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14
result(s) for
"Doo, Ill Chul"
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Ultra-High Capacity Optical Satellite Communication System Using PDM-256-QAM and Optical Angular Momentum Beams
by
Cho, Woong
,
Joshi, Gyanendra Prasad
,
Kaur, Simarpreet
in
Algorithms
,
Bandwidths
,
Data transmission
2023
Twisted light beams such as optical angular momentum (OAM) with numerous possible orthogonal states have drawn the prodigious contemplation of researchers. OAM multiplexing is a futuristic multi-access technique that has not been scrutinized for optical satellite communication (OSC) systems thus far, and it opens up a new window for ultra-high-capacity systems. This paper presents the 4.8 Tbps (5 wavelengths × 3 OAM beams × 320 Gbps) ultra-high capacity OSC system by incorporating polarization division multiplexed (PDM) 256-Quadrature amplitude modulation (256-QAM) and OAM beams. To realize OAM multiplexing, Laguerre Gaussian (LG) transverse mode profiles such as LG00, LG140, and LG400 were used in the proposed study. The effects of the receiver’s digital signal processing (DSP) module were also investigated, and performance improvement was observed using DSP for its potential to compensate for the effects of dispersion, phase errors, and nonlinear effects using the blind phase search (BPS), Viterbi phase estimation (VPE), and the constant modulus algorithm (CMA). The results revealed that the proposed OAM-OSC system successfully covered the 22,000 km OSC link distance and, out of three OAM beams, fundamental mode LG00 offered excellent performance. Further, a detailed comparison of the proposed system and reported state-of-the-art schemes was performed.
Journal Article
Crop Disease Diagnosis with Deep Learning-Based Image Captioning and Object Detection
2023
The number of people participating in urban farming and its market size have been increasing recently. However, the technologies that assist the novice farmers are still limited. There are several previously researched deep learning-based crop disease diagnosis solutions. However, these techniques only focus on CNN-based disease detection and do not explain the characteristics of disease symptoms based on severity. In order to prevent the spread of diseases in crops, it is important to identify the characteristics of these disease symptoms in advance and cope with them as soon as possible. Therefore, we propose an improved crop disease diagnosis solution which can give practical help to novice farmers. The proposed solution consists of two representative deep learning-based methods: Image Captioning and Object Detection. The Image Captioning model describes prominent symptoms of the disease, according to severity in detail, by generating diagnostic sentences which are grammatically correct and semantically comprehensible, along with presenting the accurate name of it. Meanwhile, the Object Detection model detects the infected area to help farmers recognize which part is damaged and assure them of the accuracy of the diagnosis sentence generated by the Image Captioning model. The Image Captioning model in the proposed solution employs the InceptionV3 model as an encoder and the Transformer model as a decoder, while the Object Detection model of the proposed solution employs the YOLOv5 model. The average BLEU score of the Image Captioning model is 64.96%, which can be considered to have high performance of sentence generation and, meanwhile, the mAP50 for the Object Detection model is 0.382, which requires further improvement. Those results indicate that the proposed solution allows the precise and elaborate information of the crop diseases, thereby increasing the overall reliability of the diagnosis.
Journal Article
Analysis of Stochastic State-Dependent Arrivals in a Queueing-Inventory System with Multiple Server Vacation and Retrial Facility
by
Joshi, Gyanendra Prasad
,
Nithya, M.
,
Selvakumar, S.
