基于多目标优化和迁移学习的磁性材料功率损耗数据驱动模型

IF 5 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE open journal of power electronics Pub Date : 2024-04-16 DOI:10.1109/OJPEL.2024.3389211
Z. Li;L. Wang;R. Liu;R. Mirzadarani;T. Luo;D. Lyu;M. Ghaffarian Niasar;Z. Qin
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引用次数: 0

摘要

传统方法,如 Steinmetz 方程 (SE) 及其改进变体 (iGSE),在估算磁性材料的功率损耗方面精度有限。用于评估磁性元件功率损耗的神经网络技术的引入大大提高了精确度。然而,纳入详细磁通密度信息的有效方法仍未问世,而这一信息对准确性有着至关重要的影响。我们的研究引入了一种将快速傅立叶变换 (FFT) 与前馈神经网络 (FNN) 相结合的创新方法,旨在克服这一难题。为了进一步优化模型,并在复杂性和准确性之间取得完美平衡,我们采用了多目标优化(MOO)来确定超参数的理想组合,如层数、神经元数量、激活函数、优化器和批量大小。这种优化后的神经网络在准确性和规模上都优于传统的直观模型。利用已知材料的优化基础模型,迁移学习被应用于数据有限的新材料,有效解决了数据稀缺的问题。所提出的方法大大提高了模型训练效率,实现了显著的准确性,为人工智能在损耗和电气特性预测方面的应用树立了榜样,并解决了模型大小、准确性目标和数据有限等难题。
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A Data-Driven Model for Power Loss Estimation of Magnetic Materials Based on Multi-Objective Optimization and Transfer Learning
Traditional methods such as Steinmetz's equation (SE) and its improved variant (iGSE) have demonstrated limited precision in estimating power loss for magnetic materials. The introduction of Neural Network technology for assessing magnetic component power loss has significantly enhanced accuracy. Yet, an efficient method to incorporate detailed flux density information—which critically impacts accuracy—remains elusive. Our study introduces an innovative approach that merges Fast Fourier Transform (FFT) with a Feedforward Neural Network (FNN), aiming to overcome this challenge. To optimize the model further and strike a refined balance between complexity and accuracy, Multi-Objective Optimization (MOO) is employed to identify the ideal combination of hyperparameters, such as layer count, neuron number, activation functions, optimizers, and batch size. This optimized Neural Network outperforms traditionally intuitive models in both accuracy and size. Leveraging the optimized base model for known materials, transfer learning is applied to new materials with limited data, effectively addressing data scarcity. The proposed approach substantially enhances model training efficiency, achieves remarkable accuracy, and sets an example for Artificial Intelligence applications in loss and electrical characteristic predictions with challenges of model size, accuracy goals, and limited data.
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CiteScore
8.60
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0.00%
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审稿时长
8 weeks
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