Biblio

Found 3679 results

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2018-06-04
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).
2018-05-28
2018-06-04
Jansuwan, Sarawut, Ryu, Seungkyu, Freckleton, Derek, Chen, Anthony, Heaslip, Kevin.  Submitted.  An evaluation framework of an automated electric transportation system. Proceeding of the 92th Annual Meeting of the Transportation Research Board. 40
2018-05-27
2018-05-15
2017-04-11
Christopher Theisen, Brendan Murphy, Kim Herzig, Laurie Williams.  Submitted.  Risk-Based Attack Surface Approximation: How Much Data is Enough? International Conference on Software Engineering (ICSE) Software Engineering in Practice (SEIP) 2017.

Proactive security reviews and test efforts are a necessary component of the software development lifecycle. Resource limitations often preclude reviewing the entire code
base. Making informed decisions on what code to review can improve a team’s ability to find and remove vulnerabilities. Risk-based attack surface approximation (RASA) is a technique that uses crash dump stack traces to predict what code may contain exploitable vulnerabilities. The goal of this research is to help software development teams prioritize security efforts by the efficient development of a risk-based attack surface approximation. We explore the use of RASA using Mozilla Firefox and Microsoft Windows stack traces from crash dumps. We create RASA at the file level for Firefox, in which the 15.8% of the files that were part of the approximation contained 73.6% of the vulnerabilities seen for the product. We also explore the effect of random sampling of crashes on the approximation, as it may be impractical for organizations to store and process every crash received. We find that 10-fold random sampling of crashes at a rate of 10% resulted in 3% less vulnerabilities identified than using the entire set of stack traces for Mozilla Firefox. Sampling crashes in Windows 8.1 at a rate of 40% resulted in insignificant differences in vulnerability and file coverage as compared to a rate of 100%.

2018-05-14
2015-07-01
2023-03-17
Cherneva, Vanya, Trahan, Jerry L..  2022.  2P-mtOTP: A Secure, Two-Party, Ownership Transfer Protocol for Multiple RFID Tags based on Quadratic Residues. 2022 IEEE International Conference on RFID (RFID). :29–34.
Radio Frequency Identification (RFID) improves the efficiency of managing assets in supply chain applications throughout an entire life cycle or while in transport. Transfer of ownership of RFID-tagged items involves replacing information authorizing the old owner with information authorizing the new owner. In this work, we present a two-party, multiple tag, single-owner protocol for ownership transfer: 2P-mtOTP. This two-party protocol depends only on the communication among the two owners and the tags. Further, 2P-mtOTP is robust to attacks on its security, and it preserves the privacy of the owners and tags. We analyze our work in comparison to recent ownership transfer protocols in terms of security, privacy, and efficiency.
ISSN: 2573-7635
2023-08-24
Peng, Haoran, Chen, Pei-Chen, Chen, Pin-Hua, Yang, Yung-Shun, Hsia, Ching-Chieh, Wang, Li-Chun.  2022.  6G toward Metaverse: Technologies, Applications, and Challenges. 2022 IEEE VTS Asia Pacific Wireless Communications Symposium (APWCS). :6–10.
Metaverse opens up a new social networking paradigm where people can experience a real interactive feeling without physical space constraints. Social interactions are gradually evolving from text combined with pictures and videos to 3-dimensional virtual reality, making the social experience increasingly physical, implying that more metaverse applications with immersive experiences will be developed in the future. However, the increasing data dimensionality and volume for new metaverse applications present a significant challenge in data acquisition, security, and sharing. Furthermore, metaverse applications require high capacity and ultrareliability for the wireless system to guarantee the quality of user experience, which cannot be addressed in the current fifth-generation system. Therefore, reaching the metaverse is dependent on the revolution in the sixth-generation (6G) wireless communication, which is expected to provide low-latency, high-throughput, and secure services. This article provides a comprehensive view of metaverse applications and investigates the fundamental technologies for the 6G toward metaverse.
2023-06-29
Campbell, Donal, Rafferty, Ciara, Khalid, Ayesha, O'Neill, Maire.  2022.  Acceleration of Post Quantum Digital Signature Scheme CRYSTALS-Dilithium on Reconfigurable Hardware. 2022 32nd International Conference on Field-Programmable Logic and Applications (FPL). :462–463.
