Biblio

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2023-05-12
Hallajiyan, Mohammadreza, Doustmohammadi, Ali.  2022.  Min-Max-Based Resilient Consensus of Networked Control Systems. 2022 8th International Conference on Control, Instrumentation and Automation (ICCIA). :1–5.
In this paper, we deal with the resilient consensus problem in networked control systems in which a group of agents are interacting with each other. A min-max-based resilient consensus algorithm has been proposed to help normal agents reach an agreement upon their state values in the presence of misbehaving ones. It is shown that the use of the developed algorithm will result in less computational load and fast convergence. Both synchronous and asynchronous update schemes for the network have been studied. Finally, the effectiveness of the proposed algorithm has been evaluated through numerical examples.
2023-06-09
Sundararajan, Vijay, Ghodousi, Arman, Dietz, J. Eric.  2022.  The Most Common Control Deficiencies in CMMC non-compliant DoD contractors. 2022 IEEE International Symposium on Technologies for Homeland Security (HST). :1—7.
As cyber threats become highly damaging and complex, a new cybersecurity compliance certification model has been developed by the Department of Defense (DoD) to secure its Defense Industrial Base (DIB), and communication with its private partners. These partners or contractors are obligated by the Defense Federal Acquisition Regulations (DFARS) to be compliant with the latest standards in computer and data security. The Cybersecurity Maturity Model Certification (CMMC), and it is built upon existing DFARS 252.204-7012 and the NIST SP 800–171 controls. As of 2020, the DoD has incorporated DFARS and the National Institute of Standards and Technology (NIST) recommended security practices into what is now the CMMC. This paper presents the most commonly identified Security-Control-Deficiencies (SCD) faced, the attacks mitigated by addressing these SCD, and remediations applied to 127 DoD contractors in order to bring them into compliance with the CMMC guidelines. An analysis is done on what vulnerabilities are most prominent in the companies, and remediations applied to ensure these vulnerabilities are better avoided and the DoD supply-chain is more secure from attacks.
2023-02-24
Ding, Haihao, Zhao, Qingsong.  2022.  Multilayer Network Modeling and Stability Analysis of Internet of Battlefield Things. 2022 IEEE International Systems Conference (SysCon). :1—6.
Intelligent service network under the paradigm of the Internet of Things (IoT) uses sensor and network communication technology to realize the interconnection of everything and real-time communication between devices. Under the background of combat, all kinds of sensor devices and equipment units need to be highly networked to realize interconnection and information sharing, which makes the Internet of Things technology hopeful to be applied in the battlefield to interconnect these entities to form the Internet of Battlefield Things (IoBT). This paper analyzes the related concepts of IoBT, and constructs the IoBT multilayer dependency network model according to the typical characteristics and topology of IoBT, then constructs the weighted super-adjacency matrix according to the coupling weights within and between different layers, and the stability model of IoBT is analyzed and derived. Finally, an example of IoBT network is given to provide a reference for analyzing the stability factors of IoBT network.
2023-01-20
Liu, Dong, Zhu, Yingwei, Du, Haoliang, Ruan, Lixiang.  2022.  Multi-level security defense method of smart substation based on data aggregation and convolution neural network. 2022 7th Asia Conference on Power and Electrical Engineering (ACPEE). :1987–1991.
Aiming at the prevention of information security risk in protection and control of smart substation, a multi-level security defense method of substation based on data aggregation and convolution neural network (CNN) is proposed. Firstly, the intelligent electronic device(IED) uses "digital certificate + digital signature" for the first level of identity authentication, and uses UKey identification code for the second level of physical identity authentication; Secondly, the device group of the monitoring layer judges whether the data report is tampered during transmission according to the registration stage and its own ID information, and the device group aggregates the data using the credential information; Finally, the convolution decomposition technology and depth separable technology are combined, and the time factor is introduced to control the degree of data fusion and the number of input channels of the network, so that the network model can learn the original data and fused data at the same time. Simulation results show that the proposed method can effectively save communication overhead, ensure the reliable transmission of messages under normal and abnormal operation, and effectively improve the security defense ability of smart substation.
2023-06-23
Özdel, Süleyman, Damla Ateş, Pelin, Ateş, Çağatay, Koca, Mutlu, Anarım, Emin.  2022.  Network Anomaly Detection with Payload-based Analysis. 2022 30th Signal Processing and Communications Applications Conference (SIU). :1–4.
