Model Tensor Planning
An T. Le, Khai Nguyen, Minh Nhat Vu, Jo\~ao Carvalho, Jan Peters

TL;DR
Model Tensor Planning (MTP) introduces a tensor-based sampling framework for MPC that enhances exploration, smoothness, and robustness in robotic control tasks, outperforming standard methods.
Contribution
MTP is a novel tensor sampling approach for MPC that achieves asymptotic path coverage and maximum entropy, improving exploration and control robustness.
Findings
MTP outperforms standard MPC in various robotic tasks.
Tensor sampling improves exploration and control robustness.
Theoretical guarantees of path coverage and entropy in control space.
Abstract
Sampling-based model predictive control (MPC) offers strong performance in nonlinear and contact-rich robotic tasks, yet often suffers from poor exploration due to locally greedy sampling schemes. We propose \emph{Model Tensor Planning} (MTP), a novel sampling-based MPC framework that introduces high-entropy control trajectory generation through structured tensor sampling. By sampling over randomized multipartite graphs and interpolating control trajectories with B-splines and Akima splines, MTP ensures smooth and globally diverse control candidates. We further propose a simple -mixing strategy that blends local exploitative and global exploratory samples within the modified Cross-Entropy Method (CEM) update, balancing control refinement and exploration. Theoretically, we show that MTP achieves asymptotic path coverage and maximum entropy in the control trajectory space in the…
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Taxonomy
TopicsModel-Driven Software Engineering Techniques · Modeling and Simulation Systems · Computational Physics and Python Applications
