Notice Board :

Call for Paper
Vol. 11 Issue 4

Submission Start Date:
April 01, 2024

Acceptence Notification Start:
April 10, 2024

Submission End:
April 20, 2024

Final MenuScript Due:
April 28, 2024

Publication Date:
April 30, 2024
                         Notice Board: Call for PaperVol. 11 Issue 4      Submission Start Date: April 01, 2024      Acceptence Notification Start: April 10, 2024      Submission End: April 20, 2024      Final MenuScript Due: April 28, 2024      Publication Date: April 30, 2024




Volume VIII Issue XI

Author Name
Abhishek Kumar Sinha, Paras Gupta
Year Of Publication
2021
Volume and Issue
Volume 8 Issue 11
Abstract
With the increase in high-bandwidth applications in wireless communication, the need for broadband antennas is also increasing. In this paper, a new and small fractal antenna design concept is proposed for ultra-wideband (UGB) applications. UGB technology was developed for wireless personal area networks (WPAN) with high data rates and good signal splitter features with a high bandwidth. The first band group of the UGB band was analyzed by simulation and signal levels of -43.4 dBm/MHz were observed. The fractal antenna geometry shows auto similar and similar radiation pattern properties for multiple wavelengths. Therefore, they would be well suited for multi-band vertical division frequency multiplexing based UGB applications. The proposed fractal antenna design was analyzed with return loss values less than -21 dB for the entire UGB range. Besides, it is observed that BG:1 exhibits unidirectional radiation pattern properties.
PaperID
2021/IJTRM/11/2021/45285

Author Name
Shrishtika Raikwar, Nitesh Gupta
Year Of Publication
2021
Volume and Issue
Volume 8 Issue 11
Abstract
The use of social media for business and electoral campaigns has increased the amount of harmful behaviour. Social media engagement, like personal, corporate, and political propaganda, has promoted anti-social activity. The intruder receives a full platform to propagate criticism after hiding behind a hacked profile. This research tries to extract relevant elements from social media data indicating a complex connection in order to detect abnormalities. The system successfully identifies abnormal behaviour by recognising malicious or phoney social network accounts. The functional goal of this study is to present a notion of machine learning with a graphical view of social media to detect end-user characteristics. Identify malevolent individuals, their communal information, and sockpuppet nodes, and dramatically enhance classification performance using the end-graphical user's and linguistic viewpoint.
PaperID
2021/IJTRM/11/2021/45290