BeSimulator: A Large Language Model Powered Text-based Behavior Simulator
read the original abstract
Traditional robot simulators focus on physical process modeling and realistic rendering, often suffering from high computational costs, inefficiencies, and limited adaptability. To handle this issue, we concentrate on behavior simulation in robotics to analyze and validate the logic behind robot behaviors, aiming to achieve preliminary evaluation before deploying resource-intensive simulators and thus enhance simulation efficiency. In this paper, we propose BeSimulator, a modular and novel LLM-powered framework, as an attempt towards behavior simulation in the context of text-based environments. By constructing text-based virtual environments and performing semantic-level simulation, BeSimulator can generalize across scenarios and achieve long-horizon complex simulation. Inspired by human cognition paradigm, it employs a ``consider-decide-capture-transfer'' four-phase simulation process, termed Chain of Behavior Simulation (CBS), which excels at analyzing action feasibility and state transition. Additionally, BeSimulator incorporates code-driven reasoning to enable arithmetic operations and enhance reliability, and reflective feedback to refine simulation. Based on our manually constructed behavior-tree-based simulation benchmark, BTSIMBENCH, our experiments show a significant performance improvement in behavior simulation compared to baselines, ranging from 13.60% to 24.80%. Code and data are available at https://github.com/Dawn888888/BeSimulator.
This paper has not been read by Pith yet.
Forward citations
Cited by 2 Pith papers
-
OSC2Runner: OpenSCENARIO 2.x Compliant High-Fidelity AV Simulation in CARLA
OSC2Runner is the first native orchestration framework mapping OpenSCENARIO v2.x DSL to CARLA via a multi-pass transpiler to dynamic behavior trees, claiming tick-by-tick determinism and exact trigger evaluation.
-
Compiling OpenSCENARIO 2.1 for Scenario-Based Testing in CARLA
A multi-pass compiler using ANTLR4 and py_trees translates OpenSCENARIO 2.1 DSL into CARLA behaviors, demonstrated on a multi-actor cut-in scenario.
discussion (0)
Sign in with ORCID, Apple, or X to comment. Anyone can read and Pith papers without signing in.