大麻-氧化铝复合材料雷达吸收反射损耗分类

Q3 Decision Sciences
Muhlasah Novitasari Mara, Budi Basuki Subagio, Efrilia M. Khusna, Bagus Satrio Utomo
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引用次数: 0

摘要

雷达吸收材料(RAM)方法是将雷达发射的电磁波转换成热能,从而降低接收到的电磁波能量的涂层。经研究,大麻具有5.5 g/den的最强和最稳定的拉伸特性,并且与其他天然纤维相比具有更高的耐热性。结合大麻与氧化铝粉末(Al2O3)和环氧树脂的特性,考虑到氧化铝具有轻质、防锈和导电的特性,可以提供一种能够更优化地吸收雷达波的隐身技术系统。利用机器学习可以预测吸收涂层的电磁特性。本研究使用随机森林、人工神经网络、KNN、逻辑回归和决策树对大麻-氧化铝复合材料的反射损失进行分类。这些机器学习分类器能够立即生成预测,并且可以在不受数据人为偏差影响的情况下,在很宽的能量范围内学习关键的光谱特性。测量的频率范围为2- 12ghz。结果表明,大麻-氧化铝复合材料最有效的结构厚度为5mm,用作RAM时,s波段的吸收频率为-15,158 dB, c波段的吸收频率为-16,398 dB, x波段的吸收频率为-23,135 dB。在厚度为5mm的x波段频率处反射损耗值最高,为-23.135 dB,吸收带宽为1000 MHz,效率为93.1%。结果表明,大麻-氧化铝复合材料在x波段上作为RAM是非常有效的。从实验结果来看,随机森林分类器的准确率最高(0.97),F1得分最高(0.98)。随机森林的F1得分和准确率分别为0.96和0.97,与KNN没有显著差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hemp-Alumina Composite Radar Absorption Reflection Loss Classification
The Radar Absorption Material (RAM) method is a coating for reducing the energy of electromagnetic waves received by converting the electromagnetic waves emitted by radar into heat energy. Hemp has been studied to have the strongest and most stable tensile characteristics of 5.5 g/den and has higher heat resistance compared to other natural fibers. Combining the characteristics of hemp with alumina powder (Al2O3) and epoxy resin could provide a stealth technology system that is able to absorb radar waves more optimally, considering that alumina has light, anti-rust and conductive properties. The electromagnetic properties of absorbent coatings can be predicted using machine learning.  This study classifies the reflection loss of Hemp-Alumina Composite using Random Forest, ANN, KNN, Logistic Regression, and Decision Tree. These machine learning classifiers are able to generate predictions immediately and can learn critical spectral properties across a wide energy range without the influence of data human bias. The frequency range of 2-12 GHz was used for the measurements.  Hemp-Alumina composite has result that the most effective structure thickness is 5mm, used as a RAM with optimum absorption in S-Band frequencies of -15,158 dB, C-Band of -16,398 dB and X-Band of -23,135 dB. The highest and optimum reflection loss value is found in the X-Band frequency with a thickness of 5mm which is equal to -23.135 dB with an absorption bandwidth of 1000 MHz and efficiencyof 93.1%. From this result, it is proven that Hemp-Alumina Composite is very effective to be used as a RAM on X-Band frequency.  Based on the results of the experiments, the Random Forest Classifier has the highest values of accuracy (0.97) and F1 score (0.98). The F1 score and accuracy of Random Forest are 0.96 and 0.97, respectively, and do not significantly differ from KNN. 
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来源期刊
JOIV International Journal on Informatics Visualization
JOIV International Journal on Informatics Visualization Decision Sciences-Information Systems and Management
CiteScore
1.40
自引率
0.00%
发文量
100
审稿时长
16 weeks
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