材料科学
MXenes公司
气凝胶
聚酰亚胺
反射损耗
微波食品加热
堆积
吸收(声学)
复合数
电介质
光电子学
复合材料
纳米技术
图层(电子)
有机化学
化学
量子力学
物理
作者
Ying Li,Chunlei Dong,Sijia Wang,Peng Zhang,Dongyi Lei,Binbin Yin,Zhichun Chen,Xiaodong He,Chengkan Liu,Jiaxin Liu
标识
DOI:10.1016/j.mtphys.2024.101373
摘要
Two-dimensional transition metal carbides and nitrides (MXenes) which enriched with surface functional groups, defects, and considerable interlayer spaces, demonstrate promising prospects in microwave absorption due to that significantly contribute to dielectric loss. However, their limited gelation ability in aqueous solutions and propensity for self-stacking restrict their applications. Addressing this, a lightweight Ti3C2Tx MXene/Polyimide (MP) aerogel nanocomposites without magnetic materials has been developed through a straightforward freeze-drying method, where 'PI chains' anchor the MXene layers, inhibiting self-stacking and enhancing interactions between the Ti3C2Tx nanosheets. The prepared composite aerogels with different MXene contents exhibit exceptional microwave absorption performance. When the thickness of the MP30% is 1.92 mm, the minimum reflection loss (RLmin) is −49.36 dB at 16.28 GHz, and the effective absorption bandwidth (EAB) reaches 6.9 GHz with a matching thickness of 2.5 mm. At 3.8 mm, MP45% achieves an RLmin of −80.4 dB. Additionally, MP aerogels have a notable role in fire protection and insulation. The microwave absorbing mechanism of lightweight MP aerogels from the perspectives of chemical composition and physical structure was deeply explored, which is helpful to the preparation of MXene/PI based aerogels with better microwave absorbing ability in the future. Furthermore, the radar cross section (RCS) reduction value of the optimized MP30% aerogel is simulated as high as 34.775 dBm2 when the scattering angle is 90o using the computer simulation technology (CST). The prepared MP aerogel with extraordinary radar attenuation ability could potentially be applied as efficient absorber candidates in practical applications.
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