Biblio

Found 1727 results

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2018-05-11
2018-05-25
B. Zheng, C. W. Lin, S. Shiraishi, Q. Zhu.  Submitted.  Design and Analysis of Delay-Aware Intelligent Intersection Management. submitted to the ACM Transactions on Cyber-Physical Systems (TCPS).
B. Zheng, C. W. Lin, S. Shiraishi, Q. Zhu.  Submitted.  Design and Analysis of Delay-Aware Intelligent Intersection Management. submitted to the ACM Transactions on Cyber-Physical Systems (TCPS).
2019-05-31
2018-05-15
2018-05-25
Zhao, Yanbo, Ioannou, Petros A, Dessouky, Maged M.  Submitted.  Dynamic Multimodal Freight Routing using a Co-Simulation Optimization Approach. IEEE Transactions on Intelligent Transportation Systems.
2023-01-06
Da Costa, Alessandro Monteiro, de Sá, Alan Oliveira, Machado, Raphael C. S..  2022.  Data Acquisition and extraction on mobile devices-A Review. 2022 IEEE International Workshop on Metrology for Industry 4.0 & IoT (MetroInd4.0&IoT). :294—299.
Forensic Science comprises a set of technical-scientific knowledge used to solve illicit acts. The increasing use of mobile devices as the main computing platform, in particular smartphones, makes existing information valuable for forensics. However, the blocking mechanisms imposed by the manufacturers and the variety of models and technologies make the task of reconstructing the data for analysis challenging. It is worth mentioning that the conclusion of a case requires more than the simple identification of evidence, as it is extremely important to correlate all the data and sources obtained, to confirm a suspicion or to seek new evidence. This work carries out a systematic review of the literature, identifying the different types of existing image acquisition and the main extraction and encryption methods used in smartphones with the Android operating system.
2023-01-05
Petrenko, Vyacheslav, Tebueva, Fariza, Ryabtsev, Sergey, Antonov, Vladimir, Struchkov, Igor.  2022.  Data Based Identification of Byzantine Robots for Collective Decision Making. 2022 13th Asian Control Conference (ASCC). :1724–1727.
The development of new types of technology actualizes the issues of ensuring their information security. The aim of the work is to increase the security of the collective decision-making process in swarm robotic systems from negative impacts by identifying malicious robots. It is proposed to use confidence in choosing an alternative when reaching a consensus as a criterion for identifying malicious robots - a malicious robot, having a special behavior strategy, does not fully take into account the signs of the external environment and information from other robots, which means that such a robot will change its mind with characteristic features for each malicious strategy, and its degree of confidence will be different from the usual voting robot. The modeling performed and the obtained experimental data on three types of malicious behavioral strategies demonstrate the possibility of using the degree of confidence to identify malicious robots. The advantages of the approach are taking into account a large number of alternatives and universality, which lies in the fact that the method is based on the mechanisms of collective decision-making, which proceed in the same way on various hardware platforms of swarm robotic systems. The proposed method can serve as a basis for the development of more complex security mechanisms in swarm robotic systems.
2023-05-19
Zhang, Lingyun, Chen, Yuling, Qian, Xiaobin.  2022.  Data Confirmation Scheme based on Auditable CP-ABE. 2022 IEEE International Conferences on Internet of Things (iThings) and IEEE Green Computing & Communications (GreenCom) and IEEE Cyber, Physical & Social Computing (CPSCom) and IEEE Smart Data (SmartData) and IEEE Congress on Cybermatics (Cybermatics). :439—443.
Ensuring data rights, openness and transaction flow is important in today’s digital economy. Few scholars have studied in the area of data confirmation, it is only with the development of blockchain that it has started to be taken seriously. However, blockchain has open and transparent natures, so there exists a certain probability of exposing the privacy of data owners. Therefore, in this paper we propose a new measure of data confirmation based on Ciphertext-Policy Attribute-Base Encryption(CP-ABE). The information with unique identification of the data owner is embedded in the ciphertext of CP-ABE by paillier homomorphic encryption, and the data can have multiple sharers. No one has access to the plaintext during the whole confirmation process, which reduces the risk of source data leakage.
