Autonomous, Persistent Meteorological Observation Networks using Fleets
of High Altitude Platforms
Abstract
High altitude platforms (HAPs) such as stratospheric balloons and
eventually other high altitude, long endurance unmanned vehicles have
reached a stage where it is possible to deploy a persistent fleet of
aircraft acting as a meteorological observation network for a reasonable
cost. Whether directly collecting in situ measurements like winds aloft
or via dropsondes or performing remote sensing using, for example, radar
or GPS radio occultation, these observation networks can collect
measurements which are hard to obtain from other observation platforms
and are complementary to other systems. They are also highly autonomous
and can be deployed worldwide (and thus can add redundancy to the global
forecast system). Because they are mobile, the observation network can
be adjusted to collect in situ measurements in the places that are most
important to forecasters and scientists. We use simulation of fleets of
stratospheric balloons that are navigated by machine learning algorithms
that actuate an altitude control system to demonstrate some of the
potential constellations that are achievable with HAPs and motivate the
greater consideration of an autonomous, persistent HAPs-based
meteorological observing network.