Network attacks become more complicated with the improvement of technology. Traditional statistical methods may be insufficient in detecting constantly evolving network attack. For this reason, the usage of payload-based deep packet inspection methods is very significant in detecting attack flows before they damage the system. In the proposed method, features are extracted from the byte distributions in the payload and these features are provided to characterize the flows more deeply by using N-Gram analysis methods. The proposed procedure has been tested on IDS 2012 and 2017 datasets, which are widely used in the literature.
ISSN: 2165-0608
2023-05-19
Harris, Kyle, Henry, Wayne, Dill, Richard.  2022.  A Network-based IoT Covert Channel. 2022 4th International Conference on Computer Communication and the Internet (ICCCI). :91—99.
Information leaks are a top concern to industry and government leaders. The Internet of Things (IoT) is a rapidly growing technology capable of sensing real-world events. IoT devices lack a common security standard and typically use lightweight security solutions, exposing the sensitive real-world data they gather. Covert channels are a practical method of exfiltrating data from these devices.This research presents a novel IoT covert timing channel (CTC) that encodes data within preexisting network information, namely ports or addresses. This method eliminates the need for inter-packet delays (IPD) to encode data. Seven different encoding methods are implemented between two IoT protocols, TCP/IP and ZigBee. The TCP/IP covert channel is created by mimicking a Ring smart doorbell and implemented using Amazon Web Services (AWS) servers to generate traffic. The ZigBee channel is built by copying a Philips Hue lighting system and executed on an isolated local area network (LAN). Variants of the CTC focus either on Stealth or Bandwidth. Stealth methods mimic legitimate traffic captures to make them difficult to detect while the Bandwidth methods forgo this approach for maximum throughput. Detection results are presented using shape-based and regularity-based detection tests.The Stealth results have a throughput of 4.61 bits per second (bps) for TCP/IP and 3.90 bps for ZigBee. They also evade shape and regularity-based detection tests. The Bandwidth methods average 81.7 Kbps for TCP/IP and 9.76 bps for ZigBee but are evident in detection tests. The results show that CTC using address or port encoding can have superior throughput or detectability compared to IPD-based CTCs.
2023-08-24
Zhang, Deng, Zhao, Jiang, Ding, Dingding, Gao, Hanjun.  2022.  Networked Control System Information Security Platform. 2022 IEEE Asia-Pacific Conference on Image Processing, Electronics and Computers (IPEC). :738–742.
With the development of industrial informatization, information security in the power production industry is becoming more and more important. In the power production industry, as the critical information egress of the industrial control system, the information security of the Networked Control System is particularly important. This paper proposes a construction method for an information security platform of Networked Control System, which is used for research, testing and training of Networked Control System information security.
2023-03-31
Zhang, Junjian, Tan, Hao, Deng, Binyue, Hu, Jiacen, Zhu, Dong, Huang, Linyi, Gu, Zhaoquan.  2022.  NMI-FGSM-Tri: An Efficient and Targeted Method for Generating Adversarial Examples for Speaker Recognition. 2022 7th IEEE International Conference on Data Science in Cyberspace (DSC). :167–174.
Most existing deep neural networks (DNNs) are inexplicable and fragile, which can be easily deceived by carefully designed adversarial example with tiny undetectable noise. This allows attackers to cause serious consequences in many DNN-assisted scenarios without human perception. In the field of speaker recognition, the attack for speaker recognition system has been relatively mature. Most works focus on white-box attacks that assume the information of the DNN is obtainable, and only a few works study gray-box attacks. In this paper, we study blackbox attacks on the speaker recognition system, which can be applied in the real world since we do not need to know the system information. By combining the idea of transferable attack and query attack, our proposed method NMI-FGSM-Tri can achieve the targeted goal by misleading the system to recognize any audio as a registered person. Specifically, our method combines the Nesterov accelerated gradient (NAG), the ensemble attack and the restart trigger to design an attack method that generates the adversarial audios with good performance to attack blackbox DNNs. The experimental results show that the effect of the proposed method is superior to the extant methods, and the attack success rate can reach as high as 94.8% even if only one query is allowed.
