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Neural networks for the prediction of magnetic transformer core characteristics

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TLDR
First attempts to predict the dependence of P on several parameters of core design by means of artificial neural networks (ANN's) showed good results for simple backpropagation networks equipped with several output neurons for an adaptive version of Gaussian coarse coding.
Abstract
Because the performance of power transformers is by various distinct parameters of the magnetic core, the prediction of relevant characteristics such as no-load losses P by analytical methods is impractical. This paper reports first attempts to predict the dependence of P on several parameters of core design by means of artificial neural networks (ANN's). Investigations of several ANN versions showed good results for simple backpropagation networks equipped with several output neurons for an adaptive version of Gaussian coarse coding. A main problem arises from the fact that an increase of input parameters is linked with a large increase in training batches established by time-consuming model core experiments. As a compromise, first ANN's were trained for the prediction of the losses P/sub J/ of "linearized" joint regions as a function of the most relevant parameters, including the number of overlap steps and the mean air-gap length of joints. This yields rough estimations of the joint's contribution to the building factor for small cores. For larger cores, an ANN cascade structure was tested. It includes a second ANN that considers indirect effect of joint designs on the global distribution of losses. The major problem with an ANN-based prediction system is establishing representative training data. Modified versions of the ANN method can be applied to various tasks, including the prediction of losses and noises of full-sized cores.

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Citations
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Technical challenges associated with the integration of wind power into power systems

TL;DR: In this article, the main technical challenges associated with the integration of wind power into power systems are discussed, including effects of wind energy on the power system, the power systems operating cost, power quality, power imbalances, power system dynamics, and impacts on transmission planning.
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Transformer Design and Optimization: A Literature Survey

TL;DR: In this article, the authors conduct a literature survey and reveal general backgrounds of research and developments in the field of transformer design and optimization for the past 35 years, based on more than 420 published articles, 50 transformer books, and 65 standards.
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The state of the art in engineering methods for transformer design and optimization: a survey

TL;DR: This paper summarizes some of the most important developments in this research area and provides a synthesis of the published research in this field to stimulate further research interests and efforts in the respective topics.
Journal ArticleDOI

Artificial Intelligence combined with Hybrid FEM-BE Techniques for Global Transformer Optimization

TL;DR: A hybrid artificial intelligence/numerical technique is proposed for the selection of winding material in power transformers that uses decision trees and artificial neural networks for winding material classification, along with finite-element/boundary element modeling of the transformer for the calculation of the performance characteristics of each considered design.
Journal ArticleDOI

NSGA-II+FEM Based Loss Optimization of Three-Phase Transformer

TL;DR: Experimental results show that NSGA-II+FEM model successfully provides a global feasible solution by minimizing total loss and related cost while improving the efficiency of three-phase transformer, rendering it suitable for application in the design environment of industrial transformers.
References
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Journal ArticleDOI

On the significance of investigations of transformer core models

TL;DR: In this article, the authors collected experiences concerning model core experiments either from literature or from own investigations and found that the occurrence of stray fields and leakage fluxes during open-circuit operation proved to be the most serious effect influencing the significance of model core measurements.
Journal ArticleDOI

Effects of transformer core assembly on building factors

TL;DR: In this article, full size 200 kVA distribution transformer cores were built with thirteen differently sized packets of laser scribed material using different stacking techniques, and power loss and building factor was carried out for the full cores and each individual packet.
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