Abstract
The extremely large number of
unique polymer compositions that can be achieved through copolymerisation makes
it an
attractive strategy for tuning their optoelectronic
properties. However, this same attribute also makes it challenging to explore
the resulting property space and understand the range of properties that can be
realised. In an effort to enable the rapid exploration of this
space in the case of binary copolymers, we train a neural network using a
tiered data generation strategy to accurately predict the optical and
electronic properties of 350,000 binary copolymers that are, in principle,
synthesizable from their dihalogen monomers via Yamamoto, or Suzuki-Miyaura and
Stille coupling after one-step functionalisation. By extracting general features
of this property space that would otherwise be obscured in smaller datasets, we
identify simple models that effectively relate the properties of these
copolymers to the homopolymers of their constituent monomers, and challenge
common ideas behind copolymer design. We find that binary
copolymerisation does not appear to allow access to regions of the
optoelectronic property space that are not already sampled by the homopolymers,
although conceptually allows for more fine-grained property control. Using
the large volume of data available, we test the hypothesis that
copolymerisation of ‘donor’ and ‘acceptor’ monomers can result in copolymers
with a lower optical gap than their related homopolymers. Overall, despite the
prevalence of this concept in the literature, we observe that this phenomenon is
relatively rare, and propose conditions that greatly enhance the likelihood of
its experimental realisation. Finally, through a ‘topographical’ analysis of
the co-polymer property space, we show how this large volume of data can be
used to identify dominant monomers in specific regions of property space that
may be amenable to a variety of applications, such as organic photovoltaics,
light emitting diodes, and thermoelectrics.
Supplementary materials
Title
Exploring-copolymers-NN-supporting-data
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Title
exploring-copolymers-NN-ESI-chemrxiv
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