The Internet of Things (IoT) has revolutionized our world today by providing greater levels of accessibility, connectivity and ease to our everyday lives. It enables massive amounts of data to be traversed across multiple heterogeneous devices that are all interconnected. This phenomenon makes IoT networks vulnerable to various network attacks and intrusions. Building an Intrusion Detection System (IDS) for IoT networks is challenging as they enable a massive amount of data to be aggregated, which is difficult to handle and analyze in real time mainly because of the heterogeneous nature of IoT devices. This inefficient, traditional IDS approach accentuates the need to develop advanced IDS techniques by employing Machine or Deep Learning. This paper presents a deep ensemble-based IDS using Lambda architecture by following a multi-pronged classification approach. Binary classification uses Long Short Term Memory (LSTM) to differentiate between malicious and benign traffic, while the multi-class classifier uses an ensemble of LSTM, Convolutional Neural Network and Artificial Neural Network classifiers to detect the type of attacks. The model training is performed in the batch layer, while real-time evaluation is carried out through model inferences in the speed layer of the Lambda architecture. The proposed approach gives high accuracy of over 99.93% and saves useful processing time due to the multi-pronged classification strategy and using the lambda architecture.
Abstract-Mobile devices have evolved from simple devices, which are used for a phone call and SMS messages to smartphone d e vi c e s that can run third party applications. Nowadays, mal i c i ous software, which is also known as malware, imposes a larger threat to these mobile devices. Recently, many news items were posted about the increase of the Android malw are. There were a lot of Android applications pulled from the Android Market because they contained malw are. The vulnerabilities of those Applications or Android operating systems are being exploited by the attackers who got the capability of penetrating into the mobile systems without user authorization causing compromise the confidentiality, integrity and availability of the applications and the user. This paper, it gave an update to the work done in the project.Moreover, this paper focuses on the Android Operating System and aim to detect existing Android malware. It has a dataset that contained 104 malware samples. This Paper chooses several malware from the dataset and attempting to analyze them to understand their installation methods and activation. In addition, it evaluates the most popular existing anti-virus software to see if these 104 malware could be detected.
Using the Internet of Things (IoT) for various applications, such as home and wearables devices, network applications, and even self-driven vehicles, detecting abnormal traffic is one of the problematic areas for researchers to protect network infrastructure from adversary activities. Several network systems suffer from drawbacks that allow intruders to use malicious traffic to obtain unauthorized access. Attacks such as Distributed Denial of Service attacks (DDoS), Denial of Service attacks (DoS), and Service Scans demand a unique automatic system capable of identifying traffic abnormality at the earliest stage to avoid system damage. Numerous automatic approaches can detect abnormal traffic. However, accuracy is not only the issue with current Intrusion Detection Systems (IDS), but the efficiency, flexibility, and scalability need to be enhanced to detect attack traffic from various IoT networks. Thus, this study concentrates on constructing an ensemble classifier using the proposed Integrated Evaluation Metrics (IEM) to determine the best performance of IDS models. The automated Ranking and Best Selection Method (RBSM) is performed using the proposed IEM to select the best model for the ensemble classifier to detect highly accurate attacks using machine learning and deep learning techniques. Three datasets of real IoT traffic were merged to extend the proposed approach’s ability to detect attack traffic from heterogeneous IoT networks. The results show that the performance of the proposed model achieved the highest accuracy of 99.45% and 97.81% for binary and multi-classification, respectively.
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