2023-06-16
Reddy Sankepally, Sainath, Kosaraju, Nishoak, Mallikharjuna Rao, K.  2022.  Data Imputation Techniques: An Empirical Study using Chronic Kidney Disease and Life Expectancy Datasets. 2022 International Conference on Innovative Trends in Information Technology (ICITIIT). :1—7.
Data is a collection of information from the activities of the real world. The file in which such data is stored after transforming into a form that machines can process is generally known as data set. In the real world, many data sets are not complete, and they contain various types of noise. Missing values is of one such kind. Thus, imputing data of these missing values is one of the significant task of data pre-processing. This paper deals with two real time health care data sets namely life expectancy (LE) dataset and chronic kidney disease (CKD) dataset, which are very different in their nature. This paper provides insights on various data imputation techniques to fill missing values by analyzing them. When coming to Data imputation, it is very common to impute the missing values with measure of central tendencies like mean, median, mode Which can represent the central value of distribution but choosing the apt choice is real challenge. In accordance with best of our knowledge this is the first and foremost paper which provides the complete analysis of impact of basic data imputation techniques on various data distributions which can be classified based on the size of data set, number of missing values, type of data (categorical/numerical), etc. This paper compared and analyzed the original data distribution with the data distribution after each imputation in terms of their skewness, outliers and by various descriptive statistic parameters.
2023-03-31
Vineela, A., Kasiviswanath, N., Bindu, C. Shoba.  2022.  Data Integrity Auditing Scheme for Preserving Security in Cloud based Big Data. 2022 6th International Conference on Intelligent Computing and Control Systems (ICICCS). :609–613.
Cloud computing has become an integral part of medical big data. The cloud has the capability to store the large data volumes has attracted more attention. The integrity and privacy of patient data are some of the issues that cloud-based medical big data should be addressed. This research work introduces data integrity auditing scheme for cloud-based medical big data. This will help minimize the risk of unauthorized access to the data. Multiple copies of the data are stored to ensure that it can be recovered quickly in case of damage. This scheme can also be used to enable doctors to easily track the changes in patients' conditions through a data block. The simulation results proved the effectiveness of the proposed scheme.
ISSN: 2768-5330
2023-02-17
Ying, Ma, Tingting, Zhou.  2022.  Data Interface Matching and Information Security Measurement of Scientific and Technological Innovation Measurement Analysis and Multi-Agent Economic MIS. 2022 International Conference on Edge Computing and Applications (ICECAA). :510–513.
This paper establishes a vector autoregressive model based on the current development status of the digital economy and studies the correlation between the digital economy and economic growth MIS from a dynamic perspective, and found that the digital economy has a strong supporting role in the growth of the total economic volume. The coordination degree model calculates the scientific and technological innovation capabilities of China's 30 provinces (except Tibet) from 2018 to 2022, and the coordination, green, open, and shared level of high-quality economic development. The basic principles of the composition of the security measurement are expounded, and the measurement information model can be used as a logic model. The analysis of security measure composition summarizes the selection principle and selection process of security measurement, and analyzes and compares the measure composition methods in several typical security measurement methods.
2023-07-19
Voulgaris, Konstantinos, Kiourtis, Athanasios, Karamolegkos, Panagiotis, Karabetian, Andreas, Poulakis, Yannis, Mavrogiorgou, Argyro, Kyriazis, Dimosthenis.  2022.  Data Processing Tools for Graph Data Modelling Big Data Analytics. 2022 13th International Congress on Advanced Applied Informatics Winter (IIAI-AAI-Winter). :208—212.
