EMERGING SUPPORT MEASUREMENT BASED E-LEARNING TO HIGHER EDUCATION SYSTEM
Research Paper | Journal Paper
Vol.6 , Issue.10 , pp.863-872, Oct-2018
CrossRef-DOI: https://doi.org/10.26438/ijcse/v6i10.863872
Abstract
In this work developing e-learning are adopting the replica approaches used by online higher education user. E-learning can provide the numerous benefits to the institutions such as accessing education at any time connecting to each other’s. Also it’s provide enhances interactivity, integrity scalability improved by the student`s academic performance in cloud service. However, sound studies and show majority of these benefits are enjoyed on institutions in the e-learning. The fundamental new idea to keep service data into mind is that the strength of online educational platform comes not just from replicating things that should be possible work in other ways, however when it is used to do things that weren`t possible without it. In this propose on Emerging support measurement in Higher Education (ESMHE) this technique using user short on cloud data security initiatives. To implement the online higher educator to arrange document protected close time level less in quick information telling on the e-learning system. In this e-learning to be consider entire process of academic education such as design, knowledge on developing and creating by the wonderful employing e-learning arrangement in cloud. They are significant, and they include improved efficiency, effectiveness, and enjoyment of the learning experience system colossal idea measurement online higher education user.
Key-Words / Index Term
E-learning, Higher education, measurement, services, emerging
References
[1]. T.A.Hryhorova, O.S. Moskalenko, B. Enhanced Access to Training Information in E-Learning Systems, (2018)
[2]. Yonas Hagos and Monica J. Garfield. A Conceptual Model of E-learning Systems Success and Its Implication for Future Research. IEEE (2018).
[3]. Amir Mohamed Talib., Fahad Omar Alomary. An Interactive Distance Education and E-Learning System Based on Multi-Agent System Architecture, 978-1-5386-4427-0/18/ 2018 IEEE
[4]. Karim Aтто, Elena Е.Kotova. Communication Models in the E-Learning Environment Based on Intelligent Agents, 978-1-5386-5532-0/17/. 2018 IEEE
[5]. Karim Aтто, Elena Е.Kotova LETI" St. Petersburg, Russia St. Petersburg, Russia Communication Models in the E-Learning Environment Based on Intelligent Agents, 978-1-5386-5532-0, 2018 IEEE
[6]. Kotchakorn, JetinaiUbon Ratchathani, Thailand Rule-Based Reasoning for Resource Recommendation in Personalized e-Learning, 978-1-5386-5384-5 2018 IEEE
[7]. Eberhard Heuel, Birgit Feldman Hagen, Germany New Standardisation and Certification Initiative in E-Learning – The Qualification Standard “Certified European E-Tutor, 978-1-4673-5094-5 13 2013 IEEE
[8]. Ahmed Farouk Mohamed Saleh, Al Farouk Ahmed Farouk “Students with Disabilities Attitudes towards E-learning courses in developing countries” 978-0-7695-5036-72013 IEEE
[9]. YANG Ping, WANG Yanni, LI Jinping KONG Bo “Study on personality learning in E-learning” 978-0-7695-3907-2 2009 IEEE
[10]. Zendi Asma, Bouhadada Tahar, “Hybrid Approach for Modeling Units of Learning Using a Prototype Learning Design Model and IMS Learning Design Standard”, 978-1-4673-2225-6/12 2012 IEEE
[11]. Sofie Bitter, Gabriele Frankl, “Evaluation of blended learning courses the assessment of the e-tutors”, 978-1-4673-2427-4/12 2012 IEEE
[12]. Gloria C. Alaneme, Peter O. Olayiwola2, Comfort O. Reju3, “Combining Traditional Learning and the E-Learning Methods in Higher Distance Education”, 978-1-4244-8752-31101 2010 IEEE
[13]. Chi-Un Lei, Elizabeth Oh, Emily Leung, Donn Gonda, Xinyu Qi, Ruby Leung, “Scale Up Learning: Professional Development For E-Teaching/Learning”, 978-1-5090-5598-2/16 2016 IEEE
[14]. Dr. Sarmad Mohammad “SWOT Analysis of E-Learning System in Bahraini Universities”, 978-0-7695-3948-5 2010 IEEE
[15]. Muhammad Arshad, Muhammad Noman Saeed, “Emerging Technologies for E-Learning and Distance Learning: A Survey’, 978-1-4799-5739-2/14 2014 IEEE
[16]. Neurol Hamiza Zamzuri, Erne Suzila Kassim, Melissa Shahrom, “The Role of Cognitive Styles in Investigating E-Learning Usability”, 978-0-7695-3948-5 2010 IEEE
[17]. Nabil M. Hasasneh, Mohammad M. Moreb, “E-learning at Hebron University”, 978-0-7695-5036-7 2013 IEEE
[18]. Zsolt Csapo, Laszlo Karpati, Laszlo Kozar, “Andras Nabradi MBA in Agribusiness and Commerce (AGRIMBA) – a tool for life-long and e-learning”, 978-0-7695-3948-5 2010 IEEE
