Path planning in an uncertain environment is a key enabler of true vehicle autonomy. Over the past two decades, numerous approaches have been developed to account for errors in the vehicle path while navigating complex and often uncertain environments. An important capability of such planning is the prediction of vehicle dispersion covariances about a candidate path. This work develops a new closed-loop linear covariance (CL-LinCov) framework applicable to a wide range of autonomous system architectures. Important features of the developed framework include the (1) separation of high-level guidance from low-level control, (2) support for output-feedback controllers with internal states, dynamics, and output, and (3) multi-use continuous sen...
Path planning for small unmanned aerial vehicle (SUAV) has been researched for its high potential in...
Numerical lifting-line is a computationally efficient method for calculating aerodynamic forces and ...
A methodology is presented in this work for intelligent motion planning in an uncertain environment ...
Path planning in an uncertain environment is a key enabler of true vehicle autonomy. Over the past t...
A key enabler of autonomous vehicles is the ability to plan the path of the vehicle to accomplish mi...
This paper presents a real-time motion planning approach for autonomous vehicles with complex dynami...
http://www.aiaa.org/agenda.cfm?lumeetingid=1998&viewcon=agenda&pageview=2&programSeeview=1&dateget=1...
This thesis explores the challenge of robustly handling dynamic obstacle uncertainty in autonomous d...
This paper presents a novel control approach for autonomous systems operating under uncertainty. We ...
Path planning for an autonomous vehicle in a dynamic environment is a challenging problem particular...
The vast utility of unmanned aerial systems in wide-ranging applications, whether civil, militaristi...
While linear covariance analysis is widely used for navigation system design and analysis, it is oft...
The article of record as published may be located at http://dx.doi.org/10.2514/1.42056The paper pres...
Reliable guidance of fixed-wing Unmanned Aerial Vehicles (UAVs) is challenging, as their high maneuv...
The high maneuverability of fixed-wing unmanned aerial vehicles (UAVs) exposes these systems to seve...
Path planning for small unmanned aerial vehicle (SUAV) has been researched for its high potential in...
Numerical lifting-line is a computationally efficient method for calculating aerodynamic forces and ...
A methodology is presented in this work for intelligent motion planning in an uncertain environment ...
Path planning in an uncertain environment is a key enabler of true vehicle autonomy. Over the past t...
A key enabler of autonomous vehicles is the ability to plan the path of the vehicle to accomplish mi...
This paper presents a real-time motion planning approach for autonomous vehicles with complex dynami...
http://www.aiaa.org/agenda.cfm?lumeetingid=1998&viewcon=agenda&pageview=2&programSeeview=1&dateget=1...
This thesis explores the challenge of robustly handling dynamic obstacle uncertainty in autonomous d...
This paper presents a novel control approach for autonomous systems operating under uncertainty. We ...
Path planning for an autonomous vehicle in a dynamic environment is a challenging problem particular...
The vast utility of unmanned aerial systems in wide-ranging applications, whether civil, militaristi...
While linear covariance analysis is widely used for navigation system design and analysis, it is oft...
The article of record as published may be located at http://dx.doi.org/10.2514/1.42056The paper pres...
Reliable guidance of fixed-wing Unmanned Aerial Vehicles (UAVs) is challenging, as their high maneuv...
The high maneuverability of fixed-wing unmanned aerial vehicles (UAVs) exposes these systems to seve...
Path planning for small unmanned aerial vehicle (SUAV) has been researched for its high potential in...
Numerical lifting-line is a computationally efficient method for calculating aerodynamic forces and ...
A methodology is presented in this work for intelligent motion planning in an uncertain environment ...