Any Big Data scenario eventually reaches scalability concerns for several factors, often storage or computing power related. Modern solutions have been proven to be effective in multiple domains and have automated many aspects of the Big Data pipeline. In this paper, we aim to present a solution for deploying event-based automated data processing tools for low code environments that aim to minimize the need for user input and can effectively handle common data processing jobs, as an alternative to distributed solutions which require language specific libraries and code. Our architecture uses a combination of a network exposed service with a cluster of “Data Workers” that handle data processing jobs effectively without requiring manual input from the user. This system proves to be effective at handling most data processing scenarios and allows for easy expandability by following simple patterns when declaring any additional jobs.
2023-02-03
Halisdemir, Maj. Emre, Karacan, Hacer, Pihelgas, Mauno, Lepik, Toomas, Cho, Sungbaek.  2022.  Data Quality Problem in AI-Based Network Intrusion Detection Systems Studies and a Solution Proposal. 2022 14th International Conference on Cyber Conflict: Keep Moving! (CyCon). 700:367–383.
Network Intrusion Detection Systems (IDSs) have been used to increase the level of network security for many years. The main purpose of such systems is to detect and block malicious activity in the network traffic. Researchers have been improving the performance of IDS technology for decades by applying various machine-learning techniques. From the perspective of academia, obtaining a quality dataset (i.e. a sufficient amount of captured network packets that contain both malicious and normal traffic) to support machine learning approaches has always been a challenge. There are many datasets publicly available for research purposes, including NSL-KDD, KDDCUP 99, CICIDS 2017 and UNSWNB15. However, these datasets are becoming obsolete over time and may no longer be adequate or valid to model and validate IDSs against state-of-the-art attack techniques. As attack techniques are continuously evolving, datasets used to develop and test IDSs also need to be kept up to date. Proven performance of an IDS tested on old attack patterns does not necessarily mean it will perform well against new patterns. Moreover, existing datasets may lack certain data fields or attributes necessary to analyse some of the new attack techniques. In this paper, we argue that academia needs up-to-date high-quality datasets. We compare publicly available datasets and suggest a way to provide up-to-date high-quality datasets for researchers and the security industry. The proposed solution is to utilize the network traffic captured from the Locked Shields exercise, one of the world’s largest live-fire international cyber defence exercises held annually by the NATO CCDCOE. During this three-day exercise, red team members consisting of dozens of white hackers selected by the governments of over 20 participating countries attempt to infiltrate the networks of over 20 blue teams, who are tasked to defend a fictional country called Berylia. After the exercise, network packets captured from each blue team’s network are handed over to each team. However, the countries are not willing to disclose the packet capture (PCAP) files to the public since these files contain specific information that could reveal how a particular nation might react to certain types of cyberattacks. To overcome this problem, we propose to create a dedicated virtual team, capture all the traffic from this team’s network, and disclose it to the public so that academia can use it for unclassified research and studies. In this way, the organizers of Locked Shields can effectively contribute to the advancement of future artificial intelligence (AI) enabled security solutions by providing annual datasets of up-to-date attack patterns.
ISSN: 2325-5374
2023-06-22
Ho, Samson, Reddy, Achyut, Venkatesan, Sridhar, Izmailov, Rauf, Chadha, Ritu, Oprea, Alina.  2022.  Data Sanitization Approach to Mitigate Clean-Label Attacks Against Malware Detection Systems. MILCOM 2022 - 2022 IEEE Military Communications Conference (MILCOM). :993–998.
