Design and Implementation of Doctor Scheduling System Using Graph Coloring and Backtracking Approach
Research Paper | Journal Paper
Vol.7 , Issue.1 , pp.438-442, Jan-2019
CrossRef-DOI: https://doi.org/10.26438/ijcse/v7i1.438442
Abstract
The availability of doctors is a major problem that people are facing especially in the rural areas. On the other hand, there are some areas which have large number of doctors than actually required. Because of this uneven distribution of doctors, people in the remote areas remain deprived of medical facilities and are living an unhealthy lifestyle. This paper describes the optimization of schedule of doctors using graph coloring and backtracking approach so that they can be evenly distributed across various locations and the people who are currently not getting proper medical facilities will be able to get treatments on time. This technique serves two purposes, namely, resource optimization and cost optimization. An optimized schedule of doctors will be provided. Only the required number of doctors will be present at a particular location. The remaining doctors will be sent to some other locations. If implemented on a large scale such as in government schemes, this can be a great contribution to the society.
Key-Words / Index Term
Graph coloring, resource optimization, cost optimization
References
[1] M. L. Ginsberg, “Dynamic Backtracking”, Journal of Artificial Intelligence Research 1, pp. 25-46, 1993.
[2] R. Dechter, D. Frost, “Backtracking Algorithms for Constraint Satisfaction Problems”, University of California, Irvine 1999.
[3] A. Mohamed, M. Yusoff, I. A. Mohtar, S. Mutalib, S. A. Rahman “Constraint Satisfaction Problem Using Modified Branch and Bound Algorithm”, WSEAS Transactions, Vol. 7, Issue 1, 2008.
[4] R. Marino, G. Parisi, F. R. Tersenghi “The Backtracking Survey Propagation Algorithm for Solving Random K-SAT Problems”, Nature Communications, 2016.
[5] S. Bhowmick, P. D. Hovland, “Improving the Performance of Graph Coloring Algorithms through Backtracking”, M. Bubak et al (Eds.): ICCS 2008, Part I, LNCS 5101, pp. 873-882, 2008.
[6] J.T. Camino, S. Mourgues, C. Artigues, L. Houssin, “A Greedy Approach Combined with Graph Coloring for Non-Uniform Beam Layouts Under Antenna Constraints in Multibeam Satellite Systems”, In the proceedings of 7th Advanced Satellite Multimedia Systems Conference and the 13th Signal Processing for Space Communications, 2014.
[7] B. Hussin, A.S.H. Basari, A.S. Shibghatullah, S.A. Asmai, “ Exam Timetabling Using Graph Colouring Approach", In the proceedings of IEEE Conference on Open Systems (ICOS2011), Langkawi, Malaysia, 2011.
[8] N. Barnier, P. Brisset, “Graph coloring for Air Traffic Flow Management”, CP-AI-OR 2002, 4th Fourth International Workshop on Integration of AI and OR techniques in Constraint Programming for Combinatorial Optimisation Problems, Mar 2002, Le Croisic, France, 2002.
[9] M. Zais, M. Laguna, “A graph coloring approach to the deployment scheduling and unit assignment problem”, Springer Science+Business Media New York (outside the USA) 2015.
[10] S.Ahmed, “Applications of Graph Coloring in Modern Computer Science”, IJCIT, ISSN 2078-5828 (PRINT), ISSN 2218-5224 (ONLINE), VOLUME 03, ISSUE 02, 2012.
Citation
G. Shrivastava, H. Patidar, "Design and Implementation of Doctor Scheduling System Using Graph Coloring and Backtracking Approach," International Journal of Computer Sciences and Engineering, Vol.7, Issue.1, pp.438-442, 2019.
A Comprehensive Survey of Neighborhood-Based Recommendation Methods used in E-Learning Recommender Systems
Survey Paper | Journal Paper
Vol.7 , Issue.1 , pp.443-450, Jan-2019
CrossRef-DOI: https://doi.org/10.26438/ijcse/v7i1.443450
Abstract
This paper presents the essentials of the background, available literature and technologies presently available in e-leaning specifically recommender systems and its range of applications, different techniques used for the general recommender systems, e-learning recommender systems and the specific neighborhood-based recommender methods used. A comprehensive survey has been carried out to elucidate the types of neighborhood-based recommendation methods used in e-learning recommender systems. The paper highlights these methods with an comparative analysis of the recommendation methods.
Key-Words / Index Term
E-learning, personalized learning, learning styles, recommender systems, neighborhood-based methods
References
[1] Schwartz, B, “The Paradox of Choice”, ECCO, New York, 2004.
[2] M. Pazzani and D. Billsus, “Content-based recommendation systems, TheAdaptiveWeb – Springer, pp. 325-341, Heidelberg, Germany, 2007.
[3] M. Deshpande and G. Karypis, “Item-based top-N recommendation algorithms”, ACM Transactions on Information Systems, ISSN: 1046-8188, Volume: 22, pp. 143-177, 2004.
[4] M. Nilashi, O.B. Ibrahim and N. Ithnin, “Multi-criteria collaborative filtering with high accuracy using higher order singular value decomposition and Neuro-Fuzzy system, Knowledge-Based Systems, ISSN Knowledge-Based Systems, ISSN : 3910-1211, Volume: 60, Issue: 3, pp.82-101, 2014.
[5] R. Burke, “Hybrid recommender systems: survey and experiments”, International Journal of User Model and User Adaption, ISSN: 2124-3765, Volume: 12, Issue: 4, pp.331-370, 2002.
[6] S. Middleton, D. Roure, N. Shadbolt, “Ontology-based recommender systems”, Handbook on Ontologies, Springer Publication, Berlin, 2009.
[7] W. Nejldon and R. Burke, “Hybrid recommender systems: survey and experiments for E-Learning”, International Journal of User Model and User Adaption, ISSN: 2124-3765, Volume: 14, Issue: 2, pp.431-470, 2004.
[8] A. Bellogin, I. Cantador, F. Diez, P. Castells, E. Chavarriaga, “An empirical comparison of social, collaborative filtering, and hybrid recommenders”, ACM Transactions on Intelligent Systems and Technology ISSN: 0318-4908,Volume: 4, Issue: 4, pp.1-29, 2014.
[9] M.M. Recker, D.A. Wiley, “A Non-authoritative educational metadata ontology for filtering and recommending learning objects”, Interactivelearningenvironments”, ISSN: 4231-0376, Volume: 9, Issue: 3, pp.255-271, 2001.
[10] M.M. Recker, A. Walker and D. Wiley, “An interface for collaborative filtering of educational resources”, International Conference on Artificial Intelligence, Las Vegas, U.S.A, pp. 26-29, 2000.
