School of Mechanical Engineering and Automation, Fuzhou University, Fuzhou 350108, PR China.
School of Mechanical Engineering and Automation, Fuzhou University, Fuzhou 350108, PR China.
ISA Trans. 2023 Jul;138:582-602. doi: 10.1016/j.isatra.2023.03.022. Epub 2023 Mar 20.
Timely and effective fault detection is essential to ensure the safe and reliable operation of wind turbines. However, due to the complex kinematic mechanisms and harsh working environments of wind turbine equipment, it is difficult to extract sensitive features and detect faults from acquired wind turbine signals. To address this challenge, a novel intelligent fault detection scheme for constant-speed wind turbines based on refined time-shifted multiscale fuzzy entropy (RTSMFE), supervised isometric mapping (SI), and adaptive chaotic Aquila optimization-based support vector machine (ACAOSVM) is proposed. In the first step, the RTSMFE method is used to fully extract features of the wind turbine system. The time-shifted coarse-grained construction technique and a refined computing technique are adopted in the RTSMFE method to enhance the capability of traditional multiscale fuzzy entropy for measuring the complexity of signals. Subsequently, an effective manifold learning approach, SI, is applied to obtain the important and low-dimensional feature set from the high-dimensional feature set. Finally, sensitive features are fed into the ACAOSVM classifier to identify faults. The proposed ACAO algorithm is used to optimize important parameters of the SVM, thereby improving its detection performance. Simulations and wind turbine experiments verified that the proposed RTSMFE outperforms existing entropy techniques in terms of complexity measurement and feature extraction. Furthermore, the proposed ACAOSVM classifier is superior to existing advanced classifiers for fault pattern recognition. Finally, the proposed intelligent fault detection scheme can more correctly and efficiently detect wind turbine single/hybrid faults than other recently published schemes.
及时有效地进行故障检测对于确保风力涡轮机的安全可靠运行至关重要。然而,由于风力涡轮机设备的运动机制复杂且工作环境恶劣,从采集到的风力涡轮机信号中提取敏感特征并进行故障检测具有一定难度。针对这一挑战,提出了一种基于精细化时移多尺度模糊熵(RTSMFE)、监督等距映射(SI)和基于自适应混沌 Aquila 优化的支持向量机(ACAOSVM)的新型定速风力涡轮机智能故障检测方案。该方案的具体步骤如下:首先,采用 RTSMFE 方法充分提取风力涡轮机系统的特征。RTSMFE 方法采用时移粗粒化构建技术和精细化计算技术,增强了传统多尺度模糊熵测量信号复杂度的能力。其次,采用有效的流形学习方法 SI,从高维特征集中获取重要的低维特征集。最后,将敏感特征输入 ACAOSVM 分类器以识别故障。所提出的 ACAO 算法用于优化 SVM 的重要参数,从而提高其检测性能。仿真和风力涡轮机实验验证了所提出的 RTSMFE 在复杂度测量和特征提取方面优于现有的熵技术。此外,所提出的 ACAOSVM 分类器在故障模式识别方面优于现有的先进分类器。最后,所提出的智能故障检测方案在检测风力涡轮机的单一/混合故障时,比其他最近发布的方案更加准确和高效。