Adaptive Kalman Filter-based Estimator with Sea Trail Data to Calculate Ship States in Complex Navigation Conditions
Abstract
With the progress of innovative technologies, ships in future with
different autonomy levels are anticipated to enter the realm of maritime
transportation. As a result, the scenarios of multi-ship encounters at sea
can become more complex and the risk of potential collisions can be
difficult to elevate. To support navigation safety and guarantee the
required situation awareness level, it is therefore essential to acquire ship
navigation states with a greater degree of precision. The Kalman Filter
(KF)-based techniques are one of the popular approaches for deriving the
ship navigation state by merging the prior estimates from physics-based
models with measurements from onboard sensors. However, many KFbased estimates are calculated by assuming constant system and
measurement uncertainties during the iterative process. In this study, an
adaptive tuning mechanism in the KF-based techniques is utilized to
estimate ship navigation states. This approach enables the estimation
processes to skillfully reduce both system and measurement noises
estimations. Consequently, it results in the generation of smoother and
more responsive estimates of the respective vessel states, particularly
when confronted with variations in rudder orders or encountering
abnormal measured positions.
Description
Source at https://www.isope.org/proceedings-isope/.
Publisher
ISOPECitation
Wang, Perera, Batalden: Adaptive Kalman Filter-based Estimator with Sea Trail Data to Calculate Ship States in Complex Navigation Conditions. In: ISOPE 2024. Proceedings of the Thirty-fourth, 2024 International Ocean and Polar Engineering Conference - ISOPE 2024, 2024. International Society of Offshore and Polar EngineersMetadata
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