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Feasibility of nanofluid-based optical filters

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posted on 2024-11-23, 08:37 authored by Robert Taylor, Todd Otanicar, Yasitha Herukerrupu, Fabienne Bremond, Gary RosengartenGary Rosengarten, Evatt Hawkes, Xuchuan Jiang, Sylvain Coulombe
In this article we report recent modeling and design work indicating that mixtures of nanoparticles in liquids can be used as an alternative to conventional optical filters. The major motivation for creating liquid optical filters is that they can be pumped in and out of a system to meet transient needs in an application. To demonstrate the versatility of this new class of filters, we present the design of nanofluids for use as long-pass, short-pass, and bandpass optical filters using a simple Monte Carlo optimization procedure. With relatively simple mixtures, we achieve filters with <15% mean-squared deviation in transmittance from conventional filters. We also discuss the current commercial feasibility of nanofluid-based optical filters by including an estimation of today's off-the-shelf cost of the materials. While the limited availability of quality commercial nanoparticles makes it hard to compete with conventional filters, new synthesis methods and economies of scale could enable nanofluid-based optical filters in the near future. As such, this study lays the groundwork for creating a new class of selective optical filters for a wide range of applications, namely communications, electronics, optical sensors, lighting, photography, medicine, and many more.

History

Journal

Applied Optics

Volume

52

Issue

7

Start page

1413

End page

1422

Total pages

10

Publisher

Optical Society of America

Place published

United States

Language

English

Copyright

© 2013 Optical Society of America

Former Identifier

2006040764

Esploro creation date

2020-06-22

Fedora creation date

2013-05-06

Open access

  • Yes

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