机器学习在燃气轮机行程预测中的数据选择与特征工程

E. Losi, M. Venturini, L. Manservigi, G. Ceschini, G. Bechini, Giuseppe Cota, Fabrizio Riguzzi
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引用次数: 1

摘要

燃气轮机跳闸是一种计划外停机,其后果是业务中断和设备剩余使用寿命的减少。因此,检测和识别出起下钻的症状将有助于预测其发生,从而避免损失和费用。开发能够预测燃气轮机行程的机器学习模型需要定义一组目标数据和一个特征工程过程,以提高机器学习的泛化和有效性。本文提出了一种方法,重点关注机器学习模型开发之前的步骤,即数据选择和特征工程,这是成功预测模型的关键。数据选择是通过根据不同的标准(例如,类型、安装区域和操作)将单元划分为同质组来完成的。随后对多个燃气轮机机组的转速数据进行匹配算法,识别启动和停机,从而根据运行情况对考虑的机组进行划分,即基本负荷或峰值负荷。特征工程旨在创建能够提高机器学习模型准确性和可靠性的特征。首先,离散傅里叶变换用于识别并从时间序列中去除季节性成分,即以给定周期重复的模式。然后,基于燃气轮机领域知识创建新的特征,以捕获系统变量之间复杂的相互作用和跳闸发生。本文的成果是一组目标示例的定义和一组有意义的特征的识别,适合于开发旨在预测燃气轮机行程的机器学习模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Selection and Feature Engineering for the Application of Machine Learning to the Prediction of Gas Turbine Trip
A gas turbine trip is an unplanned shutdown, of which the consequences are business interruption and a reduction of equipment remaining useful life. Therefore, detection and identification of symptoms of trips would allow predicting its occurrence, thus avoiding damages and costs. The development of machine learning models able to predict gas turbine trip requires the definition of a set of target data and a procedure of feature engineering that improves machine learning generalization and effectiveness. This paper presents a methodology that focuses on the steps that precede the development of a machine learning model, i.e., data selection and feature engineering, which are the key for a successful predictive model. Data selection is performed by partitioning units into homogeneous groups according to different criteria, e.g., type, region of installation, and operation. A subsequent matching algorithm is applied to rotational speed data of multiple gas turbine units to identify start-ups and shutdowns so that the considered units can be partitioned according to their operation, i.e., base load or peak load. Feature engineering aims at creating features that improve machine learning model accuracy and reliability. First, the Discrete Fourier Transform is used to identify and remove from the time series the seasonal components, i.e., patterns that repeat with a given periodicity. Then, new features are created based on gas turbine domain knowledge in order to capture the complex interactions among system variables and trip occurrence. The outcomes of this paper are the definition of a set of target examples and the identification of a meaningful set of features suitable to develop a machine learning model aimed at predicting gas turbine trip.
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