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PREDICTION OF GAS TURBINE PERFORMANCE USING MACHINE LEARNING METHODS

机译:采用机器学习方法预测燃气轮机性能

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The current study is based on multiple machine learning algorithms to predict the normal behavior of operational parameters including power generated and blade path temperature spread. The predictions can be used to identify anomalies and probable failures in the gas turbine performance. The data used in the study is taken from multiple heavy-duty gas turbine units of combined cycled utility power plants which are known to contain operational failures. The predictors include operational parameters such as fuel flow, various thermodynamic variables, etc. In the first step, we cluster the observations into different working modes, because of the heterogeneous behavior of the gas turbine parameters under various modes. Then we consider predicting the operational parameters under each mode respectively, via algorithms including random forest, generalized additive model, and neural networks. The models are trained and parameters are selected based on the overall prediction performance on the validation set. The comparative advantage based on prediction accuracy and applicability of the algorithms is discussed for real-time use and post processing. The advantage of our method is that they achieve high predictive power and provide insight into the behavior of specific gas turbine variables, e.g.- turbine blade path temperature spread, which are not explicitly known to have any correlation with other thermodynamic variables.
机译:目前的研究基于多机器学习算法,以预测操作参数的正常行为,包括产生的功率和叶片路径温度扩展。预测可用于识别燃气轮机性能中的异常和可能的故障。该研究中使用的数据是从已知含有操作故障的组合循环式公用电厂的多重重型燃气涡轮机单元。预测器包括诸如燃料流动,各种热力变量等的操作参数在第一步中,我们将观察结果聚集成不同的工作模式,因为燃气涡轮机参数在各种模式下的异质行为。然后,我们考虑分别通过包括随机林,广义添加剂模型和神经网络的算法来预测每个模式下的操作参数。培训模型和参数基于验证集上的整体预测性能选择。讨论了基于预测准确性和算法的适用性的比较优势,用于实时使用和后处理。我们的方法的优点是它们实现了高预测力,并提供了对特定燃气涡轮变量的行为的洞察,例如,涡轮机叶片路径温度扩展,其未明确已知与其他热力学变量有任何相关性。

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