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Diagnostics in a high density Z pinch plasmaHilko, Brian Kent January 1981 (has links)
A Z-pinch plasma, suitable for the study of C0₂ laser-plasma interaction
mechanisims, is thoroughly diagnosed using a number of non-perturbing, optical probe techniques.
Simple streak and shadow methods give an important preliminary view of the spatial distribution and radial dynamics of plasma during the high compression phase. The electron density and temperature are determined
as a function of time by spectrally resolving the ion feature of Thomson scattered ruby laser light. Peak electron densities well in excess of 1 x 10¹⁹ cm⁻³ and temperatures near 50 eV are observed. Complementing the scattering results, holographic interferometry is performed to examine both the temporal and spatial variation of electron density.
The diagnostics used are well suited to the examination of moderately
dense, hot plasma and have been developed specifically for application
in our laser-plasma interaction studies. / Science, Faculty of / Physics and Astronomy, Department of / Graduate
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Diagnostic of the plasma induced by ruby laser ablation of Y1 Ba2 Cu3 O7-x.January 1989 (has links)
by Lee Kwan-Chuen. / Title also in Chinese. / Thesis (M.Phil.)--Chinese University of Hong Kong, 1989. / Bibliography : leaves 86-88.
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Plasma diagnostics and laser fabrication of three-dimensional partsSankaranarayanan, Srikanth 01 January 1998 (has links)
No description available.
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Neural network assisted software engineered refractive fringe diagnostic of spherical shocks.Kistan, Trevor. January 1996 (has links)
A shock is essentially a propagating variation in the pressure or density of a medium. If the medium is transparent, such as air, and the shock radially symmetric, the refractive fringe diagnostic can be
used to examine its general features. A laser beam probes the shock, the central part of the beam, refracted to different degrees by the different density features within the shock, interferes with itself and
with the outer unrefracted part creating a series of coarse and fine fringes. By examining this interference pattern one can gain insight into the density profile underlying the shock. A series of such experiments was conducted by the Plasma Physics Research Institute at the University of Natal in 1990. To model the situation computationally, they developed a ray-tracer which produced
interference patterns for modified theoretical density profiles based on those predicted by Sedov. After numerous trials, an intensity pattern was produced which agreed approximately with experimental
observations. Thus encouraged, the institute then sought to determine density profiles directly from the interference patterns, but a true mathematical deconvolution proved non-trivial and is still awaited. The work presented in this thesis reconstructs the ray-tracer using software engineering techniques and achieves the desired deconvolution by training a neural network of the back-propagation type to behave as an inverse ray-tracer. The ray-tracer is first used to generate numerous density profile - interference pattern pairs. The neural network is trained with this theoretical data to provide a density profile when presented with an interference pattern. The trained network is then tested with experimental interference patterns extracted from captured images. The density profiles predicted by the neural network are then fed back to the ray-tracer and the resultant theoretically determined interference patterns compared to those obtained experimentally. The shock is examined at various times after the initial explosion allowing its propagation to be tracked by its evolving density profile and interference pattern. The results obtained prove superior to those first published by the institute and confirm the neural network's promise as a research tool. Instead of lengthy trial and error sessions with the unaided ray-tracer, experimental interference patterns can be fed directly to an appropriately trained neural network to yield an initial density profile. The network, not the researcher, does the pattern association. / Thesis (M.Sc.)-University of Natal, 1996.
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