Szczegóły publikacji

Opis bibliograficzny

Clustering revealed in high-resolution simulations and visualization of multi-resolution features in fluid-particle models / Krzysztof BORYCZKO, Witold DZWINEL, David A. Yuen // Concurrency and Computation : Practice and Experience ; ISSN 1532-0626. — 2003 — vol. 15 iss. 2, s. 101–116. — Bibliogr. s. 115–116, Summ.

Autorzy (3)

Słowa kluczowe

parallel clusteringdissipative particle dynamicsvisualizationfeature extractionfluid particle modellarge scale data sets

Dane bibliometryczne

ID BaDAP16061
Data dodania do BaDAP2004-04-16
Tekst źródłowyURL
DOI10.1002/cpe.711
Rok publikacji2003
Typ publikacjiartykuł w czasopiśmie
Otwarty dostęptak
Czasopismo/seriaConcurrency and Computation : Practice & Experience

Abstract

Simulating natural phenomena at greater accuracy results in an explosive growth of data. Large-scale simulations with particles currently involve ensembles consisting of between 10(6) and 10(9) particles, which cover 10(5)-10(6) time steps. Thus, the data files produced in a single run can reach from tens of gigabytes to hundreds of terabytes. This data bank allows one to reconstruct the spatio-temporal evolution of both the particle system as a whole and each particle separately. Realistically, for one to look at a large data set at full resolution at all times is not possible and, in fact, not necessary. We have developed an agglomerative clustering technique, based on the concept of a mutual nearest neighbor (MNN). This procedure can be easily adapted for efficient visualization of extremely large data sets from simulations with particles at various resolution levels. We present the parallel algorithm for MNN clustering and its timings on the IBM SP and SGI/Origin 3800 multiprocessor systems for up to 16 million fluid particles. The high efficiency obtained is mainly due to the similarity in the algorithmic structure of MNN clustering and particle methods. We show various examples drawn from MNN applications in visualization and analysis of the order of a few hundred gigabytes of data from discrete particle simulations, using dissipative particle dynamics and fluid particle models. Because data clustering is the first step in this concept extraction procedure, we may employ this clustering procedure to many other fields such as data mining, earthquake events-and stellar populations in nebula clusters.

Publikacje, które mogą Cię zainteresować

artykuł
#11887Data dodania: 20.2.2003
Parallel implementation of the fluid particle model for simulating complex fluids in the mesoscale / Krzysztof BORYCZKO, Witold DZWINEL, David A. Yuen // Concurrency and Computation : Practice and Experience ; ISSN 1532-0626. — 2002 — vol. 14 iss. 2, s. 137–161. — Bibliogr. s. 160–161, Summ. — Publikacja dostępna online od: 2002-03-22
artykuł
#54131Data dodania: 20.10.2010
Ubiquitous interactive visualization of large-scale simulations in geosciences over a Java-based web-portal / Jonathan C. McLane, W. Walter CZECH, David A. Yuen, Mike R. Knox, Shuo Wang, Jim B. S. Greensky, Erik O. D. Sevre // Concurrency and Computation : Practice and Experience ; ISSN 1532-0626. — 2010 — vol. 22 iss. 12 spec. iss., s. 1750–1773. — Bibliogr. s. 1772–1773, Summ. — Proceedings of the 6th ACES symposium : May 11–16, 2008, Cairns, Australia. — Chichester : John Wiley & Sons, 2010