in
(s,Q) ordering policy
,
Analysis
,
Cost analysis
2022
This article analyses a four-dimensional stochastic queueing-inventory system with multiple server vacations and a state-dependent arrival process. The server can start multiple vacations at a random time only when there is no customer in the waiting hall and the inventory level is zero. The arrival flow of customers in the system is state-dependent. Whenever the arriving customer finds that the waiting hall is full, they enter into the infinite orbit and they retry to enter the waiting hall. If there is at least one space in the waiting hall, the orbital customer enters the waiting hall. When the server is on vacation, the primary (retrial) customer enters the system with a rate of λ1(θ1). If the server is not on vacation, the primary (retrial) arrival occurs with a rate of λ2(θ2). Each arrival rate follows an independent Poisson distribution. The service is provided to customers one by one in a positive time with the rate of μ, which follows exponential distribution. When the inventory level drops to a fixed s, reorder of Q items is triggered immediately under (s,Q) ordering policy. The stability of the system has been analysed, and using the Neuts matrix geometric approach, the stationary probability vectors have been obtained. Moreover, various system performance measures are derived. The expected total cost analysis explores and verifies the characteristics of the assumed parameters of this model. The average waiting time of a customer in the waiting hall and orbit are investigated using all the parameters. The monotonicity of the parameters is verified with its characteristics by the numerical simulation. The discussion about the fraction time server being on vacation suggests that as the server’s vacation duration reduces, its fraction time also reduces. The mean number of customers in the waiting hall and orbit is reduced whenever the average service time per customer and average replenishment time are reduced.
Journal Article
An Optimization of Home Delivery Services in a Stochastic Modeling with Self and Compulsory Vacation Interruption
by
Anbazhagan, Neelamegam
,
Joshi, Gyanendra Prasad
,
Lee, Soojeong
in
(s,Q) ordering policy
,
Consumer preferences
,
Coronaviruses
2023
This study presents and discusses the home delivery services in stochastic queuing-inventory modeling (SQIM). This system consists of two servers: one server manages the inventory sales processes, and the other server provides home delivery services at the doorstep of customers. Based on the Bernoulli schedule, a customer served by the first server may opt for a home delivery service. If any customer chooses the home delivery option, he hands over the purchased item for home delivery and leaves the system immediately. Otherwise, he carries the purchased item and leaves the system. When the delivery server returns to the system after the last home delivery service and finds that there are no items available for delivery, he goes on vacation. Such a vacation of a delivery server is to be interrupted compulsorily or voluntarily, according to the prefixed threshold level. The replenishment process is executed due to the (s,Q) reordering policy. The unique solution of the stationary probability vector to the finite generator matrix is found using recursive substitution and the normalizing condition. The necessary and sufficient system performance measures and the expected total cost of the system are computed. The optimal expected total cost is obtained numerically for all the parameters and shown graphically. The influence of parameters on the expected number of items that need to be delivered, the probability that the delivery server is busy, and the expected rate at which the delivery server’s self and compulsory vacation interruptions are also discussed.
Journal Article
Optimized Task Group Aggregation-Based Overflow Handling on Fog Computing Environment Using Neural Computing
by
Arri, Harwant Singh
,
Joshi, Gyanendra Prasad
,
Doo, Ill Chul
in
Agglomeration
,
Algorithms
,
Artificial intelligence
2021
It is a non-deterministic challenge on a fog computing network to schedule resources or jobs in a manner that increases device efficacy and throughput, diminishes reply period, and maintains the system well-adjusted. Using Machine Learning as a component of neural computing, we developed an improved Task Group Aggregation (TGA) overflow handling system for fog computing environments. As a result of TGA usage in conjunction with an Artificial Neural Network (ANN), we may assess the model’s QoS characteristics to detect an overloaded server and then move the model’s data to virtual machines (VMs). Overloaded and underloaded virtual machines will be balanced according to parameters, such as CPU, memory, and bandwidth to control fog computing overflow concerns with the help of ANN and the machine learning concept. Additionally, the Artificial Bee Colony (ABC) algorithm, which is a neural computing system, is employed as an optimization technique to separate the services and users depending on their individual qualities. The response time and success rate were both enhanced using the newly proposed optimized ANN-based TGA algorithm. Compared to the present work’s minimal reaction time, the total improvement in average success rate is about 3.6189 percent, and Resource Scheduling Efficiency has improved by 3.9832 percent. In terms of virtual machine efficiency for resource scheduling, average success rate, average task completion success rate, and virtual machine response time are improved. The proposed TGA-based overflow handling on a fog computing domain enhances response time compared to the current approaches. Fog computing, for example, demonstrates how artificial intelligence-based systems can be made more efficient.
