Convolutional Neural Networks for Gas Turbine Exhaust Gas Temperature and Power Predictions

T. Ravichandran, Yuan Liu, Amar Kumar, A. Srivastava
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Abstract

In this work, a data-driven and deep learning-based predictive modeling framework has been developed for generating accurate prediction models intended for gas turbine engine performance analysis. This paper focuses on the application of Convolutional Neural Networks (CNNs) along with tabular data to image conversion techniques to predict exhaust gas temperature (EGT) and power outputs of Gas Turbine Engines (GTE). Using one such tabular data to image conversion method called Image Generator for Tabular Data (IGTD), several CNN model architectures were explored, and their predictive capabilities were compared. The effectiveness of the proposed predictive modeling framework which combines CNNs and the IGTD algorithm has been demonstrated for EGT and power prediction using GTE operational data collected over a period of three years. The CNN models using images converted from tabular data exhibit superior predictive capabilities for both EGT and power, with a more significant improvement observed for EGT prediction. To the best of our knowledge, this is the first attempt to apply IGTD based CNNs for developing GTE models for EGT and power prediction.
卷积神经网络用于燃气轮机废气温度和功率预测
在这项工作中,开发了一个基于数据驱动和深度学习的预测建模框架,用于生成用于燃气涡轮发动机性能分析的准确预测模型。本文主要研究了卷积神经网络(cnn)与表格数据在图像转换技术中的应用,以预测燃气涡轮发动机(GTE)的排气温度(EGT)和功率输出。利用一种名为image Generator for tabular data (IGTD)的表格数据到图像的转换方法,探讨了几种CNN模型架构,并比较了它们的预测能力。结合cnn和IGTD算法所提出的预测建模框架的有效性已被证明用于使用收集超过三年的GTE运行数据进行EGT和功率预测。使用从表格数据转换而来的图像的CNN模型对EGT和功率都表现出优越的预测能力,对EGT的预测有更显著的改进。据我们所知,这是第一次尝试应用基于IGTD的cnn来开发用于EGT和功率预测的GTE模型。
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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