[19]. Faezeh Eftekhar, Saiedeh Mansouri, "the Application of Quality Management in e-Learning, by QFD Technique and Based on Customers` Needs (A Case Study in an Iranian University)", 978-1-4673-0957-8 12 2012 IEEE
[20]. Jianfeng Zhu Study On E-learning Education Model Based on Web Intelligence 978-0-7695-3948-5 2010 IEEE
Citation
M. Senthilkumar, M. Prabakaran, "EMERGING SUPPORT MEASUREMENT BASED E-LEARNING TO HIGHER EDUCATION SYSTEM," International Journal of Computer Sciences and Engineering, Vol.6, Issue.10, pp.863-872, 2018.
Regression Test Suite Management using Data Clustering Technique
Research Paper | Journal Paper
Vol.6 , Issue.10 , pp.873-879, Oct-2018
CrossRef-DOI: https://doi.org/10.26438/ijcse/v6i10.873879
Abstract
To test the modified code, we employ regression testing procedures with an aim to provide assurance that modified code behaves correctly and those modifications have not adversely affected the existing behavior or functionality of the code. Retest-all regression testing is the basic approach in which all the test cases in the initial test suite are re-executed to validate the changes. But re-running all the test cases from an existing test suite in order to test the code that is undergone minor change may be expensive as it requires an unacceptable amount of time and resources to perform it. An important problem found during regression testing is how to select a subset of test cases from an existing test suite in order to retest the modified code. Therefore, in this study we propose an efficient test suite management technique that utilizes data clustering approach for regression testing in order to effectively partition an initially random and large test suite to re-test the modified section of the code that has been modified within resource and time constraints.
Key-Words / Index Term
Software testing, Regression testing, Test Case Selection, Data Clustering, K-Means
References
[1] H. Leung, L. White,” Insights into regression testing”, In Proceedings of the Conference on Software Maintenance, pages 60–69. 1989
[2] G. Rothermel., M. Harrold., “Selecting tests and identifying test coverage requirements for modified software”, In Proceedings of the International Symposium on Software Testing and Analysis, pages 169–184. 1994
[3] M. Grindal, J. Offutt, J. Mellin, “On the testing maturity of software producing organizations”. In TAIC-PART ’06: Proceedings of the Testing: Academic & Industrial Conference on Practice and Research Techniques, pages 171–180. 2006
[4] J. Guan, J. Offutt, .P. Ammann , “An industrial case study of structural testing applied to safety critical embedded software”, In Proceedings of the 2006 ACM/IEEE international symposium on Empirical software engineering, pages 272–277. 2006
[5] T. Ball, “On the limit of control flow analysis for regression test selection”, In ISSTA ’98: Proceedings of the 1998 ACM SIGSOFT international symposium on Software testing and analysis, pages 134–142. 1998
[6] R. Gupta, M. Harrold, and M. Soffa, “Program slicing-based regression testing techniques”. Journal of Software Testing, Verification, and Reliability, 6(2):83–112. 1996
[7] D. Binkley, “Semantics guided regression test cost reduction”, IEEE Transactions on Software Engineering, 23(8):498–516. 1997
[8] L. Briand, Y. Labiche, and S. He, “Automating regression test selection based on UML designs”. Information and Software Technology, 51(1):16–30. 2009
[9] M. Harrold., J. Jones,et,al;, “Regression test selection for Java software”, In Proceedings of the 16th ACM SIGPLAN Conference on Object-Oriented Programming, Systems, Languages and Applications, pages 312–326. 2001
[10] A. Orso, N. Shi, and M. Harrold, “Scaling regression testing to large software systems”, In Proceedings of the 12th ACM SIGSOFT Twelfth International Symposium on Foundations of Software Engineering, pages 241–251. 2004
[11] C. Mao, Y Lu, and J. Zhang, “Regression testing for component-based software via built-in test design”, In Proceedings of the 2007 ACM symposium on applied computing, pages 1416–1421. 2007
[12] J. Zheng, B. Robinson, L. Williams, K Smiley, “Applying regression test selection for COTS based applications”. In ICSE ’06: Proceedings of the 28th international conference on Software engineering, pages 512–522. 2006
[13] J. Gao D. Gopinathan., Q. Mai, “A systematic regression testing method and tool for software components”. In Proceedings of the 30th Annual International Computer Software and Applications Conference (COMPSAC’06), pages 455–466. 2006.
