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@ARTICLE{Linn:186409,
      author       = {Linn, Eike and Siemon, Anne and Waser, R. and Menzel,
                      Stephan},
      title        = {{A}pplicability of {W}ell-{E}stablished {M}emristive
                      {M}odels for {S}imulations of {R}esistive {S}witching
                      {D}evices},
      journal      = {IEEE transactions on circuits and systems / 1},
      volume       = {61},
      number       = {8},
      issn         = {1558-0806},
      address      = {New York, NY},
      publisher    = {Institute of Electrical and Electronics Engineers},
      reportid     = {FZJ-2015-00485},
      pages        = {2402 - 2410},
      year         = {2014},
      abstract     = {Highly accurate and predictive models of resistive
                      switching devices are needed to enable future memory and
                      logic design. Widely used is the memristive modeling
                      approach considering resistive switches as dynamical
                      systems. Here we introduce three evaluation criteria for
                      memristor models, checking for plausibility of the I-V
                      characteristics, the presence of a sufficiently nonlinearity
                      of the switching kinetics, and the feasibility of predicting
                      the behavior of two antiserially connected devices
                      correctly. We analyzed two classes of models: the first
                      class comprises common linear memristor models and the
                      second class widely used nonlinear memristive models. The
                      linear memristor models are based on Strukov's initial
                      memristor model extended by different window functions,
                      while the nonlinear models include Pickett's physics-based
                      memristor model and models derived thereof. This study
                      reveals lacking predictivity of the first class of models,
                      independent of the applied window function. Only the
                      physics-based model is able to fulfill most of the basic
                      evaluation criteria.},
      cin          = {PGI-7},
      ddc          = {000},
      cid          = {I:(DE-Juel1)PGI-7-20110106},
      pnm          = {421 - Frontiers of charge based Electronics (POF2-421)},
      pid          = {G:(DE-HGF)POF2-421},
      typ          = {PUB:(DE-HGF)16},
      UT           = {WOS:000341593000021},
      doi          = {10.1109/TCSI.2014.2332261},
      url          = {https://juser.fz-juelich.de/record/186409},
}