Options
2026
Journal Article
Title
Techniques for interactive visual examination of vessel performance
Abstract
The development and evaluation of autonomous maritime vessels rely heavily on data-driven insights from iterative testing and analysis. While initial analyses are often conducted on small experimental datasets to explore key system characteristics, scaling these analyses to large datasets presents significant challenges. In this study, we extend our prior work on visual exploration of small-scale test bed data by proposing approaches to scaling the visual analytics techniques to large datasets. Using AIS data from ferry boats as a proxy for extensive maritime drone operations, we address the challenges of large-scale data exploration over eight days of repetitive ferry movements across a busy strait, simulating conditions suitable for autonomous vessels. Our approach investigates movement patterns, operational stability during repeated trips, and potential collision scenarios. To support such analyses, we propose a general, reusable workflow and a set of practical guidelines for applying visual analytics techniques to large maritime movement datasets. The findings highlight the scalability and adaptability of visual analytics methods, providing valuable tools for analyzing complex maritime datasets and advancing autonomous vessel technologies.
Author(s)
Gennady Andrienko, Gennady
Open Access
File(s)
Rights
CC BY 4.0: Creative Commons Attribution
Additional link
Language
English