[14] M. Ruth, S. Tu, “A safe regression test selection technique for web services”. In Proceedings of the Second International Conference on Internet and Web Applications and Services, IEEE Computer Society. 2007
[15] A. Tarhini., H. Fouchal., N. Mansour., “Regression testing web services-based applications”. In AICCSA ’06 Proceedings of the IEEE International Conference on Computer Systems and Applications, pages 163–170. 2006
[16] L. Feng, M. Ruth, S. Tu ,” Applying safe regression test selection techniques to Java web services”. In International Conference on Next Generation Web Services Practices,. NWeSP 2006., pages 133–142. 2006
[17] M .Harrold. , M .Soffa, “mInter-procedural data flow testing”. In Proceedings of the ACM SIGSOFT ’89 third symposium on Software testing, analysis, and verification, pages 158–167. 1989
[18] A Taha, S. Thebaut, and S. Liu, “An approach to software fault localization and revalidation based on incremental data flow analysis”. In Proceedings of the 13th Annual International Computer Software and Applications Conference, pages 527–534. 1989
[19] D. Binkle, “Semantics guided regression test cost reduction”. IEEE Transactions on Software Engineering,23(8):498–516. 1997
[20] S Bates, S Horwitz, “Incremental program testing using program dependence graphs”. In Conference Record of 20th ACM SIGPLAN-SIGACT Symposium on Principles of Programming Languages, pages 384–396. 1993
[21] H. Leung, L. White, “A study of integration testing and software regression at the integration level”. In Proceedings of the Conference on Software Maintenance, pages 290–300. 1990
[22] H Leung, L.White, “A firewall concept for both control-flow and data-flow in regression integration testing”. In Proceedings of the Conference on Software Maintenance, pages 262–270. 1992
[23] G Rothermel, M Harrold, “A safe, efficient regression test selection technique”. ACM Transactions on Software Engineering and Methodology, 6(2):173–210. 1997
[24] J. Laski, W. Szermer, “Identification of program modifications and its applications in software maintenance”. In Proceedings of the Conference on Software Maintenance, pages 282–290. 1992
[25] F.Vokolos, P. Frankl. “Empirical evaluation of the textual differencing regression testing Technique”. In ICSM ’98: Proceedings of the International Conference on Software Maintenance, pages 44–53. 1998
[26] F .Vokolos, P. Frankl, Pythia: “A regression test selection tool based on textual differencing”. In Proceedings of the 3rd International Conference on Reliability, Quality & Safety of Software-Intensive Systems (ENCRESS’ 97), pages 3–21. 1997
[27] G. Baradhi , N. Mansour , “A comparative study of five regression testing algorithms”. In Proceedings of Australian Software Engineering Conference, Sydney, pages 174–182. 1997
[28] J Bible, G. Rothermel, D. Rosenblum, “A comparative study of coarse- and fine-grained safe regression test-selection techniques”. ACM Transactions on Software Engineering and Methodology, 10(2):149–183. 2001.
[29] E Engström., P Runeson., and M Skoglund, “A systematic review on regression test selection techniques”. Information and Software Technology, 52(1):14–30. 2010.
[30] E Engström., M Skoglund., and P Runeson. “Empirical evaluations of regression test selection techniques: a systematic review”. In Proceedings of the Second ACM-IEEE international symposium on Empirical software engineering and measurement, pages 22–31, 2008.