[11] M.M Recker, A. Walker and K. Lawless, “What do you recommend? Implementation and analyses of collaborative information filtering of web resources for education”, Journal of InstructionalScience, ISSN: 6542- 3120, Volume: 31, Issue: 4, pp.299–316, 2003.
[12] A. Walker, M. Recker, K. Lawles and D. Wiley, “Collaborative information filtering: A review and an educational application”, International Journal of Artificial Intelligence in Education, ISSN: 1560-4306, Volume: 14, Issue: 1, pp. 3–28, 2004.
[13] Lemire, “Scale and Translation Invariant Collaborative Filtering Systems”, Journal of Information Retrieval, ISSN: 1386-4564, Volume: 8, Issue: 1, pp.129–150, 2005.
[14] J. Fiaidhi, “RecoSearch: A Model for Collaboratively Filtering Java Learning Objects”, International Journal of Instructional Technology and Distance Learning,ISSN 1550-6908,Volume: 1, Issue: 7, pp.35–50, 2004.
[15] S. Rafaeli, M. Barak, Y.Dan-Gur and E.Toch, “QSIA - A Web-based environment for learning, assessing and knowledge sharing in communities”, ComputersandEducation, Volume: 43, Issue: 3, pp.273–289, 2004.
[16] S. Rafaeli, Y. Dan-Gur and M. Bara, “Social Recommender Systems: Recommendations in Support of E-Learning”, International Journal of Distance Education Technologies, ISSN: 153-3100, Volume: 3, Issue: 3, pp.29–45, 2005.
[17] H. Avancini and U. Straccia, “User recommendation for collaborative and personalised digital archives”, International Journal of Web Based Communities, ISSN: 1539-3100, Volume: 1, Issue: 2, pp.163-175, 2005.
[18] J. Dron, R. Mitchell, C. Boyne and P. Siviter, “CoFIND: steps towards a self-organising learning environment”, Proceedings of the World Conference on the WWW and Internet, Texas, USA, pp. 146-151,2000.
[19] N. Manouselis, R. Vuorikari and F. Van Assche, “Simulated Analysis of MAUT Collaborative Filtering for Learning Object Recommendation”, Proceedings of the Workshop on Social Information Retrieval in Technology Enhanced Learning, Crete, Greece, 2007.
[20] N. Manouselis and C. Costopoulou, “Experimental Analysis of Design Choices in Multi-Attribute Utility Collaborative Filtering”, International Journal of Pattern Recognition and Artificial Intelligence, ISSN: 5498-487, Volume:21, Issue:2, pp.311–331, 2007.
[21] L. Shen, L and R. Shen, “Learning content recommendation service based-on simple sequencing specification”, Lecturenotes in computer science, pp. 363-370, New Jersey, U.S.A, 2004.
[22] Y.M. Huang, T.C. Huang, K.T. Wang and W.Y. Hwang, “A Markov-based Recommendation Model for Exploring the Transfer of Learning on the Web”, Educational Technology & Society, ISSN: 5678-612, Volume: 12, Issue: 2, pp.144–162, 2009.
[23] T. Tang and G. McCalla, “Smart Recommendation for an Evolving E-Learning System”, Proceedings of the Workshop on Technologies for Electronic Documents for Supporting Learning, Tokyo, Japan, 2003.
[24] P. Totterdell and E. Boyle, “The evaluation of adaptive systems”, AdaptiveUserInterfaces”, first edition, Mcgraw Hill, Wahington,1990.
[25] J. Janssen, C. Tattersall, W.Waterink, B. Van den Berg, R. Van Es and C. Bolmanl, “Self-organising navigational support in lifelong learning: how predecessors can lead the way”, Computers & Education, ISSN: 7865-432, Volume: 49, pp. 781–793, 2005.
[26] R.J. Nadolski, B.Van den Berg, A. Berlanga, H. Drachsler, H. Hummel, R. Koper and P. Sloep, “Simulating Light-Weight Personalised Recommender Systems in Learning Networks: A Case for Pedagogy-Oriented and Rating-Based Hybrid Recommendation Strategies”, Journal of Artificial Societies and Social Simulation, ISSN: 1460-7425, Volume: 12, Issue: 14, 2009.
[27] H.G.K. Hummel, B. Van den Berg, A.J. Berlanga, H. Drachsler, J. Janssen, R.J. Nadolski, and E.J.R. Koper, “Combining Social- and Information-based Approaches for Personalised Recommendation on Sequencing Learning Activities”, International Journal of Learning Technology ISSN: 1741-8119, Volume: 3, Issue:2, pp.152–168 ,2007.
[28] R. Koper , “Increasing Learner Retention in a Simulated learning network using Indirect So-cial Interaction”, Journal of Artificial Societies and Social Simulation, ISSN: 1460-7425, Volume: 8, Issue: 2, 2005.
[29] H. Drachsler, H.G.K. Hummel, B. Van den Berg, J. Eshuis, A. Berlanga, R. Nadolski, W. Waterink, N. Boers and R. Koper, “ Effects of the ISIS Recommender System for navigation support in self-organized learning networks”, Journal of Educational Technology and Society, ISSN: 1246-0730, Volume: 12, pp.122-135. 2009.
[30] H. Drachsler, D. Pecceu, T. Arts, E. Hutten, L. Rutledge, P. Van Rosmalen, H.G.K. Hummel and R. Koper, “ReMashed Recommendations for Mash-Up Personal Learning Environments”, Proceedings of the 4th European Conference on Technology Enhanced Learning, Germany, Berlin, 2009.
[31] M. Van Setten, “Supporting people in finding information: hybrid recommender systems and goal-based structuring”, TelematicaInstituutFundamentalResearch, Enschede, The Netherlands, 2005.
[32] K.H. Tsai, T.K. Chiu T.K., M.C. Lee and T.I. Wang, “A learning objects recommendation model based on the preference and ontological approaches”, Proceedingsof6th International Conference on Advanced Learning Technologies, Seoul, South Korea, 2006.
[33] G. Koutrika, R. Ikeda, B. Bercovitz and H. Garcia Molina, “Flexible Recommendations over Rich Data”, Proceedings of thesecond ACM International Conference on Recommender Systems, Lausanne, Switzerland, 2008.
[34] G. Koutrika, B. Bercovitz, F. Kaliszan, H. Liou and H. Garcia-Molina, “CourseRank: A Closed-Community Social System Through the Magnifying Glas”, Proceedings of thethird International AAAI Conference on Weblogs and Social Media, San Jose, California, 2009.
[35] M.K. Khribi, M. Jemni and O. Nasraoui, “Automatic Recommendations for E-Learning Personalization Based on Web Usage Mining Techniques and Information Retrieval”, Educational Technology & Society, ISSN: 7498-1487, Volume: 12, Issue: 4, pp. 30–42, 2009.
