Ransomware Detection and Prevention Using Honeypot

Author: Rutesh Bharat Autade, Yash Ashok Shinde, Snehal Shinde, Mayur Maruti Kumbhar Recent Trends in Electronics & Communication Systems-STM Journals Issn: 2393-8757 Date: 2026-07-03 03:32 Volume: 11 Issue: 1 Keyword: Ransomware, cybersecurity, honeypot, network security, cryptocurrency Full Text PDF Submit Manuscript Journals

Abstract

The significance of network security explores the details of ransomware attacks, highlighting the crucial parameters essential to fortifying defences defenses against this pernicious cyber threat. Network security involves safeguarding computer networks against unauthorized access, data breaches, and cyberattacks. Ransomware attack, a specific type of cyberattack, entails malicious software encrypting a computer system, making them unavailable to use; in return, the attacker asks for ransom in the form of cryptocurrency like Bitcoin or Ethereum. These attacks can result in significant data loss and financial harm to individuals and organizations alike. In response to this vulnerability and to prevent data loss caused by such attacks, This this specialized tool is meticulously designed to swiftly identify and mitigate ransomware threats in real-time. It conducts thorough ransomware analysis by examining ransom notes, file extensions, and ransomware-specific codes, allowing for accurate identification of ransomware variants and facilitating data recovery. Furthermore, the tool aids in classifying various ransomware families. With the help of Honeypot, this tool will lure attackers away from real systems. This tool aligns with network security principles, including Confidentiality, Integrity, and Availability.

Keyword: Ransomware, cybersecurity, honeypot, network security, cryptocurrency

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