Unmanned Aerial Vehicles (UAV) require for low-level
flights activities, sensors that can effectively operate in areas where natural
and man-made obstacles are present. The sensors must be reliable even when meteorological
conditions do not make possible for the human eye to differentiate between obstacles
or to even identify the obstacle, being this the ultimate purpose of the sensor.
The sensor(s) to be used under such circumstances have to be able to detect all
types of hazardous obstacles, including topographic features, vegetation,
buildings, poles/masts, towers, cables and transmission
lines. It must count with satisfactory technological
readiness levels. A high range and bearing resolution will be indispensable and
high minimum detection range will be adequate for the platform velocity and dynamic
performances.
A sensor that can meet
such requirement could be the LIDAR Obstacle Warning and Avoidance System (LOWAS),
which has become a mature technology that small-to- medium size UAV’s resource
to when their operations require close proximity to the ground. LOWAS is of preference when warning and
avoidance of obstacles is necessary. It is important to mention that LIDAR is an exteroceptive sensor. When
we talk about sensors, it is essential to differentiate between proprioceptive
and exteroceptive sensors. Proprioceptive sensors are those that measure
internal state of a system, it could be battery level or even the performance
of gyroscopes. On the other hand, exteroceptive sensors measure the external
state of systems, this could be temperature, meteorological conditions, or detection
of objects between others.
LOAWS is suitable for this
mission because it able to detect obstacles placed in the UAV route of flight
or nearby the operation area. LOWAS has the capability to classify and the same
time prioritize the obstacles that were detected. It can also provide visual
and aural warnings and information to the crew (Ramasamy, 2016). Therefore,
LOWAS counts with three key algorithms: prediction of the future platform
trajectory; calculation of the potential collisions with the detected
obstacles; and generation of a set of optimal avoidance trajectories (in case a
risk of collision is determined) (Ramasamy,2016). These algorithms are
the key to how LOWAS will perform and also help to kind of predict how the UAV
will behave in circumstances not favorable for the flight.
LOWAS goes beyond meeting
the requirements. It counts now with a cognitive
remote pilot–aircraft interface that is being developed to dynamically assist
remote pilots based on their physiological and cognitive states detected in
real-time (Ramasamy, 2016). The purpose of this is to create a cooperation between
pilots and the systems. I definitely recommend this system for warning and avoidance
of obstacles, specially after working on the human and machine cooperation that
will benefit the result of the mission to be carried by the UAV.
LOWAS also offers three
levels of alerts. They are: warning,
caution, and advisory. These alerts help the remote pilot to prepare or be
aware of the upcoming obstacles that will have to be evaded. These alerts come
in the form of digital voice outputs and tone or they can also be displayed like
is done in the chart presented below.
The article I have based my post about can be found in this websitehttps://www-sciencedirect-com.ezproxy.libproxy.db.erau.edu/science/article/pii/S1270963816301900
References
Kohanbash, D. (2014). Sensor types (modalities) for robots to experience the world. Robots for Roboticits. Retrieved from
http://robotsforroboticists.com/sensor-modalities/
Ramasamy, S. (2016). LIDAR obstacle warning and avoidance system for unmanned aerial vehicle sense-and-avoid. Science Direct. Retrieved from
https://www-sciencedirect-com.ezproxy.libproxy.db.erau.edu/science/article/pii/S1270963816301900
Newcomb, D. (2017). Velodyne LIDAR for Safety's Sake. Cthreegroup. Retrieved from
http://cthreegroup.com/velodyne-lidar-for-safetys-sake/