ROAISPSYFeb 23, 2025

Gaussian Process Regression for Improved Underwater Navigation

arXiv:2502.16510v12 citationsh-index: 52025 IEEE/ION Position, Location and Navigation Symposium (PLANS)
Originality Incremental advance
AI Analysis

This work addresses navigation drift for autonomous underwater vehicles, offering an incremental improvement over existing methods like least squares and deep learning.

The paper tackles the problem of inaccurate underwater navigation by improving Doppler velocity log (DVL) velocity estimation using multi-output Gaussian process regression (MOGPR), reducing errors by about 20% and enhancing navigation accuracy in real-world AUV tests.

Accurate underwater navigation is a challenging task due to the absence of global navigation satellite system signals and the reliance on inertial navigation systems that suffer from drift over time. Doppler velocity logs (DVLs) are typically used to mitigate this drift through velocity measurements, which are commonly estimated using a parameter estimation approach such as least squares (LS). However, LS works under the assumption of ideal conditions and does not account for sensor biases, leading to suboptimal performance. This paper proposes a data-driven alternative based on multi-output Gaussian process regression (MOGPR) to improve DVL velocity estimation. MOGPR provides velocity estimates and associated measurement covariances, enabling an adaptive integration within an error-state Extended Kalman Filter (EKF). We evaluate our proposed approach using real-world AUV data and compare it against LS and a state-of-the-art deep learning model, BeamsNet. Results demonstrate that MOGPR reduces velocity estimation errors by approximately 20% while simultaneously enhancing overall navigation accuracy, particularly in the orientation states. Additionally, the incorporation of uncertainty estimates from MOGPR enables an adaptive EKF framework, improving navigation robustness in dynamic underwater environments.

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