NAROSep 22, 2019

Strapdown Attitude Computation: Functional Iterative Integration versus Taylor Series Expansion

arXiv:1909.09935v29 citations
Originality Synthesis-oriented
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This work addresses incremental improvements in attitude computation algorithms for inertial navigation systems, offering enhanced accuracy and robustness in specific frequency ranges.

The paper compares Taylor series expansion and functional iterative integration approaches for solving attitude computation in strapdown inertial navigation systems, revealing that Quat/Rod/RotFIter algorithms using Chebyshev polynomials perform best in accuracy and robustness at higher relative frequencies, with specific thresholds like a coning to sampling frequency ratio below 0.05-0.1 for equal accuracy.

This paper compares two basic approaches to solving ordinary differential equations, which form the basis for attitude computation in strapdown inertial navigation systems, namely, the Taylor series expansion approach that was used in its low-order form for deriving all mainstream algorithms and the functional iterative integration approach developed recently. They are respectively applied to solve the kinematic equations of major attitude parameters, including the quaternion, the Rodrigues vector and the rotation vector. Specifically, the mainstream algorithms, which have relied on the simplified rotation vector without exception, are considerably extended by the Taylor series expansion approach using the exact rotation vector and recursive calculation of high-order derivatives. The functional iterative integration approach is respectively implemented on both the normal polynomial and the Chebyshev polynomial. Numerical results under the classical coning motion are reported to assess all derived attitude algorithms. It is revealed that in the relative frequency range when the coning to sampling frequency ratio is below 0.05-0.1 (depending on the chosen polynomial truncation order), all algorithms have the same order of accuracy if the same number of samples are used to fit the angular velocity over the iteration interval; in the range of higher relative frequency, the group of Quat/Rod/RotFIter algorithms (by the functional iterative integration approach combined with the Chebyshev polynomial) perform the best in both accuracy and robustness, thanks to the excellent numerical stability and powerful functional representation capability of the Chebyshev polynomial.

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