In the domain of Wireless Sensor Networks (WSNs), where resources are limited and dynamic threats persist, there's a growing requirement for cybersecurity defenses that can adapt and act ahead of time. This research introduces an innovative strategy to tackle this challenge by harnessing the capabilities of Deep Reinforcement Learning (DRL). The study proposes an original method for an Adaptive and Proactive Cyber security Defense Mechanism (APCDM) utilizing Deep Reinforcement Learning within WSNs. The approach entails constructing a simulated cybersecurity environment that accurately imitates real-world threats and network behaviors, allowing for the training and assessment of a DRL agent. This agent engages with the environment, acquiring...
This work addresses the functional approach to ensuring cyber resiliency as a kind of adaptive secur...
Wireless sensor networks (WSNs) have various capacity packages plus specific challenges. They common...
Wireless sensor networks are emerging as effective tools in the gathering and dissemination of data....
Recent advances in Deep Reinforcement Learning allow solving increasingly complex problems. In this ...
Recent advances in Deep Reinforcement Learning allow solving increasingly complex problems. In this ...
Nowadays, electronic applications are being adopted instead of many traditional processes in data an...
Wireless sensor networks (WSNs) are made up of a large number of sensor nodes which collect data and...
There is a lot of expectation on how Artificial Intelligence (AI) is going to have an impact on Cybe...
As the applications of deep reinforcement learning (DRL) in wireless communications grow, sensitivit...
In recent years, cyber attacks have shown diversified, purposeful, and organized characteristics, wh...
The main purpose of this paper is to explore and investigate the role of deep reinforcement learning...
The paper studies the secrecy communication threatened by a single eavesdropper in Energy Harvesting...
Wireless Sensor Networks are by nature resource constrained, due to this characteristic, they are mo...
Securing Wireless Sensor Network (WSN) from variable forms of adversary is still an open end challen...
In this work, we aim to develop novel cybersecurity playbooks by exploiting dynamic reinforcement le...
This work addresses the functional approach to ensuring cyber resiliency as a kind of adaptive secur...
Wireless sensor networks (WSNs) have various capacity packages plus specific challenges. They common...
Wireless sensor networks are emerging as effective tools in the gathering and dissemination of data....
Recent advances in Deep Reinforcement Learning allow solving increasingly complex problems. In this ...
Recent advances in Deep Reinforcement Learning allow solving increasingly complex problems. In this ...
Nowadays, electronic applications are being adopted instead of many traditional processes in data an...
Wireless sensor networks (WSNs) are made up of a large number of sensor nodes which collect data and...
There is a lot of expectation on how Artificial Intelligence (AI) is going to have an impact on Cybe...
As the applications of deep reinforcement learning (DRL) in wireless communications grow, sensitivit...
In recent years, cyber attacks have shown diversified, purposeful, and organized characteristics, wh...
The main purpose of this paper is to explore and investigate the role of deep reinforcement learning...
The paper studies the secrecy communication threatened by a single eavesdropper in Energy Harvesting...
Wireless Sensor Networks are by nature resource constrained, due to this characteristic, they are mo...
Securing Wireless Sensor Network (WSN) from variable forms of adversary is still an open end challen...
In this work, we aim to develop novel cybersecurity playbooks by exploiting dynamic reinforcement le...
This work addresses the functional approach to ensuring cyber resiliency as a kind of adaptive secur...
Wireless sensor networks (WSNs) have various capacity packages plus specific challenges. They common...
Wireless sensor networks are emerging as effective tools in the gathering and dissemination of data....