[36] M. Gomez Albarran and G. Jimenez Diaz, “Recommendation and Students’ Authoring in Repositories of Learning Objects: A Case-Based Reasoning Approach”, International Journal of Emerging Technologies in Learning, ISSN: 2321-432, Volume: 4, Issue: 1, pp. 35-4-, 2009.
[37] O.C. Santos, “A recommender system to provide adaptive and inclusive standard-based support along the eLearning life cycle”, Proceedings of the 2008 ACM conference on Recommender systems, San Jose, U.S.A., pp. 319-322, 2008.
[38] R. Klamma, M. Spaniol and Y. Cao, “Community Aware Content Adaptation for Mobile Technology Enhanced Learning”, Innovative Approaches for Learning and Knowledge Sharing, pp. 227-241, 2006.
[39] J.A. Konstan, B.N. Miller, D. Maltz, J.L. Herlocker, L.R. Gordon and J.Riedl, “GroupLens: applying collaborative filtering to usenet news” Communications of the ACM, ISSN: 0004-5411, Volume: 40, Issue: 3, pp. 77–87 ,1997.
[40] M. Deshpande and G. Karypis, “Item-based top-N recommendation algorithms”, ACM Transaction on Information Systems, ISSN: 0004-1145, Volume: 22, Issue: 1, pp.143-177,2004.
[41] http://www.last.fm.
[42] J.S. Breese, D. Heckerman and C. Kadie, “Empirical analysis of predictive algorithms for collaborative filtering”, Proceedings of the fourteenth Annual Conference on Uncertainty in Artificial Intelligence, pp. 43–52. San Franciscoo, U.S.A, 1998.
[43] D. Billsus and M.J. Pazzaniand, “Learning collaborative information filters”, Proceedings of the fifteenth International Conference on Machine Learning, San Francisco, U.S.A, 1998.
Citation
J. Saul Nicholas, F. Sagayaraj Francis, "A Comprehensive Survey of Neighborhood-Based Recommendation Methods used in E-Learning Recommender Systems," International Journal of Computer Sciences and Engineering, Vol.7, Issue.1, pp.443-450, 2019.
Data Security Framework for Data-Centers
Survey Paper | Journal Paper
Vol.7 , Issue.1 , pp.451-456, Jan-2019
CrossRef-DOI: https://doi.org/10.26438/ijcse/v7i1.451456
Abstract
Data-centers play an important role in today`s time for storing and maintaining huge amounts of data being generated daily and operated in real-time, to keep this data secure becomes as much important as keeping it stored. To address the current flaws in security policy of data-centers and to eradicate those flaws this paper suggest a new security framework for data-centers. This would provide data-centers with all kind of precautions and instructions to handle most of situations that may arise during management and other data related tasks and even after breaches by defining all data storage rules by classifying data, and defining data access rights with security policies for authentication and data verification. These all things make sure that data is secured and more reliable at both aspect storage as well as data authenticity in this framework for Data-Centers.
Key-Words / Index Term
Data-center, Encryption, Data security, Immutable data, Policy, Real-time backup
References
[1] Ben M. Chen, Tong H. Lee, Kemao Peng and VenkatakrishnanVenkataramanan, “Hard Disk Drive Servo Systems”, Springer, pp. 3-8, 2006
[2] Katherine Murray, “Introduction to Personal Computers”, Que Corporation,India, pp. 11-28, 1990.
[3] B.FakhimM.BehniaS.W.ArmfieldN.Srinarayana“Cooling solutions in an operational data centre: A case study” Elsevier Applied Thermal Engineering, Volume 31, Issues 14–15, p.p 2279-2291,2011.
[4] Al-Fares, M., Loukissas, A., & Vahdat, A. “A scalable, commodity data center network architecture” ACM SIGCOMM Computer Communication Review, 38(4),p.p 63-74,2008.
[5] S. Mittal, “Power management techniques for data centers: A survey,” CoRR, vol. abs/1404.6681, 2014.
[6] Knapp, K. J., Denney, G. D., & Barner, M. E. "Key issues in data center security: An investigation of government audit reports". Government Information Quarterly, 28(4), p.p 533–541,2011.
[7] Maurizio Portolani, Mauricio Arregoces. "Data Center Fundamentals". Publishers, Cisco Press, 800 East 96th Street Indianapolis, IN 46240 USA,2004.
[8] “A Matrix of Security Risks and Solutions"Oracle9i Security Overview, Release 2 (9.2)Oracle Docs.",2002.
[9] The University of Kansas Policy Library."Data Classification and Handling Policy", 2014.
[10] "Data Center Access Policy" Information Technology Services, West Virginia University, 2018.
[11] Laurens Van Houtven, "Crypto 101" Creative Comons,2013.
[12] Diffie, W., & Hellman, M. "New directions in cryptography". IEEE Transactions on Information Theory, 22(6),p.p 644–654,1976.
[13] Jonathan Katz Yehuda Lindell - "Introduction to Modern Cryptography_ Principles and Protocols",Chapman And Hall/CRC, p.p 241-245, 2007.
[14] Tadayoshi Kohno, Niels Ferguson, Bruce Schneier -"Cryptography Engineering Design Principles and practical applications" Wiley Publishing Inc.,2010.
[15] Goldreich O - "Foundations of cryptography", Now Publishers Inc. 2001.
Citation
Narender Kumar, Avinash Karhana, "Data Security Framework for Data-Centers," International Journal of Computer Sciences and Engineering, Vol.7, Issue.1, pp.451-456, 2019.
MCMSim Test-Bed for Multi-Channel MAC Framework For MANET
Research Paper | Journal Paper
Vol.7 , Issue.1 , pp.457-462, Jan-2019
CrossRef-DOI: https://doi.org/10.26438/ijcse/v7i1.457462
Abstract
With the rising computational capacity requirements and ubiquitous computing, newer and powerful hardware and software platforms are being created. These newer powerful architectures and platforms are significantly different from their conventional predecessor architectures. These new platforms need to be evaluated, tested and validated for performance measurement before the product release. In the area of mobile ad hoc networks the use of multiple communication channels has emerged as a powerful new hardware platform which can increase the capacity manifold. But one major problem faced by researchers is that the traditional simulation tools don’t support these improved hardware platforms. So to carry out performance analysis of these platforms new test-beds and simulators are required to be developed. In the proposed work a software simulation test-bed for multi-channel Medium Access Control framework for mobile ad hoc Networks (MANET) has been developed and is named MCMSim.
