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Found 3841 matches for "All Articles"

Crime Anomaly Detection using CNN and Ensemble Model

Every single day, thousands of crimes are perpetrated, and hundreds may be probably taking place right now throughout the world. Without a doubt, crime is viewed as a social blight. Nothing can truly stop it, no matter what is done. Surveillance cameras, on the other hand, can dramatically minimize it. Using public surveillance camera systems to prevent, document, and minimize crime can be a cost-effective solution. Installing enough cameras to detect crimes in progress and integrating technology to automate the monitoring of the live stream from these cameras will result in the most effective systems. Because of its self-learning characteristics, the advanced Artificial Intelligence surveillance system is constantly learning and improving. The Deep Learning Algorithms applied in this work processes videos using electronic devices like cameras in real-time termed as image processing, saving both human resources and a great deal of time. The highest accuracy of 86.6% was attained by Ensemble Model, followed by Inception Model with SGD Optimizer, Leaky Relu Activation Function giving an accuracy of 83.43%. Hence, anomalies were detected efficiently using decision making in real-time surveillance scenarios.  

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Gautam Gupta mail -
Prachi Aggarwal mail -
Achin Jain mail -
Puneet Singh Lamba mail -
Arun Kumar Dubey mail -
Gopal Chaudhary mail
link https://doi.org/10.54216/FPA.110107

Volume & Issue

Vol. Volume 11 / Iss. Issue 1

Details open_in_new

On The Topolpgical Properties of Pairwise Compactness in Intuitionistic Double Topological Spaces

The concept of intuitionistic topological space was introduced by Coker. The aim of this paper is to discuss the relation between bi-topological spaces and double-topological spaces and give a notion of pairwise compact for double topological spaces.

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Othman Al-basheer mail
link https://doi.org/10.54216/GJMSA.040203

Volume & Issue

Vol. Volume 4 / Iss. Issue 2

Details open_in_new

Results on Completely Semi Prime Ideals in Near Rings

The goal of this paper is to study the notions of completely semi prime ideal with respect to an element x (x-C.S.P.I) of a near ring and the completely semi prime ideal near ring with respect to an element x (x-C.S.P.I ), where the direct images and endomorphisms will be represented and discussed.

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Murat Ozcek mail
link https://doi.org/10.54216/GJMSA.040204

Volume & Issue

Vol. Volume 4 / Iss. Issue 2

Details open_in_new

Analyzing and Evaluation of Quick Switching System using Neutrosophic Poisson Distribution

In Statistical Quality Control (SQC), the judgement of the accepting the lot or rejecting the lot s carried out with the help of acceptance sampling plans in the inspection process of any manufacturing industry. Based on the predefined risk the output is attained with minimum inspection cost based on the optimum sample size. Generally Classical statistics is used based on the deterministic nature of the information and measurements. In some circumstances, the quality characteristics may not be certain enough leading to vagueness or impreciseness situation. Accordingly, in past few decades Fuzzy logic is one of the most popular techniques to model the uncertainty in the manufacturing industries. As an advent of technology and knowledge data era, an extension of Fuzzy, a new concept known as Neutrosophic Logic is in progress to apply to achieve these uncertainties. In this, such vagueness, imprecise is called as indeterminants. Thus, Neutrosophic Logic taken its role in Acceptance Sampling Plans with Probability distributions for various plan parameters such as AQL, LQL and Neutrosophic defection status are offered for Poisson distribution in the first time. The chief formulations of Acceptance Sampling plans for Single Sampling were derived based on Neutrosophic Statistics. As an advanced step the mixture of Acceptance Sampling plans with the shifting ruling for swapping from one plan to another plan are named as Sampling System and one such system is Quick Switching System the most widely applicable to safeguard from bad quality which give high level protection as well as to reduce the cost of inspection and time. In this study, Quick Switching System (QSS) with Single Sampling Plan (SSP) as reference plan is constructed based on Neutrosophic sets on Poisson distribution as baseline distribution. The procedures, OC Curves and tables have been redesigned and presented with numerical example.

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Uma G. mail -
Nandhitha S. mail
link https://doi.org/10.54216/IJNS.200409

Volume & Issue

Vol. Volume 20 / Iss. Issue 4

Details open_in_new

An Integrated Framework for Dynamic Resource Allocation in Multi-project Environment

This paper proposes an integrated machine learning (ML) framework for dynamic resource allocation in a multi-project environment. The framework utilizes machine learning algorithms to predict future resource demands and identify potential resource shortages. The proposed framework considers various factors such as project priorities, resource availability, and project deadlines to optimize resource allocation decisions. The framework is designed to continuously learn from past resource allocation decisions and improve future resource allocation strategies. The effectiveness of the proposed framework is evaluated through a case study in a real-world multi-project environment. The results show that the framework can significantly improve resource utilization and project completion times while reducing resource waste and cost. Overall, the proposed framework provides a practical solution for dynamic resource allocation in complex multi-project environments.