[31] G Rothermel, H Roland. Untch, Chu Chengyun, and M. J. Harrold. ” Prioritizing test cases for regression testing”. IEEE Transactions on Software Engineering, 27(10):929-948. 2001
[32] H Do and G Rothermel, “ An empirical study of regression testing techniques incorporating context and lifetime factors and improved cost-benefit models”. In Proceedings of the 14th ACM SIGSOFT International Symposium on Foundations of Software Engineering. 2, 22.
[33] L. G Todd, M. J Harrold., J.M Kim., A Porter, and G Rothermel, “An empirical study of regression test selection techniques”. ACM Transactions on Software Engineering and Methodology, 10:188-197. 2001
[34] M. J. Harrold, R Gupta, and M. L Sofa, “A methodology for controlling the size of a test suite”. ACM Transactions on Software Engineering and Methodology (TOSEM), 2(3):270-285,. 1993
[35] H. Hwa-You and A. Orso (2009). Mints: “A general framework and tool for supporting test-suite minimization”, In Proceedings of the IEEE 31st International Conference on Software Engineering (ICSE`09), pages 419-429.
[36] L. Chen, Z. Wang, L. Xu, Hongmin, and Xu Baowen, “Test case prioritization for web service regression testing”. In Proceedings of the 5th IEEE International Symposium on Service Oriented System Engineering (SOSE`10), pages 173-178. 2010.
[37] S. Elbaum, A.G .Malishevsky, and G. Rothermel, “Test case prioritization: a family of empirical studies”. IEEE Transactions on Software Engineering, 28(2):159-182. 2002
[38] P. N Tan, , M. Steinbach, V. Kumar,” Introduction to Data Mining”, Addison-Wesley, Reading .2005
[39] S Lloyd. “Least squares quantization in pcm”. IEEE Trans. Info. Theory 28(2), 129–137. 1982.
[40] A Jain., R Dubes. “Algorithms for Clustering Data”. Prentice Hall, Englewood Cliffs. 1988
[41] X. Wu,. V. Kumar, J.R Quinlan, , J Ghosh, Q. Yang, et,al, “Top 10 algorithms in data mining”, Knowl. Inf. Syst. 14(1), 1–37. 2008.
[42] Genratedata.com test data generation tool, htpp://www.generatedata.com.
[43] A. K. Gupta., F. A. Khan, “An Efficient Test Data Generation Approach For Unit Testing”, IOSR (JCE), Volume 18, Issue 4, Ver. V, PP 97-107. 2016.
[44] F. A. Khan., A.K Gupta, D.J Bora, “Profiling of Test Cases with Clustering Methodology”. International Journal of Computer Applications, Vol.106 (14), pp. 32-37. 2014.
[45] F. A. Khan ,A.K Gupta, D.J Bora. “An Efficient Heuristic Based Test Suite Minimization Approach”, Indian Journal of Science and Technology, ISSN (Print): 0974-6846, ISSN (Online) : 0974-5645, Volume 10(29), pp. 1-8. 2017.
[46] F.A. Khan, A.K. Gupta, D.J. Bora, “An Efficient Technique to Test Suite Minimization using Hierarchical Clustering Approach”, International Journal of Emerging Science and Engineering (IJESE) ISSN: 2319–6378, Volume-3 Issue-11, 2015.
Citation
Fayaz Ahmad Khan, "Regression Test Suite Management using Data Clustering Technique," International Journal of Computer Sciences and Engineering, Vol.6, Issue.10, pp.873-879, 2018.
Optimal Feedback Switching Control Design for the Turbocharged Diesel Engine with an EGR System
Research Paper | Journal Paper
Vol.6 , Issue.10 , pp.880-894, Oct-2018
CrossRef-DOI: https://doi.org/10.26438/ijcse/v6i10.880894
Abstract
In the present scenario the optimization of engine parameters is very much necessary for the smooth operation of automotive engines. Switching among various strcutures is an essential feature in many engineering applications such as power systems, aircraft systems, etc. This paper presents the intelligent switching technique for the two optimized feedback controllers of the exhaust gas recirculation (EGR) system. The proposed switching control is investigated for the linearized state space model of turbocharged diesel engine with an EGR system. The results are compared with individual feedback structure as well as switching techniques to select the best controller for the future direction.
Key-Words / Index Term
EGR, LQR, Reference input and Optimal Control Theory
References
[1] Tianpu Dong, Fujun Zhang, Bolan Liu and Xiaohui “An Model-Based State Feedback Controller Design for a Turbocharged Diesel Engine with an EGR System”, energies, ISSN 1996-1073, www.mdpi.com/journal/energies.