Machine learning (ML) models are increasingly being used in the development of Malware Detection Systems. Existing research in this area primarily focuses on developing new architectures and feature representation techniques to improve the accuracy of the model. However, recent studies have shown that existing state-of-the art techniques are vulnerable to adversarial machine learning (AML) attacks. Among those, data poisoning attacks have been identified as a top concern for ML practitioners. A recent study on clean-label poisoning attacks in which an adversary intentionally crafts training samples in order for the model to learn a backdoor watermark was shown to degrade the performance of state-of-the-art classifiers. Defenses against such poisoning attacks have been largely under-explored. We investigate a recently proposed clean-label poisoning attack and leverage an ensemble-based Nested Training technique to remove most of the poisoned samples from a poisoned training dataset. Our technique leverages the relatively large sensitivity of poisoned samples to feature noise that disproportionately affects the accuracy of a backdoored model. In particular, we show that for two state-of-the art architectures trained on the EMBER dataset affected by the clean-label attack, the Nested Training approach improves the accuracy of backdoor malware samples from 3.42% to 93.2%. We also show that samples produced by the clean-label attack often successfully evade malware classification even when the classifier is not poisoned during training. However, even in such scenarios, our Nested Training technique can mitigate the effect of such clean-label-based evasion attacks by recovering the model's accuracy of malware detection from 3.57% to 93.2%.
ISSN: 2155-7586
2023-09-08
Shah, Sunil Kumar, Sharma, Raghavendra, Shukla, Neeraj.  2022.  Data Security in IoT Networks using Software-Defined Networking: A Review. 2022 IEEE World Conference on Applied Intelligence and Computing (AIC). :909–913.
Wireless Sensor networks can be composed of smart buildings, smart homes, smart grids, and smart mobility, and they can even interconnect all these fields into a large-scale smart city network. Software-Defined Networking is an ideal technology to realize Internet-of-Things (IoT) Network and WSN network requirements and to efficiently enhance the security of these networks. Software defines Networking (SDN) is used to support IoT and WSN related networking elements, additional security concerns rise, due to the elevated vulnerability of such deployments to specific types of attacks and the necessity of inter-cloud communication any IoT application would require. This work is a study of different security mechanisms available in SDN for IoT and WSN network secure communication. This work also formulates the problems when existing methods are implemented with different networks parameters.
2023-04-28
Bálint, Krisztián.  2022.  Data Security Structure of a Students’ Attendance Register Based on Security Cameras and Blockchain Technology. 2022 IEEE 22nd International Symposium on Computational Intelligence and Informatics and 8th IEEE International Conference on Recent Achievements in Mechatronics, Automation, Computer Science and Robotics (CINTI-MACRo). :000185–000190.
The latest, modern security camera systems record numerous data at once. With the utilization of artificial intelligence, these systems can even compose an online attendance register of students present during the lectures. Data is primarily recorded on the hard disk of the NVR (Network Video Recorder), and in the long term, it is recommended to save the data in the blockchain. The purpose of the research is to demonstrate how university security cameras can be securely connected to the blockchain. This would be important for universities as this is sensitive student data that needs to be protected from unauthorized access. In my research, as part of the practical implementation, I therefore also use encryption methods and data fragmentation, which are saved at the nodes of the blockchain. Thus, even a DDoS (Distributed Denial of Service) type attack may be easily repelled, as data is not concentrated on a single, central server. To further increase security, it is useful to constitute a blockchain capable of its own data storage at the faculty itself, rather than renting data storage space, so we, ourselves may regulate the conditions of operation, and the policy of data protection. As a practical part of my research, therefore, I created a blockchain called UEDSC (Universities Data Storage Chain) where I saved the student's data.
ISSN: 2471-9269
2023-08-24
Sun, Jun, Li, Yang, Zhang, Ge, Dong, Liangyu, Yang, Zitao, Wang, Mufeng, Cai, Jiahe.  2022.  Data traceability scheme of industrial control system based on digital watermark. 2022 7th IEEE International Conference on Data Science in Cyberspace (DSC). :322–325.
