Evaluating Image Classification Deep Convolutional Neural Network Architectures for Remaining Useful Life Estimation of Turbofan Engines

IF 1.4 Q2 ENGINEERING, MULTIDISCIPLINARY
Nathaniel DeVol, Christopher Saldaña, Katherine Fu
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Abstract

Accurate estimation of the remaining useful life (RUL) is a key component of condition-based maintenance (CBM) and prognosis and health management (PHM). Data-based models for the estimation of RUL are of particular interest because expert knowledge of systems is not always available, and physical modeling is often not feasible. Additionally, using data-based models, which make decisions based on raw sensor data, allow features to be learned instead of manually determined. In this work, deep convolutional neural network (CNN) architectures are investigated for their ability to estimate the RUL of turbofan engines. To improve the accuracy of the models, CNN architectures, which have proven successful in image classification, are implemented and tested. Specifically, the blocks used in the Visual Geometry Group (VGG) architecture, inception modules used in the GoogLeNet architecture, and residual blocks used in the ResNet architecture are incorporated. To account for varying flight lengths, the input to the models is a window of time series data collected from the engine under test. Window locations at the climb, cruise, and descent stages are considered. To further improve the RUL estimations, multiple overlapping windows at each location are used. This increases the amount of training data available and is found to increase the accuracy of the resulting RUL estimations by averaging the estimates from all overlapping segments. The model is trained and tested using the new Commercial Modular Aero-Propulsion System Simulation (N-CMAPSS) data set, and high prognosis accuracy was achieved. This work expands on the model developed and used in the 2021 PHM Society Data Challenge, which received second place.
涡扇发动机剩余使用寿命评估的图像分类深度卷积神经网络结构
准确估计剩余使用寿命(RUL)是基于状态的维修(CBM)和预后与健康管理(PHM)的关键组成部分。用于估计RUL的基于数据的模型特别令人感兴趣,因为系统的专家知识并不总是可用的,并且物理建模通常是不可行的。此外,使用基于数据的模型,根据原始传感器数据做出决策,可以学习特征,而不是手动确定。在这项工作中,研究了深度卷积神经网络(CNN)架构估计涡扇发动机RUL的能力。为了提高模型的准确性,实现并测试了CNN架构,该架构已被证明在图像分类中是成功的。具体而言,包含了视觉几何组(VGG)体系结构中使用的块、GoogLeNet体系结构中所使用的初始模块以及ResNet体系结构所使用的剩余块。为了考虑不同的飞行长度,模型的输入是从测试中的发动机收集的时间序列数据窗口。考虑了爬升、巡航和下降阶段的窗口位置。为了进一步改进RUL估计,在每个位置使用多个重叠窗口。这增加了可用的训练数据的量,并且发现通过对来自所有重叠段的估计进行平均来增加所得到的RUL估计的准确性。该模型使用新的商用模块化航空推进系统仿真(N-CMAPSS)数据集进行了训练和测试,并获得了较高的预测精度。这项工作扩展了在2021 PHM社会数据挑战赛中开发和使用的模型,该挑战赛获得了第二名。
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来源期刊
CiteScore
2.90
自引率
9.50%
发文量
18
审稿时长
9 weeks
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