MASSACHUSETTS INSTITUTE OF TECHNOLOGY

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY AFOSR, April 2011 Design of Photonic Crystals with Multiple and Combined Band Gaps, plus Fabrication-Robust Design R. Freund, H. Men, C. Nguyen, P. Parrilo and J. Peraire MIT

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Design of Photonic Crystals with Multiple and Combined Band Gaps, plus Fabrication-Robust Design R. Freund, H. Men, C. Nguyen, P. Parrilo and J. Peraire MIT. AFOSR, April 2011. MASSACHUSETTS INSTITUTE OF TECHNOLOGY. 1887 - Rayleigh. 1987 – Yablonovitch & John. - PowerPoint PPT Presentation

Transcript of MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Page 1: MASSACHUSETTS  INSTITUTE OF TECHNOLOGY

MASSACHUSETTS INSTITUTE OF TECHNOLOGY

AFOSR, April 2011

Design of Photonic Crystals with Multiple and Combined Band Gaps, plus Fabrication-

Robust Design

R. Freund, H. Men, C. Nguyen, P. Parrilo and J. Peraire

MIT

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Wave Propagation in Periodic Media

scattering

For most , beam(s) propagate through crystal without scattering (scattering cancels coherently).

But for some (~ 2a), no light can propagate: a band gap

( from S.G. Johnson )

1887 - Rayleigh 1987 – Yablonovitch & John

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Photonic Crystals

S. G. Johnson et al., Appl. Phys. Lett. 77, 3490 (2000)

3D Crystals

By introducing “imperfections”one can develop:

• Waveguides• Hyperlens• Resonant cavities• Switches• Splitters• …

Applications

Mangan, et al., OFC 2004 PDP24

Band Gap: Objective

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The Optimal Design Problem for Photonic Crystals

A photonic crystal with optimized 7th band gap.

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

The Optimal Design Problem for Photonic Crystals

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

The Optimal Design Problem for Photonic Crystals

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

The Optimal Design Problem for Photonic Crystals

?

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Previous Work

There are some approaches proposed for solving the band gap optimization problem:

• Cox and Dobson (2000) first considered the mathematical optimization of the band gap problem and proposed a projected generalized gradient ascent method.

•Sigmund and Jensen (2003) combined topology optimization with the method of moving asymptotes (Svanberg (1987)).

•Kao, Osher, and Yablonovith (2005) used “the level set” method with a generalized gradient ascent method.

However, these earlier proposals are gradient-based methods and use eigenvalues as explicit functions. They suffer from the low regularity of the problem due to eigenvalue multiplicity.

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Our Approach

• Replace original eigenvalue formulation by a subspace method, and

• Convert the subspace problem to a convex semidefinite program (SDP) via semi-definite inclusion and linearization.

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First Step: Standard Discretizaton

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Optimization Formulation: P0

Typically,

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Parameter Dependence

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Change of Decision Variables

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Reformulating the problem: P1

We demonstrate the reformulation in the TE case,

This reformulation is exact, but non-convex and large-scale.

We use a subspace method to reduce the problem size.

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Subspace Method

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Subspace Method, continued

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Subspace Method, continued

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Linear Fractional SDP :

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Solution Procedure

The SDP optimization problems can be solved efficiently using modern interior-point methods [Toh et al. (1999)].

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Results: Optimal Structures

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Results: Computation Time

All computation performed on a Linux PC with Dual Core AMD Opteron 270, 2.0 GHz. The eigenvalue problem is solved by using the ARPACK software.

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Mesh Adaptivity : Refinement Criteria

• Interface elements

• 2:1 rule

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Mesh Adaptivity : Solution Procedure

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Results: Optimization Process

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Results: Computation Time

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Multiple Band Gap Optimization

Multiple band gap optimization is a natural extension of the previous single band gap optimization that seeks to maximize the minimum of weighted gap-midgap ratios:

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Multiple Band Gap Optimization

Even with other things being the same (e.g., discretization, change of variables, subspace construction), the multiple band gap optimization problem cannot be reformulated as a linear fractional SDP. We start with:

where

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Multiple Band Gap Optimization

This linearizes to:

where

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Solution Procedure

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Sample Computational Results:2nd and 5th TM Band Gaps

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Sample Computational Results:2nd and 5th TM Band Gaps

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Optimized Structures

• TE polarization,• Triangular lattice, • 1st and 3rd band gaps

• TEM polarizations,• Square lattice, • Complete band gaps,• 9th and 12th band gaps

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Results: Pareto Frontiers of 1st and 3rd TE Band Gaps

• TE polarization

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Results: Computational Time

Square lattice

Execution Time (minutes)

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Future work

• Design of 3-dimensional photonic crystals,

• Incorporate robust fabrication issues, see next slides….

• Metamaterial designs for cloaking devices, superlenses, and shockwave mitigation.

• Band-gap design optimization for other wave propagation problems, e.g., acoustic, elastic …

• Non-periodic structures, e.g., photonic crystal fibers.

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Need for Fabrication Robustness

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Constructing Fabricable Solutions

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Constructing Fabricable Solutions, continued

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Quality of User-Constructed Solution

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Quality of User-Constructed Solution, continued

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Fabrication Robustness Paradigm

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Fabrication Robustness Paradigm, continued

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Basic Results

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Fabrication Robustness: Basic Model

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Computable FR Problems via Special Structure

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MASSACHUSETTS INSTITUTE OF TECHNOLOGY

Computable FR Problems via Special Structure, continued

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Computable FR Problems via Special Structure, continued