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Intelligent and Secure Detection of Cyber-attacks in Industrial Internet of Things: A Federated Learning Framework

The increasing integration of traditional industrial systems with smart networking and communications technology (such as fifth-generation networks, software-defined networking, and digital twin), has drastically widened the security vulnerabilities of the industrial internet of things (IIoT). Nevertheless, owing to the lack of sufficient instances of high-quality attacks, it has been incredibly difficult to resist the cyberattacks that directed at such a substantial, complicated, and dynamic IIoT. This work introduces an intelligent federated deep learning framework, termed FED-SEC, for automatic and early identification of cyber-attacks against IIoT infrastructure. In particular, a new convolutional recurrent network designed to detect cyberattacks within IIoT data. Then, a secure federated learning scheme  presented to promote making use of mobile edge computing to enable the distributed IIoT entities to cooperate together to train a unified model for cyberattack detection in a privacy-preserved manner. More, a safe communication channel constructed via an improved Homomorphic Encryption scheme aiming to keep the model parameters secure against any leakage of inferential attacks, especially throughout the training procedure. Massive experimentations on multiple public datasets of IIoT cyberattacks proved the high-level efficacy of the FED-SEC in discovering different categories of cyber-attacks against IIoT and the superiorities over cutting-edge approaches.

groups
Ahmed Sleem mail
link https://doi.org/10.54216/JISIoT.070105

Volume & Issue

Vol. Volume 7 / Iss. Issue 1

Details open_in_new

Collaborative Segmentation of COVID-19 From non-IID Topographies in the Internet of Medical Things (IoMT)

The Internet of Medical Things (IoMT) offers numerous advantages in the diagnosis, monitoring, and treatment of a wide variety of illnesses for both patients. COVID-19 has caused a global pandemic and turned out to be the utmost crucial danger threatening the whole world. Thus, scholars’ attention moved toward Deep learning (DL) and IoMT for developing automated systems for COVID-19 diagnosis and/or prognosis based on chest computed tomography (CT) scans, and it has shown great success in several tasks, including classification and segmentation. Nevertheless, developing and training a superior DL approach necessitates accumulating a substantial amount of patients’ CT scans together with their labels. This is an expensive and time-consuming task that restricts attaining large enough data from a single site/institution, However, owing to the necessity for protecting data privacy, it is difficult to accumulate the data from several sites and store them at a centralized server. Federated learning (FL) alleviates the need for centralized data by spreading the public segmentation model to different institutional models, training the segmentation model at the institution, and followingly calculating the mean of the parameters in the public model. Nevertheless, researchers advocated that private information could be restored using the parameters of the model. This study presents a privacy-protection technique for the challenge of multi-site COVID-19 segmentation. To tackle the challenge, we introduce the FL technique, in which a distributed optimization procedure is developed, and randomization techniques are proposed to change the joint parameters of private institutional segmentation models. Bearing in mind the complete heterogeneity of COVID-19 distributions from diverse institutions, we develop two domain adaptation (DA) techniques in the proposed FL design. We explore several applied characteristics of optimizing the FL approach and analyze the FL approach in comparison with alternate training approaches. Finally, the results validate that it is auspicious to employ multi-site non-shared CT scans to improve the COVID-19 infection segmentation.

groups
Ahmed Sleem mail -
Ibrahim Elhenawy mail
link https://doi.org/10.54216/JISIoT.070201

Volume & Issue

Vol. Volume 7 / Iss. Issue 2

Details open_in_new

An advanced optimization technique for integrating IoT and cloud computing on manufacturing performance for supply chain management

