LLM-Agents Driven Automated Simulation Testing and Analysis of small Uncrewed Aerial Systems
Venkata Sai Aswath Duvvuru, Bohan Zhang, Michael Vierhauser, Ankit, Agrawal

TL;DR
This paper introduces AutoSimTest, an LLM-driven framework that automates and enhances the simulation testing process for small Uncrewed Aerial Systems, making testing more comprehensive and less labor-intensive.
Contribution
The paper presents a novel LLM-based multi-agent framework that automates scenario creation, environment setup, mission generation, and result analysis for sUAS simulation testing.
Findings
AutoSimTest improves testing efficiency and scope.
It enables more comprehensive scenario evaluations.
Developers find the framework reduces manual effort.
Abstract
Thorough simulation testing is crucial for validating the correct behavior of small Uncrewed Aerial Systems (sUAS) across multiple scenarios, including adverse weather conditions (such as wind, and fog), diverse settings (hilly terrain, or urban areas), and varying mission profiles (surveillance, tracking). While various sUAS simulation tools exist to support developers, the entire process of creating, executing, and analyzing simulation tests remains a largely manual and cumbersome task. Developers must identify test scenarios, set up the simulation environment, integrate the System under Test (SuT) with simulation tools, formulate mission plans, and collect and analyze results. These labor-intensive tasks limit the ability of developers to conduct exhaustive testing across a wide range of scenarios. To alleviate this problem, in this paper, we propose AutoSimTest, a Large Language…
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Taxonomy
TopicsAerospace and Aviation Technology
