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A theoretical framework and the experimental dataset for benchmarking numerical models of dilute pyroclastic density currents

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 Added by Matteo Cerminara
 Publication date 2021
  fields Physics
and research's language is English




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The aim of this document is to define a Pyroclastic Density Currents (PDCs) benchmark based on a large-scale experiment to be used with numerical models at different levels of complexity. The document is organized as follows. Section 2 concisely describes the large-scale laboratory experiment setup and geometry, and the relevant specific bibliography. Section 3 introduces the theoretical framework to adapt the experimental dataset to numerical models at different levels of complexity. Section 4 details the initial and boundary conditions. In particular, Section 4.1 describes the inlet velocity that best reproduces the experimental boundary conditions. Section 4.3 describes in detail the inlet concentration and temperature profiles, respectively. Section 4.4 describes the input grain size distribution. Section 5 gives the guidelines for consistently presenting the numerical outputs in a model inter-comparison study. Section 6 is a summary to guide the reader through the data sets.

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