412,754 research outputs found
Dynamic programming approach to structural optimization problem – numerical algorithm
In this paper a new shape optimization algorithm is presented. As a model application we consider state problems related to fluid mechanics, namely the Navier-Stokes equations for viscous incompressible fluids. The general approach to the problem is described. Next, transformations to classical optimal control problems are presented. Then, the dynamic programming approach is used and sufficient conditions for the shape optimization problem are given. A new numerical method to find the approximate value function is developed
Reconstruction of a piecewise constant conductivity on a polygonal partition via shape optimization in EIT
In this paper, we develop a shape optimization-based algorithm for the
electrical impedance tomography (EIT) problem of determining a piecewise
constant conductivity on a polygonal partition from boundary measurements. The
key tool is to use a distributed shape derivative of a suitable cost functional
with respect to movements of the partition. Numerical simulations showing the
robustness and accuracy of the method are presented for simulated test cases in
two dimensions
Benchmarking five global optimization approaches for nano-optical shape optimization and parameter reconstruction
Numerical optimization is an important tool in the field of computational
physics in general and in nano-optics in specific. It has attracted attention
with the increase in complexity of structures that can be realized with
nowadays nano-fabrication technologies for which a rational design is no longer
feasible. Also, numerical resources are available to enable the computational
photonic material design and to identify structures that meet predefined
optical properties for specific applications. However, the optimization
objective function is in general non-convex and its computation remains
resource demanding such that the right choice for the optimization method is
crucial to obtain excellent results. Here, we benchmark five global
optimization methods for three typical nano-optical optimization problems:
\removed{downhill simplex optimization, the limited-memory
Broyden-Fletcher-Goldfarb-Shanno (L-BFGS) algorithm, particle swarm
optimization, differential evolution, and Bayesian optimization}
\added{particle swarm optimization, differential evolution, and Bayesian
optimization as well as multi-start versions of downhill simplex optimization
and the limited-memory Broyden-Fletcher-Goldfarb-Shanno (L-BFGS) algorithm}. In
the shown examples from the field of shape optimization and parameter
reconstruction, Bayesian optimization, mainly known from machine learning
applications, obtains significantly better results in a fraction of the run
times of the other optimization methods.Comment: 11 pages, 4 figure
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