Program
users can tinker with landing and path planning scenarios to identify optimal
landing sites for Mars rovers.
Jennifer Chu | MIT News Office
September 26, 2018 -- Selecting a landing site for a rover headed to Mars is a lengthy process that normally involves large committees of scientists and engineers. These committees typically spend several years weighing a mission’s science objectives against a vehicle’s engineering constraints, to identify sites that are both scientifically interesting and safe to land on.
Jennifer Chu | MIT News Office
September 26, 2018 -- Selecting a landing site for a rover headed to Mars is a lengthy process that normally involves large committees of scientists and engineers. These committees typically spend several years weighing a mission’s science objectives against a vehicle’s engineering constraints, to identify sites that are both scientifically interesting and safe to land on.
For
instance, a mission’s science team may want to explore certain geological sites
for signs of water, life, and habitability. But engineers may find that those
sites are too steep for a vehicle to land safely, or the locations may not
receive enough sunlight to power the vehicle’s solar panels once it has landed.
Finding a suitable landing site therefore involves piecing together information
collected over the years by past Mars missions. These data, though growing with
each mission, are patchy and incomplete.
Now
researchers at MIT have developed a software tool for computer-aided discovery
that could help mission planners make these decisions. It automatically
produces maps of favorable landing sites, using the available data on Mars’
geology and terrain, as well as a list of scientific priorities and engineering
constraints that a user can specify.
As
an example, a user can stipulate that a rover should land in a site where it
can explore certain geological targets, such as open-basin lakes. At the same
time, the landing site should not exceed a certain slope, otherwise the vehicle
would topple over while attempting to land. The program then generates a
“favorability map” of landing sites that meet both constraints. These locations
can shift and change as a user adds additional specifications.
The
program can also lay out possible paths that a rover can take from a given
landing site to certain geological features. For instance, if a user specifies
that a rover should explore sedimentary rock exposures, the program produces
paths to any such nearby structures and calculates the time that it would take
to reach them.
Victor
Pankratius, principal research scientist in MIT’s Kavli Institute for Astrophysics
and Space Research, says mission planners can use the program to quickly and
efficiently consider different landing and exploratory scenarios.
“This
is never going to replace the actual committee, but it can make things much
more efficient, because you can play with different scenarios while you’re
talking,” Pankratius says.
The
team’s study was published online on Aug. 31 by Earth and Space Science and is part of the journal’s
Sept. 8 online issue.
New sites
Pankratius
and postdoc Guillaume Rongier, in MIT’s Department of Earth, Atmospheric and
Planetary Sciences, created the program to identify favorable landing sites for
a conceptual mission similar to NASA’s Mars 2020 rover, which is engineered to
land in horizontal, even, dust-free areas and aims to explore an ancient,
potentially habitable, site with magmatic outcrops.
They
found the program identified many landing sites for the rover that have been
considered in the past, and it highlighted other promising landing sites that
were rarely proposed. “We see there are sites we could explore with existing
rover technologies, that landing site committees may want to reconsider,”
Pankratius says.
The
program could also be used to explore engineering requirements for future
generations of Mars rovers. “Assuming you can land on steeper curves, or drive
faster, then we can derive which new regions you can explore,” Pankratius says.
A fuzzy landing
The
software relies partly on “fuzzy logic,” a mathematical logic scheme that
groups things not in a binary fashion like Boolean logic, such as yes/no,
true/false, or safe/unsafe, but in a more fluid, probability-based fashion.
“Traditionally
this idea comes from mathematics, where instead of saying an element belongs to
a set, yes or no, fuzzy logic says it belongs with a certain probability,” thus
reflecting incomplete or imprecise information, Pankratius explains.
In
the context of finding a suitable landing site, the program calculates the
probability that a rover can climb a certain slope, with the probability
decreasing as the a location becomes more steep.
“With
fuzzy logic we can expresses this probability spatially — how bad is it if I’m
this steep, versus this steep,” Pankratius says. “It’s is a way to deal with
imprecision, in a way.”
Using
algorithms related to fuzzy logic, the team creates raw, or initial,
favorability maps of possible landing sites over the entire planet. These maps
are gridded into individual cells, each representing about 3 square kilometers
on the surface of Mars. The program calculates, for each cell, the probability
that it is a favorable landing site, and generates a map that is color-graded
to represent probabilities between 0 and 1. Darker cells represent sites with a
near-zero probability of being a favorable landing site, while lighter
locations have a higher chance of a safe landing with interesting scientific
prospects.
Once
they generate a raw map of possible landing sites, the researchers take into
account various uncertainties in the landing location, such as changes in
trajectory and potential navigation errors during descent. Considering these
uncertainties, the program then generates landing ellipses, or circular targets
where a rover is likely to land to maximize safety and scientific exploration.
The
program also uses an algorithm known as fast marching to chart out paths that a
rover can take over a given terrain once it’s landed. Fast marching is
typically used to calculate the propagation of a front, such as how fast a
front of wind reaches a shore if traveling at a given speed. For the first
time, Pankratius and Rongier applied fast marching to compute a rover’s travel
time as it travels from a starting point to a geological structure of interest.
“If
you are somewhere on Mars and you get this processed map, you can ask, ‘From
here, how fast can I go to any point in my surroundings? And this algorithm
will tell you,” Pankratius says.
The
algorithm can also map out routes to avoid certain obstacles that may slow down
a rover’s trip, and chart out probabilities of hitting certain types of
geological structures in a landing area.
“It’s
more difficult for a rover to drive through dust, so it’ll go at a slower pace,
and dust isn’t necessarily everywhere, just in patches,” Rongier says. “The
algorithm will consider such obstacles when mapping out the fastest traverse
paths.”
The
team says operators of current rovers on the Martian surface can use the
software program to direct the vehicles more efficiently to sites of scientific
interest. In the future, Pankratius envisions this technique or something
similar to be integrated into increasingly autonomous rovers that don’t require
humans to operate the vehicles all the time from Earth.
“One
day, if we have fully autonomous rovers, they can factor in all these things to
know where they can go, and be able to adapt to unforeseen situations,”
Pankratius says. “You want autonomy, otherwise it can take a long time to
communicate back and forth when you have to make critical decisions quickly.”
The
team is also looking into applications of the techniques in geothermal site
exploration on Earth in collaboration with the MIT Earth Resources Lab in the
Department of Earth, Atmospheric and Planetary Sciences.
“It’s
a very similar problem,” Pankratius says. “Instead of saying ‘Is this a good
site, yes or no?’ you can say, ‘Show me a map of all the areas that would
likely be viable for geothermal exploration.’”
As
data improve, both for Mars and for geothermal structures on Earth, he says
that that data can be fed into the existing program to provide more accurate
analyses.
“The
program is incrementally enhanceable,” he says.
This
research was funded, in part, by NASA and the National Science Foundation.
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