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2023-09-08
Liu, Shaogang, Chen, Jiangli, Hong, Guihua, Cao, Lizhu, Wu, Ming.  2022.  Research on UAV Network System Security Risk Evaluation Oriented to Geographic Information Data. 2022 IEEE International Conference on Electrical Engineering, Big Data and Algorithms (EEBDA). :57–60.
With the advent of the Internet era, all walks of life in our country have undergone earth-shaking changes, especially the drone and geographic information industries, which have developed rapidly under the impetus of the Internet of Things era. However, with the continuous development of science and technology, the network structure has become more and more complex, and the types of network attacks have varied. UAV information security and geographic information data have appeared security risks on the network. These hidden dangers have contributed to the progress of the drone and geographic information industry. And development has caused a great negative impact. In this regard, this article will conduct research on the network security of UAV systems and geographic information data, which can effectively assess the network security risks of UAV systems, and propose several solutions to potential safety hazards to reduce UAV networks. Security risks and losses provide a reference for UAV system data security.
2023-08-25
Clark, Nicholas K..  2022.  Enhancing an Information-Centric Network of Things at the Internet Edge with Trust-Based Access Control. 2022 IEEE 8th World Forum on Internet of Things (WF-IoT). :1–6.
This work expands on our prior work on an architecture and supporting protocols to efficiently integrate constrained devices into an Information-Centric Network-based Internet of Things in a way that is both secure and scalable. In this work, we propose a scheme for addressing additional threats and integrating trust-based behavioral observations and attribute-based access control by leveraging the capabilities of less constrained coordinating nodes at the network edge close to IoT devices. These coordinating devices have better insight into the behavior of their constituent devices and access to a trusted overall security management cloud service. We leverage two modules, the security manager (SM) and trust manager (TM). The former provides data confidentiality, integrity, authentication, and authorization, while the latter analyzes the nodes' behavior using a trust model factoring in a set of service and network communication attributes. The trust model allows trust to be integrated into the SM's access control policies, allowing access to resources to be restricted to trusted nodes.
2023-07-21
Said, Dhaou, Elloumi, Mayssa.  2022.  A New False Data Injection Detection Protocol based Machine Learning for P2P Energy Transaction between CEVs. 2022 IEEE International Conference on Electrical Sciences and Technologies in Maghreb (CISTEM). 4:1—5.
Without security, any network system loses its efficiency, reliability, and resilience. With the huge integration of the ICT capabilities, the Electric Vehicle (EV) as a transportation form in cities is becoming more and more affordable and able to reply to citizen and environmental expectations. However, the EV vulnerability to cyber-attacks is increasing which intensifies its negative impact on societies. This paper targets the cybersecurity issues for Connected Electric Vehicles (CEVs) in parking lots where a peer-to-peer(P2P) energy transaction system is launched. A False Data Injection Attack (FDIA) on the electricity price signal is considered and a Machine Learning/SVM classification protocol is used to detect and extract the right values. Simulation results are conducted to prove the effectiveness of this proposed model.
2023-04-27
Ahmad, Ashar, Saad, Muhammad, Al Ghamdi, Mohammed, Nyang, DaeHun, Mohaisen, David.  2022.  BlockTrail: A Service for Secure and Transparent Blockchain-Driven Audit Trails. IEEE Systems Journal. 16:1367–1378.
Audit trails are critical components in enterprise business applications, typically used for storing, tracking, and auditing data. Entities in the audit trail applications have weak trust boundaries, which expose them to various security risks and attacks. To harden the security and develop secure by design applications, blockchain technology has been recently introduced in the audit trails. Blockchains take a consensus-driven clean slate approach to equip audit trails with secure and transparent data processing, without a trusted intermediary. On a downside, blockchains significantly increase the space-time complexity of the audit trails, leading to high storage costs and low transaction throughput. In this article, we introduce BlockTrail, a novel blockchain architecture that fragments the legacy blockchain systems into layers of codependent hierarchies, thereby reducing the space-time complexity and increasing the throughput. BlockTrail is prototyped on the “practical Byzantine fault tolerance” protocol with a custom-built blockchain. Experiments with BlockTrail show that compared to the conventional schemes, BlockTrail is secure and efficient, with low storage footprint.
