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Prediction of top oil temperature for transformers.

机译:变压器最高油温的预测。

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摘要

When a transformer's winding gets too hot, either the load has to be reduced as a short-term solution or another transformer bay needs to be installed as a long-term plan. To decide on whether to deploy either of these two strategies, one should be able to predict the transformer temperature accurately. In this work, the traditional top-oil-rise model, top-oil model (which includes an ambient temperature) and semi-physical top-oil model are compared. The semi-physical top-oil model outperforms the other two models. Several attempts are also reported to improve the model used for top-oil temperature (TOT) prediction. It is shown that regardless of the order or complexity of the model, no model performs significantly better than the semi-physical top-oil model investigated; moreover, many models have performance measures that are approximately the same as the semi-physical model.;Some of the sources of error that affect top-oil temperature prediction are studied here. Experimentation with various discretization schemes and models convinces the author that the semi-physical top-oil model used to predict transformer temperature is near optimal and that other sources of input-data error are frustrating the author's attempt to reduce the prediction error Further. The research demonstrates that the input error caused by database quantization, remote ambient temperature monitoring and low sampling rate accounts for about two-thirds of the error experienced with field data. The results of these simulations also show that the error caused by these sources is less than that obtained when using equivalent field data. It is the opinion of the author that most of this difference is due to the absence of significant driving variables, rather than the approximation used in constructing a semi-physical model.;To further improve the error performance of the semi-physical top-oil model, three different neural network models including static neural network, temporal processing network and recurrent neural network models are examined for TOT prediction. Of the three neural network models, the recurrent network provides the best performance consistently in terms of both the mean-square error (MSE) and the peak error. The performance of both the recurrent neural network model and the semi-physical top-oil model are comparable. The preferred model for predicting TOT is the linear semi-physical model because it permits the use of simple and robust linear regression techniques.
机译:当变压器的绕组温度过高时,作为短期解决方案必须降低负载,或者作为长期计划需要安装另一个变压器柜。要决定是否部署这两种策略中的任何一种,都应该能够准确预测变压器温度。在这项工作中,比较了传统的顶油上升模型,顶油模型(包括环境温度)和半物理顶油模型。半物理顶油模型优于其他两个模型。还报告了一些尝试,以改进用于顶层油温(TOT)预测的模型。结果表明,无论模型的顺序或复杂程度如何,没有一个模型的性能比所研究的半物理顶油模型好得多。此外,许多模型的性能指标与半物理模型大致相同。;在此研究了一些影响顶油温度预测的误差源。使用各种离散化方案和模型进行的实验使作者确信,用于预测变压器温度的半物理顶油模型接近最佳状态,而其他输入数据错误源正在挫败作者进一步降低预测误差的尝试。研究表明,由数据库量化,远程环境温度监视和低采样率引起的输入误差约占现场数据误差的三分之二。这些模拟的结果还表明,由这些源引起的误差小于使用等效场数据时获得的误差。作者认为,这种差异大部分是由于缺乏重要的驱动变量,而不是用于构造半物理模型的近似值所致;;为了进一步提高半物理顶油的误差性能在模型中,对三种不同的神经网络模型(包括静态神经网络,时间处理网络和递归神经网络模型)进行了TOT预测。在这三个神经网络模型中,递归网络在均方误差(MSE)和峰值误差方面始终如一地提供最佳性能。递归神经网络模型和半物理顶油模型的性能均具有可比性。预测TOT的首选模型是线性半物理模型,因为它允许使用简单而可靠的线性回归技术。

著录项

  • 作者

    He, Qing.;

  • 作者单位

    Arizona State University.;

  • 授予单位 Arizona State University.;
  • 学科 Applied Mechanics.;Energy.;Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2000
  • 页码 88 p.
  • 总页数 88
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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