2023-08-11
Zhu, Haiting, Wan, Junmei, Li, Nan, Deng, Yingying, He, Gaofeng, Guo, Jing, Zhang, Lu.  2022.  Odd-Even Hash Algorithm: A Improvement of Cuckoo Hash Algorithm. 2021 Ninth International Conference on Advanced Cloud and Big Data (CBD). :1—6.
Hash-based data structures and algorithms are currently flourishing on the Internet. It is an effective way to store large amounts of information, especially for applications related to measurement, monitoring and security. At present, there are many hash table algorithms such as: Cuckoo Hash, Peacock Hash, Double Hash, Link Hash and D-left Hash algorithm. However, there are still some problems in these hash table algorithms, such as excessive memory space, long insertion and query operations, and insertion failures caused by infinite loops that require rehashing. This paper improves the kick-out mechanism of the Cuckoo Hash algorithm, and proposes a new hash table structure- Odd-Even Hash (OE Hash) algorithm. The experimental results show that OE Hash algorithm is more efficient than the existing Link Hash algorithm, Linear Hash algorithm, Cuckoo Hash algorithm, etc. OE Hash algorithm takes into account the performance of both query time and insertion time while occupying the least space, and there is no insertion failure that leads to rehashing, which is suitable for massive data storage.
2023-04-14
Domukhovskii, Nikolai.  2022.  Optimal Attack Chain Building Algorithm. 2022 Ural-Siberian Conference on Biomedical Engineering, Radioelectronics and Information Technology (USBEREIT). :317–319.
Traditional risk assessment process based on knowledge of threat occurrence probability against every system’s asset. One should consider asset placement, applied security measures on asset and network levels, adversary capabilities and so on: all of that has significant influence on probability value. We can measure threat probability by modelling complex attack process. Such process requires creating an attack tree, which consist of elementary attacks against different assets and relations between elementary attacks and impact on influenced assets. However, different attack path may lead to targeted impact – so task of finding optimal attack chain on a given system topology emerges. In this paper method for complex attack graph creation presented, allowing automatic building various attack scenarios for a given system. Assuming that exploits of particular vulnerabilities represent by independent events, we can compute the overall success probability of a complex attack as the product of the success probabilities of exploiting individual vulnerabilities. This assumption makes it possible to use algorithms for finding the shortest paths on a directed graph to find the optimal chain of attacks for a given adversary’s target.
2023-05-12
Germanà, Roberto, Giuseppi, Alessandro, Pietrabissa, Antonio, Di Giorgio, Alessandro.  2022.  Optimal Energy Storage System Placement for Robust Stabilization of Power Systems Against Dynamic Load Altering Attacks. 2022 30th Mediterranean Conference on Control and Automation (MED). :821–828.
This paper presents a study on the "Dynamic Load Altering Attacks" (D-LAAs), their effects on the dynamics of a transmission network, and provides a robust control protection scheme, based on polytopic uncertainties, invariance theory, Lyapunov arguments and graph theory. The proposed algorithm returns an optimal Energy Storage Systems (ESSs) placement, that minimizes the number of ESSs placed in the network, together with the associated control law that can robustly stabilize against D-LAAs. The paper provides a contextualization of the problem and a modelling approach for power networks subject to D-LAAs, suitable for the designed robust control protection scheme. The paper also proposes a reference scenario for the study of the dynamics of the control actions and their effects in different cases. The approach is evaluated by numerical simulations on large networks.
ISSN: 2473-3504
2023-08-03
Duan, Xiaowei, Han, Yiliang, Wang, Chao, Ni, Huanhuan.  2022.  Optimization of Encrypted Communication Model Based on Generative Adversarial Network. 2022 International Conference on Blockchain Technology and Information Security (ICBCTIS). :20–24.
With the progress of cryptography computer science, designing cryptographic algorithms using deep learning is a very innovative research direction. Google Brain designed a communication model using generation adversarial network and explored the encrypted communication algorithm based on machine learning. However, the encrypted communication model it designed lacks quantitative evaluation. When some plaintexts and keys are leaked at the same time, the security of communication cannot be guaranteed. This model is optimized to enhance the security by adjusting the optimizer, modifying the activation function, and increasing batch normalization to improve communication speed of optimization. Experiments were performed on 16 bits and 64 bits plaintexts communication. With plaintext and key leak rate of 0.75, the decryption error rate of the decryptor is 0.01 and the attacker can't guess any valid information about the communication.
