DocumentCode :
62504
Title :
Enabling Force Sensing During Ground Locomotion: A Bio-Inspired, Multi-Axis, Composite Force Sensor Using Discrete Pressure Mapping
Author :
Meng Yee Chuah ; Sangbae Kim
Author_Institution :
Dept. of Mech. Eng., Massachusetts Inst. of Technol., Cambridge, MA, USA
Volume :
14
Issue :
5
fYear :
2014
fDate :
May-14
Firstpage :
1693
Lastpage :
1703
Abstract :
This paper presents a new force sensor design approach that maps the local sampling of pressure inside a composite polymeric footpad to forces in three axes, designed for running robots. Conventional multiaxis force sensors made of heavy metallic materials tend to be too bulky and heavy to be fitted in the feet of legged robots, and vulnerable to inertial noise upon high acceleration. To satisfy the requirements for high speed running, which include mitigating high impact forces, protecting the sensors from ground collision, and enhancing traction, these stiff sensors should be paired with additional layers of durable, soft materials; but this also degrades the integrity of the foot structure. The proposed foot sensor is manufactured as a monolithic, composite structure composed of an array of barometric pressure sensors completely embedded in a protective polyurethane rubber layer. This composite architecture allows the layers to provide compliance and traction for foot collision while the deformation and the sampled pressure distribution of the structure can be mapped into three axis force measurement. Normal and shear forces can be measured upon contact with the ground, which causes the footpad to deform and change the readings of the individual pressure sensors in the array. A one-time training process using an artificial neural network is all that is necessary to relate the normal and shear forces with the multiaxis foot sensor output. The results show that the sensor can predict normal forces in the Z-axis up to 300 N with a root mean squared error of 0.66% and up to 80 N in the X- and Y-axis. The experiment results demonstrates a proof-of-concept for a lightweight, low cost, yet robust footpad sensor suitable for use in legged robots undergoing ground locomotion.
Keywords :
atmospheric pressure; barometers; computerised instrumentation; deformation; filled polymers; force measurement; force sensors; learning (artificial intelligence); legged locomotion; neural nets; pressure measurement; pressure sensors; rubber; sensor arrays; artificial neural network; barometric pressure sensor; bioinspired multiaxis composite force sensor; composite polymeric footpad; deformation; discrete pressure mapping; ground collision; ground locomotion; heavy metallic material; impact force mitigation; inertial noise; legged robot; local map sampling; normal force measurement; one-time training process; protective polyurethane rubber layer; root mean squared error; running robot; sampled pressure distribution; shear force measurement; three axis force measurement; traction enhancement; Foot; Force; Force measurement; Robot sensing systems; Sensor arrays; Force measurement; artificial neural networks; force sensors; legged locomotion; piezoresistance; piezoresistive devices; pressure gauges; robot sensing systems; sensor arrays; tactile sensors;
fLanguage :
English
Journal_Title :
Sensors Journal, IEEE
Publisher :
ieee
ISSN :
1530-437X
Type :
jour
DOI :
10.1109/JSEN.2014.2299805
Filename :
6714415
Link To Document :
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