A Value Function Space Approach for Hierarchical Planning with Signal Temporal Logic Tasks
A Value Function Space Approach for Hierarchical Planning with Signal Temporal Logic Tasks
Signal Temporal Logic (STL) has emerged as an expressive language for reasoning intricate planning objectives. However, existing STL-based methods often assume full observation and known dynamics, which imposes constraints on real-world applications. To address this challenge, we propose a hierarchical planning framework that starts by constructing the Value Function Space (VFS) for state and action abstraction, which embeds functional information about affordances of the low-level skills. Subsequently, we utilize a neural network to approximate the dynamics in the VFS and employ sampling based optimization to synthesize high-level skill sequences that maximize the robustness measure of the given STL tasks in the VFS. Then those skills are executed in the low-level environment. Empirical evaluations in the Safety Gym and ManiSkill environments demonstrate that our method accomplish the STL tasks without further training in the low-level environments, substantially reducing the training burdens.
Yiding Ji、Peiran Liu、Yiting He、Yihao Qin、Hang Zhou
计算技术、计算机技术自动化基础理论
Yiding Ji,Peiran Liu,Yiting He,Yihao Qin,Hang Zhou.A Value Function Space Approach for Hierarchical Planning with Signal Temporal Logic Tasks[EB/OL].(2025-08-26)[2025-09-06].https://arxiv.org/abs/2408.01923.点此复制
评论