PG9351FA 燃气轮机压缩机图推测方法研究

Xuedi Hao, Zeyuan Zhang, Jinling Chi, Lei Sun, Jiajin Zhang
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引用次数: 0

摘要

压缩机图通常由数量有限的特征点来表示,以推测整个运行范围。同时,使用适当的方法可以快速获得精确的压缩机图模型。本文以 9351FA 燃气轮机为研究对象,提出了一套有针对性的压缩机图推测方案。在 15 个数据点上,基于 BP 神经网络获得了高精度压缩机图,该方法适用于大量数据点。在 6 个数据点上,基于参数估计方法获得压缩机图,这种方法适用于少量数据点。神经网络获得的压缩机图的均方偏差约为 0.002,而参数估计法结果的最小均方偏差为 0.026,最大均方偏差为 0.088。由于 106.4 的修正速度线几乎是垂直的,因此最大误差均方偏差和最大标准偏差都出现在这条线上。两种方法适用于不同的样本量,推测的压缩机图更加可靠。两种方法的结合可以为压缩机图推测提供一套参考方法。
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Research on speculation method for compressor map of PG9351FA gas turbine
A compressor map is usually represented by a limited number of feature points to speculate the entire operating range. Also, accurate compressor map models can be obtained quickly by using the appropriate methods. In this paper, 9351FA gas turbine is used as the research object, and a set of targeted compressor map speculation scheme is proposed. At 15 data points, high-precision compressor maps are obtained based on BP neural network, and this method is suitable for a large number of data points. At 6 data points, compressor maps are obtained based on the parameter estimation method, and this method is suitable for a small number of data points. The mean square deviation of the compressor map obtained by the neural network is about 0.002, while the minimum mean square deviation of the results of the parameter estimation method is 0.026 and the maximum mean square deviation is 0.088. Since the corrected speed line of 106.4 is almost vertical, the maximum error mean squared deviation and the maximum standard deviation occur on this line. Both methods are suitable for different sample sizes, and the speculated compressor maps are more reliable. The combination of the two methods can provide a set of reference methods for compressor map speculation.
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来源期刊
CiteScore
3.30
自引率
5.90%
发文量
114
审稿时长
5.4 months
期刊介绍: The Journal of Power and Energy, Part A of the Proceedings of the Institution of Mechanical Engineers, is dedicated to publishing peer-reviewed papers of high scientific quality on all aspects of the technology of energy conversion systems.
期刊最新文献
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