Data-driven control of hydraulic impact hammers under strict operational and control constraints
Francisco Leiva, Claudio Canales, Michelle Valenzuela, Javier Ruiz-del-Solar

TL;DR
This paper introduces a data-driven control approach for hydraulic impact hammers, enabling precise positioning under operational constraints using supervised learning, reinforcement learning, and model predictive control, validated on a mini-excavator arm.
Contribution
It presents a novel methodology combining supervised learning, RL, and MPC for system identification and control of hydraulic impact hammers with limited sensing and discrete control interfaces.
Findings
RL policy achieves sub-12cm position error in real-world tests
System identification uses only 68 minutes of teleoperation data
No adjustments needed for successful Sim2Real transfer
Abstract
This paper presents a data-driven methodology for the control of static hydraulic impact hammers, also known as rock breakers, which are commonly used in the mining industry. The task addressed in this work is that of controlling the rock-breaker so its end-effector reaches arbitrary target poses, which is required in normal operation to place the hammer on top of rocks that need to be fractured. The proposed approach considers several constraints, such as unobserved state variables due to limited sensing and the strict requirement of using a discrete control interface at the joint level. First, the proposed methodology addresses the problem of system identification to obtain an approximate dynamic model of the hydraulic arm. This is done via supervised learning, using only teleoperation data. The learned dynamic model is then exploited to obtain a controller capable of reaching target…
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Taxonomy
TopicsHydraulic and Pneumatic Systems · Vibration Control and Rheological Fluids · Robot Manipulation and Learning
