Intelligent and Data-Driven Reliability Evaluation Model for Wind Turbine Blades

Pub Date : 2022-01-01 DOI:10.4018/ijeoe.298694
D. Aikhuele, A. Periola, Elijah Aigbedion, Herold U. Nwosu
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Abstract

Wind energy is generated via the use of wind blades, turbines and generators that are deployed over a given area. To achieve a higher energy and system reliability, the wind blade and other units of the system must be designed with suitable materials. In this paper however, a computational intelligent model based on an artificial neutral network has been propose for the evaluation of the reliability of the wind turbine blade designed with the FRP material. The simulation results show that there was a reduction in the training mean square error, testing (re–training) mean square error and validation mean square error, when the number of training epochs is increased by 50% such that the minimum mean square error and maximum mean square error were 0.0011 and 0.0061, respectively. The low validation mean square error in the simulation results implies that the developed artificial neural network has a good accuracy when determining the reliability and the failure probability of the wind turbine blade.
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智能数据驱动的风电叶片可靠性评估模型
风能是通过部署在特定区域的风力叶片、涡轮机和发电机产生的。为了获得更高的能量和系统可靠性,必须采用合适的材料设计风叶片和系统的其他单元。然而,本文提出了一种基于人工神经网络的计算智能模型,用于评估FRP材料设计的风力发电机叶片的可靠性。仿真结果表明,当训练次数增加50%时,训练均方误差、测试(再训练)均方误差和验证均方误差均有所减小,最小均方误差为0.0011,最大均方误差为0.0061。仿真结果的验证均方误差较小,表明所建立的人工神经网络在确定风力机叶片可靠性和失效概率方面具有较好的精度。
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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