[2] Magdi S. Mahmoud Member, IAENG “Improved Controller Design for Turbocharged Diesel Engine”, Proceedings of the World Congress on Engineering 2012 Vol III, WCE 2012, July 4 - 6, 2012, London, U.K.
[3] Chris Criensy, Frank Willemsyz, Maarten Steinbuchy, Eindhoven University of Technology, TNO Automotive “A Systematic Approach Towards Automated Control Design for Heavy-Duty EGR Diesel Engines” .
[4] Felipe Castillo Buenaventura, Emmanuel Witrant, Vincent Talon, Luc Dugard “Air Fraction and EGR Proportion Control for Dual Loop EGR Diesel Engines”, Ingenieria y Universidad, Pontifica Universidad Javeriana, Faculty of Science, 2015, 19 (1), pp.115 - 133. <10.11144/Javeriana.iyu19-1.aegr>.
[5] Jakob Mahler Hansen, Mogens Blanke, Hans Henrik Niemann, Morten Vejlgaard, Laursen “Exhaust Gas Recirculation Control for Large Diesel Engines, Achievable Performance with SISO Design”.
[6] Benjamin Haber, B.S.A “Robust Control Approach on Diesel Engines with Dual-Loop Exhaust Gas Recirculation Systems”, Thesis, The Ohio State University, 2010.
[7] Yathisha L and S Patil Kulkarni. “Optimum LQR Switching Approach for the Improvement of STATCOM Performance”, Springer LNEE, Vol 150, E-ISSN: 1876-1100, 2013, pp. 259-266, DOI: 10.1007/978-1-4614-3363-7_28.
[8] Hamid Niyazi and Fakhralsadat Rastegari, “Design of A Novel Resistive Capacitive Feedback Trans-impedance Amplifier”, International Journal of Computer Sciences and Engineering, Vol.-4(6), PP(01-07) Jun 2016, E-ISSN: 2347-2693.
[9] Keith R. Santarelli and Munther A. Dahleh. “Comparison between a switching controller and two LTI controllers for a class of LTI plants”, International Journal on Robust Nonlinear Control, 2008, pp. 1-33, DOI: 10.1002/rnc.1308.
[10] Keith R. Santarelli and Munther A. Dahleh. “L2 Gain Stability of Switched Output Feedback Controllers for a Class of LTI Systems”, IEEE Transactions on Automatic Control, VOL. 54, NO. 7, July 2009, pp. 1504-1514.
[11] Keith R. Santarelli and Munther A. Dahleh. “Optimal controller synthesis for a class of LTI systems via switched feedback”, Systems & Control Letters, Elsevier Journal, VOL. 59, Issue No. 3, March 2010, pp. 258-264.
[12] Zhi Hong Huang, Cheng Xiang, Hai Lin and Tong Heng Lee. “A Necessary and Sufficient Condition for Stability of Arbitrarily Switched Second-Order LTI System: Marginally Stable Case”, 22nd IEEE International Symposium on Intelligent Control Part of IEEE Multi-conference on Systems and Control, Singapore, 1-3 October 2007, pp. 83-88.
[13] Jorge L. Aravena and Lalitha Devarakonda. “Performance Driven Switching Control”, IEEE Transactions on Industrial Electronics, 2006, July 9-12, 2006, pp. 31-36.
[14] Hussain N. Al-Duwaisha and Zakariya M. Al-Hamouz. “A Neural Network Based Adaptive Sliding Mode Controller: Application to a Power System Stabilizer”, Elsevier Proceedings, Energy Conversion and Management, Volume 52, Issue 2, February 2011, Pp. 1533-1538.
[15] Yathisha L, Kourosh Davoodi and S Patil Kulkarni. “Optimal switching control strategy for UPFC for wide range of operating conditions in power system”, 3rd Indian Control Conference, IEEE Xplore, Jan 2017, Indian Institute of Technology (IIT), Guwhati, pp 225-232. DOI:10.1109/INDIANCC.2017.7846479.
[16] Yathisha L and S Patil Kulkarni. “Application and comparison of switching control algorithms for power system stabilizer”, IEEE International Conference on Industrial Instrumentation and Control (ICIC), IEEE Xplore, May 2015, Pune, pp 1300-1305. DOI:10.1109/IIC.2015.7150949.
