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Download fileNeural-Network-Biased Genetic Algorithms for Materials Design: Evolutionary Algorithms That Learn
journal contribution
posted on 2016-12-20, 00:00 authored by Tarak
K. Patra, Venkatesh Meenakshisundaram, Jui-Hsiang Hung, David S. SimmonsMachine
learning has the potential to dramatically accelerate high-throughput
approaches to materials design, as demonstrated by successes in biomolecular
design and hard materials design. However, in the search for new soft
materials exhibiting properties and performance beyond those previously
achieved, machine learning approaches are frequently limited by two
shortcomings. First, because they are intrinsically interpolative,
they are better suited to the optimization of properties within the
known range of accessible behavior than to the discovery of new materials
with extremal behavior. Second, they require large pre-existing data
sets, which are frequently unavailable and prohibitively expensive
to produce. Here we describe a new strategy, the neural-network-biased
genetic algorithm (NBGA), for combining genetic algorithms, machine
learning, and high-throughput computation or experiment to discover
materials with extremal properties in the absence of pre-existing
data. Within this strategy, predictions from a progressively constructed
artificial neural network are employed to bias the evolution of a
genetic algorithm, with fitness evaluations performed via direct simulation
or experiment. In effect, this strategy gives the evolutionary algorithm
the ability to “learn” and draw inferences from its
experience to accelerate the evolutionary process. We test this algorithm
against several standard optimization problems and polymer design
problems and demonstrate that it matches and typically exceeds the
efficiency and reproducibility of standard approaches including a
direct-evaluation genetic algorithm and a neural-network-evaluated
genetic algorithm. The success of this algorithm in a range of test
problems indicates that the NBGA provides a robust strategy for employing
informatics-accelerated high-throughput methods to accelerate materials
design in the absence of pre-existing data.