Conference Name: IEEE Systems Journal
2023-02-17
Djoyo, Brata Wibawa, Nurzaqia, Safira, Budiarti, Salsa Imbartika, Agustin, Syerina.  2022.  Examining the Determinant Factors of Intention to Use of Quick Response Code Indonesia Standard (QRIS) as a Payment System for MSME Merchants. 2022 International Conference on Information Management and Technology (ICIMTech). :676–681.
This study purpose was to examine the determinant factors that affect the Micro, Small, and Medium Enterprise (MSME) merchants who had the intention to use Quick Response Code Indonesian Standard (QRIS) as a payment system. QRIS was expected to be applied by merchants to diminish the virus spread and keep the circulation of money safe; but there were not many merchants using the QRIS as a payment method. The factors MSME merchant might not use the QRIS were related to perceived usefulness, perceived security, perceived ease of use, and trust. The population was MSMEs in South Tangerang City who did not use QRIS yet and the population was unknown. Using the Lemeshow formula, obtained a sample of 115 people, and the sampling technique used purposive sampling. Then data were analyzed using multi-regression analysis and processed by SPSS. The results indicated that perceived usefulness and perceived security had a significant affect on trust, whereas trust and ease of use significant affect the intention to use QRIS. Moreover, trust was able to mediate the perceived usefulness to intention to use. Since ease of use had no significant affect on trust, then the mediation given by trust to perceived ease of use had no significant affect on intention to use.
Chanumolu, Kiran Kumar, Ramachandran, Nandhakumar.  2022.  A Study on Various Intrusion Detection Models for Network Coding Enabled Mobile Small Cells. 2022 International Conference on Augmented Intelligence and Sustainable Systems (ICAISS). :963–970.
Mobile small cells that are enabled with Network Coding (NC) are seen as a potentially useful technique for Fifth Generation (5G) networks, since they can cover an entire city and can be put up on demand anywhere, any time, and on any device. Despite numerous advantages, significant security issues arise as a result of the fact that the NC-enabled mobile small cells are vulnerable to attacks. Intrusions are a severe security threat that exploits the inherent vulnerabilities of NC. In order to make NC-enabled mobile small cells to realize their full potential, it is essential to implement intrusion detection systems. When compared to homomorphic signature or hashing systems, homomorphic message authentication codes (MACs) provide safe network coding techniques with relatively smaller overheads. A number of research studies have been conducted with the goal of developing mobile small cells that are enabled with secure network coding and coming up with integrity protocols that are appropriate for such crowded situations. However, the intermediate nodes alter packets while they are in transit and hence the integrity of the data cannot be confirmed by using MACs and checksums. This research study has analyzed numerous intrusion detection models for NC enabled small cells. This research helps the scholars to get a brief idea about various intrusion detection models.
2023-02-03
Sicari, Christian, Catalfamo, Alessio, Galletta, Antonino, Villari, Massimo.  2022.  A Distributed Peer to Peer Identity and Access Management for the Osmotic Computing. 2022 22nd IEEE International Symposium on Cluster, Cloud and Internet Computing (CCGrid). :775–781.
Nowadays Osmotic Computing is emerging as one of the paradigms used to guarantee the Cloud Continuum, and this popularity is strictly related to the capacity to embrace inside it some hot topics like containers, microservices, orchestration and Function as a Service (FaaS). The Osmotic principle is quite simple, it aims to create a federated heterogeneous infrastructure, where an application's components can smoothly move following a concentration rule. In this work, we aim to solve two big constraints of Osmotic Computing related to the incapacity to manage dynamic access rules for accessing the applications inside the Osmotic Infrastructure and the incapacity to keep alive and secure the access to these applications even in presence of network disconnections. For overcoming these limits we designed and implemented a new Osmotic component, that acts as an eventually consistent distributed peer to peer access management system. This new component is used to keep a local Identity and Access Manager (IAM) that permits at any time to access the resource available in an Osmotic node and to update the access rules that allow or deny access to hosted applications. This component has been already integrated inside a Kubernetes based Osmotic Infrastructure and we presented two typical use cases where it can be exploited.
2023-01-06
Wang, Yingjue, Gong, Lei, Zhang, Min.  2022.  Remote Disaster Recovery and Backup of Rehabilitation Medical Archives Information System Construction under the Background of Big Data. 2022 International Conference on Sustainable Computing and Data Communication Systems (ICSCDS). :575—578.