Key-Words / Index Term
Mobile ad hoc networks, test-beds, NS-3, Multi-channels, Network, Simulation Tools
References
[1] Hortelano, Jorge, et al. "Castadiva: a test-bed architecture for mobile ad hoc networks." Personal, Indoor and Mobile Radio Communications, 2007. PIMRC 2007. IEEE 18th International Symposium on. IEEE, 2007.
[2] Rampfl, Sebastian. "Network simulation and its limitations." Proceeding zum Seminar Future Internet (FI), Innovative Internet Technologien und Mobilkommunikation (IITM) und Autonomous Communication Networks (ACN). Vol. 57. 2013.
[3] Breslau, Lee, et al. "Advances in network simulation." Computer 33.5 (2000): 59-67.
[4] Bajaj, Lokesh, et al. "Glomosim: A scalable network simulation environment." UCLA computer science department technical report 990027.1999 (1999): 213.
[5] Lin, Guolong, Guevara Noubir, and Rajmohan Rajaraman. "Mobility models for ad hoc network simulation." INFOCOM 2004. Twenty-third AnnualJoint Conference of the IEEE Computer and Communications Societies. Vol. 1. IEEE, 2004.
[6] Tian, Jing, et al. "Graph-based mobility model for mobile ad hoc network simulation." Simulation Symposium, 2002. Proceedings. 35th Annual. IEEE, 2002
[7] Heidemann, John, et al. "Effects of detail in wireless network simulation." Proceedings of the SCS Multiconference on Distributed simulation. 2001.
[8] Fujimoto, Richard M., et al. "Large-scale network simulation: how big? how fast?." Modeling, Analysis and Simulation of Computer Telecommunications Systems, 2003. MASCOTS 2003. 11th IEEE/ACM International Symposium on. IEEE, 2003.
[9] Beshay, Joseph D., et al. "Wireless networking testbed and emulator (winetester)." Computer Communications 73 (2016): 99-107.
[10] Klein, Michael. Dianemu: A java based generic simulation environment for distributed protocols. Universität Karlsruhe, Fakultät für Informatik, 2003.
[11] Riley, George F. "Simulation of large scale networks II: large-scale network simulations with GTNetS." Proceedings of the 35th conference on Winter simulation: driving innovation. Winter Simulation Conference, 2003.
[12] Sobeih, Ahmed, et al. "J-Sim: a simulation and emulation environment for wireless sensor networks." IEEE wireless communications 13.4(2006): 104-119.
[13] Hogie, Luc, Pascal Bouvry, and Frédéric Guinand. "An overview of manets simulation." Electronic notes in theoretical computer science 150.1 (2006): 81-101.
[14] Kumar, Rohit, Kavita Taneja, and Harmunish Taneja. "Performance Evaluation of MANET Using Multi-Channel MAC Framework." Procedia computer science 133 (2018): 755-762.
[15] Taneja, Kavita, Harmunish Taneja, and Rohit Kumar. "QoS Improvement in MANET Using Multi-Channel MAC Framework." (2018)..
[16] Varga, András, and Rudolf Hornig. "An overview of the OMNeT++ simulation environment." Proceedings of the 1st international conference on Simulation tools and techniques for communications, networks and systems & workshops. ICST (Institute for Computer Sciences, Social-Informatics and Telecommunications Engineering), 2008.
[17] Prokkola, Jarmo. "Opnet-network simulator, URL http://www. telecomlab.oulu.fi/kurssit/521365A
tietoliikennetekniikansimuloinnitjatyokalut/Opnetesittel, 7 (2006).
[18] Ahmed, Sheeraz, Muhammad Bilal, and Umer Farooq. "Performance Analysis of various routing strategies in Mobile Ad hoc Network using QualNet simulator." Emerging Technologies, 2007. ICET 2007. International Conference on. IEEE, 2007.
[19] Barr, Rimon. "Swans-scalable wireless ad hoc network simulator." User Guide, 2004.
[20] Issariyakul, Teerawat, and Ekram Hossain. Introduction to network simulator NS2. Springer Science & Business Media, 2011.
[21] Riley, George F., and Thomas R. Henderson. "The ns-3 network simulator." Modeling and tools for network simulation. Springer, Berlin, Heidelberg, 15-34, 2010.
[22] V. Kumar and R. Kumar, “An Optimized Multichannel MAC Scheme with Dynamic Control Channel Interval in Dense VANET” International Journal of Information Technology, 2019.
[23] Brown, Timothy, et al. "Test bed for a wireless network on small UAVs." AIAA 3rd" Unmanned Unlimited" Technical Conference, Workshop and Exhibit. 2004.
Citation
Rohit Kumar, Kavita Taneja, Harmunish Taneja, "MCMSim Test-Bed for Multi-Channel MAC Framework For MANET," International Journal of Computer Sciences and Engineering, Vol.7, Issue.1, pp.457-462, 2019.
Template-Based Efficient Resource Provisioning and Utilization in Cloud Data-Center
Research Paper | Journal Paper
Vol.7 , Issue.1 , pp.463-477, Jan-2019
CrossRef-DOI: https://doi.org/10.26438/ijcse/v7i1.463477
Abstract
Cloud computing, with an ever-growing interest, with the promise of revolving computing as a utility after water, electricity, gas and telephony is currently at a stage, where many enterprises are considering adapting to this technology. Resource provisioning policies allow efficient sharing of resources available in a data center and these policies help to evaluate and enhance the cloud performance. Resource provisioning that maintains quality of service with optimum resource utilization is a challenge. It is a multidimensional problem that can have issue based solution in the form of a set of services that help allocation and negotiation of service level agreements. A cloud simulator environment is used and experiments are performed by varying different parameters of Virtual Machines (VM) and the tasks running on VM, to get optimal values for designing templates. The proposed template based resource provisioning (TBRP) method overcomes under-provisioning and over-provisioning of resources for agreed parameters specified by SLA.
Key-Words / Index Term
Service Level Agreement, Quality of Service, Virtual Machines, Resource Provisioning
References
[1] Sosinsky, B. (2010). Cloud computing bible (Vol. 762). John Wiley & Sons.
[2] Shawish, A., &Salama, M. (2014). Cloud computing: paradigms and technologies. In Inter-cooperative collective intelligence: Techniques and applications (pp. 39-67). Springer Berlin Heidelberg.
[3] Byun, E. K., Kee, Y. S., Kim, J. S., &Maeng, S. (2011). Cost optimized provisioning of elastic resources for application workflows. Future Generation Computer Systems, 27(8), 1011-1026.
[4] Bianco, P., Lewis, G. A., & Merson, P. (2008). Service level agreements in service-oriented architecture environments (No. CMU/SEI-2008-TN-021). Carnegie-Mellon Univ Pittsburgh Pa Software Engineering Inst.
