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  1. Home
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Browsing by Author "Chanane, Abdallah"

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    Novel approach for a ladder network model of the transformer winding high-frequency parameters identification based on FRA data
    (University of Oum El Bouaghi, 2021) Chanane, Abdallah; Belazzoug, Messaoud
    The identification of the high-frequency ladder network model (LNM) parameters for the transformer winding is the way to confirm its actual condition. This paper aims to present the application of one of the latest approach algorithms, namely, Particle Swarm Optimization with Invasive Weed Optimization (PSO-IWO) method for the identification of the high frequency LNM parameters for the transformer winding. The physical realizability of the LNM is ensured and it is based on the frequency response analysis FRA data and some terminal measurements of a transformer winding. The results are agreement and indicate that the identified model, is superior in terms of representing the physical behavior of the transformer winding in high frequency.
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    Novel approach for a ladder network model of the transformer winding high-frequency parameters identification based on FRA data
    (University of Oum El Bouaghi, 2021) Chanane, Abdallah; Belazzoug, Messaoud
    The identification of the high-frequency ladder network model (LNM) parame-ters for the transformer winding is the way to confirm its actual condition. This paper aims to present the application of one of the latest approach algorithms, namely, Particle Swarm Optimization with Invasive Weed Optimization (PSO-IWO) method for the identification of the high frequency LNM parameters for the transformer winding. The physical realizability of the LNM is ensured and it is based on the frequency response analysis FRA data and some terminal measurements of a transformer winding. The results are agreement and indi-cate that the identified model, is superior in terms of representing the physical behavior of the transformer winding in high frequency.

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