Journal Article
A Study on Categorization Method and Data Collection of Social Lifelogging Utilizing Gamification
2016
This study suggests the gamification as a new method of collecting and categorizing data of lifelogging by applying the concepts of design and idea in gaming culture such as motivation, fun, reward, and rules to outside area of gaming. In this research, the issues of the collection and categorization of the user data have been identified, and the gamification has been defined as the solution to the issues, and the inspection of the framework of gamification for managing the collection and categorization.
Journal Article
Chaotic Sparrow Search Algorithm with Deep Transfer Learning Enabled Breast Cancer Classification on Histopathological Images
by
Joshi, Gyanendra Prasad
,
Kumar, Sachin
,
Doo, Ill Chul
in
Algorithms
,
Breast cancer
,
Classification
2022
Breast cancer is the major cause behind the death of women worldwide and is responsible for several deaths each year. Even though there are several means to identify breast cancer, histopathological diagnosis is now considered the gold standard in the diagnosis of cancer. However, the difficulty of histopathological image and the rapid rise in workload render this process time-consuming, and the outcomes might be subjected to pathologists’ subjectivity. Hence, the development of a precise and automatic histopathological image analysis method is essential for the field. Recently, the deep learning method for breast cancer pathological image classification has made significant progress, which has become mainstream in this field. This study introduces a novel chaotic sparrow search algorithm with a deep transfer learning-enabled breast cancer classification (CSSADTL-BCC) model on histopathological images. The presented CSSADTL-BCC model mainly focused on the recognition and classification of breast cancer. To accomplish this, the CSSADTL-BCC model primarily applies the Gaussian filtering (GF) approach to eradicate the occurrence of noise. In addition, a MixNet-based feature extraction model is employed to generate a useful set of feature vectors. Moreover, a stacked gated recurrent unit (SGRU) classification approach is exploited to allot class labels. Furthermore, CSSA is applied to optimally modify the hyperparameters involved in the SGRU model. None of the earlier works have utilized the hyperparameter-tuned SGRU model for breast cancer classification on HIs. The design of the CSSA for optimal hyperparameter tuning of the SGRU model demonstrates the novelty of the work. The performance validation of the CSSADTL-BCC model is tested by a benchmark dataset, and the results reported the superior execution of the CSSADTL-BCC model over recent state-of-the-art approaches.
Journal Article
The New Paradigms of Popular Music Market Utilizing the Internet Social
2015
The purpose of the research is to analyzed the recent economic spectrum and propensity of popular music industry and suggested the right direction to the music world, especially in accommodating the present circumstances that are closely related with social media. Today, a number of musicians are greatly able to succeed by promoting their music through the social media, such as YouTube and Facebook. Currently, the main earnings of popular music industry shift from the recording industry to the digital distribution of music, which can be shared through numerous P2P services in free. In fact, the public has acclimatized to get free downloaded mp3 files, and the profit of music industry has been rapidly declined of late years. In addition, the development of technology enables the public to share the digital distribution of not only mp3 files but also music video or real time concert video with the greatly advanced speed of the Internet, which also enables to spread out those sources globally.
Journal Article
Analysis of Relevance of Myth-motif Brand 'Nike' using Big Data of Portal Sites, Twitter and Blogs
2015
This study aims to look into words relevant to how our brands are expressed and recognized in big data. It chooses myth-motif brands of the world's top 100 companies, such as Nike, Hermès, Starbucks and Canon and focuses on analyzing brand 'Nike' symbolizing the goddess of victory. This study looks into the mythological origin of the 'Nike' brand. It extracts relevant key words of the 'Nike' brand using big data of portal sites, Twitter and blogs and analyzes the level of their relevance. This study classifies the success factors of the 'Nike' brand with the 'Great Repeatable Model' theory. As a result of this study, it is found that it is easy for a myth-motif brand to deliver a strong story. In addition, it has a business model of virtuous cycles, such as a brand using a logo, partnership with sportsmen, design and new materials and efficient supply chains in Asian countries. If a story of mythology matches up well with marketing, it has positive impacts, displaying synergy effects. This study would be an inquiry to understand the effects and responses in the Internet marketing in the future.
Journal Article