[5] John, M., Gurpreet, S., Steven, W., Venticinque, S., Massimiliano, R., David, H., & Ryan, K. (2012). Practical Guide to Cloud Service Level Agreements.
[6] Wu, L., &Buyya, R. (2012). Service level agreement (sla) in utility computing systems. IGI Global, 15.
[7] Liu, F., Tong, J., Mao, J., Bohn, R., Messina, J., Badger, L., & Leaf, D. (2011). NIST cloud computing reference architecture. NIST special publication, 500(2011), 292.
[8] Buyya, R., Yeo, C. S., Venugopal, S., Broberg, J., &Brandic, I. (2009). Cloud computing and emerging IT platforms: Vision, hype, and reality for delivering computing as the 5th utility. Future Generation computer systems, 25(6), 599-616.
[9] Kremer, J. (2010). Cloud Computing and Virtualization. White paper on virtualization.
[10] Nurmi, D., Wolski, R., Grzegorczyk, C., Obertelli, G., Soman, S., Youseff, L., &Zagorodnov, D. (2009, May). The eucalyptus open-source cloud-computing system. In Proceedings of the 2009 9th IEEE/ACM International Symposium on Cluster Computing and the Grid (pp. 124-131). IEEE Computer Society.
[11] Malhotra, L., Agarwal, D., &Jaiswal, A. (2014). Virtualization in cloud computing. J Inform Tech SoftwEng, 4(2), 136.
[12] Zhang, Q., Cheng, L., & Boutaba, R. (2010). Cloud computing: state-of-the-art and research challenges. Journal of internet services and applications, 1(1), 7-18.
[13] Leavitt, N. (2009). Is cloud computing really ready for prime time. Growth, 27(5), 15-20.
[14] Rimal, B. P., Choi, E., &Lumb, I. (2009). A Taxonomy and Survey of Cloud Computing Systems. NCM, 9, 44-51.
[15] Endo, P. T., de Almeida Palhares, A. V., Pereira, N. N., Goncalves, G. E., Sadok, D., Kelner, J.,&Mangs, J. E. (2011). Resource allocation for distributed cloud: concepts and research challenges. IEEE network, 25(4).
[16] Gillam, L., Li, B., &O’Loughlin, J. (2014). Benchmarking cloud performance for service level agreement parameters. International Journal of Cloud Computing 2, 3(1), 3-23
[17] Emeakaroha, V. C., Brandic, I., Maurer, M., &Dustdar, S. (2010, June). Low level metrics to high level SLAs-LoM2HiS framework: Bridging the gap between monitored metrics and SLA parameters in cloud environments. In High Performance Computing and Simulation (HPCS), 2010 International Conference on (pp. 48-54). IEEE.
[18] Jeyarani, R., &Nagaveni, N. (2012). A Heuristic Meta Scheduler for Optimal Resource Utilization and Improved QoS in Cloud Computing Environment. International Journal of Cloud Applications and Computing (IJCAC), 2(1), 41-52.
[19] Rajarajeswari, C. S., &Aramudhan, M. (2014). Ranking Model for SLA Resource Provisioning Management. International Journal of Cloud Applications and Computing (IJCAC), 4(3), 68-80
[20] Feng, Y., Zhijian, W., & Qian, H. (2016). A novel QoS-aware mechanism for provisioning of virtual machine resource in cloud. Journal of Algorithms & Computational Technology, 10(3), 169-175.
[21] Zuo, L., Shu, L. E. I., Dong, S., Zhu, C., & Hara, T. (2015). A multi-objective optimization scheduling method based on the ant colony algorithm in cloud computing. IEEE Access, 3, 2687-2699.
[22] Zuo, L., Shu, L., Dong, S., Chen, Y., & Yan, L. (2017). A multi-objective hybrid cloud resource scheduling method based on deadline and cost constraints. IEEE Access, 5, 22067-22080
[23] G.U.Tambe1, P.R. Bhaladhare2 “Efficient Resource Sharing in Heterogeneous Environments” International Journal of Scientific Research in Network Security and Communication, Vol.5, Issue.3, pp.123-127, 2017.
[24] Garg, S. K., Gopalaiyengar, S. K., &Buyya, R. (2011, October). SLA-based resource provisioning for heterogeneous workloads in a virtualized cloud datacenter. In International conference on Algorithms and architectures for parallel processing (pp. 371-384). Springer, Berlin, Heidelberg.
[25] Sebagenzi Jason, Suchithra. R, “Scheduling Reservations of Virtual Machines in Cloud Data Center for Energy Optimization”, International Journal of Computer Engineering, Vol.6, Issue.6, pp.16-26, 2018.
Citation
Seema Chowhan, Ajay Kumar, Shailiaja Shirwaikar, "Template-Based Efficient Resource Provisioning and Utilization in Cloud Data-Center," International Journal of Computer Sciences and Engineering, Vol.7, Issue.1, pp.463-477, 2019.
Meta Analysis and Verification on Automated Image Tagging Techniques
Research Paper | Journal Paper
Vol.7 , Issue.1 , pp.478-488, Jan-2019
CrossRef-DOI: https://doi.org/10.26438/ijcse/v7i1.478488
Abstract
Automatic image tagging is an active topic of research in computer vision and pattern recognition. There is a huge urge in the Computer Vision community today to find ways to automatically annotate images. Machine learning techniques have facilitated image retrieval by automatically classifying and annotating images with keywords. Among them Support Vector Machines (SVMs) have been used extensively due to their generalization properties.
Key-Words / Index Term
Component, Formatting, Style, Styling, Insert (key words)
References
[1] Dengsheng Zhang, Md. Monirul Islam, Guojun Lu. “A review on automatic image annotation techniques” .(2012)
[2] Nasullah Khalid Alham, Maozhen Li , Yang Liu, Suhel Hammoud . “A MapReduce-based distributed SVM algorithm for automatic image annotation” .
[3] Minmin Chen, Alice Zheng, and Kilian Q. Weinberger, “Fast Image Tagging”.
[4] A.W.M. Smeulders, M. Worring, S. Santini, A. Gupta, and R. Jain . “Content-based image retrieval at the end of the early years . Pattern Analysis and Machine Intelligence, IEEE”.
[5] X. Qi and Y. Han. “Incorporating multiple svms for automatic image annotation . Pattern Recognition”, 40(2):728–741, February 2007.
[6] A. Yavlinsky, E. Schofield, and S. Rger . “Automated image annotation using global features and robust nonparametric density estimation”. In International Conference on Image and Video Retrieval, pages 507–517. Springer, 2005.
