On the estimation of the curvatures and bending rigidity of membrane networks via a local maximum-entropy approach

نویسندگان

  • Fernando Fraternali
  • Chris D. Lorenz
  • G. Marcelli
چکیده

We present a meshfree method for the curvature estimation of membrane networks based on the Local Maximum Entropy approach recently presented in [1]. A continuum regularization of the network is carried out by balancing the maximization of the information entropy corresponding to the nodal data, with the minimization of the total width of the shape functions. The accuracy and convergence properties of the given curvature prediction procedure are assessed through numerical applications to benchmark problems, which include coarse grained molecular dynamics simulations of the fluctuations of red blood cell membranes [2, 3]. We also provide an energetic discreteto-continuum approach to the prediction of the zero-temperature bending rigidity of membrane networks, which is based on the integration of the local curvature estimates. The Local Maximum Entropy approach is easily applicable to the continuum regularization of fluctuating membranes, and Email addresses: [email protected] (F. Fraternali), [email protected] (C. D. Lorenz), [email protected] (G. Marcelli* ) *Corresponding author Preprint submitted to Elsevier September 18, 2011 the prediction of membrane and bending elasticities of molecular dynamics models.

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عنوان ژورنال:
  • J. Comput. Physics

دوره 231  شماره 

صفحات  -

تاریخ انتشار 2012