The discipline of Supply Chain Management (SCM) is getting more difficult to master. It is necessary to address information silos on the demand and production frontiers of goods in order to execute the de-coupling factor in the preferences of customers who are engaged in a supply chain to optimize business performance, which in today's world has become a difficulty. The so-called "Amazon Effect" has, once again, compelled competitors to rethink their approaches to achieving maximum efficiency. The Analytic Hierarchy Process (AHP), which is part of the Multi-Criteria Decision Making (MCDM) Approaches, has been used to offer the preferences of clients of various criteria versus various features (products). AHP is used to compute the weights of criteria, then rank the various alternatives. The AHP method is used to build the pairwise comparison between criteria to check the importance of these criteria. The AHP method checks the consistency of the experts to ensure all data is consistent.

groups
Ahmed M. AbdelMouty mail
link https://doi.org/10.54216/JISIoT.070203

Volume & Issue

Vol. Volume 7 / Iss. Issue 2

Details open_in_new

Interval Valued Neutrosophic VIKOR Method for Assessment Green Suppliers in Supply Chain

In order to remain competitive, businesses must now invest in developing environmentally responsible green suppliers. The purpose of this article is to determine which vendors should be incorporated into green supplier growth programs in order to enhance their ecological sustainability, as well as the suppliers' current green/environmental efficiency. Factor evaluation was used to examine the reliability of the parameters used to assess green suppliers' efficiency and overall quality. To determine which provider offers the greatest ecological performance, the suggested technique uses a hybrid interval-valued neutrosophic set (IVNS) and VIKOR structure to assign relative importance to each criterion. To manage ambiguity while choosing choices, we combine the neutrosophic method with the VIKOR technique. We used 10 criteria and ten vendors in this research to demonstrate the usefulness and effectiveness of the suggested framework. The suggested methodology is applied in the application.

groups
Shereen Zaki mail -
Mahmoud M. Ibrahim mail -
Mahmoud M. Ismail mail
link https://doi.org/10.54216/IJAACI.020102

Volume & Issue

Vol. Volume 2 / Iss. Issue 1

Details open_in_new

An effective model for Selection of the best IoT platform: A critical review of challenges and solutions

The process of making an informed decision on which Internet of Things (IoT) platform to choose is an extremely important one in the modern world. The choice procedure is made more difficult as a result of (a) the vast number of IoT platforms that are offered on the market for IoT applications and (b) the wide diversity of functions and solutions that are provided by these platforms. In this article, the multi-criteria decision-making (MCDM) methodologies for selecting the specific Internet of Things platform are taken into consideration. The TOPSIS method is used in this paper to select the best IoT platform. TOPSIS method is a common MCDM method. TOPSIS method used the idea of the best and cost criteria to compute the distance from it. During the IoT platform choice procedures, relevant aspects, such as the stability, consistency, protection, and privacy of IoT platforms, are regarded to be the most significant ones for making decisions.

groups
Mahmoud A. Zaher mail -
Nabil M. Eldakhly mail
link https://doi.org/10.54216/JISIoT.070204

Volume & Issue

Vol. Volume 7 / Iss. Issue 2

Details open_in_new

Integrated Multi-Criteria Decision Making Via Trapezoidal Neutrosophic Sets to Evaluate the Risks of Failure Mode

The purpose of a failure mode and effect analysis (FMEA) is to improve the safety and dependability of a system, product, procedure, or facility by identifying potential points of failure and determining the consequences of such failures. The assessment of failure modes, the weighting of risk factors, and the ranking of failure modes are all areas where the conventional FMEA falls short when put to use in the real world. To assess the hazard of failure modes in a trapezoidal neutrosophic sets environment, this research proposes a model that combines the neutrosophic sets and MCDM technique such as WASPAS. The WASPAS MCDM method is used to calculate the weights of standards and order the alternatives.  Advantages of trapezoidal neutrosophic numbers in dealing with uncertainty, ambiguity, and incompleteness are combined with the benefits of WASPAS to create the suggested risk prioritization strategy.

groups
Mahmoud A. Zaher mail -
Nabil M. Eldakhly mail
link https://doi.org/10.54216/JNFS.050103