The fourth industrial revolution has led to the rapid development of industrial control systems. While the large number of industrial system devices connected to the Internet provides convenience for production management, it also exposes industrial control systems to more attack surfaces. Under the influence of multiple attack surfaces, sensitive data leakage has a more serious and time-spanning negative impact on industrial production systems. How to quickly locate the source of information leakage plays a crucial role in reducing the loss from the attack, so there are new requirements for tracing sensitive data in industrial control information systems. In this paper, we propose a digital watermarking traceability scheme for sensitive data in industrial control systems to address the above problems. In this scheme, we enhance the granularity of traceability by classifying sensitive data types of industrial control systems into text, image and video data with differentiated processing, and achieve accurate positioning of data sources by combining technologies such as national secret asymmetric encryption and hash message authentication codes, and mitigate the impact of mainstream watermarking technologies such as obfuscation attacks and copy attacks on sensitive data. It also mitigates the attacks against the watermarking traceability such as obfuscation attacks and copy attacks. At the same time, this scheme designs a data flow watermark monitoring module on the post-node of the data source to monitor the unauthorized sensitive data access behavior caused by other attacks.
2023-06-23
Vogel, Michael, Schuster, Franka, Kopp, Fabian Malte, König, Hartmut.  2022.  Data Volume Reduction for Deep Packet Inspection by Multi-layer Application Determination. 2022 IEEE International Conference on Cyber Security and Resilience (CSR). :44–49.
Attack detection in enterprise networks is increasingly faced with large data volumes, in part high data bursts, and heavily fluctuating data flows that often cause arbitrary discarding of data packets in overload situations which can be used by attackers to hide attack activities. Attack detection systems usually configure a comprehensive set of signatures for known vulnerabilities in different operating systems, protocols, and applications. Many of these signatures, however, are not relevant in each context, since certain vulnerabilities have already been eliminated, or the vulnerable applications or operating system versions, respectively, are not installed on the involved systems. In this paper, we present an approach for clustering data flows to assign them to dedicated analysis units that contain only signature sets relevant for the analysis of these flows. We discuss the performance of this clustering and show how it can be used in practice to improve the efficiency of an analysis pipeline.
2023-08-24
Riedel, Paul, Riesner, Michael, Wendt, Karsten, Aßmann, Uwe.  2022.  Data-Driven Digital Twins in Surgery utilizing Augmented Reality and Machine Learning. 2022 IEEE International Conference on Communications Workshops (ICC Workshops). :580–585.
On the one hand, laparoscopic surgery as medical state-of-the-art method is minimal invasive, and thus less stressful for patients. On the other hand, laparoscopy implies higher demands on physicians, such as mental load or preparation time, hence appropriate technical support is essential for quality and suc-cess. Medical Digital Twins provide an integrated and virtual representation of patients' and organs' data, and thus a generic concept to make complex information accessible by surgeons. In this way, minimal invasive surgery could be improved significantly, but requires also a much more complex software system to achieve the various resulting requirements. The biggest challenges for these systems are the safe and precise mapping of the digital twin to reality, i.e. dealing with deformations, movement and distortions, as well as balance out the competing requirement for intuitive and immersive user access and security. The case study ARAILIS is presented as a proof in concept for such a system and provides a starting point for further research. Based on the insights delivered by this prototype, a vision for future Medical Digital Twins in surgery is derived and discussed.
ISSN: 2694-2941
2023-06-22
Chavan, Neeta, Kukreja, Mohit, Jagwani, Gaurav, Nishad, Neha, Deb, Namrata.  2022.  DDoS Attack Detection and Botnet Prevention using Machine Learning. 2022 8th International Conference on Advanced Computing and Communication Systems (ICACCS). 1:1159–1163.
One of the major threats in the cyber security and networking world is a Distributed Denial of Service (DDoS) attack. With massive development in Science and Technology, the privacy and security of various organizations are concerned. Computer Intrusion and DDoS attacks have always been a significant issue in networked environments. DDoS attacks result in non-availability of services to the end-users. It interrupts regular traffic flow and causes a flood of flooded packets, causing the system to crash. This research presents a Machine Learning-based DDoS attack detection system to overcome this challenge. For the training and testing purpose, we have used the NSL-KDD Dataset. Logistic Regression Classifier, Support Vector Machine, K Nearest Neighbour, and Decision Tree Classifier are examples of machine learning algorithms which we have used to train our model. The accuracy gained are 90.4, 90.36, 89.15 and 82.28 respectively. We have added a feature called BOTNET Prevention, which scans for Phishing URLs and prevents a healthy device from being a part of the botnet.