Realize the same-city and remote disaster recovery of the infectious disease network direct reporting system of the China Medical Archives Information Center. Method: A three-tier B/S/DBMS architecture is used in the disaster recovery center to deploy an infectious disease network direct reporting system, and realize data-level disaster recovery through remote replication technology; realize application-level disaster recovery of key business systems through asynchronous data technology; through asynchronous the mode carries on the network direct report system disaster tolerance data transmission of medical files. The establishment of disaster recovery centers in different cities in the same city ensures the direct reporting system and data security of infectious diseases, and ensures the effective progress of continuity work. The results show that the efficiency of remote disaster recovery and backup based on big data has increased by 9.2%
2022-08-26
Razack, Aquib Junaid, Ajith, Vysyakh, Gupta, Rajiv.  2021.  A Deep Reinforcement Learning Approach to Traffic Signal Control. 2021 IEEE Conference on Technologies for Sustainability (SusTech). :1–7.
Traffic Signal Control using Reinforcement Learning has been proved to have potential in alleviating traffic congestion in urban areas. Although research has been conducted in this field, it is still an open challenge to find an effective but low-cost solution to this problem. This paper presents multiple deep reinforcement learning-based traffic signal control systems that can help regulate the flow of traffic at intersections and then compares the results. The proposed systems are coupled with SUMO (Simulation of Urban MObility), an agent-based simulator that provides a realistic environment to explore the outcomes of the models.
Tumash, Liudmila, Canudas-de-Wit, Carlos, Monache, Maria Laura Delle.  2021.  Boundary Control for Multi-Directional Traffic on Urban Networks. 2021 60th IEEE Conference on Decision and Control (CDC). :2671–2676.
This paper is devoted to boundary control design for urban traffic described on a macroscopic scale. The state corresponds to vehicle density that evolves on a continuum two-dimensional domain that represents a continuous approximation of a urban network. Its parameters are interpolated as a function of distance to physical roads. The dynamics are governed by a new macroscopic multi-directional traffic model that encompasses a system of four coupled partial differential equations (PDE) each describing density evolution in one direction layer: North, East, West and South (NEWS). We analyse the class of desired states that the density governed by NEWS model can achieve. Then a boundary control is designed to drive congested traffic to an equilibrium with the minimal congestion level. The result is validated numerically using the real structure of Grenoble downtown (a city in France).
Francisco, Hernandez Muñoz Urian, Ríos-Moreno, G.J..  2021.  Controller of public vehicles and traffic lights to speed up the response time to emergencies. 2021 XVII International Engineering Congress (CONIIN). :1–6.
Frequently emergency services are required nationally and globally, in Mexico during 2020 of the 16,22,879 calls made to 911, statistics reveal that 58.43% were about security, 16.57% assistance, 13.49% medical, 6.29% civil protection, among others. However, the constant traffic of cities generates delays in the time of arrival to medical, military or civil protection services, wasting time that can be critical in an emergency. The objective is to create a connection between the road infrastructure (traffic lights) and emergency vehicles to reduce waiting time as a vehicle on a mission passes through a traffic light with Controller Area Network CAN controller to modify the color and give way to the emergency vehicle that will send signals to the traffic light controller through a controller located in the car. For this, the Controller Area Network Flexible Data (CAN-FD) controllers will be used in traffic lights since it is capable of synchronizing data in the same bus or cable to avoid that two messages arrive at the same time, which could end in car accidents if they are not it respects a hierarchy and the CANblue ll controller that wirelessly connects devices (vehicle and traffic light) at a speed of 1 Mbit / s to avoid delays in data exchange taking into account the high speeds that a car can acquire. It is intended to use the CAN controller for the development of improvements in response times in high-speed data exchange in cities with high traffic flow. As a result of the use of CAN controllers, a better data flow and interconnection is obtained.
2022-06-09
Pang, Yijiang, Huang, Chao, Liu, Rui.  2021.  Synthesized Trust Learning from Limited Human Feedback for Human-Load-Reduced Multi-Robot Deployments. 2021 30th IEEE International Conference on Robot Human Interactive Communication (RO-MAN). :778–783.
