ArXiv TLDR

Frequency-aware Decomposition Learning for Sensorless Wrench Forecasting on a Vibration-rich Hydraulic Manipulator

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2604.12905

Hyeonbeen Lee, Min-Jae Jung, Tae-Kyeong Yeu, Jong-Boo Han, Daegil Park + 1 more

cs.ROcs.LG

TLDR

This paper introduces FDN, a novel network for sensorless wrench forecasting on hydraulic manipulators, excelling in high-frequency vibration estimation.

Key contributions

  • Proposes Frequency-aware Decomposition Network (FDN) for sensorless, vibration-rich wrench forecasting.
  • FDN uses asymmetric heads to predict spectrally decomposed wrench, modeling high-frequency residuals probabilistically.
  • Enhances input spectra with learned filtering and applies frequency-band priors for improved accuracy.
  • Achieves superior high-frequency wrench estimation on a hydraulic manipulator, benefiting from transfer learning.

Why it matters

Existing sensorless force/torque estimation struggles with high-frequency vibrations crucial for rapid robot interactions. This paper introduces FDN, a novel approach that accurately forecasts these vibration-rich wrenches, outperforming baselines. This enables more robust robot control for tasks like grinding, reducing reliance on physical sensors and highlighting the value of transfer learning.

Original Abstract

Force and torque (F/T) sensing is critical for robot-environment interaction, but physical F/T sensors impose constraints in size, cost, and fragility. To mitigate this, recent studies have estimated force/wrench sensorlessly from robot internal states. While existing methods generally target relatively slow interactions, tasks involving rapid interactions, such as grinding, can induce task-critical high-frequency vibrations, and estimation in such robotic settings remains underexplored. To address this gap, we propose a Frequency-aware Decomposition Network (FDN) for short-term forecasting of vibration-rich wrench from proprioceptive history. FDN predicts spectrally decomposed wrench with asymmetric deterministic and probabilistic heads, modeling the high-frequency residual as a learned conditional distribution. It further incorporates frequency-awareness to adaptively enhance input spectra with learned filtering and impose a frequency-band prior on the outputs. We pretrain FDN on a large-scale open-source robot dataset and transfer the learned proprioception-to-wrench representation to the downstream. On real-world grinding excavation data from a 6-DoF hydraulic manipulator and under a delayed estimation setting, FDN outperforms baseline estimators and forecasters in the high-frequency band and remains competitive in the low-frequency band. Transfer learning provides additional gains, suggesting the potential of large-scale pretraining and transfer learning for robotic wrench estimation. Code and data will be made available upon acceptance.

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