Research on the Petri Net Modeling of Water Bloom Formation Process

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Abstract:

Based on deep search on the mechanism about evolution of water bloom, Petri net is utilized to construct the simulation model for evolutionary process of water bloom`s pattern. The formation of water bloom is considered in the key factors and different stage. Through test and simulation, the results verify that the petri net model can be realized, which describe the evolutionary process of water bloom`s pattern, so provides another effective approach about the evolution of water bloom.

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Advanced Materials Research (Volumes 518-523)

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2780-2784

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May 2012

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© 2012 Trans Tech Publications Ltd. All Rights Reserved

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