Human multi-robot system (MRS) collaboration is demonstrating potentials in wide application scenarios due to the integration of human cognitive skills and a robot team’s powerful capability introduced by its multi-member structure. However, due to limited human cognitive capability, a human cannot simultaneously monitor multiple robots and identify the abnormal ones, largely limiting the efficiency of the human-MRS collaboration. There is an urgent need to proactively reduce unnecessary human engagements and further reduce human cognitive loads. Human trust in human MRS collaboration reveals human expectations on robot performance. Based on trust estimation, the work between a human and MRS will be reallocated that an MRS will self-monitor and only request human guidance in critical situations. Inspired by that, a novel Synthesized Trust Learning (STL) method was developed to model human trust in the collaboration. STL explores two aspects of human trust (trust level and trust preference), meanwhile accelerates the convergence speed by integrating active learning to reduce human workload. To validate the effectiveness of the method, tasks "searching victims in the context of city rescue" were designed in an open-world simulation environment, and a user study with 10 volunteers was conducted to generate real human trust feedback. The results showed that by maximally utilizing human feedback, the STL achieved higher accuracy in trust modeling with a few human feedback, effectively reducing human interventions needed for modeling an accurate trust, therefore reducing human cognitive load in the collaboration.
2022-04-18
Li, Jie, Liu, Hui, Zhang, Yinbao, Su, Guojie, Wang, Zezhong.  2021.  Artificial Intelligence Assistant Decision-Making Method for Main Amp; Distribution Power Grid Integration Based on Deep Deterministic Network. 2021 IEEE 4th International Electrical and Energy Conference (CIEEC). :1–5.
This paper studies the technology of generating DDPG (deep deterministic policy gradient) by using the deep dual network and experience pool network structure, and puts forward the sampling strategy gradient algorithm to randomly select actions according to the learned strategies (action distribution) in the continuous action space, based on the dispatching control system of the power dispatching control center of a super city power grid, According to the actual characteristics and operation needs of urban power grid, The developed refined artificial intelligence on-line security analysis and emergency response plan intelligent generation function realize the emergency response auxiliary decision-making intelligent generation function. According to the hidden danger of overload and overload found in the online safety analysis, the relevant load lines of the equipment are searched automatically. Through the topology automatic analysis, the load transfer mode is searched to eliminate or reduce the overload or overload of the equipment. For a variety of load transfer modes, the evaluation index of the scheme is established, and the optimal load transfer mode is intelligently selected. Based on the D5000 system of Metropolitan power grid, a multi-objective and multi resource coordinated security risk decision-making assistant system is implemented, which provides integrated security early warning and decision support for the main network and distribution network of city power grid. The intelligent level of power grid dispatching management and dispatching operation is improved. The state reality network can analyze the joint state observations from the action reality network, and the state estimation network uses the actor action as the input. In the continuous action space task, DDPG is better than dqn and its convergence speed is faster.
2022-04-13
Silva, Wagner, Garcia, Ana Cristina Bicharra.  2021.  Where is our data? A Blockchain-based Information Chain of Custody Model for Privacy Improvement 2021 IEEE 24th International Conference on Computer Supported Cooperative Work in Design (CSCWD). :329–334.
The advancement of Information and Communication Technologies has brought numerous facilities and benefits to society. In this environment, surrounded by technologies, data, and personal information, have become an essential and coveted tool for many sectors. In this scenario, where a large amount of data has been collected, stored, and shared, privacy concerns arise, especially when dealing with sensitive data such as health data. The information owner generally has no control over his information, which can bring serious consequences such as increases in health insurance prices or put the individual in an uncomfortable situation with disclosing his physical or mental health. While privacy regulations, like the General Data Protection Regulation (GDPR), make it clear that the information owner must have full control and management over their data, disparities have been observed in most systems and platforms. Therefore, they are often not able to give consent or have control and management over their data. For the users to exercise their right to privacy and have sufficient control over their data, they must know everything that happens to them, where their data is, and where they have been. It is necessary that the entire life cycle, from generation to deletion of data, is managed by its owner. To this end, this article presents an Information Chain of Custody Model based on Blockchain technology, which allows from the traceability of information to the offer of tools that will enable the effective management of data, offering total control to its owner. The result showed that the prototype was very useful in the traceability of the information. With that it became clear the technical feasibility of this research.
2022-02-24
Alabbasi, Abdulrahman, Ganjalizadeh, Milad, Vandikas, Konstantinos, Petrova, Marina.  2021.  On Cascaded Federated Learning for Multi-Tier Predictive Models. 2021 IEEE International Conference on Communications Workshops (ICC Workshops). :1–7.
