Intelligent Cyber-Security System for IoT-Aided Drones Using Voting Classifier

Autor: Nurul Azma Abdullah, Michele Nappi, Muhammad Umer, Rizwan Majeed, Muhammad Faheem Mushtaq
Rok vydání: 2021
Předmět:
Zdroj: Electronics, Vol 10, Iss 2926, p 2926 (2021)
Electronics; Volume 10; Issue 23; Pages: 2926
ISSN: 2079-9292
Popis: Developments in drones have opened new trends and opportunities in different fields, particularly in small drones. Drones provide interlocation services for navigation, and this interlink is provided by the Internet of Things (IoT). However, architectural issues make drone networks vulnerable to privacy and security threats. It is critical to provide a safe and secure network to acquire desired performance. Small drones are finding new paths for progress in the civil and defense industries, but also posing new challenges for security and privacy as well. The basic design of the small drone requires a modification in its data transformation and data privacy mechanisms, and it is not yet fulfilling domain requirements. This paper aims to investigate recent privacy and security trends that are affecting the Internet of Drones (IoD). This study also highlights the need for a safe and secure drone network that is free from interceptions and intrusions. The proposed framework mitigates the cyber security threats by employing intelligent machine learning models in the design of IoT-aided drones by making them secure and adaptable. Finally, the proposed model is evaluated on a benchmark dataset and shows robust results.
Databáze: OpenAIRE