PrePARE: Predictive Proprioception for Agile Failure Event Detection in Robotic Exploration of Extreme Terrains

07/30/2022
by   Sharmita Dey, et al.
0

Legged robots can traverse a wide variety of terrains, some of which may be challenging for wheeled robots, such as stairs or highly uneven surfaces. However, quadruped robots face stability challenges on slippery surfaces. This can be resolved by adjusting the robot's locomotion by switching to more conservative and stable locomotion modes, such as crawl mode (where three feet are in contact with the ground always) or amble mode (where one foot touches down at a time) to prevent potential falls. To tackle these challenges, we propose an approach to learn a model from past robot experience for predictive detection of potential failures. Accordingly, we trigger gait switching merely based on proprioceptive sensory information. To learn this predictive model, we propose a semi-supervised process for detecting and annotating ground truth slip events in two stages: We first detect abnormal occurrences in the time series sequences of the gait data using an unsupervised anomaly detector, and then, the anomalies are verified with expert human knowledge in a replay simulation to assert the event of a slip. These annotated slip events are then used as ground truth examples to train an ensemble decision learner for predicting slip probabilities across terrains for traversability. We analyze our model on data recorded by a legged robot on multiple sites with slippery terrain. We demonstrate that a potential slip event can be predicted up to 720 ms ahead of a potential fall with an average precision greater than 0.95 and an average F-score of 0.82. Finally, we validate our approach in real-time by deploying it on a legged robot and switching its gait mode based on slip event detection.

READ FULL TEXT

page 1

page 6

page 7

research
06/17/2023

Geometric Mechanics of Contact-Switching Systems

Discrete and periodic contact switching is a key characteristic of stead...
research
03/09/2023

Teleoperation of Soft Modular Robots: Study on Real-time Stability and Gait Control

Soft robotics holds tremendous potential for various applications, espec...
research
04/19/2021

Controlling Pivoting Gait using Graph Model Predictive Control

Pivoting gait is efficient for manipulating a big and heavy object with ...
research
01/20/2022

Learning robust perceptive locomotion for quadrupedal robots in the wild

Legged robots that can operate autonomously in remote and hazardous envi...
research
03/08/2023

Proprioception and Tail Control Enable Extreme Terrain Traversal by Quadruped Robots

Legged robots leverage ground contacts and the reaction forces they prov...
research
10/29/2019

Gait Event Detection in Tibial Acceleration Profiles: a Structured Learning Approach

Analysis of runner's data will often examine gait variables with referen...
research
05/21/2021

Reduced-Order-Model-Based Feedback Design for Thruster-Assisted Legged Locomotion

Real-time constraint satisfaction for robots can be quite challenging du...

Please sign up or login with your details

Forgot password? Click here to reset