Dmitry Bershadsky
Georgia Institute of Technology
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Publication
Featured researches published by Dmitry Bershadsky.
57th AIAA/ASCE/AHS/ASC Structures, Structural Dynamics, and Materials Conference | 2016
Dmitry Bershadsky; Stephen Haviland; Eric N. Johnson
One of the more daunting tasks of designing a multirotor unmanned aerial vehicle (UAV) is the selection of a propulsion system that will provide desired performance. Rigorous methods for selecting these drive components, that is, the motors, propellers, and batteries for electric UAVs are not readily available. Currently, many UAV designs are based on legacy selections or limited and at times incorrect manufacturer data. These design methods are either simplistic or lacking in analysis and validation of component selection. Proper propulsion system design should address the mission requirements for which the vehicle is being designed. A proper design methodology is the best chance that the designer has to create a new vehicle that will be mission-capable. This paper attempts to satisfy the need for more thorough method of propulsion component selection. The paper is written also to document the popular online drive system analysis tool due to numerous requests. This tool is one example implementation of the methodologies described by this paper.
ieee aerospace conference | 2016
Takuma Nakamura; Stephen Haviland; Dmitry Bershadsky; Daniel Magree; Eric N. Johnson
This paper describes the target detection and tracking architecture used by the Georgia Tech Aerial Robotics team for the American Helicopter Society (AHS) Micro Aerial Vehicle (MAV) challenge. The vision system described enables vision-aided navigation with additional abilities such as target detection and tracking all performed onboard the vehicles computer. The author suggests a robust target tracking method that does not solely depend on the image obtained from a camera, but also utilizes the other sensor outputs and runs a target location estimator. The machine learning based target identification method uses Haar-like classifiers to extract the target candidate points. The raw measurements are plugged into multiple Extended Kalman Filters (EKFs). The statistical test (Z-test) is used to bound the measurement, and solve the corresponding problem. Using Multiple EKFs allows us not only to optimally estimate the target location, but also to use the information as one of the criteria to evaluate the tracking performance. The MAV utilizes performance-based criteria that determine whether or not to initiate a maneuver such as hover or land over/on the target. The performance criteria are closed in the loop which allows the system to determine at any time whether or not to continue with the maneuver. For Vision-aided Inertial Navigation System (VINS), a corner Harris algorithm finds the feature points, and we track them using the statistical knowledge. The feature point locations are integrated in Bierman Thornton extended Kalman Filter (BTEKF) with Inertial Measurement Unit (IMU) and sonar sensor outputs to generate vehicle states: position, velocity, attitude, accelerometer and gyroscope biases. A 6-degrees-of-freedom quadrotor flight simulator is developed to test the suggested method. This paper provides the simulation results of the vision-based maneuvers: hovering over the target, and landing on the target. In addition to the simulation results, flight tests have been conducted to show and validate the system performance. The 500 gram Georgia Tech Quadrotor (GtQ)-Mini, was used for the flight tests. All processing is done onboard the vehicle and it is able to operate without human interaction. Both of the simulation and flight test results show the effectiveness of the suggested method. This system and vehicle were used for the AHS 2015 MAV Student Challenge where the GPS-denied closed-loop target search is required. The vehicle successfully found the ground target, and landed on the desired location. This paper shares the data obtained from the competition.
oceans conference | 2016
Dmitry Bershadsky; Steve Haviland; Pierre Valdez; Eric G. Johnson
This study examines considerations for a submersible unmanned flying vehicle (SUFV) capable of collecting water samples from seas and rivers, and providing unique operational communications capabilities. The chosen design, the Cormorant, a quadrotor capable of operating in both air and water, is sized to meet the anticipated mission profiles. The proposed proof of concept design shows potential at delivering sensor data more quickly and reliably than current approaches. Also presented are details on the propulsion system design options, configuration, and adaptability of the components to both air and underwater environments. Critical to the proposed design is the capability of the vehicle to quickly submerge at different depths and maintain location while measurements take place. A ballast system is proposed for depth control, while rotors provide propulsion to maneuver and change attitude. Once measurements are collected, the vehicle is capable of surfacing and taking off to fly to a new target location, communicate and/or relay data, or fly back to deliver the data to base. Delivering the sensor data can be accomplished by communicating via both acoustic and radio frequency (RF) communications, and flying to heights and ranges where RF attenuation effects due to atmospheric conditions are minimized.
