Neural Networks and Support Vector Regression for the CRJ-700 Longitudinal Dynamics Modeling

被引:0
|
作者
Tondji, Yvan [1 ]
Ghazi, Georges [1 ]
Botez, Ruxandra Mihaela
机构
[1] Ecole Technol Super ETS, Lab Appl Res Act Control Avion & AeroServoElast LA, 1100 Notre Dame West, Montreal, PQ H3C 1K3, Canada
来源
基金
加拿大自然科学与工程研究理事会;
关键词
Aerodynamic Coefficients; Flight Testing; Aircraft Dynamic Modes; Flight Dynamics; Hyperparameter Optimization; Aerodynamic Performance; Artificial Intelligence System; Support Vector Regression; Neural Networks; Flight Simulators; NUMERICAL-SIMULATION; OPTIMIZATION; DESIGN; SYSTEM; STALL; TESTS;
D O I
10.2514/1.I011332
中图分类号
V [航空、航天];
学科分类号
08 ; 0825 ;
摘要
This paper presents a new methodology to identify the aerodynamic coefficients and predict the short-period and phugoid dynamics of an aircraft using two types of supervised learning models: artificial neural network (ANN), and support vector regression (SVR). The study was validated on the CRJ 700 regional jet. Simulated flight tests data were collected during various maneuvers performed on a Level D CRJ-700 Virtual Research Simulator (VRESIM) designed by CAE and Bombardier. Level D is the highest qualification for flight dynamics and propulsion models given by the FAA. Both ANN and SVR models were trained using the data collected from the VRESIM to develop multidimensional models capable of predicting the aerodynamic coefficients of the aircraft for any conditions in the flight envelope, defined by altitude, speed, weight, and center-of-gravity position. The choice of solvers and the optimization of hyperparameters are detailed for both types of models. These models were validated by comparing predicted flight parameters with experimental data obtained from the CRJ 700 Level D VRESIM considering the same pilot inputs. The results showed that both types of models (ANN and SVR) were able to reproduce with excellent accuracy the nonlinear behavior of the short-period and phugoid dynamics.
引用
收藏
页码:263 / 278
页数:16
相关论文
共 50 条
  • [41] Support vector regression and neural networks analytical models for gas sensor based on molybdenum disulfide
    Alizadeh, Azar
    Mosalanezhad, Fatemeh
    Afroozeh, Abdolkarim
    Akbari, Elnaz
    Buntat, Zolkafle
    MICROSYSTEM TECHNOLOGIES-MICRO-AND NANOSYSTEMS-INFORMATION STORAGE AND PROCESSING SYSTEMS, 2019, 25 (01): : 115 - 119
  • [42] Support vector regression and neural networks analytical models for gas sensor based on molybdenum disulfide
    Azar Alizadeh
    Fatemeh Mosalanezhad
    Abdolkarim Afroozeh
    Elnaz Akbari
    Zolkafle Buntat
    Microsystem Technologies, 2019, 25 : 115 - 119
  • [43] Forecasting of Wind Power Generation with the Use of Artificial Neural Networks and Support Vector Regression Models
    Zafirakis, Dimitris
    Tzanes, Georgios
    Kaldellis, John K.
    RENEWABLE ENERGY INTEGRATION WITH MINI/MICROGRID, 2019, 159 : 509 - 514
  • [44] Optimisation of turning parameters by integrating genetic algorithm with support vector regression and artificial neural networks
    Gupta, Amit Kumar (akgupta@hyderabad.bits-pilani.ac.in), 2015, Springer London (77): : 1 - 4
  • [45] Performance assessment of artificial neural networks and support vector regression models for stream flow predictions
    Ateeq-ur-Rauf
    Ghumman, Abdul Razzaq
    Ahmad, Sajjad
    Hashmi, Hashim Nisar
    ENVIRONMENTAL MONITORING AND ASSESSMENT, 2018, 190 (12)
  • [46] Optimisation of turning parameters by integrating genetic algorithm with support vector regression and artificial neural networks
    Amit Kumar Gupta
    Sharath Chandra Guntuku
    Raghuram Karthik Desu
    Aditya Balu
    The International Journal of Advanced Manufacturing Technology, 2015, 77 : 331 - 339
  • [47] New ridge regression, artificial neural networks and support vector machine for wind speed prediction
    Zheng, Yun
    Ge, Yisu
    Muhsen, Sami
    Wang, Shifeng
    Elkamchouchi, Dalia H.
    Ali, Elimam
    Ali, H. Elhosiny
    ADVANCES IN ENGINEERING SOFTWARE, 2023, 179
  • [48] A study on the ability of Support Vector Regression and Neural Networks to Forecast Basic Time Series Patterns
    Crone, Sven F.
    Guajardo, Jose
    Weber, Richard
    ARTIFICIAL INTELLIGENCE IN THEORY AND PRACTICE, 2006, 217 : 149 - +
  • [49] USING MULTIPLE REGRESSION, NEURAL NETWORKS AND SUPPORT VECTOR MACHINES TO PREDICT LAMB CARCASSES COMPOSITION
    Silva, Filipe
    Cortez, Paulo
    Cadavez, Vasco
    6TH INTERNATIONAL CONFERENCE ON SIMULATION AND MODELLING IN THE FOOD AND BIO-INDUSTRY (FOODSIM 2010), 2010, : 41 - +
  • [50] A Software Reliability Prediction Model of Combining Multiple Neural Networks Based on Support Vector Regression
    Liu, Wen-ying
    Zhao, Kang
    Li, Ke-wen
    Yang, Lei
    INTERNATIONAL CONFERENCE ON ELECTRICAL, CONTROL AND AUTOMATION ENGINEERING (ECAE 2013), 2013, : 553 - 558