Real-time gait planner for human walking using a lower limb exoskeleton and its implementation on Exoped robot
Jafar Kazemi, Sadjaad Ozgoli

TL;DR
This paper introduces a real-time gait planning method for exoskeletons that dynamically adjusts walking parameters during stride, using feedback-controlled trajectory generation to improve adaptability and smoothness in human walking assistance.
Contribution
It presents a novel real-time gait generation approach with feedback control, enabling dynamic parameter changes and improved trajectory smoothness for exoskeletons.
Findings
Successful simulation demonstrating smooth, continuous trajectories
Experimental testing shows good performance and user satisfaction
Enhanced adaptability over traditional pre-recorded patterns
Abstract
Lower extremity exoskeleton has been developed as a motion assistive technology in recent years. Walking pattern generation is a fundamental topic in the design of these robots. The usual approach with most exoskeletons is to use a pre-recorded pattern as a look-up table. There are some deficiencies with this method, including data storage limitation and poor regulation relating to the walking parameters. Therefore modeling human walking patterns to use in exoskeletons is required. The few existing models provide piece by piece walking patterns, only generating at the beginning of each stride cycle in respect to fixed walking parameters. In this paper, we present a real-time walking pattern generation method which enables changing the walking parameters during the stride. For this purpose, two feedback controlled third order systems are proposed as optimal trajectory planners for…
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