Predicting Air Pollution in Delhi using Long Short-Term Memory Network
Research Paper | Journal Paper
Vol.7 , Issue.5 , pp.482-486, May-2019
CrossRef-DOI: https://doi.org/10.26438/ijcse/v7i5.482486
Abstract
Air pollution has become a great cause of concern nowadays. The worst affected areas are urban environments especially large metropolitan cities, like Delhi. It has adverse impact on the physical and mental health of human beings. In this context, predicting air pollution has become an urgent need of the hour. This would help people to take safety measures as well as government to enact policies to safeguard the citizens. Traditionally, climatologists and meteorologists have relied on physical simulations for weather forecasting. With the advancement in artificial neural network predicting the future values based on previously observed values has become quite popular. This paper focuses on Time series analysis to predict air pollution in Delhi using LSTM, an artificial recurrent neural network architecture. We use LSTM because it can work on sequences of arbitrary length. We have taken a data-centric approach to predict air pollution and used historical weather data of Delhi that includes several weather variables – atmospheric pressure, temperature, rain, wind direction and wind speed etc.
Key-Words / Index Term
Air Pollution Prediction, RNN, LSTM, Deep Learning
References
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Citation
Shadab Ahmad Ghazali, Raj Kumar, "Predicting Air Pollution in Delhi using Long Short-Term Memory Network," International Journal of Computer Sciences and Engineering, Vol.7, Issue.5, pp.482-486, 2019.
Review of Electromyography Signal with Detection, Decomposition, Features And Classifier Theories
Review Paper | Journal Paper
Vol.7 , Issue.5 , pp.487-500, May-2019
CrossRef-DOI: https://doi.org/10.26438/ijcse/v7i5.487500
Abstract
Muscle is an essential organ of the body accountable for movements. EMG has a wide range of research from electrode design to recording methods, analytical methods, and various applications. The aim of this paper is to review EMG to understand and decomposition in a concise manner. Extraction and classification of features are has considered demanding tasks as it allows a consistent assessment of the neuromuscular diseases. This manuscript has described various methods of extraction and classification of features that would help to understand their nature and process of adoption. In the evaluation of EMG signals, a number of analysts had tried their hands, so in this paper, we have tried to integrate best of the best researchers that could be advantageous for further analysis. Comparison of the traditional researchers by J. L. Betthauser et al., O. W. Samuel Zhou Hui et al. and Xiangyang Zhu et al. has been conducted to interpret the optimum techniques for the evaluation Betthauser et al. has shown 89% of accuracy with Enhanced Adaptive Sparse Representation Classification (EASRC) technique, O. W. Samuel Zhou Hui et al. has shown 92% of accuracy with LDA and ANN technique and Xiangyang Zhu has used LDA-CA technique with 91% of accuracy.
Key-Words / Index Term
Electromyography, Motor Unit Action Potential, Detection, Decomposition, Features, Classifiers
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Citation
Reema Jain, Vijay Kumar Garg, "Review of Electromyography Signal with Detection, Decomposition, Features And Classifier Theories," International Journal of Computer Sciences and Engineering, Vol.7, Issue.5, pp.487-500, 2019.
Delay-Based Routing Mechanism for Load Balanced Routing in Wireless Mesh Networks
Research Paper | Journal Paper
Vol.7 , Issue.5 , pp.501-506, May-2019
CrossRef-DOI: https://doi.org/10.26438/ijcse/v7i5.501506
Abstract
The tremendous growth in usage of internet technology has led to the development of various wireless networks. One of the wireless networks that have gathered lot of attention is Wireless Mesh Network (WMN). WMN is being preferred because of its numerous advantages such as better coverage area, communication with other networks, low energy consumption, cost effectiveness, increased network capacity and is compatible with all IEEE 802.11 standards. However there are several challenges degrades the network performance. Normally WMNs adopts shortest path algorithm for route establishment and most of the existing algorithms are not fully accounting the factors that impacts network performance, which in turn introduces unbalanced load distribution issues in the WMN. The design of a novel delay-based link quality metric is given in this paper which utilizes the real-time statistics from the wireless driver to consider the wireless contention, congestion, and channel loss. The proposed delay metric is additive in nature and introduce less routing overhead compared to existing mechanisms. Simulation results illustrate that the proposed DBL-AODV protocol significantly enhances the performance of the network by reducing the routing overhead and the routes having high delay are avoided from the process of packet forwarding compared to the standard protocol.
Key-Words / Index Term
Delay, Load balancing, AODV,WMN
References
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Citation
Keerthi D S, Shobha Rani A, Basavaraju T G, "Delay-Based Routing Mechanism for Load Balanced Routing in Wireless Mesh Networks," International Journal of Computer Sciences and Engineering, Vol.7, Issue.5, pp.501-506, 2019.
