Modeling how cars deform in
a crash, how spacecraft respond to extreme environments, or how bridges resist
stress could be made thousands of times faster thanks to new artificial
intelligence that enables personal computers to solve massive math problems
that generally require supercomputers.
The new AI framework is a generic
approach that can quickly predict solutions to pervasive and time-consuming
math equations needed to create models of how fluids or electrical currents
propagate through different geometries, like those involved in standard
engineering testing.
Details about the research appear in Nature
Computational Science.
Called DIMON (Diffeomorphic Mapping
Operator Learning), the framework solves ubiquitous math problems known as
partial differential equations that are present in nearly all scientific and
engineering research. Using these equations, researchers can translate
real-world systems or processes into mathematical representations of how
objects or environments will change over time and space.
“While the motivation to develop it came
from our own work, this is a solution that we think will have generally a
massive impact on various fields of engineering because it’s very generic and
scalable,” said Natalia Trayanova, a Johns Hopkins University biomedical engineering
and medicine professor who co-led the research. “It can work basically on any
problem, in any domain of science or engineering, to solve partial differential
equations on multiple geometries, like in crash testing, orthopedics research,
or other complex problems where shapes, forces, and materials change.”
In addition to demonstrating the
applicability of DIMON in solving other engineering problems, Trayanova’s team
tested the new AI on over 1,000 heart “digital twins,” highly detailed computer models of real
patients’ hearts. The platform was able to predict how electrical signals
propagated through each unique heart shape, achieving high prognostic accuracy.
Trayanova’s team relies on solving
partial differential equations to study cardiac arrhythmia, which is an
electrical impulse misbehavior in the heart that causes irregular beating. With
their heart digital twins, researchers can diagnose whether patients might
develop the often-fatal condition and recommend ways to treat it.
“We’re bringing novel technology into
the clinic, but a lot of our solutions are so slow it takes us about a week
from when we scan a patient’s heart and solve the partial differential
equations to predict if the patient is at high risk for sudden cardiac death
and what is the best treatment plan,” said Trayanova, who directs the Johns Hopkins Alliance
for Cardiovascular Diagnostic and Treatment Innovation. “With this new AI approach, the speed at which we
can have a solution is unbelievable. The time to calculate the prediction of a
heart digital twin is going to decrease from many hours to 30 seconds, and it
will be done on a desktop computer rather than on a supercomputer, allowing us
to make it part of the daily clinical workflow.”
Partial differential equations are
generally solved by breaking complex shapes like airplane wings or body organs
into grids or meshes made of small elements. The problem is then solved on each
simple piece and recombined. But if these shapes change—like in crashes or
deformations—the grids must be updated and the solutions recalculated, which
can be computationally slow and expensive.
DIMON solves that problem by using AI to
understand how physical systems behave across different shapes, without needing
to recalculate everything from scratch for each new shape. Instead of dividing
shapes into grids and solving equations over and over, the AI predicts how
factors such as heat, stress, or motion will behave based on patterns it has
learned, making it much faster and more efficient in tasks like optimizing
designs or modeling shape-specific scenarios.
The team is incorporating into the DIMON
framework cardiac pathology that leads to arrhythmia. Because of its
versatility, the technology can be applied to shape optimization and many other
engineering tasks where solving partial differential equations on new shapes is
repeatedly needed, said Minglang Yin, a Johns Hopkins Biomedical Engineering
postdoctoral fellow who developed the platform.
“For each problem, DIMON first solves
the partial differential equations on a single shape and then maps the solution
to multiple new shapes. This shape-shifting ability highlights its tremendous
versatility,” Yin said. “We are very excited to put it to work on many problems
as well as to provide it to the broader community to accelerate their
engineering design solutions.”
Source: https://hub.jhu.edu/2024/12/09/trayanova-engineering-artificial-intelligence/
Image: DIMON revolutionizes modeling by
eliminating the need for recalculating grids with every shape change. Instead
of breaking complex forms into small elements, it predicts how physical factors
like heat, stress, and motion behave across various shapes, dramatically
speeding up simulations and optimizing designs.
Image credit: Minglang Yin / Johns Hopkins University
Source: New AI cracks complex engineering problems faster than supercomputers – Scents of Science
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