Introduction to Perceptron Networks

Jan Jantzen

    Research output: Book/ReportReport

    Abstract

    When it is time-consuming or expensive to model a plant using the basic laws of physics, a neural network approach can be an alternative. From a control engineer's viewpoint a two-layer perceptron network is sufficient. It is indicated how to model a dynamic plant using a perceptron network.
    Original languageEnglish
    Number of pages32
    Publication statusPublished - 1998

    Cite this

    Jantzen, Jan. / Introduction to Perceptron Networks. 1998. 32 p.
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    author = "Jan Jantzen",
    year = "1998",
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    Introduction to Perceptron Networks. / Jantzen, Jan.

    1998. 32 p.

    Research output: Book/ReportReport

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    Jantzen J. Introduction to Perceptron Networks. 1998. 32 p.