(MAE)小于0.409。通过指数拟合得到了系统的整体退化趋势,并划分出4个健康水平。健康指数低于0.3表示存在严重故障。这有助于对刀片进行实时监控并预测未来的健康指数趋势,从而支持维护策略的决策。
Health Assessment and Prognosis of Offshore Wind Turbine Blades Under Variable Operating Conditions via Optimized Bi-LSTM
Blades are essential components for harnessing wind energy in turbines. Their failure can result in severe accidents, costly maintenance, and high replacement expenses. This study introduces an integrated model combining principal component analysis (PCAs), Tree Seed Optimization [tree-seed algorithm (TSA)], and bidirectional long short-term memory (BiLSTM) for identifying blade damage and predicting health status. By integrating vibration mechanics, signal processing techniques, and machine-learning algorithms, we have developed a robust and generalizable detection tool. PCA is employed to extract multiple fault indicators and determine the weights of significant indicators, forming a health index that quantifies the extent of blade damage. The critical feature parameter matrix serves as input to construct the PCA-TSA-BiLSTM prediction model, which accomplishes short-to-medium-term predictions of the health index by leveraging TSA’s global search capability and BiLSTM’s superior ability to capture nonlinear temporal relationships. The effectiveness of fault indicator extraction is validated through a time-frequency comparative analysis of healthy and damaged states. Comparative analysis with other LSTM-based combination algorithms confirms that the proposed prediction model exhibits higher accuracy, with a root-mean-squared error (RMSE) of less than 0.064 and a mean absolute error (MAE) of less than 0.409. Through exponential fitting, the overall degradation trend of the system was obtained, and four health levels were delineated. The health index below 0.3 indicates a critical fault. This facilitates real-time monitoring of blades and forecasting of future health index trends, thereby supporting decision-making for maintenance strategies.
期刊介绍:
The fields of interest of the IEEE Sensors Journal are the theory, design , fabrication, manufacturing and applications of devices for sensing and transducing physical, chemical and biological phenomena, with emphasis on the electronics and physics aspect of sensors and integrated sensors-actuators. IEEE Sensors Journal deals with the following:
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