An Effective Distributed Denial of Service (DDOS) Attacks Detection Using Resilient Back-Propagation and Gradient Descent Training Algorithms (ME Thesis) (Record no. 68369)
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| 000 -LEADER | |
|---|---|
| fixed length control field | 01916nam a22001337a 4500 |
| 100 ## - MAIN ENTRY--AUTHOR NAME | |
| Personal name | Engr. Iraj Memon |
| -- | 2-MCSE-04 |
| -- | Supervisor - Prof.Dr. Fareed Ahmed Jokhio |
| 245 ## - TITLE STATEMENT | |
| Title | An Effective Distributed Denial of Service (DDOS) Attacks Detection Using Resilient Back-Propagation and Gradient Descent Training Algorithms (ME Thesis) |
| 260 ## - PUBLICATION, DISTRIBUTION, ETC. (IMPRINT) | |
| Place of publication | Nawabshah |
| Name of publisher | QUEST |
| Year of publication | 2024 |
| 300 ## - PHYSICAL DESCRIPTION | |
| Number of Pages | 60p. |
| 520 ## - SUMMARY, ETC. | |
| Summary, etc | ABSTRACT<br/><br/>In present time where everything is digital and various devices are connected with reliable and fast computer networks. Although networks are secure and can handle various types of networks attacks. However, it is challenging to detect Distributed Denial of Service (DDoS) attacks. Because these attacks are launched from trusted devices. During a DDoS attack, several requests are sent to a server from trusted computers or devices and server may go down completely or it can have delay in services which it is providing. This may cause serrious problems for the users of the system. Timely detection of such type of attacks is essential. This research work explores three Artificial Neural Network (ANN) models: the Feed forward Neural Network (FFNN), Cascade-Forward Neural Network (CCFNN), and Fitnet Neural Network (FNN) for the purpose of DDoS attack detection. For each neural network three training algorithms are used to training. This research, applied Resilient Back- propagation, Gradient Descent, and Conjugate Gradient with Powell-Beale Restarts techniques. The results of the study demonstrated that the Fitnet Neural Network outperformed the other models in terms of accuracy and required a shorter duration to achieve this accuracy across the three training algorithms mentioned.<br/><br/>Keywords: DDoS, DDoS attacks detection, Feed Forward Neural Network, Sparse Autoencoder |
| 650 ## - SUBJECT ADDED ENTRY--TOPICAL TERM | |
| Topical Term | Department of Computer Systems Engineering |
| 856 ## - ELECTRONIC LOCATION AND ACCESS | |
| Uniform Resource Identifier | https://tinyurl.com/3r9d76pa |
| 942 ## - ADDED ENTRY ELEMENTS (KOHA) | |
| Koha item type | Thesis and Dissertation |
| Withdrawn status | Lost status | Home library | Current library | Date acquired | Accession Number | Koha item type |
|---|---|---|---|---|---|---|
| Research Section | Research Section | 27/05/2024 | MP/89-1289 | Thesis and Dissertation | ||
| Research Section | Research Section | 27/05/2024 | MP/89-1290 | Thesis and Dissertation | ||
| Research Section | Research Section | 26/07/2024 | MP/91-1320 | Thesis and Dissertation |