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DeepMPC: Learning Deep Latent Features for Model Predictive Control

Ian Lenz, Ross A. Knepper, Ashutosh Saxena

Year
2015
Citations
344
Access
Open access

Abstract

Designing controllers for tasks with complex nonlinear dynamics is extremely challenging, time-consuming, and in many cases, infeasible. This difficulty is exacerbated in tasks such as robotic food-cutting, in which dynamics might vary both with environmental properties, such as material and tool class, and with time while acting. In this work, we present DeepMPC, an online real-time model-predictive control approach designed to handle such difficult tasks. Rather than hand-design a dynamics model for the task, our approach uses a novel deep architecture and learning algorithm, learning controllers for complex tasks directly from data. We validate our method in experiments on a large-scale dataset of 1488 material cuts for 20 diverse classes, and in 450 real-world robotic experiments, demonstrating significant improvement over several other approaches.

Keywords

Computer scienceArtificial intelligenceDeep learningMachine learningControl (management)

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