Citation
Shashidhar S Gokhale, S. Patil Kulkarni, Yathisha L, "Optimal Feedback Switching Control Design for the Turbocharged Diesel Engine with an EGR System," International Journal of Computer Sciences and Engineering, Vol.6, Issue.10, pp.880-894, 2018.
Analyzing Machine learning Algorithm for Predicting an Accuracy of Meteorological Data
Research Paper | Journal Paper
Vol.6 , Issue.10 , pp.895-899, Oct-2018
CrossRef-DOI: https://doi.org/10.26438/ijcse/v6i10.895899
Abstract
Meteorological data analysis in the form of data mining is concerned to predict the knowledge of weather condition. To make an accurate prediction is one of the challenging of meteorologist to survey the weather condition efficiently. Decision tree algorithms are suitable for analyzing the data of meteorological behavior. By evaluates three algorithm of decision tree such as Random Forest, C4.5, C4.5 with Bootstrap aggregation, to analyse the time efficiency and accuracy of classification. These accuracy of algorithm when it operates on trained weather data of selected location. Those locations are selected through monsoon condition based on India country.
Key-Words / Index Term
Randon Forest, C4.5, C4.5 with Bootstrap Algorithm, Meterological Data, Accuracy,Time efficiency
References
[1] Hall, Mark, et al. "The WEKA data mining software: an update." ACM SIGKDD Explorations Newsletter 11.1 (2009): 10-18.
[2] T.F. Gonzales. “Clustering to minimize the maximum inter cluster distance”. Theoretical Computer Science,1985,38(2-3):293-306.
[3] Kannan, M., S. Prabhakaran, and P. Ramachandran. "Rainfall forecasting using data mining technique."(2010)
[4] Arun K Pujari, “Data mining techniques”, University Press (India). 2003.
[5] Jiawei Han Micheline Kamber, “Data Mining: Concepts and Techniques”, Morgan Kaufmann Publisher an imprint of Elsevier, 2006.
[6] L. Breiman, J. Friedman, R. Olshen and C. Stone.
“Classification and Regression Trees”, Wadsworth
International Group, Belmont, CA, 1984.
[7] Quinlan, J.R.. “C5.0 Online Tutorial”, (2003)
[8] Wu, X., Kumar, V., Quinlan, J. R., Ghosh, J., Yang, Q.,
Motoda, Z., Steinbach,M., Hand, D. J and Steinberg, D
(2008). “Top 10 Algorithms in Data Mining”,
Knowledge and Information Systems, 14 (1): 1-37.
[9] Schapire, R. “The strength of weak learnability”,
Machine Learning,(1990) 5(2): 197-227.
[10] Breiman, L . "Random Forests". Machine Learning
45 (1): 5–32. (2010)
[11] Freund, Y. Schapire, R. “Experiments with a new
boosting algorithm”, In Proceedings of the
Thirteenth International Conference on Machine
Learning, 148-156 Bari, Italy. (1996)
[12] Dietterich, T. G.. “An experimental comparison of
three methods for constructing ensembles of
decision trees: bagging, boosting and randomization”.
Machine learning, 40: 139-157. (2000).
[13] Opitz, D and Maclin, R "Popular Ensembl
Methods: An Empirical Study", 11: 169-198. (1999)
[14] Quinlan, J. R. “Bagging, Boosting and C4.5”,
AAAI/IAAI, 1: 725-730. (1996)
[15] M. Mayilvaganan, D. Kalpanadevi, “Comparison of
Classification Techniques for predicting the
performance of Students Academic Environment” in
(2014)
Citation
M. Manikandan, R. Mala, "Analyzing Machine learning Algorithm for Predicting an Accuracy of Meteorological Data," International Journal of Computer Sciences and Engineering, Vol.6, Issue.10, pp.895-899, 2018.
