Development of the numerical differentiation method for approximating pitch acceleration using sensor fusion approach
- Autores: Korsun O.N.1,2, Goro S.2, Om M.H.2
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Afiliações:
- State Scientific Research Institute of Aviation
- Moscow Aviation Institute (National Research University)
- Edição: Volume 23, Nº 3 (2024)
- Páginas: 58-68
- Seção: AIRCRAFT AND SPACE ROCKET ENGINEERING
- URL: https://journal-vniispk.ru/2542-0453/article/view/311477
- DOI: https://doi.org/10.18287/2541-7533-2024-23-3-58-68
- ID: 311477
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Resumo
In this paper, a novel algorithm is proposed to accurately estimate pitch acceleration that is crucial for moment coefficient estimation of the mathematical model of aircraft and control design in the presence of measurement noise. The angular velocity of the body as well as the Euler angles provided by the navigation system are used to interpolate the attitude trajectories using an algorithm based on the Hermite-spline polynomial. By differentiating the resultant trajectory function, the angular acceleration can be estimated accurately. This paper also analyzes a well-known method-Poplavski method based on polynomial regression, developed by the Russian scientist B.K. Poplavski to estimate derivatives. The simulation results obtained from the novel algorithm are compared with those obtained using the Poplavski method. The results verified that the novel algorithm that uses both pitch angle and angular velocity provides better accuracy in estimating pitch acceleration than the Poplavski method does, regardless of the sampling rate, which is very important in numerical differentiation and the noise level.
Sobre autores
O. Korsun
State Scientific Research Institute of Aviation;Moscow Aviation Institute (National Research University)
Autor responsável pela correspondência
Email: marmotto@rambler.ru
Doctor of Science (Engineering), Professor, Head of the Scientific and Educational Center
RússiaS. Goro
Moscow Aviation Institute (National Research University)
Email: gorosekoi@gmail.com
Postgraduate Student
RússiaM. Om
Moscow Aviation Institute (National Research University)
Email: mounghtangom50@gmal.com
Candidate of Science (Engineering), Ph.D., Post-doctoral candidate
RússiaBibliografia
- Ahmad M., Hussain Z.L., Shah S.I.A., Shams T.A. Estimation of stability parameters for wide body aircraft using computational techniques. Applied Sciences. 2021. V. 11, Iss. 5. doi: 10.3390/app11052087
- Mehra R.K., Stepner D.E., Tyler J.S. Maximum likelihood identification of aircraft stability and control derivatives. Journal of Aircraft. 1974. V. 11, Iss. 2. P. 81-89. doi: 10.2514/3.60327
- Sharifi M.A., Seif M.R., Hadi M.A. A comparison between numerical differentiation and Kalman filtering for a Leo satellite velocity determination. Artificial Satellites. 2013. V. 48, Iss. 3. P. 103-110. doi: 10.2478/arsa-2013-0009
- Vasil'chenko K.K., Leonov V.A., Pashkovskiy I.M., Poplavskiy B.K. Letnye ispytaniya samoletov [Aircraft flight tests]. Moscow: Mashinostroenie Publ., 1996. 719 p.
- Cheng J., Jia X.Z., Wang Y.B. Numerical differentiation and its applications. Inverse Problems in Science and Engineering. 2007. V. 15, Iss. 4. P. 339-357. doi: 10.1080/17415970600839093
- Othmane A., Kiltz L., Rudolph J. Survey on algebraic numerical differentiation: historical developments, parametrization, examples, and applications. International Journal of Systems Science. 2022. V. 53, Iss. 9. P. 1848-1887. doi: 10.1080/00207721.2022.2025948
- Korsun O.N., Goro S., Om M.H. A comparison between filtering approach and spline approximation method in smoothing flight data. Aerospace Systems. 2023. V. 6. P. 473-480. doi: 10.1007/s42401-023-00201-0
- Schum D.J. Noise reduction via signal processing. The Hearing Journal. 2003 V. 56, Iss. 5. P. 27-32. doi: 10.1097/01.HJ.0000293885.26777.b5
- Korsun O.N., Stulovsky A.V. Recovery of aircraft motion parameters using the optimal control algorithms. Journal of Computer and Systems Sciences International. 2023. V. 62, Iss. 1. P. 61-72. doi: 10.1134/S1064230723010057
- Zav'yalov Yu.S., Kvasov B.I., Miroshnichenko V.L. Metody splayn-funktsiy [Methods of spline-functions]. Moscow: Nauka Publ., 1980. 352 p.
- Unser M. Splines: a perfect fit for signal and image processing. IEEE Signal Processing Magazine. 1999. V. 16, Iss. 6. P. 22-38. doi: 10.1109/79.799930
- Chan V., Tsui K.-W., Wei Y., Zhang Zh., Deng X. Efficient estimation of smoothing spline with exact shape constraints. Statistical Theory and Related Fields. 2021. V. 5, Iss. 1. P. 55-69. doi: 10.1080/24754269.2020.1722604
- Svoboda M., Matiu-Iovan L., Frigura-Iliasa F.M., Andea P. B-spline interpolation technique for digital signal processing. International Conference on Information and Digital Technologies (July, 07-09, 2015, Zilina, Slovakia). 2015. P. 366-371. doi: 10.1109/DT.2015.7222998
- Hou H., Andrews H. Cubic splines for image interpolation and digital filtering. IEEE Transactions on Acoustics, Speech, and Signal Processing. 1978. V. 26, Iss. 6. P. 508-517. doi: 10.1109/TASSP.1978.1163154
- Gutorov A.S., Kukin A.E. Algorithm of target trajectory data estimation using a smoothing spline. Vestnik Nauki i Obrazovaniya. 2018. V. 1, no. 7 (43). P. 11-14. (In Russ.)
- Mirzaev A., Khalilov S. Digital signal processing based on spline functions. International Conference on Information Science and Communications Technologies (November, 04-06, 2019, Tashkent, Uzbekistan). 2019. doi: 10.1109/ICISCT47635.2019.9012038
- Ezhov N., Neitzel F., Petrovic S. Spline approximation, Part 2: From polynomials in the monomial basis to B-splines—A derivation. Mathematics. 2021. V. 9, Iss. 18. doi: 10.3390/math9182198
- Mier Muth A.M., Willsky A.S. A sequential method for spline approximation with variable knots. International Journal of Systems Science. 1978. V. 9, Iss. 9. P. 1055-1067. doi: 10.1080/00207727808941759
- Elschner J. On spline approximation for singular integral equations on an interval. Mathematische Nachrichten. 1988. V. 139, Iss. 1. P. 309-319. doi: 10.1002/mana.19881390128
- Dinamika poleta [Flight dynamics / ed. by G.S. Byushgens]. Moscow: Mashinostroenie Publ., 2011. 775 p.
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