Intrusion Detection Methods Based on Integrated Deep Learning Model

2021 ◽  
pp. 102177
Author(s):  
ZHENDONG WANG ◽  
YAODI LIU ◽  
DAOJING HE ◽  
SAMMY CHAN
2020 ◽  
Vol 513 ◽  
pp. 386-396 ◽  
Author(s):  
Mohammad Mehedi Hassan ◽  
Abdu Gumaei ◽  
Ahmed Alsanad ◽  
Majed Alrubaian ◽  
Giancarlo Fortino

2020 ◽  
Vol 29 (6) ◽  
pp. 267-283
Author(s):  
Femi Emmanuel Ayo ◽  
Sakinat Oluwabukonla Folorunso ◽  
Adebayo A. Abayomi-Alli ◽  
Adebola Olayinka Adekunle ◽  
Joseph Bamidele Awotunde

2020 ◽  
Author(s):  
Daniel Galea ◽  
Bryan Lawrence ◽  
Julian Kunkel

<p>Finding and identifying important phenomena in large volumes of simulation data consumes time and resources. Deep Learning offers a route to improve speeds and costs. In this work we demonstrate the application of Deep Learning in identifying data which contains various classes of tropical cyclone. Our initial application is in re-analysis data, but the eventual goal is to use this system during numerical simulation to identify data of interest before writing it out.</p><p>A Deep Learning model has been developed to help identify data containing varying intensities of tropical cyclones. The model uses some convolutional layers to build up a pattern to look for, and a fully-connected classifier to predict whether a tropical cyclone is present in the input. Other techniques such as batch normalization and dropout were tested. The model was trained on a subset of the ERA-Interim dataset from the 1st of January 1979 until the 31st of July 2017, with the relevant labels obtained from the IBTrACS dataset. The model obtained an accuracy of 99.08% on a test set, which was a 20% subset of the original dataset. </p><p>An advantage of this model is that it does not rely on thresholds set a priori, such as a minimum of sea level pressure, a maximum of vorticity or a measure of the depth and strength of deep convection, making it more objective than previous detection methods. Also, given that current methods follow non-trivial algorithms, the Deep Learning model is expected to have the advantage of being able to get the required prediction much quicker, making it viable to be implemented into an existing numerical simulation.</p><p>Most current methods also apply different thresholds for different basins (planetary regions). In principle, the globally trained model should avoid the necessity for such differences, however, it was found that while differing thresholds were not required, training data for specific regions was required to get similar accuracy when only individual basins were examined.</p><p>The existing version, with greater than 99% accuracy globally and around 91% when trained only on cases from the Western Pacific and Western Atlantic basins, has been trained on ERA-Interim data. The next steps with this work will involve assessing the suitability of the pre-trained model for different data, and deploying it within a running numerical simulation.</p>


2021 ◽  
Vol 11 (17) ◽  
pp. 7940
Author(s):  
Mohammed Al-Sarem ◽  
Abdullah Alsaeedi ◽  
Faisal Saeed ◽  
Wadii Boulila ◽  
Omair AmeerBakhsh

Spreading rumors in social media is considered under cybercrimes that affect people, societies, and governments. For instance, some criminals create rumors and send them on the internet, then other people help them to spread it. Spreading rumors can be an example of cyber abuse, where rumors or lies about the victim are posted on the internet to send threatening messages or to share the victim’s personal information. During pandemics, a large amount of rumors spreads on social media very fast, which have dramatic effects on people’s health. Detecting these rumors manually by the authorities is very difficult in these open platforms. Therefore, several researchers conducted studies on utilizing intelligent methods for detecting such rumors. The detection methods can be classified mainly into machine learning-based and deep learning-based methods. The deep learning methods have comparative advantages against machine learning ones as they do not require preprocessing and feature engineering processes and their performance showed superior enhancements in many fields. Therefore, this paper aims to propose a Novel Hybrid Deep Learning Model for Detecting COVID-19-related Rumors on Social Media (LSTM–PCNN). The proposed model is based on a Long Short-Term Memory (LSTM) and Concatenated Parallel Convolutional Neural Networks (PCNN). The experiments were conducted on an ArCOV-19 dataset that included 3157 tweets; 1480 of them were rumors (46.87%) and 1677 tweets were non-rumors (53.12%). The findings of the proposed model showed a superior performance compared to other methods in terms of accuracy, recall, precision, and F-score.


