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Cyber-Physical Systems Virtual Organization
Read-only archive of site from September 29, 2023.
CPS-VO
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Projects
CPS: Synergy: Collaborative Research: Adaptive Intelligence for Cyber-Physical Automotive Active Safety-System Design and Evaluation
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Submitted by tsiotras on Mon, 04/25/2016 - 6:02pm
Project Details
Lead PI:
Panagiotis Tsiotras
Co-PI(s):
Karen Feigh
Performance Period:
09/15/15
-
08/31/19
Institution(s):
Georgia Institute of Technology
Sponsor(s):
National Science Foundation
Award Number:
1544814
1515 Reads. Placed 202 out of 804 NSF CPS Projects based on total reads on all related artifacts.
Abstract:
The automotive industry finds itself at a cross-roads. Current advances in MEMS sensor technology, the emergence of embedded control software, the rapid progress in computer technology, digital image processing, machine learning and control algorithms, along with an ever increasing investment in vehicle-to-vehicle (V2V) and vehicle-to-infrastructure (V2I) technologies, are about to revolutionize the way we use vehicles and commute in everyday life. Automotive active safety systems, in particular, have been used with enormous success in the past 50 years and have helped keep traffic accidents in check. Still, more than 30,000 deaths and 2,000,000 injuries occur each year in the US alone, and many more worldwide. The impact of traffic accidents on the economy is estimated to be as high as $300B/yr in the US alone. Further improvement in terms of driving safety (and comfort) necessitates that the next generation of active safety systems are more proactive (as opposed to reactive) and can comprehend and interpret driver intent. Future active safety systems will have to account for the diversity of drivers' skills, the behavior of drivers in traffic, and the overall traffic conditions. This research aims at improving the current capabilities of automotive active safety control systems (ASCS) by taking into account the interactions between the driver, the vehicle, the ASCS and the environment. Beyond solving a fundamental problem in automotive industry, this research will have ramifications in other cyber-physical domains, where humans manually control vehicles or equipment including: flying, operation of heavy machinery, mining, tele-robotics, and robotic medicine. Making autonomous/automated systems that feel and behave "naturally" to human operators is not always easy. As these systems and machines participate more in everyday interactions with humans, the need to make them operate in a predictable manner is more urgent than ever. To achieve the goals of the proposed research, this project will use the estimation of the driver's cognitive state to adapt the ASCS accordingly, in order to achieve a seamless operation with the driver. Specifically, new methodologies will be developed to infer long-term and short-term behavior of drivers via the use of Bayesian networks and neuromorphic algorithms to estimate the driver's skills and current state of attention from eye movement data, together with dynamic motion cues obtained from steering and pedal inputs. This information will be injected into the ASCS operation in order to enhance its performance by taking advantage of recent results from the theory of adaptive and real-time, model-predictive optimal control. The correct level of autonomy and workload distribution between the driver and ASCS will ensure that no conflicts arise between the driver and the control system, and the safety and passenger comfort are not compromised. A comprehensive plan will be used to test and validate the developed theory by collecting measurements from several human subjects while operating a virtual reality-driving simulator.
Related Artifacts
Presentations
Adaptive Intelligence for Cyber-Physical Automotive Active Safety - System Design and Evaluation
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CPS: Synergy: Collaborative Research: Adaptive Intelligence for Cyber-Physical Automotive Active Safety - System Design and Eval
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Posters
Adaptive Intelligence for Cyber-Physical Automotive Active Safety System Design and Evaluation
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Adaptive Intelligence for Cyber-Physical Automotive Active Safety System Design and Evaluation
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Collaborative Research: Adaptive Intelligence for Cyber-Physical Automotive Active Safety- System Design and Evaluation
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Download
Adaptive Intelligence for Cyber-Physical Automotive Active Safety- System Design and Evaluation
|
Download
Adaptive Intelligence for Cyber-Physical Automotive Active Safety System Design and Evaluation
|
Download
Publications
Biologically plausible learning in neural networks with modulatory feedback
Superior colliculus neurons encode a visual saliency map during free viewing of natural dynamic video
Superior colliculus encodes visual saliency before the primary visual cortex
Learning to Recognize Objects by Retaining other Factors of Variation
Improved Deep Learning of Object Category using Pose Information
HTA-based Tracking of Pilot Actions in the Cockpit
Nonlinear Driver Parameter Estimation and Driver Steering Behavior Analysis for {ADAS} using Field Test Data
Driver Parameter Estimation Using Joint {E-/UKF} and Dual {E-/UKF} Under Nonlinear State Inequality Constraints
Vehicle Modeling and Parameter Estimation Using Adaptive Limited Memory Joint-State {UKF}
Optimal Two-Point Visual Driver Model and Controller Development for Driver-Assist Systems for Semi-Autonomous Vehicles
A New Hybrid Sensorimotor Driver Model with Model Predictive Control
Videos
CPS: Synergy: Collaborative Research: Adaptive Intelligence for Cyber-Physical Automotive Active Safety - System Design and Evaluation
Adaptive Intelligence for Cyber-Physical Automotive Active Safety System Design and Evaluation
Adaptive Intelligence for Cyber-Physical Automotive Active Safety System Design and Evaluation
Collaborative Research: Adaptive Intelligence for CyberPhysical Automotive Active Safety System Design and Evaluation
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CPS Domains
Automotive
Control
Critical Infrastructure
Transportation
Foundations