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arXiv 提交日期: 2026-02-18
📄 Abstract - SIT-LMPC: Safe Information-Theoretic Learning Model Predictive Control for Iterative Tasks

Robots executing iterative tasks in complex, uncertain environments require control strategies that balance robustness, safety, and high performance. This paper introduces a safe information-theoretic learning model predictive control (SIT-LMPC) algorithm for iterative tasks. Specifically, we design an iterative control framework based on an information-theoretic model predictive control algorithm to address a constrained infinite-horizon optimal control problem for discrete-time nonlinear stochastic systems. An adaptive penalty method is developed to ensure safety while balancing optimality. Trajectories from previous iterations are utilized to learn a value function using normalizing flows, which enables richer uncertainty modeling compared to Gaussian priors. SIT-LMPC is designed for highly parallel execution on graphics processing units, allowing efficient real-time optimization. Benchmark simulations and hardware experiments demonstrate that SIT-LMPC iteratively improves system performance while robustly satisfying system constraints.

顶级标签: robotics model training systems
详细标签: model predictive control iterative learning safety constraints normalizing flows gpu acceleration 或 搜索:

SIT-LMPC:面向迭代任务的安全信息论学习模型预测控制 / SIT-LMPC: Safe Information-Theoretic Learning Model Predictive Control for Iterative Tasks


1️⃣ 一句话总结

这篇论文提出了一种名为SIT-LMPC的新型智能控制算法,它能让机器人在复杂多变的环境中,通过不断重复任务来自主学习并优化动作,在确保绝对安全的前提下,越来越出色地完成工作。

源自 arXiv: 2602.16187