[7] O. Chapelle, P. Haffner, and V. N. Vapnik. “Support vector machines for histogram-based image classification”. Neural Networks, IEEE Transactions on, 10(5):1055–1064, 1999.
[8] V. Lavrenko, R. Manmatha, and J. Jeon. “A model for learning the semantics of pictures”. In in NIPS. MIT Press, 2003.
[9] Ying Liua,, Dengsheng Zhanga, Guojun Lua, Wei-Ying Ma, “A survey of content-based image retrieval with high-level semantics”.
[10] Tanveer J. Siddiqui , “Bridging the Semantic Gap”.
[11] Aanchan K Mohan and Marwan A.Torki, “Automatic Image Annotation using Neural Networks”.
[12]Alpesh Dabhi, Bhavesh Prajapati , “A Neural Network Model for Automatic Image Annotation and Annotation Refinement”: A survey 2014 IJEDR | Volume 2, Issue 1 43
[13]Suman Tatiraju, Avi Mehta , “Image Segmentation using k-means clustering, EM and Normalized Cuts”
[14]Sarthak panda, ”Color Image Segmentation Using K-means Clustering and Thresholding Technique” (march 2015)
[15] Dhatri Pandya1, Prof. Bhumika Shah, “Comparative Study on Automatic Image Annotation” (ISSN 2250-2459, ISO 9001:2008 Certified Journal, Volume 4, Issue 3, March 2014)
[16] P. Duygulu, K. Barnard, N. de Freitas, D. Forsyth,2002. "Object recognition as machine translation: learning a lexicon for a fixed image vocabulary", In Seventh European Conference on Computer Vision (ECCV), Vol. 4, pp. 97-112.
[17] Reena Pagare and Anita Shinde , “A study on Image Annotation Techniques”, International Journal of Computer Applications Volume 37-No6. January 2012.
[18] Lei Wu Member,IEEE Rong Jin, Anil K. Jain, Fellow, IEEE , “Tag Completion for Image Retrieval”.
[19] Dongping Tian , “Support vector machine for Automatic Image Annotation” International Journal of Hybrid Information Technology Vol.8 No.11(2015).
[20]Dataset : http://www.ci.gxnu.edu.cn/cbir/Dataset.aspx
[21]Attributes: http://sci2s.ugr.es/keel/dataset/data/multilabel/corel5k-names.txt
Citation
S.Khoria, "Meta Analysis and Verification on Automated Image Tagging Techniques," International Journal of Computer Sciences and Engineering, Vol.7, Issue.1, pp.478-488, 2019.
An Advanced IoT Based Frame Work to Save Electrical power in an Organization
Survey Paper | Journal Paper
Vol.7 , Issue.1 , pp.489-492, Jan-2019
CrossRef-DOI: https://doi.org/10.26438/ijcse/v7i1.489492
Abstract
The growing global demand for power supply is likely to exhaust available resources soon. It is advisable to avoid wastage of electricity as it may overburden consumer adversely. In the present study, we propose an IoT based solution to reduce electric power wastage in organizations. As the organizations are generally divided into sub sections or departments, a frame work can be proposed which allows the managers and supervisors to keep an online track of the ON/OFF status of appliances in their respective departments/sectors. The access to appliances can be provided with a Secure Shell connection through a dedicated server which keeps monitoring all the appliances in the whole organization continuously. Each manager and in-charge along with other officials can be provided with a user ID and password to login with. Each of them is likely to entertain with different level of rights to control various gadgets of the department. This frame work can prove itself to be useful in reducing the problem of various appliances ON in an organization. The frame work has provision for further improvements such that with slight modification it can be implemented controlling and monitoring a weather station situated in the remote forest.
Key-Words / Index Term
RPi (Raspberry Pi), Arduino UNO, SSH, GSM
References
[1] Faisal Baig, Saira Baig, and Fahad Khan, Muhammad. Controlling home appliances remotely through voice command. International Journal of Computer Applications, 48(17):0975-888, June 2012.
[2] Shivanka, Ashu Grover, and Nikhil Arora. Controlling electrical appliances through pc and gsm technology. International Journal of Computer Applications, 76(2):09758887, August 2013.
Citation
Swaleha Zubair, Uzair Aalam, "An Advanced IoT Based Frame Work to Save Electrical power in an Organization," International Journal of Computer Sciences and Engineering, Vol.7, Issue.1, pp.489-492, 2019.
Stock Market Analysis using ART-SVR based on Technical Parameters
Research Paper | Journal Paper
Vol.7 , Issue.1 , pp.493-504, Jan-2019
CrossRef-DOI: https://doi.org/10.26438/ijcse/v7i1.493504
Abstract
In this research work, a soft computing or machine learning approach is used to design an algorithm which is a basic hybridized framework of the feature reduced adaptive resonance theory (ART) and support vector regression (SVR) to effectively predict stock market price as well as behaviour from the historical dataset.Ten different technical indicators are extracted and reduced using particle swarm optimization (PSO). Simulation results on different well-known stock market price like Adani Powers, BHEL, Reliance Industries, SBI and Infosys, stock exchange price is finally presented to test the performance of the established model. With the proposed model, it can achieve a better prediction capability to stocks. The proposed algorithm is compared with ART algorithm and analyzed that proposed model predicts better stock position behavior.
Key-Words / Index Term
Machine learning, ART, SVR, PSO, Stock Market Indices, Technical indicators, Stock Prediction
References
[1] Xi, L., Muzhou, H., Lee, M. H., Li, J., Wei, D., Hai, H., & Wu, Y., “A new constructive neural network method for noise processing and its application on stock market prediction”, Applied Soft Computing, vol. 15, pp. 57–66, 2014.
[2] Yu, H., Chen, R., & Zhang, G., “A svm stock selection model within pca”, Procedia computer science, vol. 31, pp. 406–412, 2014.
[3] Chen MY. “A high-order fuzzy time series forecasting model for internet stock trading”, Future GenerComput System, vol. 37, pp. 461-467, 2014.
[4] Cervell´o-Royo, R., Guijarro, F., Michniuk, K., “Stock market trading rule based on pattern recognition and technical analysis: Forecasting the djia index with intraday data”, Expert systems with Applications, vol. 042, pp. 5963–5975, 2015.
[5] Hu, Y., Feng, B., Zhang, X., Ngai, E., & Liu, M., “Stock trading rule discovery with an evolutionary trend following model”, Expert Systems with Applications, vol. 42, pp. 212–222, 2015.
[6] Rahman, H. F., Sarker, R., &Essam, D., “A genetic algorithm for permutation flow shop scheduling under make to stock production system”, Computers & Industrial Engineering, vol. 90, pp. 12–24, 2015.