A Comprehensive Study of Routing Protocols in Cluster Based Wireless Sensor Networks
Research Paper | Journal Paper
Vol.6 , Issue.10 , pp.900-907, Oct-2018
CrossRef-DOI: https://doi.org/10.26438/ijcse/v6i10.900907
Abstract
Nowadays Wireless Sensor Networks (WSN) plays vital role in different fields.WSN are more attractive because of their behavior in collecting various kinds of data from harsh environments. These Networks are more popular because these are buildup with less expensive nodes .Nodes in WSN collects the information and send to the base station or sink. Routing plays major role in improving the entire network life time by selecting optimized path. Routing is the process of reaching the destination from source node. Data can be sensed in two ways, those are flat and hierarchical .In flat routing each node in the network is given equal responsibilities. In case of hierarchical routing different nodes plays heterogonous tasks and organized into different clusters. Now in this paper a survey is taken on cluster based routing methods and comparing them with performance issues such as energy awareness, latency and scalability. Advantages and limitations of these methods are presented and conclude with open issues in cluster based routing in WSN.
Key-Words / Index Term
Cluster based routing, hierarchical Routing, Energy efficient routing, Wireless sensor networks
References
[1] Santar Pal Singh, S.C. Sharma, “A survey on cluster based Routing Protocols in Wireless Sensor Networks”, Procedia Computer science 45 (2015) 687-695.
[2] Gulbadan Sikander, Mohammad Haseeb Zafar, Ahmad Raza, Muhammad Inayatullah Babar, Sahibzada Ali Mahmud, and Gul Muhammad Khan “ A Survey of Cluster-based Routing Schemes for Wireless Sensor Networks”, Smart Computing Review vol. 3, no. 4,pp. 261-275, August 2013.
[3] X. Liu, “A Survey on Clustering Routing Protocols in Wireless Sensor Networks,” Sensors, vol. 12, pp. 11113–11153, 2012.
[4] F. Awad, “Energy-Efficient and Coverage-Aware Clustering in Wireless Sensor Networks,” Wireless Engineering and Technology, vol. 03, no. 03, pp. 142–151, 2012.
[5] N. Azizi, J. Karimpour, and F. Seifi, “HCTE: Hierarchical Clustering based routing algorithm with applying the Two cluster heads in each cluster for Energy balancing in WSN,” IJCSI International Journal of Computer Science, vol. 9, no. 1, pp. 57–61, 2012.
[6] S.Naeimi, H. Ghafghazi, C.O. Chow, and H. Ishi, “ A survey on taxonomy of cluster-based routing protocols for homogeneous wireless sensor networks”, Sensors, vol.12, no.6, pp.7350-7409,2012.
[7] X. Liu ,” A survey on clustering Routing protocols in Wireless Sensor Networks: Sensors, vol.12, pp.11113-11153,2012.
[8] Haneef, M. and D. Zhongliang, 2012. Design challenges and comparative analysis of cluster based routing protocols used in wireless sensor networks for improving network life time. Adv.Inform.Sci. Service Sci. 4: 450-459.
[9] Rose line, R.A. and P.Sumanth, 2011.” Energy efficient routing protocols and algorithms for wireless sensor networks- a survey.Global J. Comput. Sci. technol.,11:60-67
[10] Ameer Ahmad Abbasi, Mohamed Younis, : A survey on clustering algorithms for wireless sensor networks” computer Communication30(2007) 2826-2841.
[11] N.Goutham, W. Il Lee, and J.Y. Pyun, “Track Sector clustering for Energy efficient Routing in Wireless Sensor Networks”, in Proc.
of 9th IEEE International Conference on Computer and Information Technology,pp. 116-121,2009.
[12] S. Jung, Y. Han, and T. Chung, “The Concentric Clustering Scheme for Efficient Energy Consumption in the PEGASIS,” in Proc. of 9th International conference on Advanced Communication Technology, pp. 260–265, 2007.
[13] L. Buttyan and P. Schaffer, “PANEL: Position-based Aggregator Node Election in Wireless Sensor Networks,” in Proc. of IEEE Internatonal Conference on Mobile Adhoc and Sensor Systems, pp. 1–9, 2007.
[14] D. Koutsonikolas, S. Das, Y. C. Hu, and I. Stojmenovic, “Hierarchical Geographic Multicast Routing for Wireless Sensor Networks,” in Proc. of International Conference on Sensor Technologies and Applications, pp. 347–354, 2007.
[15] J. A. Sanchez, P. M. Ruiz, and I. Stojmenovic, “GMR: Geographic Multicast Routing for Wireless Sensor Networks,” in Proc. of 3rd Annual IEEE Communications Society on Sensor and Ad Hoc Communications and Networks, pp. 20–29, 2006.
