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2023-07-13
Kumar, Aytha Ramesh, Sharmila, Yadavalli.  2022.  FPGA Implementation of High Performance Hybrid Encryption Standard. 2022 International Conference on Recent Trends in Microelectronics, Automation, Computing and Communications Systems (ICMACC). :103–107.
Now a day's data hacking is the main issue for cloud computing, protecting a data there are so many methods in that one most usable method is the data Encryption. Process of Encryption is the converting a data into an un readable form using encryption key, encoded version that can only be read with authorized access to the decryption key. This paper presenting a simple, energy and area efficient method for endurance issue in secure resistive main memories. In this method, by employing the random characteristics of the encrypted data encoded by the Advanced Encryption Standard (AES) as well as a rotational shift operation. Random Shifter is simple hardware implementation and energy efficient method. It is considerably smaller than that of other recently proposed methods. Random Shifter technique used for secure memory with other error correction methods. Due to their reprogram ability, Field Programmable Gate Arrays (FPGA) are a popular choice for the hardware implementation of cryptographic algorithms. The proposed random shifter algorithm for AES and DES (Hybrid) data is implemented in the VIRTEX FPGA and it is efficient and suitable for hardware-critical applications. This Paper is implemented using model sim and Xilinx 14.5 version.
2023-04-14
Kumar, Gaurav, Riaz, Anjum, Prasad, Yamuna, Ahlawat, Satyadev.  2022.  On Attacking IJTAG Architecture based on Locking SIB with Security LFSR. 2022 IEEE 28th International Symposium on On-Line Testing and Robust System Design (IOLTS). :1–6.
In recent decennium, hardware security has gained a lot of attention due to different types of attacks being launched, such as IP theft, reverse engineering, counterfeiting, etc. The critical testing infrastructure incorporated into ICs is very popular among attackers to mount side-channel attacks. The IEEE standard 1687 (IJTAG) is one such testing infrastructure that is the focus of attackers these days. To secure access to the IJTAG network, various techniques based on Locking SIB (LSIB) have been proposed. One such very effective technique makes use of Security Linear Feedback Shift Register (SLFSR) along with LSIB. The SLFSR obfuscates the scan chain information from the attacker and hence makes the brute-force attack against LSIB ineffective.In this work, it is shown that the SLFSR based Locking SIB is vulnerable to side-channel attacks. A power analysis attack along with known-plaintext attack is used to determine the IJTAG network structure. First, the known-plaintext attack is used to retrieve the SLFSR design information. This information is further used along with power analysis attack to determine the exact length of the scan chain which in turn breaks the whole security scheme. Further, a countermeasure is proposed to prevent the aforementioned hybrid attack.
ISSN: 1942-9401
2022-08-26
Kang, Dong Mug, Yoon, Sang Hun, Shin, Dae Kyo, Yoon, Young, Kim, Hyeon Min, Jang, Soo Hyun.  2021.  A Study on Attack Pattern Generation and Hybrid MR-IDS for In-Vehicle Network. 2021 International Conference on Artificial Intelligence in Information and Communication (ICAIIC). :291–294.
The CAN (Controller Area Network) bus, which transmits and receives ECU control information in vehicle, has a critical risk of external intrusion because there is no standardized security system. Recently, the need for IDS (Intrusion Detection System) to detect external intrusion of CAN bus is increasing, and high accuracy and real-time processing for intrusion detection are required. In this paper, we propose Hybrid MR (Machine learning and Ruleset) -IDS based on machine learning and ruleset to improve IDS performance. For high accuracy and detection rate, feature engineering was conducted based on the characteristics of the CAN bus, and the generated features were used in detection step. The proposed Hybrid MR-IDS can cope to various attack patterns that have not been learned in previous, as well as the learned attack patterns by using both advantages of rule set and machine learning. In addition, by collecting CAN data from an actual vehicle in driving and stop state, five attack scenarios including physical effects during all driving cycle are generated. Finally, the Hybrid MR-IDS proposed in this paper shows an average of 99% performance based on F1-score.
2022-07-29
Badran, Sultan, Arman, Nabil, Farajallah, Mousa.  2021.  An Efficient Approach for Secure Data Outsourcing using Hybrid Data Partitioning. 2021 International Conference on Information Technology (ICIT). :418—423.
