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Coarse-grained variables for particle-based models : diffusion maps and animal swarming simulations

Coarse-grained variables for particle-based models : diffusion maps and animal swarming simulations

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LIU, Ping, Hannah R. SAFFORD, Iain D. COUZIN, Ioannis G. KEVREKIDIS, 2014. Coarse-grained variables for particle-based models : diffusion maps and animal swarming simulations. In: Computational Particle Mechanics. 1(4), pp. 425-440. ISSN 2196-4378. eISSN 2196-4386. Available under: doi: 10.1007/s40571-014-0030-7

@article{Liu2014Coars-31324, title={Coarse-grained variables for particle-based models : diffusion maps and animal swarming simulations}, year={2014}, doi={10.1007/s40571-014-0030-7}, number={4}, volume={1}, issn={2196-4378}, journal={Computational Particle Mechanics}, pages={425--440}, author={Liu, Ping and Safford, Hannah R. and Couzin, Iain D. and Kevrekidis, Ioannis G.} }

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Dateiabrufe seit 01.07.2015 (Informationen über die Zugriffsstatistik)

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