IEEE Access ◽  
2019 ◽  
Vol 7 ◽  
pp. 30373-30385 ◽  
Author(s):  
Farrukh Aslam Khan ◽  
Abdu Gumaei ◽  
Abdelouahid Derhab ◽  
Amir Hussain

Electronics ◽  
2020 ◽  
Vol 9 (7) ◽  
pp. 1151 ◽  
Author(s):  
Wooyeon Jo ◽  
Sungjin Kim ◽  
Changhoon Lee ◽  
Taeshik Shon

The proliferation of various connected platforms, including Internet of things, industrial control systems (ICSs), connected cars, and in-vehicle networks, has resulted in the simultaneous use of multiple protocols and devices. Chaotic situations caused by the usage of different protocols and various types of devices, such as heterogeneous networks, implemented differently by vendors renders the adoption of a flexible security solution difficult, such as recent deep learning-based intrusion detection system (IDS) studies. These studies optimized the deep learning model for their environment to improve performance, but the basic principle of the deep learning model used was not changed, so this can be called a next-generation IDS with a model that has little or no requirements. Some studies proposed IDS based on unsupervised learning technology that does not require labeled data. However, not using available assets, such as network packet data, is a waste of resources. If the security solution considers the role and importance of the devices constituting the network and the security area of the protocol standard by experts, the assets can be well used, but it will no longer be flexible. Most deep learning model-based IDS studies used recurrent neural network (RNN), which is a supervised learning model, because the characteristics of the RNN model, especially when the long-short term memory (LSTM) is incorporated, are better configured to reflect the flow of the packet data stream over time, and thus perform better than other supervised learning models such as convolutional neural network (CNN). However, if the input data induce the CNN’s kernel to sufficiently reflect the network characteristics through proper preprocessing, it could perform better than other deep learning models in the network IDS. Hence, we propose the first preprocessing method, called “direct”, for network IDS that can use the characteristics of the kernel by using the minimum protocol information, field size, and offset. In addition to direct, we propose two more preprocessing techniques called “weighted” and “compressed”. Each requires additional network information; therefore, direct conversion was compared with related studies. Including direct, the proposed preprocessing methods are based on field-to-pixel philosophy, which can reflect the advantages of CNN by extracting the convolutional features of each pixel. Direct is the most intuitive method of applying field-to-pixel conversion to reflect an image’s convolutional characteristics in the CNN. Weighted and compressed are conversion methods used to evaluate the direct method. Consequently, the IDS constructed using a CNN with the proposed direct preprocessing method demonstrated meaningful performance in the NSL-KDD dataset.


Sensors ◽  
2020 ◽  
Vol 20 (20) ◽  
pp. 5731 ◽  
Author(s):  
Xiu-Zhi Chen ◽  
Chieh-Min Chang ◽  
Chao-Wei Yu ◽  
Yen-Lin Chen

Numerous vehicle detection methods have been proposed to obtain trustworthy traffic data for the development of intelligent traffic systems. Most of these methods perform sufficiently well under common scenarios, such as sunny or cloudy days; however, the detection accuracy drastically decreases under various bad weather conditions, such as rainy days or days with glare, which normally happens during sunset. This study proposes a vehicle detection system with a visibility complementation module that improves detection accuracy under various bad weather conditions. Furthermore, the proposed system can be implemented without retraining the deep learning models for object detection under different weather conditions. The complementation of the visibility was obtained through the use of a dark channel prior and a convolutional encoder–decoder deep learning network with dual residual blocks to resolve different effects from different bad weather conditions. We validated our system on multiple surveillance videos by detecting vehicles with the You Only Look Once (YOLOv3) deep learning model and demonstrated that the computational time of our system could reach 30 fps on average; moreover, the accuracy increased not only by nearly 5% under low-contrast scene conditions but also 50% under rainy scene conditions. The results of our demonstrations indicate that our approach is able to detect vehicles under various bad weather conditions without the need to retrain a new model.


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