WFEC: Wind farms economic classifier using big data analytics

D. Fawzy, Sherin M. Moussa, N. Badr
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引用次数: 2

Abstract

Wind energy projects have recently been associated with huge investments. This led researchers to dig more into managing the costs of wind farms. The operation and maintenance (O&M) costs have a big effect on the success of wind farm projects. Thus, monitoring wind turbines and predicting the O&M costs become of a crucial demand. O&M costs are related to some main parts in wind turbines, like the spare parts and rotor blades that are exposed to damage because of the surrounding environmental factors. Hence, they can be monitored via deployed sensors that generate massive quantities of incomplete, and heterogeneous data. Therefore, a big data analytical system is required to analyze these data. In this paper, we propose the Wind Farms Economic Classifier (WFEC) System that uses big data analytics to manage the data volume, variety and veracity to predict the O&M costs. WFEC proposes an enhanced Flexible Naïve Bayes Classifier (FNBC) to classify wind farms profitability according to the predicted O&M costs. Experiments show that WFEC achieves high classification accuracy with less processing time.
WFEC:使用大数据分析的风电场经济分类
风能项目最近与巨额投资联系在一起。这促使研究人员进一步研究如何管理风力发电场的成本。运行和维护(O&M)成本对风电场项目的成功有很大影响。因此,监测风力涡轮机和预测运维成本成为一个至关重要的需求。运维成本与风力涡轮机中的一些主要部件有关,如由于周围环境因素而暴露在损坏中的备件和转子叶片。因此,它们可以通过部署的传感器进行监控,这些传感器会生成大量不完整的异构数据。因此,需要一个大数据分析系统来分析这些数据。本文提出了风电场经济分类系统(WFEC),该系统利用大数据分析对数据量、多样性和准确性进行管理,以预测运维成本。WFEC提出了一种增强的柔性Naïve贝叶斯分类器(FNBC),根据预测的运维成本对风电场的盈利能力进行分类。实验表明,WFEC在较短的处理时间内实现了较高的分类精度。
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