2023-02-17
Zehnder, E., Dinet, J., Charpillet, F..  2022.  Perception of physical and virtual agents: exploration of factors influencing the acceptance of intrusive domestic agents. 2022 31st IEEE International Conference on Robot and Human Interactive Communication (RO-MAN). :1050–1057.
Domestic robots and agents are widely sold to the grand public, leading us to ethical issues related to the data harvested by such machines. While users show a general acceptance of these robots, concerns remain when it comes to information security and privacy. Current research indicates that there’s a privacy-security trade-off for better use, but the anthropomorphic and social abilities of a robot are also known to modulate its acceptance and use. To explore and deepen what literature already brought on the subject we examined how users perceived their robot (Replika, Roomba©, Amazon Echo©, Google Home©, or Cozmo©/Vector©) through an online questionnaire exploring acceptance, perceived privacy and security, anthropomorphism, disclosure, perceived intimacy, and loneliness. The results supported the literature regarding the potential manipulative effects of robot’s anthropomorphism for acceptance but also information disclosure, perceived intimacy, security, and privacy.
ISSN: 1944-9437
2023-02-03
Muliono, Yohan, Darus, Mohamad Yusof, Pardomuan, Chrisando Ryan, Ariffin, Muhammad Azizi Mohd, Kurniawan, Aditya.  2022.  Predicting Confidentiality, Integrity, and Availability from SQL Injection Payload. 2022 International Conference on Information Management and Technology (ICIMTech). :600–605.
SQL Injection has been around as a harmful and prolific threat on web applications for more than 20 years, yet it still poses a huge threat to the World Wide Web. Rapidly evolving web technology has not eradicated this threat; In 2017 51 % of web application attacks are SQL injection attacks. Most conventional practices to prevent SQL injection attacks revolves around secure web and database programming and administration techniques. Despite developer ignorance, a large number of online applications remain susceptible to SQL injection attacks. There is a need for a more effective method to detect and prevent SQL Injection attacks. In this research, we offer a unique machine learning-based strategy for identifying potential SQL injection attack (SQL injection attack) threats. Application of the proposed method in a Security Information and Event Management(SIEM) system will be discussed. SIEM can aggregate and normalize event information from multiple sources, and detect malicious events from analysis of these information. The result of this work shows that a machine learning based SQL injection attack detector which uses SIEM approach possess high accuracy in detecting malicious SQL queries.
2023-02-17
Biström, Dennis, Westerlund, Magnus, Duncan, Bob, Jaatun, Martin Gilje.  2022.  Privacy and security challenges for autonomous agents : A study of two social humanoid service robots. 2022 IEEE International Conference on Cloud Computing Technology and Science (CloudCom). :230–237.
The development of autonomous agents have gained renewed interest, largely due to the recent successes of machine learning. Social robots can be considered a special class of autonomous agents that are often intended to be integrated into sensitive environments. We present experiences from our work with two specific humanoid social service robots, and highlight how eschewing privacy and security by design principles leads to implementations with serious privacy and security flaws. The paper introduces the robots as platforms and their associated features, ecosystems and cloud platforms that are required for certain use cases or tasks. The paper encourages design aims for privacy and security, and then in this light studies the implementation from two different manufacturers. The results show a worrisome lack of design focus in handling privacy and security. The paper aims not to cover all the security flaws and possible mitigations, but does look closer into the use of the WebSocket protocol and it’s challenges when used for operational control. The conclusions of the paper provide insights on how manufacturers can rectify the discovered security flaws and presents key policies like accountability when it comes to implementing technical features of autonomous agents.
ISSN: 2330-2186
2023-08-03
Colombier, Brice, Drăgoi, Vlad-Florin, Cayrel, Pierre-Louis, Grosso, Vincent.  2022.  Profiled Side-Channel Attack on Cryptosystems Based on the Binary Syndrome Decoding Problem. IEEE Transactions on Information Forensics and Security. 17:3407–3420.