Computer Vision based Hand Gesture Recognition: A Survey
Survey Paper | Journal Paper
Vol.7 , Issue.5 , pp.507-515, May-2019
CrossRef-DOI: https://doi.org/10.26438/ijcse/v7i5.507515
Abstract
Gestures are the most common way of interaction for physically challenged people. Owing to this, many researchers are interested in the direction of automated hand gestures recognition. Major applications include extremely wide range: from sign language to robot control or from virtual reality to intelligent home systems. In addition, these enable deaf and dumb to interface with machine in a more natural way. As a result, immense endeavours have been done in this domain and this article, therefore, reviews the major researches in a comprehensive manner.
Key-Words / Index Term
Gesture Recognition; Artificial Neural Networks; Computer Vision; Classification
References
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[34] Recognition Using Fuzzy Neural Network”,GVIP 05 Conference, 19-21 December 2005, CICC, Cairo, Egypt.
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Citation
Shaminder Singh, Anuj Kumar Gupta, Tejwant Singh, "Computer Vision based Hand Gesture Recognition: A Survey," International Journal of Computer Sciences and Engineering, Vol.7, Issue.5, pp.507-515, 2019.
Energy Aware Load Balancing Fault Tolerant Mechanism for Enhancing Reliability of Cloud
Research Paper | Journal Paper
Vol.7 , Issue.5 , pp.516-520, May-2019
CrossRef-DOI: https://doi.org/10.26438/ijcse/v7i5.516520
Abstract
In the current years, the broad utilization of cloud computing in IT industry has prompted excessive utilization of energy in the host and subsequently data centers, which obviously, has turned into a matter of thought. To spare energy in cloud, dynamic virtual machine consolidation and power aware mechanisms can be thought of one of the best strategies. In this approach, a portion of the under-stacked physical machines (PMs)are place either into low-control mode or are turned off with the assistance of live relocation of Virtual Machines(VMs). Fault tolerance mechanism with dynamic relocation is proposed through this literature. Proposed work presents a novel approach of conserving energy considering parameters such as fan speed, temperature, power consumption and energy. Fan speed is allocate to each Virtual Machine(VM) along with temperature. Deterioration of virtual machines are detected at distinct level of examination. 1) Fan speed is compared against temperature, In case Fan speed is lower as compared to temperature then VM with temperature rise upon load is detected. 2)Energy consumption is another criteria used to detect deterioration. Deterioration can be detected at any level and if detected, dynamic relocation through Live VM migration is done and progress monitoring mechanism is used to conserve energy. Using the approach energy efficiency is achieved along with reliability. Simulation is conducted in Netbeans with CLoudsim 3.0.3. Proposed approach conserve energy up to 25% .
Key-Words / Index Term
Fault Tolerance; Energy efficiency; Reliability; Migration
References
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D. Sun,Guiran, Chang, C. Miao, X. Wang, “Analyzing, modeling and evaluating dynamic adaptive fault tolerance strategies in cloud computing environments” Springer Science+Business Media New York 2013 , 21 March 2013
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[9] Rodrigo, N.; Calheiros, R.; Ranjan, A.; Beloglazov, César A. F. De Rose.; Buyya, R., “CloudSim: a toolkit for modeling and simulation of cloud computing environments and evaluation of resource provisioning algorithms “, In Softw. Pract. Exper on, vol., no., pp.23-50, January 2011.
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Citation
Harleen kaur, Kamaljit Kaur, "Energy Aware Load Balancing Fault Tolerant Mechanism for Enhancing Reliability of Cloud," International Journal of Computer Sciences and Engineering, Vol.7, Issue.5, pp.516-520, 2019.
Continuous Integration and end-to-end Automation Framework Deployment using Docker
Research Paper | Journal Paper
Vol.7 , Issue.5 , pp.521-525, May-2019
CrossRef-DOI: https://doi.org/10.26438/ijcse/v7i5.521525
Abstract
Docker is a platform for building, deploying and managing various application containers, which are virtualized, on a common operating system. Docker has been widely adopted in every sector. Also, it can be used for the distribution and management of Docker images. Images are nothing but the iso images ie. images of operating systems and enterprise applications. Docker registry is a container which can be used to store images of operating system and enterprise applications. This paper proposes building a private centralized registry for employees of any organization. It includes generating Docker images for Linux platforms and automating image creation with Dockerfiles that will work across platforms. The paper also proposes the development of effective search logic for searching Docker images to get faster and easier outcomes. Also integrating this framework with the existing framework of any organization to improve their work efficiency.
Key-Words / Index Term
Docker, Docker images, Dockerfile, Docker registry, Continuous integration
References
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Citation
Sanskruti Shrawane, Medha Shah, "Continuous Integration and end-to-end Automation Framework Deployment using Docker," International Journal of Computer Sciences and Engineering, Vol.7, Issue.5, pp.521-525, 2019.