ISSN: 2575-7288
Manoj, K. Sai.  2022.  DDOS Attack Detection and Prevention using the Bat Optimized Load Distribution Algorithm in Cloud. 2022 International Interdisciplinary Humanitarian Conference for Sustainability (IIHC). :633–642.
Cloud computing provides a great platform for the users to utilize the various computational services in order accomplish their requests. However it is difficult to utilize the computational storage services for the file handling due to the increased protection issues. Here Distributed Denial of Service (DDoS) attacks are the most commonly found attack which will prevent from cloud service utilization. Thus it is confirmed that the DDoS attack detection and load balancing in cloud are most extreme issues which needs to be concerned more for the improved performance. This attained in this research work by measuring up the trust factors of virtual machines in order to predict the most trustable VMs which will be combined together to form the trustable source vector. After trust evaluation, in this work Bat algorithm is utilized for the optimal load distribution which will predict the optimal VM resource for the task allocation with the concern of budget. This method is most useful in the process of detecting the DDoS attacks happening on the VM resources. Finally prevention of DDOS attacks are performed by introducing the Fuzzy Extreme Learning Machine Classifier which will learn the cloud resource setup details based on which DDoS attack detection can be prevented. The overall performance of the suggested study design is performed in a Java simulation model to demonstrate the superiority of the proposed algorithm over the current research method.
Hashim, Noor Hassanin, Sadkhan, Sattar B..  2022.  DDOS Attack Detection in Wireless Network Based On MDR. 2022 3rd Information Technology To Enhance e-learning and Other Application (IT-ELA). :1–5.
Intrusion detection systems (IDS) are most efficient way of defending against network-based attacks aimed at system devices, especially wireless devices. These systems are used in almost all large-scale IT infrastructures components, and they effected with different types of network attacks such as DDoS attack. Distributed Denial of-Services (DDoS) attacks the protocols and systems that are intended to provide services (to the public) are inherently vulnerable to attacks like DDoS, which were launched against a number of important Internet sites where security precautions were in place.
Li, Mengxue, Zhang, Binxin, Wang, Guangchang, ZhuGe, Bin, Jiang, Xian, Dong, Ligang.  2022.  A DDoS attack detection method based on deep learning two-level model CNN-LSTM in SDN network. 2022 International Conference on Cloud Computing, Big Data Applications and Software Engineering (CBASE). :282–287.
This paper mainly explores the detection and defense of DDoS attacks in the SDN architecture of the 5G environment, and proposes a DDoS attack detection method based on the deep learning two-level model CNN-LSTM in the SDN network. Not only can it greatly improve the accuracy of attack detection, but it can also reduce the time for classifying and detecting network traffic, so that the transmission of DDoS attack traffic can be blocked in time to ensure the availability of network services.
Kumar, Anmol, Somani, Gaurav.  2022.  DDoS attack mitigation in cloud targets using scale-inside out assisted container separation. IEEE INFOCOM 2022 - IEEE Conference on Computer Communications Workshops (INFOCOM WKSHPS). :1–6.
From the past few years, DDoS attack incidents are continuously rising across the world. DDoS attackers have also shifted their target towards cloud environments as majority of services have shifted their operations to cloud. Various authors proposed distinct solutions to minimize the DDoS attacks effects on victim services and co-located services in cloud environments. In this work, we propose an approach by utilizing incoming request separation at the container-level. In addition, we advocate to employ scale-inside out [10] approach for all the suspicious requests. In this manner, we achieve the request serving of all the authenticated benign requests even in the presence of an attack. We also improve the usages of scale-inside out approach by applying it to a container which is serving the suspicious requests in a separate container. The results of our proposed technique show a significant decrease in the response time of benign users during the DDoS attack as compared with existing solutions.