基于振动的风力发电机行星齿轮箱故障诊断

IF 1.5 Q4 ENERGY & FUELS
Abdelrahman Amin, A. Bibo, Meghashyam Panyam, Phanindra Tallapragada
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引用次数: 1

摘要

为了降低风力涡轮机的运行和维护成本,我们提出了一个基于传感器数据的周期平稳和峭图分析的齿轮箱早期损伤检测的机器学习框架。应用重点是变速工况下,特别是紊流工况下齿轮箱的故障诊断。变速箱旋转部件的故障会在加速度计测量的振动信号中留下它们的特征。我们分析了5mw多体风力机模型在健康和损坏情况下以及不同风力条件下的模拟振动响应数据。通过对采集到的传感器数据进行循环平稳分析和峰度图分析,我们生成了两种类型的二维地图,突出了与故障损坏相关的特征。使用这些图,训练卷积神经网络以高精度识别测试数据中的故障,包括小幅度的故障。受NREL研究启发的基准测试用例进行了测试,并成功检测出故障。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vibration based fault diagnostics in a wind turbine planetary gearbox using machine learning
To reduce wind turbine operations and maintenance costs, we present a machine learning framework for early damage detection in gearboxes based on the cyclostationary and kurtogram analysis of sensor data. The application focus is fault diagnostics in gearboxes under varying load conditions, particularly turbulent wind. Faults in the gearbox rotating components can leave their signatures in vibrations signals measured by accelerometers. We analyze data stemming from a simulated vibration response of a 5 MW multibody wind turbine model in a healthy and damaged scenarios and under different wind conditions. With cyclostationary and kurtogram analysis applied on acquired sensor data, we generate two types of 2D maps that highlight signatures related to the fault damage. Using these maps, convolutional neural networks are trained to identify faults, including those of small magnitude, in test data with a high accuracy. Benchmark test cases inspired by an NREL study are tested and faults successfully detected.
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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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