Fusion of Features and Synthesis Classifiers for Gender Classification using Fingerprints
Research Paper | Journal Paper
Vol.7 , Issue.5 , pp.526-533, May-2019
CrossRef-DOI: https://doi.org/10.26438/ijcse/v7i5.526533
Abstract
the objective of this work is to study the impact of feature level fusion and synthesis of classifiers for gender classification using fingerprints. Initially, feature level fusion of Multi-Block Projection Profiles features and Segmentation based Fractal Texture Analysis (SFTA) features are extracted for a single instance of fingerprints. Further, along with the feature level fusion and synthesis of classifiers on fingerprint have been piloted and the experiments are conducted accordingly on four different Homologous fingerprint databases. The results reveal that feature level fusion with synthesis of classifiers greatly improves the efficiency of gender classification over the non-fused and single classifier and outperforms the earlier reported techniques.
Key-Words / Index Term
Gender Identification, Biometrics, Fingerprint, SFTA, MBPP, KNN,SVM and Decision Tree classifier
References
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Citation
Kruti R, Abhijit Patil, Shivanand Gornale, "Fusion of Features and Synthesis Classifiers for Gender Classification using Fingerprints," International Journal of Computer Sciences and Engineering, Vol.7, Issue.5, pp.526-533, 2019.
Analysing the effects of ageing on Iris based Biometric Identification System
Research Paper | Journal Paper
Vol.7 , Issue.5 , pp.534-537, May-2019
CrossRef-DOI: https://doi.org/10.26438/ijcse/v7i5.534537
Abstract
Different techniques like mark, content passwords, PINs and so on have been utilized in the past to confirm people`s personality. In any case, biometric distinguishing proof framework, which uses the special natural characteristics of people like voice, face, fingerprints, palm and iris to perceive the concerned individual, has totally changed the image of verification based frameworks. It has given secure technique to validation as natural personalities of an individual can`t be fashioned. Biometric ID framework coordinates the interesting organic characteristics of people with their information put away as biometric formats. Be that as it may, the natural qualities of individuals changes with age which prompts corruption in the exhibition of biometric confirmation framework and along these lines furnishes an overwhelming assignment to manage. In this paper we investigate age initiated changes in the iris of human eye and analyze how these progressions and other potential causes influence the exhibition of iris based biometric framework.
Key-Words / Index Term
Ageing, Biometrictemplate, Iris, Biometricauthenticationsystem, Pupil
References
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Citation
Deepak Kumar, Raj Kumar, "Analysing the effects of ageing on Iris based Biometric Identification System," International Journal of Computer Sciences and Engineering, Vol.7, Issue.5, pp.534-537, 2019.
Dynamic Fault Tolerance Job Allocation Mechanism to Conserve Resources in Vehicular Cloud
Research Paper | Journal Paper
Vol.7 , Issue.5 , pp.538-547, May-2019
CrossRef-DOI: https://doi.org/10.26438/ijcse/v7i5.538547
Abstract
Today sensing resources are widely increased in terms of vehicles and it affects the cloud computing systems. This technology is used for predicting traffic and for road safety. These systems usually share resources and collaborate with sensing devices for processing data and propagate results. In this paper we proposed Vehicular cloud based fault tolerance mechanism that considers cost matrix and dynamic fault tolerance. The allocation of resources depends critically on the cost associated with virtual machine. It considers exponential residency of VC and execution time along with bandwidth utilization. Bandwidth consumption and cost of execution is reduced greatly by the effect of proposed mechanism.
Key-Words / Index Term
Vehicular Cloud, Cloud computing, Fault tolerance, Resource scheduling
References
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Citation
Jaspreet Singh, Kamaljit Kaur, "Dynamic Fault Tolerance Job Allocation Mechanism to Conserve Resources in Vehicular Cloud," International Journal of Computer Sciences and Engineering, Vol.7, Issue.5, pp.538-547, 2019.
A Study and Analysis of Lock and STM Overheads
Research Paper | Journal Paper
Vol.7 , Issue.5 , pp.548-556, May-2019
CrossRef-DOI: https://doi.org/10.26438/ijcse/v7i5.548556
Abstract
In this paper we make a comparative study of the overheads of locks and STM by taking different practical synchronization problems as examples to understand why the performance of STM is worse than that of locks. Overhead is the combination of excess or indirect computation time, memory, bandwidth, or other resources that are required to perform a specific task. While executing parallel programs whenever any lock or STM function is called it takes some time and also occupies some space. The total time taken by all the lock or STM calls of the program is the total lock or STM time overhead of that program. The total space occupied by all the lock or STM calls of the program is the total lock or STM space overhead of that program. The flexible approach is an approach of programming with STM by which STM has been made more user-friendly and by which execution time of STM has been reduced. We make a study of the overheads of the flexible approach also. We found that the time and space overheads of STM are higher than that of locks. The time and space overheads of the Flexible Approach were less than those of STM but higher than those of locks.
Key-Words / Index Term
Multiprocessing, Parallel Processing, Locks, Software Transactional Memory, Overheads
References
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Citation
Ryan Saptarshi Ray, Parama Bhaumik, Utpal Kumar Ray, "A Study and Analysis of Lock and STM Overheads," International Journal of Computer Sciences and Engineering, Vol.7, Issue.5, pp.548-556, 2019.