AIMAOct 20, 2025

Diverse Planning with Simulators via Linear Temporal Logic

arXiv:2510.17418v11 citationsh-index: 46
Originality Highly original
AI Analysis

This addresses a critical limitation for autonomous agents in complex environments where existing diverse planning methods may produce semantically identical solutions.

The paper tackled the problem of generating diverse plans in simulation-based planning by introducing FBI_LTL, which uses Linear Temporal Logic to define semantic diversity criteria, resulting in more diverse plans compared to a baseline approach.

Autonomous agents rely on automated planning algorithms to achieve their objectives. Simulation-based planning offers a significant advantage over declarative models in modelling complex environments. However, relying solely on a planner that produces a single plan may not be practical, as the generated plans may not always satisfy the agent's preferences. To address this limitation, we introduce $\texttt{FBI}_\texttt{LTL}$, a diverse planner explicitly designed for simulation-based planning problems. $\texttt{FBI}_\texttt{LTL}$ utilises Linear Temporal Logic (LTL) to define semantic diversity criteria, enabling agents to specify what constitutes meaningfully different plans. By integrating these LTL-based diversity models directly into the search process, $\texttt{FBI}_\texttt{LTL}$ ensures the generation of semantically diverse plans, addressing a critical limitation of existing diverse planning approaches that may produce syntactically different but semantically identical solutions. Extensive evaluations on various benchmarks consistently demonstrate that $\texttt{FBI}_\texttt{LTL}$ generates more diverse plans compared to a baseline approach. This work establishes the feasibility of semantically-guided diverse planning in simulation-based environments, paving the way for innovative approaches in realistic, non-symbolic domains where traditional model-based approaches fail.

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