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Mahmoud A. Zaher mail -
Nabil M. Eldakhly mail
link https://doi.org/10.54216/AJBOR.100101

Volume & Issue

Vol. Volume 10 / Iss. Issue 1

Details open_in_new

Enhancing Customer Relationship Management through Sentiment Analysis and Social Media Data Mining

Customer Relationship Management (CRM) is a crucial aspect of modern business that enables companies to maintain healthy relationships with their customers. In today's digital age, customers interact with companies through multiple channels, including social media, email, and phone. Therefore, analyzing customer feedback and sentiment has become increasingly important in understanding their needs and improving the overall customer experience. To this end, this work proposes a new system that applies deep learning for sentiment analysis in a way that improves the performance of CRM by analyzing customer feedback from various sources, companies can gain valuable insights into customer needs and preferences and identify areas for improvement in their products and services. Then, we present a case study of a company that implemented the proposed system in its CRM strategy. The results showed that our system could improve customer satisfaction and retention rates and enable the company to identify and address customer concerns more efficiently.Our approach can be applied as a powerful tool to enable companies to gain valuable insights into customer needs and preferences, identify areas for improvement in their products and services, and develop targeted marketing campaigns and personalized communication strategies.

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Esmeralda Kazia mail -
Bledar Kazia mail
link https://doi.org/10.54216/AJBOR.100102

Volume & Issue

Vol. Volume 10 / Iss. Issue 1

Details open_in_new

The Role of Big Data Analytics in IoT-enabled Green Supply Chain Management: Architecture, challenges, and future perspectives

The integration of the Internet of Things (IoT) and Big Data Analytics (BDA) has brought about a revolution in Green Supply Chain Management (GSCM). In particular, it has enabled the optimization of many aspects of the supply chain (SC), including transportation, inventory management, and customer service. The application of BDA in IoT-enabled GSCM is receiving a lot of attention because it has the capacity to assist businesses become more cost-effective and environmentally sustainable to make more informed decisions. By identifying the inefficiencies in the supply chain and take corrective action. With the advent of the IoT, businesses are now able to get a great deal of information from sensors that are installed in different parts of their SC, including transportation vehicles, warehouses, and factories. This data can be leveraged for a variety of purposes, including optimizing the SC for sustainability and reducing its environmental impact. There are also challenges associated with BDA in IoT-enabled GSCM. The volume of data that needs to be processed presents the biggest obstacles. This requires specialized tools and expertise in data management and analytics. Despite these difficulties, technology has the power to completely alter how firms conduct their operations. This paper presents an overview about BDA in IoT-enabled GSCM. The review highlights the benefits and challenges in adopting BDA in IoT-enabled GSCM, the key technologies involved, and the various applications of BDA in IoT-GSCM. Finally, provides insights into the future directions of research in this area.

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Wafaa A. Saleh mail -
Sherine M. Abdelkader mail -
Heba Rashad mail -
Amal Abdelgawad mail
link https://doi.org/10.54216/AJBOR.100103

Volume & Issue

Vol. Volume 10 / Iss. Issue 1

Details open_in_new

Applying Game Theory Models for Risk Management in Supply Chain Networks

 Supply chain networks are complex systems that involve multiple entities and activities, making them vulnerable to various risks that can negatively impact their performance. Game theory models have been used in various fields to analyze strategic interactions among agents and to make decisions in uncertain environments. This study investigates the application of game theory models for risk management in supply chain networks. Then, we present a framework for applying game theory models for risk management in supply chain networks. Our framework consists of three stages: risk identification, risk analysis, and risk mitigation. We validate the application of the proposed framework using a case study of a supply chain network for a fictional company. The results of the case study demonstrate that game theory models can provide valuable insights into the behavior of supply chain entities in different risk scenarios. The models can also help in identifying optimal strategies for mitigating risks and improving the performance of the supply chain network. The finding  imply that the proposed framework can be used as a guide for practitioners to apply game theory models in their supply chain risk management practices.

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Khyati Chaudhary mail -
Gopal Chaudhary mail -
Manju Khari mail
link https://doi.org/10.54216/AJBOR.100104

Volume & Issue

Vol. Volume 10 / Iss. Issue 1

Details open_in_new

Energy-Efficient VLSI Hardware for Edge AI in Image Processing

Artificial intelligence (AI) is becoming more and more necessary for devices, particularly for network edge image processing applications. Building Very-Large-Scale Integration (VLSI) systems that are specifically tuned for low power consumption and enable edge AI techniques for real-time image processing is the aim of this research. One of Edge AI's key characteristics is its ability to process data and make judgements instantly. Edge AI reduces latency by eliminating the need to move massive amounts of data from one location to the cloud. Quick response times are made feasible, which is essential for applications such as industrial automation and autonomous driving. The study will investigate hardware accelerators and approximation computing as efficient approaches to perform image processing algorithms on low-resource edge devices. If all created data were transferred to the cloud, the network infrastructures would be overwhelmed by the exponential growth in linked devices. Edge AI solves this issue by significantly reducing the amount of data that needs to be sent across the network by doing computations locally. This increases the scalability of AI systems and decreases operating costs associated with data transport. By using custom VLSI design, the project aims to achieve significant energy savings over traditional software-based solutions. This will pave the way for edge AI to be widely applied in battery-powered devices for longer battery life and tasks like object and picture identification.

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Chandraman M. mail -
Chandraman M. mail -
Santhiyakumari N. mail -
Saravanan V. mail -
Shanmugasundaram P. mail -
Arun A. mail
link https://doi.org/10.54216/IJWAC.090201

Volume & Issue

Vol. Volume 9 / Iss. Issue 2

Details open_in_new