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Model self assembly of particles using Inverse Gaussian Noise

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selfAssemblyModel

The model will assess the extent to which control over the rate at which molecules diffuse together can be used to steer the subsequent self-assembly of those molecules towards a certain desirable subset of available structures.

Self-Assembly from a Single-Molecule Perspective

Kevin Richard Pilkiewicz, Pratip Rana, Michael Mayo, Preetam Ghosh

Corresponding Author: kevin.r.pilkiewicz@usace.army.mil

Abstract:

As manipulating the self-assembly of supramolecular and nanoscale constructs at the single-molecule level increasingly becomes the norm, new theoretical scaffolds must be erected to replace the thermodynamic and kinetics based models used to describe traditional bulk phase active syntheses. Like the statistical mechanics underpinning these latter theories, the framework we propose uses state probabilities as its fundamental objects; but, contrary to the Gibbsian paradigm, our theory directly models the transition probabilities between the initial and final states of a trajectory, foregoing the need to assume ergodicity. We leverage these probabilities in the context of molecular self-assembly to compute the overall likelihood that a specified experimental condition leads to a desired structural outcome. We demonstrate the application of this framework to a simple toy model in which three identical molecules can assemble in one of two ways and conclude with a discussion of how the high computational cost of such a fine-grained model can be overcome through approximation when extending it to larger, more complex systems.