The NIST standardization process for post-quantum cryptography has been drawing the attention of researchers to the submitted candidates. One direction of research consists in implementing those candidates on embedded systems and that exposes them to physical attacks in return. The Classic McEliece cryptosystem, which is among the four finalists of round 3 in the Key Encapsulation Mechanism category, builds its security on the hardness of the syndrome decoding problem, which is a classic hard problem in code-based cryptography. This cryptosystem was recently targeted by a laser fault injection attack leading to message recovery. Regrettably, the attack setting is very restrictive and it does not tolerate any error in the faulty syndrome. Moreover, it depends on the very strong attacker model of laser fault injection, and does not apply to optimised implementations of the algorithm that make optimal usage of the machine words capacity. In this article, we propose a to change the angle and perform a message-recovery attack that relies on side-channel information only. We improve on the previously published work in several key aspects. First, we show that side-channel information, obtained with power consumption analysis, is sufficient to obtain an integer syndrome, as required by the attack framework. This is done by leveraging classic machine learning techniques that recover the Hamming weight information very accurately. Second, we put forward a computationally-efficient method, based on a simple dot product and information-set decoding algorithms, to recover the message from the, possibly inaccurate, recovered integer syndrome. Finally, we present a masking countermeasure against the proposed attack.
Conference Name: IEEE Transactions on Information Forensics and Security
2023-03-17
Sendner, Christoph, Iffländer, Lukas, Schindler, Sebastian, Jobst, Michael, Dmitrienko, Alexandra, Kounev, Samuel.  2022.  Ransomware Detection in Databases through Dynamic Analysis of Query Sequences. 2022 IEEE Conference on Communications and Network Security (CNS). :326–334.
Ransomware is an emerging threat that imposed a \$ 5 billion loss in 2017, rose to \$ 20 billion in 2021, and is predicted to hit \$ 256 billion in 2031. While initially targeting PC (client) platforms, ransomware recently leaped over to server-side databases-starting in January 2017 with the MongoDB Apocalypse attack and continuing in 2020 with 85,000 MySQL instances ransomed. Previous research developed countermeasures against client-side ransomware. However, the problem of server-side database ransomware has received little attention so far. In our work, we aim to bridge this gap and present DIMAQS (Dynamic Identification of Malicious Query Sequences), a novel anti-ransomware solution for databases. DIMAQS performs runtime monitoring of incoming queries and pattern matching using two classification approaches (Colored Petri Nets (CPNs) and Deep Neural Networks (DNNs)) for attack detection. Our system design exhibits several novel techniques like dynamic color generation to efficiently detect malicious query sequences globally (i.e., without limiting detection to distinct user connections). Our proof-of-concept and ready-to-use implementation targets MySQL servers. The evaluation shows high efficiency without false negatives for both approaches and a false positive rate of nearly 0%. Both classifiers show very moderate performance overheads below 6%. We will publish our data sets and implementation, allowing the community to reproduce our tests and results.
Agarwal, Reshu, Chaudhary, Alka, Gupta, Deepa, Das, Devleen.  2022.  Ransomware Vulnerability used in darknet for web application attack. 2022 2nd International Conference on Emerging Frontiers in Electrical and Electronic Technologies (ICEFEET). :1–5.
Cyber security is turning into a significant angle in each industry like in banking part, force and computerization segments. Servers are basic resources in these enterprises where business basic touch information is put away. These servers frequently join web servers in them through which any business information and tasks are performed remotely. Thus, clearly for a solid activity, security of web servers is extremely basic. This paper gives another testing way to deal with defenselessness appraisal of web applications by methods for breaking down and utilizing a consolidated arrangement of apparatuses to address a wide scope of security issues.
2023-01-06
Dhiman, Bhavya, Bose S, Rubin.  2022.  A Reliable, Secure and Efficient Decentralised Conditional of KYC Verification System: A Blockchain Approach. 2022 International Conference on Edge Computing and Applications (ICECAA). :564—570.
