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AC Loss Database Built with Numerical Multi-scale Model and Status Prediction of a 150 kJ SMES.

机译:AC损耗数据库采用数值多尺度模型及150 kJ中小企业的状态预测构建。

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In the process of dynamic power compensation of superconducting magnetic energy storage system (SMES), AC loss is produced inevitably, which will influence the thermal stability of the SMES. In this paper, we firstly use a fast-numerical model, multi-scale model, to analyze the AC loss of a 150 kJ high temperature superconducting (HTS) SMES, and arrange the AC loss under different working conditions into a database. Then, based on the AC loss database, we build a neural network model to provide a real-time prediction of AC loss and thus to adjust the cooling power accordingly. This AC loss data base and neural network system will help keep the SMES magnet thermally stable and prevent the SMES from overload working condition.
机译:在超导磁能存储系统(SME)的动态功率补偿过程中,不可避免地产生交流损耗,这将影响中小企业的热稳定性。在本文中,我们首先使用快速数模型,多尺度模型,分析了150 kJ高温超导(HTS)中小企业的交流损耗,并将不同的工作条件下的交流损耗安排到数据库中。然后,基于交流损耗数据库,我们构建一个神经网络模型,以提供交流损耗的实时预测,从而相应地调节冷却功率。该交流损耗数据库和神经网络系统将有助于保持中小企业磁铁热稳定并防止中小企业过载工作条件。

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