This research investigates efficient architectures for the implementation of the CRYSTALS-Dilithium post-quantum digital signature scheme on reconfigurable hardware, in terms of speed, memory usage, power consumption and resource utilisation. Post quantum digital signature schemes involve a significant computational effort, making efficient hardware accelerators an important contributor to future adoption of schemes. This is work in progress, comprising the establishment of a comprehensive test environment for operational profiling, and the investigation of the use of novel architectures to achieve optimal performance.
ISSN: 1946-1488
2023-07-21
Cai, Chuanjie, Zhang, Yijun, Chen, Qian.  2022.  Adaptive control of bilateral teleoperation systems with false data injection attacks and attacks detection. 2022 41st Chinese Control Conference (CCC). :4407—4412.
This paper studies adaptive control of bilateral teleoperation systems with false data injection attacks. The model of bilateral teleoperation system with false data injection attacks is presented. An off-line identification approach based on the least squares is used to detect whether false data injection attacks occur or not in the communication channel. Two Bernoulli distributed variables are introduced to describe the packet dropouts and false data injection attacks in the network. An adaptive controller is proposed to deal stability of the system with false data injection attacks. Some sufficient conditions are proposed to ensure the globally asymptotical stability of the system under false data injection attacks by using Lyapunov functional methods. A bilateral teleoperation system with two degrees of freedom is used to show the effectiveness of gained results.
2023-01-06
Chandrashekhar, RV, Visumathi, J, Anandaraj, A. PeterSoosai.  2022.  Advanced Lightweight Encryption Algorithm for Android (IoT) Devices. 2022 International Conference on Advances in Computing, Communication and Applied Informatics (ACCAI). :1—5.
Security and Controls with Data privacy in Internet of Things (IoT) devices is not only a present and future technology that is projected to connect a multitude of devices, but it is also a critical survival factor for IoT to thrive. As the quantity of communications increases, massive amounts of data are expected to be generated, posing a threat to both physical device and data security. In the Internet of Things architecture, small and low-powered devices are widespread. Due to their complexity, traditional encryption methods and algorithms are computationally expensive, requiring numerous rounds to encrypt and decode, squandering the limited energy available on devices. A simpler cryptographic method, on the other hand, may compromise the intended confidentiality and integrity. This study examines two lightweight encryption algorithms for Android devices: AES and RSA. On the other hand, the traditional AES approach generates preset encryption keys that the sender and receiver share. As a result, the key may be obtained quickly. In this paper, we present an improved AES approach for generating dynamic keys.
2023-02-17
Kaura, Cheerag, Sindhwani, Nidhi, Chaudhary, Alka.  2022.  Analysing the Impact of Cyber-Threat to ICS and SCADA Systems. 2022 International Mobile and Embedded Technology Conference (MECON). :466–470.
The aim of this paper is to examine noteworthy cyberattacks that have taken place against ICS and SCADA systems and to analyse them. This paper also proposes a new classification scheme based on the severity of the attack. Since the information revolution, computers and associated technologies have impacted almost all aspects of daily life, and this is especially true of the industrial sector where one of the leading trends is that of automation. This widespread proliferation of computers and computer networks has also made it easier for malicious actors to gain access to these systems and networks and carry out harmful activities.
2023-06-30
Bhuyan, Hemanta Kumar, Arun Sai, T., Charan, M., Vignesh Chowdary, K., Brahma, Biswajit.  2022.  Analysis of classification based predicted disease using machine learning and medical things model. 2022 Second International Conference on Advances in Electrical, Computing, Communication and Sustainable Technologies (ICAECT). :1–6.
