基于多元线性回归模型的风力发电机组温度状态监测系统

Khaled B. Abdusamad, D. Gao, E. Muljadi
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引用次数: 25

摘要

随着风力发电机组因温度过高而导致的故障越来越多,特别是海上风力发电机组由于位置较远,其维护成本高于陆上风力发电机组,因此状态监测系统的开发和实施对风力工业来说变得非常重要。风力发电机组温度的监测是建立有效的状态监测系统的重要组成部分。此外,监控与数据采集系统(SCADA)可以方便地对其进行自动测量和记录,使其行为趋势更加清晰。部件温度的意外升高可能表明过载、润滑不良或可能无效的被动或主动冷却。为了避免风力发电机组故障的发生,需要采用多种技术对机组温度进行可靠预测。多元线性回归模型(Multiple Linear Regression Model, MLRM)是一种可用于构建风力发电机组温度的正常运行模型,然后在每个时间步长通过测量准则变量的观测值与预测值之间的相关性来预测风力发电机组温度的模型。然后可以找到估计的标准误差。估计的标准误差表示实际观测值与回归线上预测值的接近程度。本文提出了一种基于多元线性回归模型的风力发电机组状态监测新方法。该技术基于历史发电机温度数据,构建了发电机温度的正常行为模型。建立在实际测量数据基础上的案例研究证明了所建议模型的充分性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A condition monitoring system for wind turbine generator temperature by applying multiple linear regression model
The development and implementation of condition monitoring system become very important for wind industry with the increasing number of failures in wind turbine generators due to over temperature especially in offshore wind turbines where higher maintenance costs than onshore wind farms have to be paid due to their farthest locations. Monitoring the wind generators temperatures is significant and plays a remarkable role in an effective condition monitoring system. Moreover, they can be easily measured and recorded automatically by the Supervisory Control and Data Acquisition (SCADA) which gives more clarification about their behavior trend. An unexpected increase in component temperature may indicate overload, poor lubrication, or possibly ineffective passive or active cooling. Many techniques are used to reliably predict generator's temperatures to avoid occurrence of failures in wind turbine generators. Multiple Linear Regression Model (MLRM) is a model that can be used to construct the normal operating model for the wind turbine generator temperature and then at each time step the model is used to predict the generator temperature by measuring the correlation between the observed values and the predicted values of criterion variables. Then standard errors of the estimate can be found. The standard error of the estimate indicates how close the actual observations fall to the predicted values on the regression line. In this paper, a new condition-monitoring method based on applying Multiple Linear Regression Model for a wind turbine generator is proposed. The technique is used to construct the normal behavior model of an electrical generator temperatures based on the historical generator temperatures data. Case study built on a data collected from actual measurements demonstrates the adequacy of the proposed model.
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