AIAA Atmospheric Flight Mechanics Conference | 2016
Stephen Haviland; Dmitry Bershadsky; Eric N. Johnson
The freewing aircraft is an airplane with the wing placed on a hinged bearing about the pitch axis that allows for free rotation with respect to the fuselage body. The freewing only differs from a conventional airplane in that the wing is free to rotate. The 70 year old concept, through various studies, has been shown that by placing the wing on a freeto-rotate hinge, it effectively reduces the inertia of the wing making it easier for the wing to adjust to turbulence. The work described in this paper makes two large contributions to past freewing work. The first is the motors are placed on the wing which allows for vertical takeoff and landing (VTOL). The second is a different dynamic analysis approach that uses multi-body dynamics and uses hinge constraints as part of the state vector which allow for an easier way of solving the equations of motion. Data is shown for how the longitudinal modes change when varying design parameters. Simulation data is also presented highlighting the VTOL aspect of the vehicle.
52nd Aerospace Sciences Meeting | 2014
Dmitry Bershadsky; Louis Dressel; Eric N. Johnson
General aviation (GA) aircraft are for the most part not equipped with situational awareness or alerting systems, namely in terms of traffic or terrain collision. This is largely due to lack of regulatory requirements, but also because such systems tend to be costly. By over an order of magnitude, these types of aircraft are the most common in the worlds airspace. Their prevalence, combined with their more terrain-proximal flight profiles, make GA aircraft most susceptible to controlled flight into terrain (CFIT) incidents. We introduce an economical situational awareness and alerting system in an attempt to mitigate CFIT accidents in otherwise uninstrumented GA aircraft. We do so using a common smartphone to run an application which interfaces with NASAs Shuttle Radar Topography Mission (SRTM) digital terrain elevation database (DTED).
international conference on unmanned aircraft systems | 2017
Takuma Nakamura; Stephen Haviland; Dmitry Bershadsky; Daniel Magree; Erie N. Johnson
This paper describes a novel vision-based target tracking and landing method that uses aerial images from an on-board camera. The proposed method explicitly deals with occlusions that often occur during these maneuvers. Normalized cross correlation (NCC) is used to locate an image patch in a reference image with a measure of certainty. The key insight is that over the course of the vehicle approach, there is a transition between the target being contained in the camera images, and camera images being contained in the target image. When a vehicle is at high altitude, the NCC of the target over an entire camera image is computed. When at low altitude, the reverse operation is performed: the NCC of the camera images is computed over the target image. Additionally, at both high and low altitude, we find interesting region using contour trees, and the NCC of the template with the region is calculated. This way, we can recognize a target even when it is only partly in view. A particle filter is used to fuse highly multi-modal measurements from the three techniques. Each particle chooses its update measurement using a roulette wheel selection with the size of the slice being proportional to the measurements NCC and, therefore, converges to a location that has a greater NCC and numerous positive hits. The particle filter allows estimation of target position and velocity states, which are used to determine criteria for safe landing. We evaluate our system with an image-in-the-loop simulation and closed-loop flight tests with a quadrotor.
AIAA Guidance, Navigation, and Control (GNC) Conference | 2013
Dmitry Bershadsky; Eric N. Johnson
Autonomous exploration and mapping of environments is an important problem in robotics. Efficient exploration of structured environments requires that the robot utilize region-specific exploration strategies and coordinate with search other agents. This paper details the exploration and guidance system of a multi-quadrotor unmanned aerial system (UAS) capable of exploring cluttered indoor areas without relying on any external aides. Specifically, a graph-based frontier search algorithm which is aided by an onboard Simultaneous Localization and Mapping (SLAM) system is developed and flight tested. A technique is developed in for segmenting an indoor office-like environment into regions and to utilize the SLAM map to conduct specific activities in these regions. A goal-directed exploration strategy is created building on existing hybrid deliberative-reactive approaches to exploration. An obstacle avoidance and guidance system is implemented to ensure that the vehicle explores maximum indoor area while avoiding obstacles. The environment is explored and regions are segmented by detecting rooms and hallways which expedites the search. The multi-vehicle system is Georgia Tech Aerial Robotic Teams entry for the annual International Aerial Robotics Competition (IARC).
AHS International Forum 71 | 2015
Stephen Haviland; Dmitry Bershadsky; Daniel Magree; Eric N. Johnson
Archive | 2011
Daniel Magree; Dmitry Bershadsky; Chris Costes; Stephen Haviland; David Sanz; Eric Kim; Pierre Valdez; Timothy Dyer; Eric N. Johnson
AIAA Information Systems-AIAA Infotech @ Aerospace | 2017
Takuma Nakamura; Stephen Haviland; Dmitry Bershadsky; Eric N. Johnson