{Health diseases have been issued seriously harmful in human life due to different dehydrated food and disturbance of working environment in the organization. Precise prediction and diagnosis of disease become a more serious and challenging task for primary deterrence, recognition, and treatment. Thus, based on the above challenges, we proposed the Medical Things (MT) and machine learning models to solve the healthcare problems with appropriate services in disease supervising, forecast, and diagnosis. We developed a prediction framework with machine learning approaches to get different categories of classification for predicted disease. The framework is designed by the fuzzy model with a decision tree to lessen the data complexity. We considered heart disease for experiments and experimental evaluation determined the prediction for categories of classification. The number of decision trees (M) with samples (MS), leaf node (ML), and learning rate (I) is determined as MS=20
2023-06-09
L, Gururaj H, C, Soundarya B, V, Janhavi, H, Lakshmi, MJ, Prassan Kumar.  2022.  Analysis of Cyber Security Attacks using Kali Linux. 2022 IEEE International Conference on Distributed Computing and Electrical Circuits and Electronics (ICDCECE). :1—6.
In the prevailing situation, the sports like economic, industrial, cultural, social, and governmental activities are carried out in the online world. Today's international is particularly dependent on the wireless era and protective these statistics from cyber-assaults is a hard hassle. The reason for cyber-assaults is to damage thieve the credentials. In a few other cases, cyber-attacks ought to have a navy or political functions. The damages are PC viruses, facts break, DDS, and exceptional attack vectors. To this surrender, various companies use diverse answers to prevent harm because of cyberattacks. Cyber safety follows actual-time data at the modern-day-day IT data. So, far, numerous techniques have proposed with the resource of researchers around the area to prevent cyber-attacks or lessen the harm due to them. The cause of this has a look at is to survey and comprehensively evaluate the usual advances supplied around cyber safety and to analyse the traumatic situations, weaknesses, and strengths of the proposed techniques. Different sorts of attacks are taken into consideration in element. In addition, evaluation of various cyber-attacks had been finished through the platform called Kali Linux. It is predicted that the complete assessment has a have a study furnished for college students, teachers, IT, and cyber safety researchers might be beneficial.
2023-09-08
Shi, Kun, Chen, Songsong, Li, Dezhi, Tian, Ke, Feng, Meiling.  2022.  Analysis of the Optimized KNN Algorithm for the Data Security of DR Service. 2022 IEEE 6th Conference on Energy Internet and Energy System Integration (EI2). :1634–1637.
The data of large-scale distributed demand-side iot devices are gradually migrated to the cloud. This cloud deployment mode makes it convenient for IoT devices to participate in the interaction between supply and demand, and at the same time exposes various vulnerabilities of IoT devices to the Internet, which can be easily accessed and manipulated by hackers to launch large-scale DDoS attacks. As an easy-to-understand supervised learning classification algorithm, KNN can obtain more accurate classification results without too many adjustment parameters, and has achieved many research achievements in the field of DDoS detection. However, in the face of high-dimensional data, this method has high operation cost, high cost and not practical. Aiming at this disadvantage, this chapter explores the potential of classical KNN algorithm in data storage structure, K-nearest neighbor search and hyperparameter optimization, and proposes an improved KNN algorithm for DDoS attack detection of demand-side IoT devices.
2023-06-30
Wu, Zhiyong, Cao, Yanhua.  2022.  Analysis of “Tripartite and Bilateral” Space Deterrence Based on Signaling Game. 2022 IEEE 6th Information Technology and Mechatronics Engineering Conference (ITOEC). 6:2100–2104.
A “tripartite and bilateral” dynamic game model was constructed to study the impact of space deterrence on the challenger's military strategy in a military conflict. Based on the signal game theory, the payment matrices and optimal strategies of the sheltering side and challenging side were analyzed. In a theoretical framework, the indicators of the effectiveness of the challenger's response to space deterrence and the influencing factors of the sheltering's space deterrence were examined. The feasibility and effective means for the challenger to respond to the space deterrent in a “tripartite and bilateral” military conflict were concluded.
ISSN: 2693-289X
2023-06-09
Choucri, Nazli, Agarwal, Gaurav.  2022.  Analytics for Cybersecurity Policy of Cyber-Physical Systems. 2022 IEEE International Symposium on Technologies for Homeland Security (HST). :1—7.