The performance prediction of user equipment (UE) metrics has many applications in the 5G era and beyond. For instance, throughput prediction can improve carrier selection, adaptive video streaming's quality of experience (QoE), and traffic latency. Many studies suggest distributed learning algorithms (e.g., federated learning (FL)) for this purpose. However, in a multi-tier design, features are measured in different tiers, e.g., UE tier, and gNodeB (gNB) tier. On one hand, neglecting the measurements in one tier results in inaccurate predictions. On the other hand, transmitting the data from one tier to another improves the prediction performance at the expense of increasing network overhead and privacy risks. In this paper, we propose cascaded FL to enhance UE throughput prediction with minimum network footprint and privacy ramifications (if any). The idea is to introduce feedback to conventional FL, in multi-tier architectures. Although we use cascaded FL for UE prediction tasks, the idea is rather general and can be used for many prediction problems in multi-tier architectures, such as cellular networks. We evaluate the performance of cascaded FL by detailed and 3GPP compliant simulations of London's city center. Our simulations show that the proposed cascaded FL can achieve up to 54% improvement over conventional FL in the normalized gain, at the cost of 1.8 MB (without quantization) and no cost with quantization.
2022-02-22
Sen, Adnan Ahmed Abi, Nazar, Shamim Kamal Abdul, Osman, Nazik Ahmed, Bahbouh, Nour Mahmoud, Aloufi, Hazim Faisal, Alawfi, Ibrahim Moeed M..  2021.  A New Technique for Managing Reputation of Peers in the Cooperation Approach for Privacy Protection. 2021 8th International Conference on Computing for Sustainable Global Development (INDIACom). :409—412.
Protecting privacy of the user location in Internet of Things (IoT) applications is a complex problem. Peer-to-peer (P2P) approach is one of the most popular techniques used to protect privacy in IoT applications, especially that use the location service. The P2P approach requires trust among peers in addition to serious cooperation. These requirements are still an open problem for this approach and its methods. In this paper, we propose an effective solution to this issue by creating a manager for the peers' reputation called R-TTP. Each peer has a new query. He has to evaluate the cooperated peer. Depending on the received result of that evaluation, the main peer will send multiple copies of the same query to multiple peers and then compare results. Moreover, we proposed another scenario to the manager of reputation by depending on Fog computing to enhance both performance and privacy. Relying on this work, a user can determine the most suitable of many available cooperating peers, while avoiding the problems of putting up with an inappropriate cooperating or uncommitted peer. The proposed method would significantly contribute to developing most of the privacy techniques in the location-based services. We implemented the main functions of the proposed method to confirm its effectiveness, applicability, and ease of application.
2021-12-20
Buccafurri, Francesco, De Angelis, Vincenzo, Idone, Maria Francesca, Labrini, Cecilia.  2021.  A Distributed Location Trusted Service Achieving k-Anonymity against the Global Adversary. 2021 22nd IEEE International Conference on Mobile Data Management (MDM). :133–138.
When location-based services (LBS) are delivered, location data should be protected against honest-but-curious LBS providers, them being quasi-identifiers. One of the existing approaches to achieving this goal is location k-anonymity, which leverages the presence of a trusted party, called location trusted service (LTS), playing the role of anonymizer. A drawback of this approach is that the location trusted service is a single point of failure and traces all the users. Moreover, the protection is completely nullified if a global passive adversary is allowed, able to monitor the flow of messages, as the source of the query can be identified despite location k-anonymity. In this paper, we propose a distributed and hierarchical LTS model, overcoming both the above drawbacks. Moreover, position notification is used as cover traffic to hide queries and multicast is minimally adopted to hide responses, to keep k-anonymity also against the global adversary, thus enabling the possibility that LBS are delivered within social networks.
2021-10-12
Uy, Francis Aldrine A., Vea, Larry A., Binag, Matthew G., Diaz, Keith Anshilo L., Gallardo, Roy G., Navarro, Kevin Jorge A., Pulido, Maria Teresa R., Pinca, Ryan Christopher B., Rejuso, Billy John Rudolfh I., Santos, Carissa Jane R..  2020.  The Potential of New Data Sources in a Data-Driven Transportation, Operation, Management and Assessment System (TOMAS). 2020 IEEE Conference on Technologies for Sustainability (SusTech). :1–8.
