2023
DOI: 10.36227/techrxiv.22720831
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Causal Deep Operator Networks for Data-Driven Modeling of Dynamical Systems

Abstract: <p>The deep operator network (DeepONet) architecture is a promising approach for learning functional operators, that can represent dynamical systems described by ordinary or partial differential equations. However, it has two major limitations, namely its failures to account for initial conditions and to guarantee the temporal causality – a fundamental property of dynamical systems. This paper proposes a novel causal deep operator network (Causal-DeepONet) architecture for incorporating both the initial … Show more

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