基于新型长短期记忆模型的风力涡轮机预测性故障诊断技术

IF 1.8 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Algorithms Pub Date : 2023-11-28 DOI:10.3390/a16120546
Shuo Zhang, Emma Robinson, Malabika Basu
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引用次数: 0

摘要

海上风力涡轮机(WTs)的运行和维护(O&M)问题因其恶劣的运行环境和难以接近而更具挑战性。由于风力涡轮机内的突发性部件故障会造成长期停机和重大收入损失,因此必须开发状态监测和预测性故障诊断方法,以便在故障发生前检测出故障,从而防止出现长期停机和代价高昂的计划外维护。主要基于监控和数据采集(SCADA)数据,从运行数据中提取了 33 个重要特征,并根据状态信息对 8 个特定故障进行了分类,以便进行故障预测。通过在长短时记忆(LSTM)中提供与模型无关的时间向量表示法 Time2Vec (T2V),本文开发了一种新型深度学习神经网络模型 T2V-LSTM,用于进行多级故障预测。分类步骤可在故障发生前 10 至 210 分钟内进行故障诊断。结果表明,T2V-LSTM 可以成功预测 84.97% 以上的故障,并且在大多数多步骤先行案例中,T2V-LSTM 的召回分数最高,因此在整体和单个故障预测方面均优于 LSTM 和其他同类产品。因此,所提出的 T2V-LSTM 可以正确诊断更多的故障,并在准确率、召回分数和 F 分数方面提升了基于 vanilla LSTM 的预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wind Turbine Predictive Fault Diagnostics Based on a Novel Long Short-Term Memory Model
The operation and maintenance (O&M) issues of offshore wind turbines (WTs) are more challenging because of the harsh operational environment and hard accessibility. As sudden component failures within WTs bring about durable downtimes and significant revenue losses, condition monitoring and predictive fault diagnostic approaches must be developed to detect faults before they occur, thus preventing durable downtimes and costly unplanned maintenance. Based primarily on supervisory control and data acquisition (SCADA) data, thirty-three weighty features from operational data are extracted, and eight specific faults are categorised for fault predictions from status information. By providing a model-agnostic vector representation for time, Time2Vec (T2V), into Long Short-Term Memory (LSTM), this paper develops a novel deep-learning neural network model, T2V-LSTM, conducting multi-level fault predictions. The classification steps allow fault diagnosis from 10 to 210 min prior to faults. The results show that T2V-LSTM can successfully predict over 84.97% of faults and outperform LSTM and other counterparts in both overall and individual fault predictions due to its topmost recall scores in most multistep-ahead cases performed. Thus, the proposed T2V-LSTM can correctly diagnose more faults and upgrade the predictive performances based on vanilla LSTM in terms of accuracy, recall scores, and F-scores.
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来源期刊
Algorithms
Algorithms Mathematics-Numerical Analysis
CiteScore
4.10
自引率
4.30%
发文量
394
审稿时长
11 weeks
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