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AbstractAbstract
[en] Most two-phase flow measurements, including void fraction measurements, depend on correct flow regime identification. There are two steps towards successful identification of flow regimes: one is to develop a non-intrusive instrument to demonstrate area-averaged void fluctuations, the other to develop a non-linear mapping approach to perform objective identification of flow regimes. A non-intrusive impedance void-meter provides input signals to a neural mapping approach used to identify flow regimes. After training, both supervised and self-organizing neural network learning paradigms performed flow regime identification successfully. The methodology presented holds considerable promise for multiphase flow diagnostic and measurement applications. (author)
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Lehner, J. (comp.); Organisation for Economic Co-operation and Development Nuclear Energy Agency (OECD NEA) (France); U.S. Nuclear Regulatory Commission, Washington, DC (United States). Funding organisation: Office of Nuclear Regulatory Research, U.S. Nuclear Regulatory Commission, Washington, DC (United States); 752 p; Sep 1998; p. 391-404; OECD/CSNI specialist meeting on advanced instrumentation and measurement techniques; Santa Barbara, CA (United States); 17-20 Mar 1997; CONTRACT DE-AC07-94ID3223; 7 refs, 8 figs, 3 tabs
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