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Modeling of the charging characteristic of linear-type superconducting power supply using granular-based radial basis function neural networks

机译:基于粒状径向基函数神经网络的线性型超导电源充电特性建模

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Since superconducting coils cause the current decay due to connection resistance and intrinsic characteristic in the persistent current mode, various current compensations should be required to maintain stable property in the superconducting magnet system. As an achievable solution, we fabricated a new prototype power supply, i.e., linear-type superconducting power supply (LTSPS) and we carried out the operating characteristics of LTSPS in the small scale magnets. In order to apply the LTPSP for real scale magnet, charging characteristics for various magnet scales should be expected. In the paper, based on the experimental results, we design a modeling of charging characteristic of LTSPS using a granular-based radial basis function neural networks (RBFNNs) realized with aid of the granular techniques. In contrast with the plethora of existing approaches, here we consider a development strategy in which a topology of the network is predominantly based upon a collection of information granules formed on a basis of available experimental data. The underlying design tool guiding the development of the granular-based RBFNN is based on two categories of methods such as K-means clustering and the fuzzy C-means (FCM) clustering method. As shown in the experimental studies, the granular-based RBFNN possesses essential properties of universal approximation. The model of charging characteristic of LTSPS constructed is concerned with a limited dataset (where the limitations are associated with high costs of acquiring data) as well as strong nonlinear characteristics of the underlying phenomenon. For modeling and evaluation of the performance of the SPS neural network, in advance we also run experiments for other publicly available data such as a well-known NASA software project data as well as synthetic nonlinear data.
机译:由于超导线圈在持续电流模式下会由于连接电阻和固有特性而导致电流衰减,因此需要各种电流补偿以保持超导磁体系统中的稳定特性。作为一种可实现的解决方案,我们制造了一种新的原型电源,即线性超导电源(LTSPS),并在小型磁体中实现了LTSPS的工作特性。为了将LTPSP应用于实际规模的磁体,应该期望各种磁体规模的充电特性。在本文中,基于实验结果,我们使用借助颗粒技术实现的基于颗粒的径向基函数神经网络(RBFNN)设计了LTSPS充电特性的模型。与大量现有方法相反,在此我们考虑一种开发策略,其中网络的拓扑主要基于基于可用实验数据形成的信息颗粒的集合。指导基于颗粒的RBFNN开发的基础设计工具基于两类方法,例如K均值聚类和模糊C均值(FCM)聚类方法。如实验研究所示,基于颗粒的RBFNN具有普遍逼近的基本特性。所构建的LTSPS的充电特性模型与有限的数据集(其中的限制与获取数据的高成本相关)以及潜在现象的强非线性特性有关。为了对SPS神经网络的性能进行建模和评估,我们事先还针对其他公共可用数据(例如著名的NASA软件项目数据以及合成非线性数据)进行了实验。

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