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- All Subjects: Biomechanics
- Status: Published
Description
This dissertation explores the use of artificial intelligence and machine learningtechniques for the development of controllers for fully-powered robotic prosthetics.
The aim of the research is to enable prosthetics to predict future states and control
biomechanical properties in both linear and nonlinear fashions, with a particular focus
on ergonomics.
The research is motivated by the need to provide amputees with prosthetic devices
that not only replicate the functionality of the missing limb, but also offer a high
level of comfort and usability. Traditional prosthetic devices lack the sophistication to
adjust to a user’s movement patterns and can cause discomfort and pain over time.
The proposed solution involves the development of machine learning-based controllers
that can learn from user movements and adjust the prosthetic device’s movements
accordingly.
The research involves a combination of simulation and real-world testing to evaluate
the effectiveness of the proposed approach. The simulation involves the creation of a
model of the prosthetic device and the use of machine learning algorithms to train
controllers that predict future states and control biomechanical properties. The real-
world testing involves the use of human subjects wearing the prosthetic device to
evaluate its performance and usability.
The research focuses on two main areas: the prediction of future states and the
control of biomechanical properties. The prediction of future states involves the
development of machine learning algorithms that can analyze a user’s movements
and predict the next movements with a high degree of accuracy. The control of
biomechanical properties involves the development of algorithms that can adjust the
prosthetic device’s movements to ensure maximum comfort and usability for the user.
The results of the research show that the use of artificial intelligence and machine
learning techniques can significantly improve the performance and usability of pros-
thetic devices. The machine learning-based controllers developed in this research are
capable of predicting future states and adjusting the prosthetic device’s movements in
real-time, leading to a significant improvement in ergonomics and usability. Overall,
this dissertation provides a comprehensive analysis of the use of artificial intelligence
and machine learning techniques for the development of controllers for fully-powered
robotic prosthetics.
ContributorsCLARK, GEOFFEY M (Author) / Ben Amor, Heni (Thesis advisor) / Dasarathy, Gautam (Committee member) / Papandreou-Suppappola, Antonia (Committee member) / Ward, Jeffrey (Committee member) / Arizona State University (Publisher)
Created2023
Description
According to the Center for Disease Control and Prevention report around 29,668 United States residents aged greater than 65 years had died as a result of a fall in 2016. Other injuries like wrist fractures, hip fractures, and head injuries occur as a result of a fall. Certain groups of people are more prone to experience falls than others, one of which being individuals with stroke. The two most common issues with individuals with strokes are ankle weakness and foot drop, both of which contribute to falls. To mitigate this issue, the most popular clinical remedy given to these users is thermoplastic Ankle Foot Orthosis. These AFO's help improving gait velocity, stride length, and cadence. However, studies have shown that a continuous restraint on the ankle harms the compensatory stepping response and forward propulsion. It has been shown in previous studies that compensatory stepping and forward propulsion are crucial for the user's ability to recover from postural perturbations. Hence, there is a need for active devices that can supply a plantarflexion during the push-off and dorsiflexion during the swing phase of gait. Although advancements in the orthotic research have shown major improvements in supporting the ankle joint for rehabilitation, there is a lack of available active devices that can help impaired users in daily activities. In this study, our primary focus is to build an unobtrusive, cost-effective, and easy to wear active device for gait rehabilitation and fall prevention in individuals who are at risk. The device will be using a double-acting cylinder that can be easily incorporated into the user's footwear using a novel custom-designed powered ankle brace. The device will use Inertial Measurement Units to measure kinematic parameters of the lower body and a custom control algorithm to actuate the device based on the measurements. The study can be used to advance the field of gait assistance, rehabilitation, and potentially fall prevention of individuals with lower-limb impairments through the use of Active Ankle Foot Orthosis.
ContributorsRay, Sambarta (Author) / Honeycutt, Claire (Thesis advisor) / Dasarathy, Gautam (Thesis advisor) / Redkar, Sangram (Committee member) / Jayasuriya, Suren (Committee member) / Arizona State University (Publisher)
Created2020