Prognostics and Health Management of Wind Energy Infrastructure Systems

C. Yuce, Ozhan Gecgel, Oğuz Doğan, S. Dabetwar, Yasar Yanik, O. Kalay, E. Karpat, F. Karpat, S. Ekwaro-Osire
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引用次数: 8

Abstract

The improvements in wind energy infrastructure have been a constant process throughout many decades. There are new advancements in technology that can further contribute towards the Prognostics and Health Management (PHM) in this industry. These advancements are driven by the need to fully explore the impact of uncertainty, quality and quantity of data, physics-based machine learning (PBML), and digital twin (DT). All these aspects need to be taken into consideration to perform an effective PHM of wind energy infrastructure. To address these aspects, four research questions were formulated. What is the role of uncertainty in machine learning (ML) in diagnostics and prognostics? What is the role of data augmentation and quality of data for ML? What is the role of PBML? What is the role of the DT in diagnostics and prognostics? The methodology used was Preferred Reporting Items for Systematic Review and Meta-Analysis (PRISMA). A total of 143 records, from the last five years, were analyzed. Each of the four questions was answered by discussion of literature, definitions, critical aspects, benefits and challenges, the role of aspect in PHM of wind energy infrastructure systems, and conclusion.
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风能基础设施系统的预测和健康管理
几十年来,风能基础设施的改进一直是一个持续的过程。有新的技术进步可以进一步促进该行业的预后和健康管理(PHM)。这些进步是由充分探索不确定性、数据质量和数量、基于物理的机器学习(PBML)和数字孪生(DT)的影响的需求推动的。要对风能基础设施进行有效的PHM,需要考虑所有这些方面。为了解决这些问题,我们制定了四个研究问题。不确定性在机器学习(ML)诊断和预测中的作用是什么?数据增强和数据质量对机器学习的作用是什么?PBML的作用是什么?DT在诊断和预后中的作用是什么?使用的方法是系统评价和荟萃分析首选报告项目(PRISMA)。研究人员分析了过去五年的143条记录。通过对文献、定义、关键方面、利益和挑战、方面在风能基础设施系统PHM中的作用以及结论的讨论,回答了这四个问题。
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来源期刊
CiteScore
5.20
自引率
13.60%
发文量
34
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