[7] Nayak, R. K., Mishra, D., &Rath, A. K., “A na¨ıvesvm-knn based stock market trend reversal analysis for indian benchmark price”, Applied Soft Computing, vol 35, pp. 670–680, 2015.
[8] Chiang, W.-C., Enke, D., Wu, T., & Wang, R., “An adaptive stock index trading decision support system”, Expert Systems with Applications, vol 59, pp. 195–207, 2016.
[9] Kim, Y., &Enke, D., “Developing a rule change trading system for the futures market using rough set analysis”, Expert Systems with Applications, vol 59, pp. 165–173, 2016.
[10] Podsiadlo, M., &Rybinski, H, “Financial time series forecasting using rough sets with time-weighted rule voting”, Expert Systems with Applications, vol 66, pp. 219–233, 2016.
[11] Zhong, X., &Enke, D., “Forecasting daily stock market return using dimensionality reduction”, Expert Systems with Applications, vol 67, pp. 126–139, 2017.
[12] Pankaj K. Bharne, Sameer S. Prabhune, “Survey on combined swarm intelligence and ANN for optimized daily stock market price”, International Conference on Soft Computing and its Engineering Applications,IEEE, 2017.
[13] ZhixiLi, Vincent Tam, “A comparative study of a recurrent neural network and support vector machine for predicting price movements of stocks of different volatilites”, IEEE Symposium Series on Computational Intelligence, 2017.
[14] Hasan S.S., Rahman R., Mannan N., Khan H., Moni J.N., Rahman R.M, “Improved Stock Price Prediction by Integrating Data Mining Algorithms and Technical Indicators: A Case Study on Dhaka Stock Exchange”, International Conference on Computational Collective Intelligence, pp 288-297, 2017.
[15] Lei Lei, “Wavelet Neural Network Prediction Method of Stock Price Trend Based on Rough Set Attribute Reduction”, Applied Soft Computing, Vol. 62, pp. 923-932, 2018.
[16] Manas Ranjan Senapati, Sumanjit Das, Sarojananda Mishra, “A Novel Model for Stock Price Prediction Using Hybrid Neural Network”, Journal of The Institution of Engineers, Vol. 99, Issue 6, pp 555–563, 2018.
[17] SotiriosP.ChatzisaVassilisSiakoulis, “Forecasting stock market crisis events using deep and statistical machine learning techniques”, Expert Systems with Applications, Volume 112, pp. 353-371, 2018.
[18] Tae Kyun, Leeab Joon, Hyung ChobDeuk, Sin Kwonb, “Global stock market investment strategies based on financial network indicators using machine learning techniques”, Expert Systems with Applications, vol. 117, pp. 228-242, 2018.
[19] Bruno Mirand, HenriqueVinicius, Amorim Sobreiro, Herbert Kimur, “Stock price prediction using support vector regression on daily and up to the minute prices”, The Journal of Finance and Data Science, Volume 4, Issue 3, pp. 183-201, 2018.
[20] Feng Zhou, Hao-min Zhou, Zhihua Yang, Lihua Yang, “EMD2FNN: A strategy combining empirical mode decomposition and factorization machine based neural network for stock market trend prediction”, Expert Systems with Applications, Vol. 115, pp. 136-151,2018.
[21] M.Janik, P.Bossew, O.Kurihara, “Machine learning methods as a tool to analyse incomplete or irregularly sampled radon time series data”, Science of The Total Environment Vol. 630, pp. 1155-1167, 2018.
[22] Salim Lahmiri, “Minute-ahead stock price forecasting based on singular spectrum analysis and support vector regression”, Applied Mathematics and Computation, Vol. 320, pp. 444-451, 2018.
[23] R.S. Walse, G.D. Kurundkar, P. U. Bhalchandra, "A Review: Design and Development of Novel Techniques for Clustering and Classification of Data", International Journal of Scientific Research in Computer Science and Engineering, Vol.06, Issue.01, pp.19-22, 2018.
[24] A. JenitaJebamalar, "Efficiency of Data Mining Algorithms Used In Agnostic Data Analytics Insight Tools", International Journal of Scientific Research in Network Security and Communication, Vol.6, Issue.6, pp.14-18, 2018.
Citation
Manoj Lipton, Sarvottam Dixit, Asif Ullah Khan, "Stock Market Analysis using ART-SVR based on Technical Parameters," International Journal of Computer Sciences and Engineering, Vol.7, Issue.1, pp.493-504, 2019.
Upgradation of Food Moisture Analyzer using IOT
Research Paper | Journal Paper
Vol.7 , Issue.1 , pp.505-508, Jan-2019
CrossRef-DOI: https://doi.org/10.26438/ijcse/v7i1.505508
Abstract
Moisture meters are used to measure the percentage of water in a given substance. This information can be used to determine if the material is ready for use, unexpectedly wet or dry, or in need of further inspection. Food plays a very vital role in our life so it is very important to check the food quality using moisture meter .Moisture plays a very vital role in the daily operations of Food Corporation of India (FCI). With a change in moisture value, computation of storage loss/ gain in food grains gets affected. Hence capturing the moisture value is very essential. Since many food products are bought and sold by weight, moisture content is a key component in ensuring accuracy for purchasing raw materials. Water in food products also affects various characteristics of the product that are important to its taste, texture, color, density, particle size, etc. Generally, moisture is calculated and reading are noted manually and then it is fed in the system then deploy it online. So, the proposed system gives a solution where the readings of the moisture meter are captured and directly fed into Depot Online System (DOS) using wireless transmission. It will reduce the human labor as well reading will be precise as compared traditional system.
Key-Words / Index Term
IOT, Moisture Meter, FCI, DOS
References
[1] W.C.Wang, L.Wang, “Design of Moisture Content Detection System”, In the Proceedings of 2012 International Conference on Medical Physics and Biomedical Engineering, China, pp.1408 – 1411, 2012.
[2] M. Zhiwei, L. Changyou , W. Biying, “Design and Test of Grain Moisture Online Measuring System Based on Floating Ground Capacitance”, In the Proceedings of 5th International Conference on Measurement, Instrumentation and Automation (ICMIA 2016), China, pp.821-830, 2016.
[3] M. A. Lewis, S. Trabelsi , “Integrating an embedded System In a microwave moisture Meter”, In the Proceedings of 2012 American Society of Agricultural and Biological Engineers, USA, Vol. 28(6): pp.923-931, 2012.
[4] S. Trabelsi, S. O. Nelson,” A Low-Cost Microwave Sensor for Simultaneous and Independent determination of Bulk Density and Moisture Content in Grain and Seed”, 2007 ASABE Annual International Meeting, USA, Paper Number: 076240, 2007.
