1,853 research outputs found
Exploratory study to explore the role of ICT in the process of knowledge management in an Indian business environment
In the 21st century and the emergence of a digital economy, knowledge and the knowledge base economy are rapidly growing. To effectively be able to understand the processes involved in the creating, managing and sharing of knowledge management in the business environment is critical to the success of an organization. This study builds on the previous research of the authors on the enablers of knowledge management by identifying the relationship between the enablers of knowledge management and the role played by information communication technologies (ICT) and ICT infrastructure in a business setting. This paper provides the findings of a survey collected from the four major Indian cities (Chennai, Coimbatore, Madurai and Villupuram) regarding their views and opinions about the enablers of knowledge management in business setting. A total of 80 organizations participated in the study with 100 participants in each city. The results show that ICT and ICT infrastructure can play a critical role in the creating, managing and sharing of knowledge in an Indian business environment
Flow-oriented anomaly-based detection of denial of service attacks with flow-control-assisted mitigation
Flooding-based distributed denial-of-service (DDoS) attacks present a serious and major threat to the targeted enterprises and hosts. Current protection technologies are still largely inadequate in mitigating such attacks, especially if they are large-scale. In this doctoral dissertation, the Computer Network Management and Control System (CNMCS) is proposed and investigated; it consists of the Flow-based Network Intrusion Detection System (FNIDS), the Flow-based Congestion Control (FCC) System, and the Server Bandwidth Management System (SBMS). These components form a composite defense system intended to protect against DDoS flooding attacks. The system as a whole adopts a flow-oriented and anomaly-based approach to the detection of these attacks, as well as a control-theoretic approach to adjust the flow rate of every link to sustain the high priority flow-rates at their desired level. The results showed that the misclassification rates of FNIDS are low, less than 0.1%, for the investigated DDOS attacks, while the fine-grained service differentiation and resource isolation provided within the FCC comprise a novel and powerful built-in protection mechanism that helps mitigate DDoS attacks
Preventing Distributed Denial-of-Service Attacks on the IMS Emergency Services Support through Adaptive Firewall Pinholing
Emergency services are vital services that Next Generation Networks (NGNs)
have to provide. As the IP Multimedia Subsystem (IMS) is in the heart of NGNs,
3GPP has carried the burden of specifying a standardized IMS-based emergency
services framework. Unfortunately, like any other IP-based standards, the
IMS-based emergency service framework is prone to Distributed Denial of Service
(DDoS) attacks. We propose in this work, a simple but efficient solution that
can prevent certain types of such attacks by creating firewall pinholes that
regular clients will surely be able to pass in contrast to the attackers
clients. Our solution was implemented, tested in an appropriate testbed, and
its efficiency was proven.Comment: 17 Pages, IJNGN Journa
A new proactive feature selection model based on the enhanced optimization algorithms to detect DRDoS attacks
Cyberattacks have grown steadily over the last few years. The distributed reflection denial of service (DRDoS) attack has been rising, a new variant of distributed denial of service (DDoS) attack. DRDoS attacks are more difficult to mitigate due to the dynamics and the attack strategy of this type of attack. The number of features influences the performance of the intrusion detection system by investigating the behavior of traffic. Therefore, the feature selection model improves the accuracy of the detection mechanism also reduces the time of detection by reducing the number of features. The proposed model aims to detect DRDoS attacks based on the feature selection model, and this model is called a proactive feature selection model proactive feature selection (PFS). This model uses a nature-inspired optimization algorithm for the feature subset selection. Three machine learning algorithms, i.e., k-nearest neighbor (KNN), random forest (RF), and support vector machine (SVM), were evaluated as the potential classifier for evaluating the selected features. We have used the CICDDoS2019 dataset for evaluation purposes. The performance of each classifier is compared to previous models. The results indicate that the suggested model works better than the current approaches providing a higher detection rate (DR), a low false-positive rate (FPR), and increased accuracy detection (DA). The PFS model shows better accuracy to detect DRDoS attacks with 89.59%
Adaptive Response System for Distributed Denial-of-Service Attacks
The continued prevalence and severe damaging effects of the Distributed Denial of Service (DDoS)
attacks in today’s Internet raise growing security concerns and call for an immediate response to come
up with better solutions to tackle DDoS attacks. The current DDoS prevention mechanisms are usually
inflexible and determined attackers with knowledge of these mechanisms, could work around them.
Most existing detection and response mechanisms are standalone systems which do not rely on
adaptive updates to mitigate attacks. As different responses vary in their “leniency” in treating
detected attack traffic, there is a need for an Adaptive Response System.
We designed and implemented our DDoS Adaptive ResponsE (DARE) System, which is a
distributed DDoS mitigation system capable of executing appropriate detection and mitigation
responses automatically and adaptively according to the attacks. It supports easy integrations for both
signature-based and anomaly-based detection modules. Additionally, the design of DARE’s individual
components takes into consideration the strengths and weaknesses of existing defence mechanisms,
and the characteristics and possible future mutations of DDoS attacks. These components consist of an
Enhanced TCP SYN Attack Detector and Bloom-based Filter, a DDoS Flooding Attack Detector and
Flow Identifier, and a Non Intrusive IP Traceback mechanism. The components work together
interactively to adapt the detections and responses in accordance to the attack types. Experiments
conducted on DARE show that the attack detection and mitigation are successfully completed within
seconds, with about 60% to 86% of the attack traffic being dropped, while availability for legitimate
and new legitimate requests is maintained. DARE is able to detect and trigger appropriate responses in
accordance to the attacks being launched with high accuracy, effectiveness and efficiency.
We also designed and implemented a Traffic Redirection Attack Protection System (TRAPS), a
stand-alone DDoS attack detection and mitigation system for IPv6 networks. In TRAPS, the victim
under attack verifies the authenticity of the source by performing virtual relocations to differentiate the
legitimate traffic from the attack traffic. TRAPS requires minimal deployment effort and does not
require modifications to the Internet infrastructure due to its incorporation of the Mobile IPv6
protocol. Experiments to test the feasibility of TRAPS were carried out in a testbed environment to
verify that it would work with the existing Mobile IPv6 implementation. It was observed that the
operations of each module were functioning correctly and TRAPS was able to successfully mitigate an
attack launched with spoofed source IP addresses
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