Machine learning assisted metamaterial-based reconfigurable antenna for low-cost portable electronic devices

被引:38
作者
Patel, Shobhit K. [1 ]
Surve, Jaymit [2 ]
Katkar, Vijay [1 ]
Parmar, Juveriya [3 ,4 ]
机构
[1] Marwadi Univ, Dept Comp Engn, Rajkot, Gujarat, India
[2] Marwadi Univ, Dept Elect Engn, Rajkot, Gujarat, India
[3] Marwadi Univ, Dept Elect & Commun Engn, Rajkot, Gujarat, India
[4] Univ Nebraska, Dept Mech & Mat Engn, 1400 R St, Lincoln, NE 68588 USA
关键词
WIDE-BAND;
D O I
10.1038/s41598-022-16678-2
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Antenna design has evolved from bulkier to small portable designs but there is a need for smarter antenna design using machine learning algorithms that can meet today's high growing demand for smart and fast devices. Here in this research, main focus is on developing smart antenna design using machine learning applicable in 5G mobile applications and portable Wi-Fi, Wi-MAX, and WLAN applications. Our design is based on the metamaterial concept where the patch is truncated and etched with a split ring resonator (SRR). The high gain requirement is met by adding metamaterial superstrates having thin wires (TW) and SRRs. The reconfigurability is achieved by adding three PIN diode switches. Multiple designs have been observed by adding superstrate layers ranging from one layer to four layers with interchanging TWs and SRRs. The TW metamaterial superstrate design with two layers is giving the best performance in gain, bandwidth, and the number of bands. The design is optimized by changing the path's physical parameters. To shrink simulation time, Extra Tree Regression based machine learning model is used to learn the behavior of the antenna and predict the reflectance value for a wide range of frequencies. Experimental results prove that the use of the Extra Tree Regression based model for simulation of antenna design can cut the simulation time, resource requirements by 80%.
引用
收藏
页数:13
相关论文
共 39 条
[1]  
Abbas M, 2018, 2018 IEEE 21ST INTERNATIONAL MULTI-TOPIC CONFERENCE (INMIC)
[2]  
Al-Yasir YIA, 2019, INT C SYNTH MODEL AN, P53, DOI [10.1109/smacd.2019.8795287, 10.1109/SMACD.2019.8795287]
[3]   Bayesian Machine Learning in Metamaterial Design: Fragile Becomes Supercompressible [J].
Bessa, Miguel A. ;
Glowacki, Piotr ;
Houlder, Michael .
ADVANCED MATERIALS, 2019, 31 (48)
[4]   Frequency Reconfigurable Antenna Designs Using PIN Diode for Wireless Communication Applications [J].
Boufrioua, Amel .
WIRELESS PERSONAL COMMUNICATIONS, 2020, 110 (04) :1879-1885
[5]   X-Band Reflectarray Antenna With Switching-Beam Using PIN Diodes and Gathered Elements [J].
Carrasco, Eduardo ;
Barba, Mariano ;
Encinar, Jose A. .
IEEE TRANSACTIONS ON ANTENNAS AND PROPAGATION, 2012, 60 (12) :5700-5708
[6]  
Christydass S.P.J., 2021, Prog. Electromagn. Res, V113, P97, DOI [10.2528/PIERC21041102(2021, DOI 10.2528/PIERC21041102(2021, 10.2528/PIERC21041102, DOI 10.2528/PIERC21041102]
[7]  
Cui TJ, 2010, METAMATERIALS: THEORY, DESIGN, AND APPLICATIONS, P1, DOI 10.1007/978-1-4419-0573-4_1
[8]  
Deringer V.L., 2019, ADV MATER, V31, DOI DOI 10.1002/ADMA.201902765
[9]   A review on the design and optimization of antennas using machine learning algorithms and techniques [J].
El Misilmani, Hilal M. ;
Naous, Tarek ;
Al Khatib, Salwa K. .
INTERNATIONAL JOURNAL OF RF AND MICROWAVE COMPUTER-AIDED ENGINEERING, 2020, 30 (10)
[10]   Frequency Reconfigurable Pixel Antenna with PIN Diodes [J].
George, Raji ;
Kumar, C. R. S. ;
Gangal, Shashikala ;
Joshi, Makarand .
PROGRESS IN ELECTROMAGNETICS RESEARCH LETTERS, 2019, 86 :59-65