[5] Z. W. Mai, Chang Y. Li, Y. Zhang, F. Ying Xu, J. M. Li, “Application of Wireless Data Transmission Technique in Drying Equipment”, Advanced Materials Research, USA, Vol. 422, pp.262-267, 2012.
[6] Z. Liu, W. Zidan, Z. Zhang, W. Wung, L. Hexin, “Research on Online Moisture Detector in Grain Drying Process Based on V/F Conversion”, Hindawi Publishing Corporation Mathematical Problems in Engineering,
Volume 2015, Article ID 565764, pp.1-10.
[7] Y. Yueqian, W. Jianping, W. Chengzhi. “Study on line measurement of grain moisture content by neutron gauge”, Transactions of the CSAE, China, pp.99-110, 2000.
[8] L. Changyou, “Design and experiment of online moisture metering device for paddy drying process”, Transactions of the Chinese Society for Agricultural Machinery, China, pp.56-59, 2008.
Citation
Nafisa Mapari, Salman Siddiqui, Rumi Shaikh, Rishabh Srivastav, "Upgradation of Food Moisture Analyzer using IOT," International Journal of Computer Sciences and Engineering, Vol.7, Issue.1, pp.505-508, 2019.
Analysis of GA Performance on Its Various Parameters for Solving Travelling Salesman NP-Hard Problem
Research Paper | Journal Paper
Vol.7 , Issue.1 , pp.509-512, Jan-2019
CrossRef-DOI: https://doi.org/10.26438/ijcse/v7i1.509512
Abstract
Genetic Algorithm (GA) is a well-known heuristic algorithm inspired by theory of adaptation. GA is applicable to solve many problems of science and engineering. GA performs its operations such as selection, reproduction and mutation to solve a problem. The genetic parameters such as population size, cross over rate and mutation rate control the performance and effectiveness of GA to solve a problem. In this paper, GA is applied to solve Traveling Salesman Problem (TSP). TSP problem is an optimization problem and it is a member of the set NP-Hard problems. In this paper the performance of GA on its parameters is analyzed to solve TSP problem.
Key-Words / Index Term
NP-Complete, Genetic Algorithm, Genetic Parameters
References
[1] S. Sharma and K. Gupta, "Solving the traveling salesmen problem through genetic algorithm with new variation order crossover," 2011 International Conference on Emerging Trends in Networks and Computer Communications (ETNCC), Udaipur, 2011, pp. 274-276.
[2] B. H. Hasan and M. S. Mustafa, "Comparative Study of Mutation Operators on the Behavior of Genetic Algorithms Applied to Non-deterministic Polynomial (NP) Problems," 2011 Second International Conference on Intelligent Systems, Modelling and Simulation, Kuala Lumpur, 2011, pp. 7-12.
[3] M. A. H. Akhand, S. Akter, S. Sazzadur Rahman and M. M. Hafizur Rahman, "Particle Swarm Optimization with partial search to solve Traveling Salesman Problem," 2012 International Conference on Computer and Communication Engineering (ICCCE), Kuala Lumpur, 2012, pp. 118-121.
[4] H. ElAarag and S. Romano, "Animation of the Traveling Salesman Problem," 2013 Proceedings of IEEE Southeastcon, Jacksonville, FL, 2013, pp. 1-6.
[5] S. Cui and S. Han, "Ant Colony Algorithm and Its Application in Solving the Traveling Salesman Problem," 2013 Third International Conference on Instrumentation, Measurement, Computer, Communication and Control, Shenyang, 2013, pp. 1200-1203.
[6] Q. Bai, G. Li and Q. Sun, "An improved hybrid algorithm for traveling salesman problem," 2015 8th International Conference on Biomedical Engineering and Informatics (BMEI), Shenyang, 2015, pp. 806-809.
[7] M. Munlin and M. Anantathanavit, "Hybrid K-means and Particle Swarm Optimization for symmetric Traveling Salesman Problem," 2015 IEEE 10th Conference on Industrial Electronics and Applications (ICIEA), Auckland, 2015, pp. 671-676.
[8] Muhao Chen, Chen Gong, Xiaolong Li and Zongxin Yu, "Research on solving Traveling Salesman Problem based on virtual instrument technology and genetic-annealing algorithms," 2015 Chinese Automation Congress (CAC), Wuhan, 2015, pp. 1825-1827.
[9] J. Stastný, V. Skorpil and L. Cizek, "Traveling Salesman Problem optimization by means of graph-based algorithm," 2016 39th International Conference on Telecommunications and Signal Processing (TSP), Vienna, 2016, pp. 207-210.
[10] M. Khalil, J. Li, Y. Wang and A. Khan, "Algorithm to solve travel salesman problem efficently," 2016 13th International Computer Conference on Wavelet Active Media Technology and Information Processing (ICCWAMTIP), Chengdu, 2016, pp. 123-126.
[11] Q. Hao, L. Fang and S. Tao, "A Discrete Fruit Fly Optimization Algorithm for Traveling Salesman Problem," 2017 International Conference on Industrial Informatics - Computing Technology, Intelligent Technology, Industrial Information Integration (ICIICII), Wuhan, 2017, pp. 254-257.
[12] I. B. K. Widiartha, S. E. Anjarwani and F. Bimantoro, "Traveling salesman problem using multi-element genetic algorithm," 2017 11th International Conference on Telecommunication Systems Services and Applications (TSSA), Lombok, 2017, pp. 1-4.
[13] A. H. M. Alaidi and A. Mahmood, "Distributed hybrid method to solve multiple traveling salesman problems," 2018 International Conference on Advance of Sustainable Engineering and its Application (ICASEA), Wasit, 2018, pp. 74-78.
[14] Z. Pan, Y. Chen, W. Cheng and D. Guo, "Improved fruit fly optimization algorithm for traveling salesman problem," 2018 33rd Youth Academic Annual Conference of Chinese Association of Automation (YAC), Nanjing, 2018, pp. 466-470.
[15] M. Bandyopadhyay, S. Chattopadhyay , A. Das, “Emphasis on Genetic Algorithm (GA) Over Different PID Tuning Methods of Controlling Servo System Using MATLAB”, International Journal of Scientific Research in Computer Science and Engineering, Vol.1, Issue.3, pp.8-13, 2013.
[16] Rajeev Ranjan , P.J. Pawar, “Assembly Line Balancing Using Real Coded Genetic Algorithm”, International Journal of Scientific Research in Computer Science and Engineering, Vol.2, Issue.4, pp.1-5, 2014.
Citation
R.K. Singh, V.K. Panchal, B.K. Singh, "Analysis of GA Performance on Its Various Parameters for Solving Travelling Salesman NP-Hard Problem," International Journal of Computer Sciences and Engineering, Vol.7, Issue.1, pp.509-512, 2019.