Abstract
Simulating the evolution of a coagulating aerosol or cloud of droplets
in a key problem in atmospheric science. We present a proof of concept
for modeling coagulation processes using a novel
combinatorally-invariant neural network (CiNN) architecture. Using two
types of data from a high-detail particle-resolved aerosol simulation,
we show that CiNN models outperform standard neural networks and are
competitive in accuracy with traditional stateof-the-art sectional
models. These CiNN models could have application in learning
coarsegrained coagulation models for multi-species aerosols and for
learning coagulation models from observed size-distribution data.