Access the full text.
Sign up today, get DeepDyve free for 14 days.
Ashish Babbar, V. Syrmos, Estefan Ortiz, Michael Arita (2009)
Advanced diagnostics and prognostics for engine health monitoring2009 IEEE Aerospace conference
H. Li (2012)
Statistical Learning Methods; Tsinghua University Press
(2017)
Realization and application of trend monitoring of key parameters of aero-engine flight test
Jason Deutsch, D. He (2018)
Using Deep Learning-Based Approach to Predict Remaining Useful Life of Rotating ComponentsIEEE Transactions on Systems, Man, and Cybernetics: Systems, 48
Lei Nie, Shiyi Xu, Lvfan Zhang, Yehan Yin, Zhengqiong Dong, Xiaoping Zhou (2022)
Remaining Useful Life Prediction of Aeroengines Based on Multi-Head Attention MechanismMachines
(1997)
IMSL–FORTRAN subroutines for mathematical applications
Jason Deutsch, Miao He, D. He (2017)
Remaining Useful Life Prediction of Hybrid Ceramic Bearings Using an Integrated Deep Learning and Particle Filter ApproachApplied Sciences, 7
(2005)
Statistical forecasting and decision making. Shanghai: shanghai university of finance and economics press
Kaibo Liu, Shuai Huang (2016)
Integration of Data Fusion Methodology and Degradation Modeling Process to Improve PrognosticsIEEE Transactions on Automation Science and Engineering, 13
(2013)
Time series analysis method of flight data and its application
R. Farsani, E. Pazouki (2021)
A Transformer Self-attention Model for Time Series Forecasting, 9
S. Ho, M. Xie (1998)
The use of ARIMA models for reliability forecasting and analysis, 35
C. Deb, Fan Zhang, Junjing Yang, S. Lee, K. Shah (2017)
A review on time series forecasting techniques for building energy consumptionRenewable & Sustainable Energy Reviews, 74
G. Zhang (2003)
Time series forecasting using a hybrid ARIMA and neural network modelNeurocomputing, 50
Y. Lei, Naipeng Li, S. Gontarz, Jing Lin, S. Radkowski, J. Dybała (2016)
A Model-Based Method for Remaining Useful Life Prediction of MachineryIEEE Transactions on Reliability, 65
E. Harris, A. Abdul-Aziz, R. Avuglah (2012)
Modeling annual Coffee production in Ghana using ARIMA time series ModelInternational journal of business and social research, 2
Biao Wang, Y. Lei, Naipeng Li, Ningbo Li (2020)
A Hybrid Prognostics Approach for Estimating Remaining Useful Life of Rolling Element BearingsIEEE Transactions on Reliability, 69
Changyue Song, Kaibo Liu (2018)
Statistical degradation modeling and prognostics of multiple sensor signals via data fusion: A composite health index approachIISE Transactions, 50
R. Shumway, D. Stoffer (2017)
Time series analysis and its applications : with R examples
Hong Zhang, Keqiang Dong (2017)
Prediction of Aero-Engine Exhaust Gas Temperature Based on Autoregressive Integrated Moving Average Model
Minhee Kim, Changyue Song, Kaibo Liu (2019)
A Generic Health Index Approach for Multisensor Degradation Modeling and Sensor SelectionIEEE Transactions on Automation Science and Engineering, 16
Pingfeng Wang, B. Youn (2009)
A Generic Bayesian Framework for Real-Time Prognostics and Health Management (PHM)
(2013)
Status of real-time monitoring technology of aircraft health China civil aviation
Langfu Cui, Qingzhen Zhang, Yan Shi, Liman Yang, Yixuan Wang, Junle Wang, C. Bai (2022)
A method for satellite time series anomaly detection based on fast-DTW and improved-KNNChinese Journal of Aeronautics
Zhi-guo Liu, Z. Cai, Xiao-Ming Tan (2011)
Forecasting Research Of Aero-engine Rotate Speed Signal Based on ARMA ModelProcedia Engineering, 15
(2013)
Aircraft engine monitoring technology and its development trend in aircraft design
(1989)
Analysis of time series: an introduction: fourth edition
Khaled El-Tawil, Abdo Jaoude (2013)
Stochastic and nonlinear-based prognostic modelSystems Science & Control Engineering: An Open Access Journal, 1
Borut Pogacnik, J. Duhovnik, J. Tavčar (2017)
Aircraft fault forecasting at maintenance service on the basis of historic data and aircraft parametersEksploatacja I Niezawodnosc-maintenance and Reliability, 19
Estefan Ortiz, Ashish Babbar, V. Syrmos (2009)
Extreme Value Theory for engine health monitoring and diagnosis2009 IEEE Control Applications, (CCA) & Intelligent Control, (ISIC)
M. Zaidan, A. Mills, R. Harrison, P. Fleming (2016)
Gas turbine engine prognostics using Bayesian hierarchical models: A variational approachMechanical Systems and Signal Processing, 70
This study aims to propose the use of time series autoregressive integrated moving average (ARIMA) models to predict gas path performance in aero engines. The gas path is a critical component of an aero engine and its performance is essential for safe and efficient operation of the engine.Design/methodology/approachThe study analyzes a data set of gas path performance parameters obtained from a fleet of aero engines. The data is preprocessed and then fitted to ARIMA models to predict the future values of the gas path performance parameters. The performance of the ARIMA models is evaluated using various statistical metrics such as mean absolute error, mean squared error and root mean squared error. The results show that the ARIMA models can accurately predict the gas path performance parameters in aero engines.FindingsThe proposed methodology can be used for real-time monitoring and controlling the gas path performance parameters in aero engines, which can improve the safety and efficiency of the engines. Both the Box-Ljung test and the residual analysis were used to demonstrate that the models for both time series were adequate.Research limitations/implicationsTo determine whether or not the two series were stationary, the Augmented Dickey–Fuller unit root test was used in this study. The first-order ARIMA models were selected based on the observed autocorrelation function and partial autocorrelation function.Originality/valueFurther, the authors find that the trend of predicted values and original values are similar and the error between them is small.
Aircraft Engineering and Aerospace Technology: An International Journal – Emerald Publishing
Published: Sep 25, 2024
Keywords: Time series; Forecast; Autocorrelation; ARIMA model; Gas path
Read and print from thousands of top scholarly journals.
Already have an account? Log in
Bookmark this article. You can see your Bookmarks on your DeepDyve Library.
To save an article, log in first, or sign up for a DeepDyve account if you don’t already have one.
Copy and paste the desired citation format or use the link below to download a file formatted for EndNote
Access the full text.
Sign up today, get DeepDyve free for 14 days.
All DeepDyve websites use cookies to improve your online experience. They were placed on your computer when you launched this website. You can change your cookie settings through your browser.