KYC or Know Your Customer is the procedure to verify the individuality of its consumers & evaluating the possible dangers of illegitimate trade relations. A few problems with the existing KYC manual process are that it is less secure, time-consuming and expensive. With the advent of Blockchain technology, its structures such as consistency, security, and geographical diversity make them an ideal solution to such problems. Although marketing solutions such as KYC-chain.co, K-Y-C. The legal right to enable blockchain-based KYC authentication provides a way for documents to be verified by a trusted network participant. This project uses an ETHereum based Optimised KYC Block-chain system with uniform A-E-S encryption and compression built on the LZ method. The system publicly verifies a distributed encryption, is protected by cryptography, operates by pressing the algorithm and is all well-designed blockchain features. The suggested scheme is a novel explanation based on Distributed Ledger Technology or Blockchain technology that would cut KYC authentication process expenses of organisations & decrease the regular schedule for completion of the procedure whilst becoming easier for clients. The largest difference in the system in traditional methods is the full authentication procedure is performed in just no time for every client, regardless of the number of institutions you desire to be linked to. Furthermore, since DLT is employed, validation findings may be securely distributed to consumers, enhancing transparency. Based on this method, a Proof of Concept (POC) is produced with Ethereum's API, websites as endpoints and the android app as the front office, recognising the viability and efficacy of this technique. Ultimately, this strategy enhances consumer satisfaction, lowers budget overrun & promotes transparency in the customer transport network.
2023-01-05
Jiang, Xiping, Wang, Qian, Du, Mingming, Ding, Yilin, Hao, Jian, Li, Ying, Liu, Qingsong.  2022.  Research on GIS Isolating Switch Mechanical Fault Diagnosis based on Cross-Validation Parameter Optimization Support Vector Machine. 2022 IEEE International Conference on High Voltage Engineering and Applications (ICHVE). :1—4.
GIS equipment is an important component of power system, and mechanical failure often occurs in the process of equipment operation. In order to realize GIS equipment mechanical fault intelligent detection, this paper presents a mechanical fault diagnosis model for GIS equipment based on cross-validation parameter optimization support vector machine (CV-SVM). Firstly, vibration experiment of isolating switch was carried out based on true 110 kV GIS vibration simulation experiment platform. Vibration signals were sampled under three conditions: normal, plum finger angle change fault, plum finger abrasion fault. Then, the c and G parameters of SVM are optimized by cross validation method and grid search method. A CV-SVM model for mechanical fault diagnosis was established. Finally, training and verification are carried out by using the training set and test set models in different states. The results show that the optimization of cross-validation parameters can effectively improve the accuracy of SVM classification model. It can realize the accurate identification of GIS equipment mechanical fault. This method has higher diagnostic efficiency and performance stability than traditional machine learning. This study can provide reference for on-line monitoring and intelligent fault diagnosis analysis of GIS equipment mechanical vibration.
2023-05-12
Zhang, Chen, Wu, Zhouyang, Li, Xianghua, Liang, Jian, Jiang, Zhongyao, Luo, Ceheng, Wen, Fangjun, Wang, Guangda, Dai, Wei.  2022.  Resilience Assessment Method of Integrated Electricity and Gas System Based on Hetero-functional Graph Theory. 2022 2nd International Conference on Electrical Engineering and Control Science (IC2ECS). :34–39.
The resilience assessment of electric and gas networks gains importance due to increasing interdependencies caused by the coupling of gas-fired units. However, the gradually increasing scale of the integrated electricity and gas system (IEGS) poses a significant challenge to current assessment methods. The numerical analysis method is accurate but time-consuming, which may incur a significant computational cost in large-scale IEGS. Therefore, this paper proposes a resilience assessment method based on hetero-functional graph theory for IEGS to balance the accuracy with the computational complexity. In contrast to traditional graph theory, HFGT can effectively depict the coupled systems with inherent heterogeneity and can represent the structure of heterogeneous functional systems in a clear and unambiguous way. In addition, due to the advantages of modelling the system functionality, the effect of line-pack in the gas network on the system resilience is depicted more precisely in this paper. Simulation results on an IEGS with the IEEE 9-bus system and a 7-node gas system verify the effectiveness of the proposed method.
2023-05-19
Pan, Aiqiang, Fang, Xiaotao, Yan, Zheng, Dong, Zhen, Xu, Xiaoyuan, Wang, Han.  2022.  Risk-Based Power System Resilience Assessment Considering the Impacts of Hurricanes. 2022 IEEE/IAS Industrial and Commercial Power System Asia (I&CPS Asia). :1714—1718.
