Simultaneous and Meshfree Topology Optimization with Physics-informed Gaussian Processes
Amin Yousefpour, Shirin Hosseinmardi, Carlos Mora, Ramin Bostanabad

TL;DR
This paper introduces a novel meshfree topology optimization method using physics-informed Gaussian processes with deep neural network mean functions, enabling discretization-invariant design optimization that is robust and efficient.
Contribution
It develops a new class of topology optimization methods based on Gaussian processes with neural network mean functions, allowing for meshfree, discretization-invariant design optimization.
Findings
The method is discretization-invariant and handles complex domains.
It does not require filtering techniques and maintains consistent computational costs.
The approach is robust against random initializations and problem setup.
Abstract
Topology optimization (TO) provides a principled mathematical approach for optimizing the performance of a structure by designing its material spatial distribution in a pre-defined domain and subject to a set of constraints. The majority of existing TO approaches leverage numerical solvers for design evaluations during the optimization and hence have a nested nature and rely on discretizing the design variables. Contrary to these approaches, herein we develop a new class of TO methods based on the framework of Gaussian processes (GPs) whose mean functions are parameterized via deep neural networks. Specifically, we place GP priors on all design and state variables to represent them via parameterized continuous functions. These GPs share a deep neural network as their mean function but have as many independent kernels as there are state and design variables. We estimate all the…
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Taxonomy
TopicsTopology Optimization in Engineering · Metaheuristic Optimization Algorithms Research
MethodsSparse Evolutionary Training · Greedy Policy Search