This paper presents an implementation of a novel approach, utilizing hybrid data partitioning, to secure sensitive data and improve query performance. In this novel approach, vertical and horizontal data partitioning are combined together in an approach that called hybrid partitioning and the new approach is implemented using Microsoft SQL server to generate divided/partitioned relations. A group of proposed rules is applied to the query request process using query binning (QB) and Metadata of partitioning. The proposed approach is validated using experiments involving a collection of data evaluated by outcomes of advanced stored procedures. The suggested approach results are satisfactory in achieving the properties of defining the data security: non-linkability and indistinguishability. The results of the proposed approach were satisfactory. The proposed novel approach outperforms a well-known approach called PANDA.
2022-04-22
Deng, Weimin, Xu, Da, Xu, Yuhan, Li, Mengshi.  2021.  Detection and Classification of Power Quality Disturbances Using Variational Mode Decomposition and Convolutional Neural Networks. 2021 IEEE 11th Annual Computing and Communication Workshop and Conference (CCWC). :1514—1518.
Power quality gains more and more attentions because disturbances in power quality may damage equipment security, power availability and system reliability in power system. Detection and classification of the power quality disturbances is the first step before taking measures to lessen their harmful effects. Common methods to classify power quality disturbances includes signal processing methods, machine learning methods and deep learning methods. Signal processing methods are good at feature extraction, while machine learning methods and deep learning methods are expert in multi-classification tasks. Via combing their respective advantages, this paper proposes a combined method based on variational mode decomposition and convolutional neural networks, which needs a small quantity of samples but achieves high classification precision. The proposed method is proved to be a qualified and competitive scheme for the detection and classification of power quality disturbances.
2021-08-31
Patnala, Tulasi Radhika, Jayanthi, D., Majji, Sankararao, Valleti, Manohar, Kothapalli, Srilekha, Karanam, Santoshachandra Rao.  2020.  A Modernistic way for KEY Generation for Highly Secure Data Transfer in ASIC Design Flow. 2020 6th International Conference on Advanced Computing and Communication Systems (ICACCS). :892—897.
Present day's data security plays a vital role in digital human life. Data is a valuable asset to any organization and hence its security from external attacks is very important. Information security is not only an important aspect but essential, to secure data from unapproved access. Data encryption, decryption and key management are the key factors in data protection. It is very important to have the right data security solution to meet the challenging threats. Cryptosystem implementation and random number generators are crucial for Cryptosystem applications such as security applications, space applications, military applications and smart cards et al. In this paper, we present the implementation of hybrid cryptosystem based on the True Random number Generator, pseudo Random number Generator and whitening the data by using the ASIC design flow.
2018-05-09
Tsujii, Y., Kawakita, K. E., Kumagai, M., Kikuchi, A., Watanabe, M..  2017.  State Estimation Error Detection System for Online Dynamic Security Assessment. 2017 IEEE Power Energy Society Innovative Smart Grid Technologies Conference (ISGT). :1–5.

Online Dynamic Security Assessment (DSA) is a dynamical system widely used for assessing and analyzing an electrical power system. The outcomes of DSA are used in many aspects of the operation of power system, from monitoring the system to determining remedial action schemes (e.g. the amount of generators to be shed at the event of a fault). Measurement from supervisory control and data acquisition (SCADA) and state estimation (SE) results are the inputs for online-DSA, however, the SE error, caused by sudden change in power flow or low convergence rate, could be unnoticed and skew the outcome. Therefore, generator shedding scheme cannot achieve optimum but must have some margin because we don't know how SE error caused by these problems will impact power system stability control. As a method for solving the problem, we developed SE error detection system (EDS), which is enabled by detecting the SE error that will impact power system transient stability. The method is comparing a threshold value and an index calculated by the difference between SE results and PMU observation data, using the distance from the fault point and the power flow value. Using the index, the reliability of the SE results can be verified. As a result, online-DSA can use the SE results while avoiding the bad SE results, assuring the outcome of the DSA assessment and analysis, such as the amount of generator shedding in order to prevent the power system's instability.