SCADA data for wind turbine data-driven condition/performance monitoring: A review on state-of-art, challenges and future trends

IF 1.5 Q4 ENERGY & FUELS Wind Engineering Pub Date : 2022-09-19 DOI:10.1177/0309524X221124031
Ravi Kumar Pandit, D. Astolfi, Jiarong Hong, D. Infield, Matilde Santos
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引用次数: 14

Abstract

This paper reviews the recent advancement made in data-driven technologies based on SCADA data for improving wind turbines’ operation and maintenance activities (e.g. condition monitoring, decision support, critical components failure detections) and the challenges associated with them. Machine learning techniques applied to wind turbines’ operation and maintenance (O&M) are reviewed. The data sources, feature engineering and model selection (classification, regression) and validation are all used to categorise these data-driven models. Our findings suggest that (a) most models use 10-minute mean SCADA data, though the use of high-resolution data has shown greater advantages as compared to 10-minute mean value but comes with high computational challenges. (b) Most of SCADA data are confidential and not available in the public domain which slows down technological advancements. (c) These datasets are used for both, the classification and regression of wind turbines but are used in classification extensively. And, (d) most commonly used data-driven models are neural networks, support vector machines, probabilistic models and decision trees and each of these models has its own merits and demerits. We conclude the paper by discussing the potential areas where SCADA data-based data-driven methodologies could be used in future wind energy research.
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用于风力涡轮机数据驱动状态/性能监测的SCADA数据:现状、挑战和未来趋势综述
本文综述了基于SCADA数据的数据驱动技术的最新进展,这些技术用于改善风力涡轮机的运行和维护活动(例如状态监测、决策支持、关键部件故障检测)以及与之相关的挑战。综述了机器学习技术在风力发电机组运行与维护中的应用。数据源、特征工程、模型选择(分类、回归)和验证都用于对这些数据驱动的模型进行分类。我们的研究结果表明:(a)大多数模型使用10分钟平均SCADA数据,尽管与10分钟平均值相比,使用高分辨率数据显示出更大的优势,但同时也带来了很高的计算挑战。(b)大多数SCADA数据是保密的,不能在公共领域获得,这减慢了技术进步。(c)这些数据集用于风力涡轮机的分类和回归,但广泛用于分类。(d)最常用的数据驱动模型是神经网络、支持向量机、概率模型和决策树,每种模型都有其优缺点。我们通过讨论基于SCADA数据的数据驱动方法可用于未来风能研究的潜在领域来结束本文。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Wind Engineering
Wind Engineering ENERGY & FUELS-
CiteScore
4.00
自引率
13.30%
发文量
81
期刊介绍: Having been in continuous publication since 1977, Wind Engineering is the oldest and most authoritative English language journal devoted entirely to the technology of wind energy. Under the direction of a distinguished editor and editorial board, Wind Engineering appears bimonthly with fully refereed contributions from active figures in the field, book notices, and summaries of the more interesting papers from other sources. Papers are published in Wind Engineering on: the aerodynamics of rotors and blades; machine subsystems and components; design; test programmes; power generation and transmission; measuring and recording techniques; installations and applications; and economic, environmental and legal aspects.
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