Volume & Issue

Vol. Volume 5 / Iss. Issue 1

Details open_in_new

Decision Making Model for Strategy Choice in Higher Education Under Neutrosophic Environment

The importance of studying the relationships between colleges, businesses, and governments has grown as a result of the recent explosion of technical advancements. The potential for national economic growth is enhanced by the dissemination of new information discovered via research. When it comes to the generation of new information that can be used by established economies, universities play a crucial role. So, in this study we proposed a framework for select best strategy in higher education. This process contains many conflicting criteria, so the concept of multi-criteria decision making (MCDM) is used. The MCDM is integrated with the triangular neutrosophic sets to overcome the vague information. The COCOSO technique is proposed to rank the alternatives. Higher education officials, including government bureaucrats and academic administrators, may put the recommended approach to use.

groups
Ahmed M. AbdelMouty mail
link https://doi.org/10.54216/JNFS.010206

Volume & Issue

Vol. Volume 1 / Iss. Issue 2

Details open_in_new

A Study of a Neutrosophic Bernoulli's and Recati equations by Using the One-Dimensional Geometric AH-Isometry

In this paper, the definition of a Neutrosophic Differential Equation by Using the One-Dimensional Geometric AH-Isometry. The main objective is define a Neutrosophic Bernoulle's and Recati identical linear differential equation and find solutions for this equation.

groups
Ahmed Salamah mail -
Malath F. Alaswad mail -
Rasha Dallah mail
link https://doi.org/10.54216/JNFS.050104

Volume & Issue

Vol. Volume 5 / Iss. Issue 1

Details open_in_new

Artificial Neural Network Based Approach for Food Recognition Using Various Filters

Food image recognition system has various applications now a day. In this paper, we have used a machine learning supervised approach and Support Vector Machine to classify different food images. SVM has been classified to detect and recognize food images with the least modification. By applying various filters like a texture filter, a segmentation method, clustering, and a SVM approach we have achieved more accuracy than other machine learning approaches with manually extracting features. Sustenance is an indivisible piece of people groups lives. we tend to apply a convolution neural network (CNN) to the undertakings of analyst work and perceiving sustenance pictures. Clarification for the wide decent variety of styles of nourishment, and picture acknowledgment of sustenance things are typically unpleasant difficulties. Nevertheless, profound learning has been demonstrated starting late to be a genuinely extreme picture acknowledgment framework, and CNN could be a dynamic approach to managing profound learning. CNN showed on a very basic level higher precision than did old-fashioned help vector-machine-based courses with carefully assembled decisions. For sustenance picture disclosure, CNN likewise demonstrated fundamentally count higher precision than a standard technique. Generally higher precision than standard techniques.

groups
Upma Kumari mail -
Praveen Gupta mail -
Chaur Singh Rajpoot mail
link https://doi.org/10.54216/JISIoT.070205

Volume & Issue

Vol. Volume 7 / Iss. Issue 2

Details open_in_new

An Assessment Model for Evaluating MCDM Education's Effectiveness Under Interval-Valued Neutrosophic Sets

Multiple schools’ alternatives are assessed by experts based on a wide range of factors, therefore evaluating school performance may be seen as a multiple criteria decision-making (MCDM) issue. In this research, we developed a MABAC approach for evaluating MCDM education's effectiveness under interval-valued neutrosophic sets, keeping in mind the constraints posed by the assessment setting's complexity and the psychological behaviour of experts. Before everything else, experts' opinions are included in the calculation of criterion weights. Next, a novel assessment framework for assessing academic achievement in schools is developed using the MABAC model. Our research aims to provide educational institutions with the tools they need to operate at peak efficiency. In addition, other schools and allied educational institutions may use the study's findings as a benchmark in their assessments, attempts to improve performance, and formulation of educational policy.

groups
Abdullah Ali Salamai mail
link https://doi.org/10.54216/JNFS.010207

Volume & Issue

Vol. Volume 1 / Iss. Issue 2

Details open_in_new