TY - JOUR
T1 - A Full-Parameter Calibration Method for an RINS/CNS Integrated Navigation System in High-Altitude Drones
AU - Zhang, Huanrui
AU - Zhang, Xiaoyue
AU - Cheng, Chunhua
AU - Lv, Xinyi
AU - Zhang, Chunxi
N1 - Publisher Copyright:
© 2026 by the authors.
PY - 2026/1
Y1 - 2026/1
N2 - High-altitude long-endurance (HALE) UAVs require navigation payloads that are both fully autonomous and lightweight. This paper presents a full-parameter calibration method for a dual-axis rotational-modulation RINS/CNS integrated system in which the IMU is mounted on a two-axis indexing mechanism and the reconnaissance camera is reused as the star sensor. We establish a unified error propagation model that simultaneously covers IMU device errors (bias, scale, cross-axis/installation), gimbal non-orthogonality and encoder angle errors, and camera exterior/interior parameters (EOPs/IOPs), including Brown–Conrady distortion. Building on this model, we design an error-decoupled calibration path that exploits (i) odd/even symmetry under inner-axis scans, (ii) basis switching via outer-axis waypoints, and (iii) frequency tagging through rate-limited triangular motions. A piecewise-constant system (PWCS)/SVD analysis quantifies segment-wise observability and guides trajectory tuning. Simulation and hardware-in-the-loop results show that all parameter groups converge primarily within the segments that excite them; the final relative errors are typically ≤5% in simulation and 6– (Formula presented.) with real IMU/gimbal data and catalog-based star pixels.
AB - High-altitude long-endurance (HALE) UAVs require navigation payloads that are both fully autonomous and lightweight. This paper presents a full-parameter calibration method for a dual-axis rotational-modulation RINS/CNS integrated system in which the IMU is mounted on a two-axis indexing mechanism and the reconnaissance camera is reused as the star sensor. We establish a unified error propagation model that simultaneously covers IMU device errors (bias, scale, cross-axis/installation), gimbal non-orthogonality and encoder angle errors, and camera exterior/interior parameters (EOPs/IOPs), including Brown–Conrady distortion. Building on this model, we design an error-decoupled calibration path that exploits (i) odd/even symmetry under inner-axis scans, (ii) basis switching via outer-axis waypoints, and (iii) frequency tagging through rate-limited triangular motions. A piecewise-constant system (PWCS)/SVD analysis quantifies segment-wise observability and guides trajectory tuning. Simulation and hardware-in-the-loop results show that all parameter groups converge primarily within the segments that excite them; the final relative errors are typically ≤5% in simulation and 6– (Formula presented.) with real IMU/gimbal data and catalog-based star pixels.
KW - IMU calibration
KW - RINS/CNS integration
KW - camera IOP/EOP calibration
KW - dual-axis rotational modulation
KW - encoder error
KW - gimbal non- orthogonality
UR - https://www.scopus.com/pages/publications/105028885607
U2 - 10.3390/vehicles8010011
DO - 10.3390/vehicles8010011
M3 - 文章
AN - SCOPUS:105028885607
SN - 2624-8921
VL - 8
JO - Vehicles
JF - Vehicles
IS - 1
M1 - 11
ER -