MOFs, microfluidics and micro-organisms: A crash course in complex variable techniques for Stokes flow modelling
Lecture 3 Darren CROWDY
Course Description
This lecture course will introduce how to use the mathematics of complex analysis to study a variety of technologically important problems of slow viscous flows (“Stokes flows”). Such complex variable techniques are rarely used in the study of low-Reynolds-number hydrodynamics even though the methods are versatile and powerful and, moreover, are increasingly relevant in a variety of new technological applications in nano- and micro-fluidics, colloid science and biomechanics.
The lectures will be of interest to students wishing to acquire a novel armoury of skills to tackle real problems in applications, and to those seeking simply to learn new techniques in complex variable methods. As examples, we will show how the techniques can be applied to: • the fabrication of microstructured optical fibres (“MOFs”) • superhydrophobic surfaces • the locomotion of microorganisms and low-Reynolds-number swimmers.
Principal topics: Stokes equations; reversibility and the “scallop theorem”; fundamental singularities of Stokes flows (stokeslets, stresslets, rotlets); the Lorentz reciprocal theorem; Goursat representation of biharmonic fields in terms of analytic functions; conformal mapping; free boundary problems; mixed boundary value problems; transform techniques; boundary integral methods.
Details
- Year/Term
- 2015 / Intensive, Second semester
- Date
- October 13th to October 23rd, 2015
- Faculty/
Graduate School - Graduate School of Science
- Language
- English
- Instructor name
- Darren CROWDY(Distinguished Visiting Professor, Kyoto University / Professor, Imperial College London)
- Place
- Room 127, Graduate School of Science Bldg No 3
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