Guidelines, directives, and policy statements are usually presented in “linear” text form - word after word, page after page. However necessary, this practice impedes full understanding, obscures feedback dynamics, hides mutual dependencies and cascading effects and the like-even when augmented with tables and diagrams. The net result is often a checklist response as an end in itself. All this creates barriers to intended realization of guidelines and undermines potential effectiveness. We present a solution strategy using text as “data”, transforming text into a structured model, and generate network views of the text(s), that we then can use for vulnerability mapping, risk assessments and note control point analysis. For proof of concept we draw on NIST conceptual model and analysis of guidelines for smart grid cybersecurity, more than 600 pages of text.
2023-06-22
Das, Soumyajit, Dayam, Zeeshaan, Chatterjee, Pinaki Sankar.  2022.  Application of Random Forest Classifier for Prevention and Detection of Distributed Denial of Service Attacks. 2022 OITS International Conference on Information Technology (OCIT). :380–384.
A classification issue in machine learning is the issue of spotting Distributed Denial of Service (DDos) attacks. A Denial of Service (DoS) assault is essentially a deliberate attack launched from a single source with the implied intent of rendering the target's application unavailable. Attackers typically aims to consume all available network bandwidth in order to accomplish this, which inhibits authorized users from accessing system resources and denies them access. DDoS assaults, in contrast to DoS attacks, include several sources being used by the attacker to launch an attack. At the network, transportation, presentation, and application layers of a 7-layer OSI architecture, DDoS attacks are most frequently observed. With the help of the most well-known standard dataset and multiple regression analysis, we have created a machine learning model in this work that can predict DDoS and bot assaults based on traffic.
2023-05-19
Chen, Yuhang, Long, Yue, Li, Tieshan.  2022.  Attacks Detection and Security Control Against False Data Injection Attacks Based on Interval Type-2 Fuzzy System. IECON 2022 – 48th Annual Conference of the IEEE Industrial Electronics Society. :1—6.
This paper is concered with the nonlinear cyber physical system (CPS) with uncertain parameters under false data injection (FDI) attacks. The interval type-2 (IT2) fuzzy model is utilized to approximate the nonlinear system, then the nonlinear system can be represented as a convex combination of linear systems. To detect the FDI attacks, a novel robust fuzzy extended state observer with H∞ preformance is proposed, where the fuzzy rules are utilized to the observer to estimate the FDI attacks. Utilizing the observation of the FDI attacks, a security control scheme is proposed in this paper, in which a compensator is designed to offset the FDI attacks. Simulation examples are given to illustrate the effecitveness of the proposed security scheme.
G, Amritha, Kh, Vishakh, C, Jishnu Shankar V, Nair, Manjula G.  2022.  Autoencoder Based FDI Attack Detection Scheme For Smart Grid Stability. 2022 IEEE 19th India Council International Conference (INDICON). :1—5.
One of the major concerns in the real-time monitoring systems in a smart grid is the Cyber security threat. The false data injection attack is emerging as a major form of attack in Cyber-Physical Systems (CPS). A False data Injection Attack (FDIA) can lead to severe issues like insufficient generation, physical damage to the grid, power flow imbalance as well as economical loss. The recent advancements in machine learning algorithms have helped solve the drawbacks of using classical detection techniques for such attacks. In this article, we propose to use Autoencoders (AE’s) as a novel Machine Learning approach to detect FDI attacks without any major modifications. The performance of the method is validated through the analysis of the simulation results. The algorithm achieves optimal accuracy owing to the unsupervised nature of the algorithm.
2023-03-17
Chakraborty, Partha Sarathi, Kumar, Puspesh, Chandrawanshi, Mangesh Shivaji, Tripathy, Somanath.  2022.  BASDB: Blockchain assisted Secure Outsourced Database Search. 2022 IEEE International Conference on Blockchain and Distributed Systems Security (ICBDS). :1–6.
The outsourcing of databases is very popular among IT companies and industries. It acts as a solution for businesses to ensure availability of the data for their users. The solution of outsourcing the database is to encrypt the data in a form where the database service provider can perform relational operations over the encrypted database. At the same time, the associated security risk of data leakage prevents many potential industries from deploying it. In this paper, we present a secure outsourcing database search scheme (BASDB) with the use of a smart contract for search operation over index of encrypted database and storing encrypted relational database in the cloud. Our proposed scheme BASDB is a simple and practical solution for effective search on encrypted relations and is well resistant to information leakage against attacks like search and access pattern leakage.