In this paper, a novel method is proposed to assess the power system resilience considering the impacts of hurricanes. Firstly, the transmission line outage model correlated to wind speed is developed. Then, Probability Load Flow (PLF) considering the random outage of lines and the variation of loads is designed, and Latin Hypercube Sampling (LHS) is used to improve the efficiency of Monte Carlo Simulation (MCS) in solving PLF. Moreover, risk indices, including line overloading, node voltage exceeding limit, load shedding and system collapse, are established to assess the resilience of power systems during hurricanes. The method is tested with a modified IEEE 14-bus system, and simulation results indicate the effectiveness of the proposed approach.
2023-03-17
Pham, Hong Thai, Nguyen, Khanh Nam, Phun, Vy Hoa, Dang, Tran Khanh.  2022.  Secure Recommender System based on Neural Collaborative Filtering and Federated Learning. 2022 International Conference on Advanced Computing and Analytics (ACOMPA). :1–11.
A recommender system aims to suggest the most relevant items to users based on their personal data. However, data privacy is a growing concern for anyone. Secure recommender system is a research direction to preserve user privacy while maintaining as high performance as possible. The most recent strategy is to use Federated Learning, a machine learning technique for privacy-preserving distributed training. In Federated Learning, a subset of users will be selected for training model using data at local systems, the server will securely aggregate the computing result from local models to generate a global model, finally that model will give recommendations to users. In this paper, we present a novel algorithm to train Collaborative Filtering recommender system specialized for the ranking task in Federated Learning setting, where the goal is to protect user interaction information (i.e., implicit feedback). Specifically, with the help of the algorithm, the recommender system will be trained by Neural Collaborative Filtering, one of the state-of-the-art matrix factorization methods and Bayesian Personalized Ranking, the most common pairwise approach. In contrast to existing approaches which protect user privacy by requiring users to download/upload the information associated with all interactions that they can possibly interact with in order to perform training, the algorithm can protect user privacy at low communication cost, where users only need to obtain/transfer the information related to a small number of interactions per training iteration. Above all, through extensive experiments, the algorithm has demonstrated to utilize user data more efficient than the most recent research called FedeRank, while ensuring that user privacy is still preserved.
2023-08-25
Deshmukh, Kshitij, Jain, Avani, Singh, Shubhangi, Bhattacharya, Pronaya, Prasad, Vivek, Zuhair, Mohd.  2022.  A Secured Dialog Protocol Scheme Over Content Centric Networks. 2022 3rd International Conference on Intelligent Engineering and Management (ICIEM). :95–101.
Internet architecture has transformed into a more complex form than it was about a decade back. Today the internet comprises multimedia information where services and web applications have started to shift their focus on content. In our perspective of communication systems, content-centric networking (CCN) proposes a new methodology. The use of cache memory at the network level is an important feature of this new architecture. This cache is intended to store transit details for a set period, and it is hoped that this capability will aid in network quality, especially in a rapidly increasing video streaming situation. Information-centric networking (ICN) is the one architecture that is seen as a possible alternative for shifting the Internet from a host-centric to a content-centric point-of-view. It focuses on data rather than content. CCN is more reliable when it comes to data delivery as it does not need to depend on location for data. CCN architecture is scalable, secure and provides mobility support. In this paper, we implement a ccnchat, a chat testing application, which is created with the help of libraries provided by Palo Alto Research Center (PARC) on local area network (LAN) between two users and demonstrate the working of this local chat application over CCN network that works alongside existing IP infrastructure.
2023-06-09
Hristozov, Anton, Matson, Eric, Dietz, Eric, Rogers, Marcus.  2022.  Sensor Data Protection in Cyber-Physical Systems. 2022 17th Conference on Computer Science and Intelligence Systems (FedCSIS). :855—859.
Cyber-Physical Systems (CPS) have a physical part that can interact with sensors and actuators. The data that is read from sensors and the one generated to drive actuators is crucial for the correct operation of this class of devices. Most implementations trust the data being read from sensors and the outputted data to actuators. Real-time validation of the input and output of data for any system is crucial for the safety of its operation. This paper proposes an architecture for handling this issue through smart data guards detached from sensors and controllers and acting solely on the data. This mitigates potential issues of malfunctioning sensors and intentional sensor and controller attacks. The data guards understand the expected data, can detect anomalies and can correct them in real-time. This approach adds more guarantees for fault-tolerant behavior in the presence of attacks and sensor failures.