We present our journey in constructing the first integrated data warehouse for Philippine transportation research in the hopes of developing a Transportation Decision Support System for impact studies and policy making. We share how we collected data from diverse sources, processed them into a homogeneous format and applied them to our multimodal platform. We also list the challenges we encountered, including bureaucratic delays, data privacy concerns, lack of software, and overlapping datasets. The data warehouse shall serve as a public resource for researchers and professionals, and for government officials to make better-informed policies. The warehouse will also function within our multi-modal platform for measurement, modelling, and visualization of road transportation. This work is our contribution to improve the transportation situation in the Philippines, both in the local and national levels, to boost our economy and overall quality of life.
2021-09-07
Gameiro, Luís, Senna, Carlos, Luís, Miguel.  2020.  Context-Based Forwarding for Mobile ICNs. 2020 IEEE International Conference on Communications Workshops (ICC Workshops). :1–6.
Over the last couple of decades, mobile ad-hoc networks (MANETs) have been at the forefront of research, yet still are afflicted by high network fragmentation, due to their continuous node mobility and geographical dispersion. To address these concerns, a new paradigm was proposed, Information-Centric Networks (ICN), whose focus is the delivery of Content based on names. This article aims to use ICN concepts towards the delivery of both urgent and non-urgent information in urban mobile environments. In order to do so, a context-based forwarding strategy was proposed, with a very clear goal: to take advantage of both packet Names and Data, and node's neighborhood analysis in order to successfully deliver content into the network in the shortest period of time, and without worsening network congestion. The design, implementation and validation of the proposed strategy was performed using the ndnSIM platform along with real mobility traces from communication infrastructure of the Porto city. The results show that the proposed context-based forwarding strategy presents a clear improvement regarding the Data resolution, while maintaining network overhead at a constant.
Tirupathi, Chittibabu, Hamdaoui, Bechir, Rayes, Ammar.  2020.  HybridCache: AI-Assisted Cloud-RAN Caching with Reduced In-Network Content Redundancy. GLOBECOM 2020 - 2020 IEEE Global Communications Conference. :1–6.
The ever-increasing growth of urban populations coupled with recent mobile data usage trends has led to an unprecedented increase in wireless devices, services and applications, with varying quality of service needs in terms of latency, data rate, and connectivity. To cope with these rising demands and challenges, next-generation wireless networks have resorted to cloud radio access network (Cloud-RAN) technology as a way of reducing latency and network traffic. A concrete example of this is New York City's LinkNYC network infrastructure, which replaces the city's payphones with kiosk-like structures, called Links, to provide fast and free public Wi-Fi access to city users. When enabled with data storage capability, these Links can, for example, play the role of edge cloud devices to allow in-network content caching so that access latency and network traffic are reduced. In this paper, we propose HybridCache, a hybrid proactive and reactive in-network caching scheme that reduces content access latency and network traffic congestion substantially. It does so by first grouping edge cloud devices in clusters to minimize intra-cluster content access latency and then enabling cooperative-proactively and reactively-caching using LSTM-based prediction to minimize in-network content redundancy. Using the LinkNYC network as the backbone infrastructure for evaluation, we show that HybridCache reduces the number of hops that content needs to traverse and increases cache hit rates, thereby reducing both network traffic and content access latency.
2021-08-17
Bicakci, Kemal, Salman, Oguzhan, Uzunay, Yusuf, Tan, Mehmet.  2020.  Analysis and Evaluation of Keystroke Dynamics as a Feature of Contextual Authentication. 2020 International Conference on Information Security and Cryptology (ISCTURKEY). :11—17.
The following topics are dealt with: authorisation; data privacy; mobile computing; security of data; cryptography; Internet of Things; message authentication; invasive software; Android (operating system); vectors.
2021-08-05
Bogatu, Alex, Fernandes, Alvaro A. A., Paton, Norman W., Konstantinou, Nikolaos.  2020.  Dataset Discovery in Data Lakes. 2020 IEEE 36th International Conference on Data Engineering (ICDE). :709—720.
Data analytics stands to benefit from the increasing availability of datasets that are held without their conceptual relationships being explicitly known. When collected, these datasets form a data lake from which, by processes like data wrangling, specific target datasets can be constructed that enable value- adding analytics. Given the potential vastness of such data lakes, the issue arises of how to pull out of the lake those datasets that might contribute to wrangling out a given target. We refer to this as the problem of dataset discovery in data lakes and this paper contributes an effective and efficient solution to it. Our approach uses features of the values in a dataset to construct hash- based indexes that map those features into a uniform distance space. This makes it possible to define similarity distances between features and to take those distances as measurements of relatedness w.r.t. a target table. Given the latter (and exemplar tuples), our approach returns the most related tables in the lake. We provide a detailed description of the approach and report on empirical results for two forms of relatedness (unionability and joinability) comparing them with prior work, where pertinent, and showing significant improvements in all of precision, recall, target coverage, indexing and discovery times.
