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A neural network framework for predicting transformer core losses

机译:用于预测变压器核心损失的神经网络框架

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In this paper a neural network based framework is developed for predicting core losses of wound core distribution transformers at the early stages of transformer construction. The proposed framework is also used to improve the grouping process of the individual cores so as to reduce the variation in core loss of assembled transformer. Several neural network structures and the respective training sets have been stored in a database, corresponding to the various magnetic materials. Selection of the most appropriate network from the database is relied on the satisfaction of customers' requirements and several technical and economical criteria. In case that the network performance is not satisfactory, a small adaptation of the retrieved network weights is performed. A decision tree methodology has been adopted to select the most appropriate attributes used as input vectors to the neural networks. Significant improvement of core loss prediction is observed in comparison to the current practice.
机译:本文开发了一种神经网络基于网络的框架,用于预测变压器结构的早期阶段的伤口芯分配变压器的核心损失。所提出的框架还用于改善各核的分组过程,以减少组装变压器的核心损耗的变化。几个神经网络结构和各个训练集已存储在数据库中,对应于各种磁性材料。从数据库中选择最合适的网络,依赖于客户要求和几种技术和经济标准的满意度。在网络性能不令人满意的情况下,执行检索到的网络权重的小调整。已经采用了决策树方法来选择用作神经网络的最合适的属性。与目前的实践相比,观察到核心损失预测的显着改善。

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