In a new dataset that includes more than 8,000 car designs, MIT engineers simulated the aerodynamics for a given car shape, which they represent in various modalities, including "surface fields." Credit: Mohamed Elrefaie
Car
design is an iterative and proprietary process. Carmakers can spend several
years on the design phase for a car, tweaking 3D forms in simulations before
building out the most promising designs for physical testing. The details and
specs of these tests, including the aerodynamics of a given car design, are
typically not made public. Significant advances in performance, such as in fuel
efficiency or electric vehicle range, can therefore be slow and siloed from
company to company.
MIT engineers say that the search for
better car designs can speed up exponentially with the use of generative
artificial intelligence tools that can plow through huge amounts of data in
seconds and find connections to generate a novel design. While such AI tools exist, the data they would need
to learn from have not been available, at least in any sort of accessible,
centralized form.
But now, the engineers have made just
such a dataset available to the public for the first time. Dubbed DrivAerNet++,
the dataset encompasses more than 8,000 car designs, which the engineers
generated based on the most common types of cars in the world today. The study
is published on the arXiv preprint
server.
Each design is represented in 3D form
and includes information on the car's aerodynamics—the way air would flow
around a given design, based on simulations of fluid dynamics that the group
carried out for each design.
Each of the dataset's 8,000 designs is
available in several representations, such as mesh, point cloud, or a simple
list of the design's parameters and dimensions. As such, the dataset can be
used by different AI models that are tuned to process data in a particular modality.
DrivAerNet++ is the largest open-source
dataset for car aerodynamics that has been developed to date. The engineers
envision it being used as an extensive library of realistic car designs, with
detailed aerodynamics data that can be used to quickly train any AI model.
These models can then just as quickly generate novel designs that could
potentially lead to more fuel-efficient cars and electric vehicles with longer
range, in a fraction of the time that it takes the automotive industry today.
"This dataset lays the foundation
for the next generation of AI applications in engineering, promoting efficient
design processes, cutting R&D costs, and driving advancements toward a more
sustainable automotive future," says Mohamed Elrefaie, a mechanical
engineering graduate student at MIT.
Elrefaie and his colleagues will present a paper detailing the new dataset, and AI methods that could be applied to it, at the NeurIPS 2024 conference in December in Vancouver. His co-authors are Faez Ahmed, assistant professor of mechanical engineering at MIT, along with Angela Dai, associate professor of computer science at the Technical University of Munich, and Florin Marar of BETA CAE Systems.
Credit: Massachusetts Institute of Technology
Filling the data gap
Ahmed leads the Design Computation
and Digital Engineering Lab (DeCoDE) at MIT, where his group explores ways in
which AI and machine-learning tools can be used to enhance the design of
complex engineering systems and products, including car technology.
"Often
when designing a car, the forward process is so expensive that manufacturers
can only tweak a car a little bit from one version to the next," Ahmed
says. "But if you have larger datasets where you know the performance of
each design, now you can train machine-learning models to iterate fast so you
are more likely to get a better design."
And speed,
particularly for advancing car technology, is particularly pressing now.
"This is
the best time for accelerating car innovations, as automobiles are one of the
largest polluters in the world, and the faster we can shave off that
contribution, the more we can help the climate," Elrefaie says.
In looking at
the process of new car design, the researchers found that, while there are AI
models that could crank through many car designs to generate optimal designs,
the car data that is actually available is limited. Some researchers had
previously assembled small datasets of simulated car designs, while car
manufacturers rarely release the specs of the actual designs they explore,
test, and ultimately manufacture.
The team
sought to fill the data gap, particularly with respect to a car's aerodynamics,
which plays a key role in setting the range of an electric vehicle, and
the fuel efficiency of an internal combustion
engine. The challenge, they realized, was in assembling a dataset of thousands
of car designs, each of which is physically accurate in their function and
form, without the benefit of physically testing and measuring their performance.
To build a
dataset of car designs with physically accurate representations of their
aerodynamics, the researchers started with several baseline 3D models that were
provided by Audi and BMW in 2014. These models represent three major categories
of passenger cars: fastback (sedans with a sloped back end), notchback (sedans
or coupes with a slight dip in their rear profile) and estateback (such as
station wagons with more blunt, flat backs).
The baseline
models are thought to bridge the gap between simple designs and more
complicated proprietary designs, and have been used by other groups as a
starting point for exploring new car designs.
In a new dataset that includes more than 8,000
car designs, MIT engineers simulate the aerodynamics for a given car shape,
which they represent in various modalities, including "surface
fields" (left) and "streamlines" (right). Credit: Mohamed
Elrefaie
Library of cars
In their new study, the team
applied a morphing operation to each of the baseline car models. This operation
systematically made a slight change to each of 26 parameters in a given car
design, such as its length, underbody features, windshield slope, and wheel
tread, which it then labeled as a distinct car design, which was then added to
the growing dataset.
Meanwhile, the team ran an
optimization algorithm to ensure that each new design was indeed distinct, and
not a copy of an already-generated design. They then translated each 3D design
into different modalities, such that a given design can be represented as a
mesh, a point cloud, or a list of dimensions and specs.
The researchers also ran complex,
computational fluid dynamics simulations to calculate how air would flow around
each generated car design. In the end, this effort produced more than 8,000
distinct, physically accurate 3D car forms, encompassing the most common types
of passenger cars on the road today.
To produce this comprehensive
dataset, the researchers spent more than 3 million CPU hours using the MIT
SuperCloud, and generated 39 terabytes of data. (For comparison, it's estimated
that the entire printed collection of the Library of Congress would amount to
about 10 terabytes of data.)
The engineers say that researchers
can now use the dataset to train a particular AI model. For instance, an AI
model could be trained on a part of the dataset to learn car configurations
that have certain desirable aerodynamics. Within seconds, the model could then
generate a new car design with optimized aerodynamics, based on what it has
learned from the dataset's thousands of physically accurate designs.
The researchers say the dataset
could also be used for the inverse goal. For instance, after training an AI
model on the dataset, designers could feed the model a specific car design and
have it quickly estimate the design's aerodynamics, which can then be used to
compute the car's potential fuel efficiency or electric range—all without
carrying out expensive building and testing of a physical car.
"What this dataset allows you to do is train generative AI models to do things in seconds rather than hours," Ahmed says. "These models can help lower fuel consumption for internal combustion vehicles and increase the range of electric cars—ultimately paving the way for more sustainable, environmentally friendly vehicles."
by Jennifer Chu, Massachusetts Institute of
Technology
Source: Want to design the car of the future? Here are 8,000 designs to get you started
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