2021-05-25
Zanin, M., Menasalvas, E., González, A. Rodriguez, Smrz, P..  2020.  An Analytics Toolbox for Cyber-Physical Systems Data Analysis: Requirements and Challenges. 2020 43rd International Convention on Information, Communication and Electronic Technology (MIPRO). :271–276.
The fast improvement in telecommunication technologies that has characterised the last decade is enabling a revolution centred on Cyber-Physical Systems (CPSs). Elements inside cities, from vehicles to cars, can now be connected and share data, describing both our environment and our behaviours. These data can also be used in an active way, by becoming the tenet of innovative services and products, i.e. of Cyber-Physical Products (CPPs). Still, having data is not tantamount to having knowledge, and an important overlooked topic is how should them be analysed. In this contribution we tackle the issue of the development of an analytics toolbox for processing CPS data. Specifically, we review and quantify the main requirements that should be fulfilled, both functional (e.g. flexibility or dependability) and technical (e.g. scalability, response time, etc.). We further propose an initial set of analysis that should in it be included. We finally review some challenges and open issues, including how security and privacy could be tackled by emerging new technologies.
2021-05-18
Sinhabahu, Nadun, Wimalaratne, Prasad, Wijesiriwardana, Chaman.  2020.  Secure Codecity with Evolution: Visualizing Security Vulnerability Evolution of Software Systems. 2020 20th International Conference on Advances in ICT for Emerging Regions (ICTer). :1–2.
The analysis of large-scale software and finding security vulnerabilities while its evolving is difficult without using supplementary tools, because of the size and complexity of today's systems. However just by looking at a report, doesn't transmit the overall picture of the system in terms of security vulnerabilities and its evolution throughout the project lifecycle. Software visualization is a program comprehension technique used in the context of the present and explores large amounts of information precisely. For the analysis of security vulnerabilities of complex software systems, Secure Codecity with Evolution is an interactive 3D visualization tool that can be utilized. Its studies techniques and methods are used for graphically illustrating security aspects and the evolution of software. The Main goal of the proposed Framework defined as uplift, simplify, and clarify the mental representation that a software engineer has of a software system and its evolution in terms of its security. Static code was visualised based on a city metaphor, which represents classes as buildings and packages as districts of a city. Identified Vulnerabilities were represented in a different color according to the severity. To visualize a number of different aspects, A large variety of options were given. Users can evaluate the evolution of the security vulnerabilities of a system on several versions using Matrices provided which will help users go get an overall understanding about security vulnerabilities varies with different versions of software. This framework was implemented using SonarQube for software vulnerability detection and ThreeJs for implementing the City Metaphor. The evaluation results evidently show that our framework surpasses the existing tools in terms of accuracy, efficiency and usability.
2021-05-03
Sharma, Mohit, Strathman, Hunter J., Walker, Ross M..  2020.  Verification of a Rapidly Multiplexed Circuit for Scalable Action Potential Recording. 2020 IEEE International Symposium on Circuits and Systems (ISCAS). :1–1.
This report presents characterizations of in vivo neural recordings performed with a CMOS multichannel chip that uses rapid multiplexing directly at the electrodes, without any pre-amplification or buffering. Neural recordings were taken from a 16-channel microwire array implanted in rodent cortex, with comparison to a gold-standard commercial bench-top recording system. We were able to record well-isolated threshold crossings from 10 multiplexed electrodes and typical local field potential waveforms from 16, with strong agreement with the standard system (average SNR = 2.59 and 3.07 respectively). For 10 electrodes, the circuit achieves an effective area per channel of 0.0077 mm2, which is \textbackslashtextgreater5× smaller than typical multichannel chips. Extensive characterizations of noise and signal quality are presented and compared to fundamental theory, as well as results from in vivo and in vitro experiments. By demonstrating the validation of rapid multiplexing directly at the electrodes, this report confirms it as a promising approach for reducing circuit area in massively-multichannel neural recording systems, which is crucial for scaling recording site density and achieving large-scale sensing of brain activity with high spatiotemporal resolution.