|
Laser wakefield particle accelerators have shown the potential to generate electric fields thousands of times higher than those of conventional accelerators. The resulting extremely short particle acceleration distance could yield a potential new compact source of energetic electrons and radiation, with wide applications from medicine to physics. Physicists investigate laser-plasma internal dynamics by running particle-in-cell simulations; however, this generates a large dataset that requires time-consuming, manual inspection by experts in order to detect key features such as beam formation. This paper describes a framework to automate the data analysis and classification of simulation data. First, we propose a new method to identify locations with high density of particles in the space-time domain, based on maximum extremum point detection on the particle distribution. We analyze high density electron regions using a lifetime diagram by organizing and pruning the maximum extrema as nodes in a minimum spanning tree. Second, we partition the multivariate data using fuzzy clustering to detect time steps in a experiment that may contain a high quality electron beam. Finally, we combine results from fuzzy clustering and bunch lifetime analysis to estimate spatially confined beams. We demonstrate our algorithms successfully on four different simulation datasets.
|
| Authors: |
Ushizima, Daniela M.;
Rubel, Oliver;
Prabhat, Mr.;
Weber, Gunther H.;
Bethel, E. Wes;
Aragon, Cecilia R.;
Geddes, Cameron G.R.;
Cormier-Michel, Estelle;
Hamann, Bernd;
Messmer, Peter;
Hagen, Hans
|
| Publication Date: | 2008 Jul 03 |
| OSTI Identifier: | 939132 |
| Report Number(s): | LBNL-960E |
| DOE Contract Number: | DE-AC02-05CH11231 |
| Resource Type: | Conference/Event |
| Resource Relation: | The 2008 International Conference on Machine Learning and Applications ( ICMLA'08) , San Diego, California, USA, December 11-13, 2008 |
| Research Org: | Ernest Orlando Lawrence Berkeley National Laboratory, Berkeley, CA (US) |
| Sponsoring Org: | Computational Research Division; National Energy Research Scientific Computing Division; Physics Division |
| Country of Publication: | United States |
| Language: | English |
| Format: | Size: 6 |
| Other Number(s): | TRN: US0806181 |
| Subject: | 43; 70; 97; ACCELERATION; ACCELERATORS; ALGORITHMS; CLASSIFICATION; DATA ANALYSIS; DETECTION; ELECTRIC FIELDS; ELECTRON BEAMS; ELECTRONS; LASERS; LEARNING; LIFETIME; ORGANIZING; PHYSICS; SPACE-TIME; TAIL ELECTRONS |
| Update Date: | 2008 Nov 10 |
Top |
|