Excellent absorption-dominant electromagnetic interference shielding performances of asymmetric gradient layered composite films exploited with assistance of machine learning

IF 9.4 1区 化学 Q1 CHEMISTRY, PHYSICAL
Lingjun Zeng , Yu Zhang , Xiaoping Mai , Peng Ai , Lan Xie , Bai Xue , Qiang Zheng
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引用次数: 0

Abstract

Developing high-performance absorption-dominant electromagnetic interference (EMI) shielding composites is essential yet challenging for advanced high-power electronic devices to minimize the second EMI radiation. Traditional experiment-based approaches for shielding material exploitation usually require extensive fabrication and characterization procedures, leading to a long duration and high expense. Herein, machine learning was applied to assist in developing calcium alginate/sodium montmorillonite/CNT@FeCo/CNT (CA/MMT/CNT@FeCo/CNT, CMF/CMFC-x wt%/CMC-y wt%) EMI shielding composites with the asymmetrical gradient layered architecture, triggering the optimization of absorption-dominant EMI shielding properties and reducing experimental costs. The fabricated CMF/CMFC-48.4 wt%/CMC-43.9 wt% film with a small thickness (341.4 μm) exhibits the superior averaged total EMI shielding effectiveness (EMI SET) of 38.9 dB and optimal absorption coefficient (A) of 0.61, when electromagnetic waves (EMWs) are incident from CMF layer. Based on experimental data, the reflection shielding effectiveness (SER), absorption shielding effectiveness (SEA), reflection coefficient (R), and A are utilized to train and test four different machine learning models. Polynomial Linear model (PL) possesses the best prediction accuracy and reliability with the root mean square error (RMSE) of SER and SEA lower than 0.7022, and RMSE of R and A below 0.0361, suggesting that machine learning can effectively alleviate the experimental burden. Moreover, the composite film also features the acceptable mechanical properties and prominent fire resistance, which is vital for the practical application. This work provides a new idea for reducing experimental costs and accelerating the discovery of advanced absorption-dominant EMI shielding materials.
利用机器学习技术开发了不对称梯度层状复合膜以吸收为主的优异电磁干扰屏蔽性能
开发高性能吸收型电磁干扰(EMI)屏蔽复合材料对于先进的大功率电子设备来说是必要的,但也是具有挑战性的,以减少第二次EMI辐射。传统的基于实验的屏蔽材料开发方法通常需要大量的制造和表征过程,导致长时间和高费用。本文将机器学习应用于开发海藻酸钙/蒙脱土钠/CNT@FeCo/CNT (CA/MMT/CNT@FeCo/CNT, CMF/CMFC-x wt%/CMC-y wt%)具有非对称梯度分层结构的EMI屏蔽复合材料,从而优化吸收主导的EMI屏蔽性能并降低实验成本。制备的CMF/CMFC-48.4 wt%/CMC-43.9 wt%薄膜厚度为341.4 μm,当电磁波从CMF层入射时,其平均总EMI屏蔽效能(EMI SET)为38.9 dB,最佳吸收系数(a)为0.61。基于实验数据,利用反射屏蔽效率(SER)、吸收屏蔽效率(SEA)、反射系数(R)和A来训练和测试四种不同的机器学习模型。多项式线性模型(PL)具有最好的预测精度和可靠性,SER和SEA的均方根误差(RMSE)小于0.7022,R和A的RMSE小于0.0361,表明机器学习可以有效减轻实验负担。此外,复合膜还具有可接受的力学性能和突出的耐火性能,这对实际应用至关重要。这项工作为降低实验成本和加速发现先进的吸收型电磁干扰屏蔽材料提供了新的思路。
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来源期刊
CiteScore
16.10
自引率
7.10%
发文量
2568
审稿时长
2 months
期刊介绍: The Journal of Colloid and Interface Science publishes original research findings on the fundamental principles of colloid and interface science, as well as innovative applications in various fields. The criteria for publication include impact, quality, novelty, and originality. Emphasis: The journal emphasizes fundamental scientific innovation within the following categories: A.Colloidal Materials and Nanomaterials B.Soft Colloidal and Self-Assembly Systems C.Adsorption, Catalysis, and Electrochemistry D.Interfacial Processes, Capillarity, and Wetting E.Biomaterials and Nanomedicine F.Energy Conversion and Storage, and Environmental Technologies
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