[16] S. M. Das and Y. C. Hu, “Distributed Hashing for Scalable Multicast in Wireless Ad Hoc Networks,” IEEE Transactions on Parallel and Distributed Systems, vol. 19, no. 3, pp. 347–362, 2008.
[17] H. Luo,F.Ye, J. Cheng, S.Lu, amd L.Zhang. “TTDD:Two-Tier Data Dissemination in Large-Scale Wireless Sensor Networks”,Wireless networks, vol. 11,no.1-2,pp.161-175,2005.
[18] P. Ding, J. Holliday, and A. Celik, “Distributed Energy-Efficient Hierarchical Clustering for Wireless Sensor Networks,” in Proc. of the First IEEE international conference on Distributed Computing in Sensor Systems, pp. 322–339, 2005.
[19] S.Soro, W.B. Heinzelman, “Rpolonging the life time of Wireless Sensor Networks via Unequal clustering”, in proceedings of 19th
IEEE International Parallel and Distributed Processing Symposium,2005.
[20] O. Younis and S. Fahmy, “HEED: A Hybrid , Energy-Efficient, Distributed Clustering Approach for Ad-hoc Sensor Networks,” IEEE Transactions on Mobile Computing, vol. 3, no. 4, pp. 366–379, 2004.
[21] F. Tang, I. You, S. Guo, M. Guo, and Y. Ma, “A chain-cluster based routing algorithm for wireless sensor networks,” Journal of Intelligent Manufacturing, vol. 23, no. 4, pp. 1305–1313, 2010.
[22] Y. Xu, J. Heidemann, and D. Estrin, “Geography-informed Energy Conservation for Ad Hoc Routing,” in Proc. of the 7th annual international conference on Mobile computing and networking, 2001, pp. 70–84.
[23] S. Lindsey, C. Raghavendra, and K. M. Sivalingam, “Data Gathering Algorithms in Sensor Networks Using Energy Metrics,” IEEE Transactions on Parallel and Distributed Systems, vol. 13, no. 9, pp. 924–935, 2002.
[24] S.Lindsey, C.Raghavendra, amd K.M. Sivalingam,”Data gathering algorithms in sensor networks Using EnergyMetrics”,IEEE
Transactions on Parallel and Distributed Systems, vol.13, no.9, pp. 924-935,2002.
[25] Jamil I and imad M, “cluster based routing in wireless sensor networks:Issues and challenges”,SPECTS,2004
[26] Kazem Sohraby, Daniel Minoli, taieb Znati, “ Wireless Sensor Networks:Technology:Protocols and Applications”, Jphn Wiley & Sons, 2007.
[27] Al-Karaki, J.N., and A.E. kamal, “ Routing techniques in wireless sensor networks: a survey”, IEEE Wireless Communication11:6-28,2004.
[28] A. Manjeshwar and D. P. Agrawal, “TEEN: A Routing Protocol for Enhanced Efficiency in Wireless Sensor Networks,” in Proc. of 15th International Parallel and Distributed Processing Symposium, pp. 2009–2015.
[29] A. Manjeshwar and D. P. Agrawal, "TEEN: A Routing Protocol for Enhanced Efficiency in Wireless Sensor Networks,"
in Proc. of 15th International Parallel and Distributed Processing Symposium, 2001.
[30] Heinzelman, W.R., Chandrakasan, A.,Balakrishnan,H., “Energy efficient communication protocol for wireless mocro sensor networks”, in proceedings of the Haeaii International conference on System sciences,2000.
[31] Neha P . Dahihanderkar, v. v. Kimbahune. “Cluster-based protocolfor heterogeneous Wireless sensor Networks”, International Journal of science and research (IJSR), Volume 4 issue 6, june 2015, 292-295
[32] Vivekchandran K. C, Nikesh Narayan .P. “ Energy Efficiency and Latency Improving In Wireless Sensor Networks” , International Journal of science and research (IJSR), Volume 4 issue 5, May 2015, 1291-1295
Citation
Praveen kumar Rapolu, B. Srinu, "A Comprehensive Study of Routing Protocols in Cluster Based Wireless Sensor Networks," International Journal of Computer Sciences and Engineering, Vol.6, Issue.10, pp.900-907, 2018.
IOT Implemented Smart Aquaponics System Using Arduino with Fuzzy
Research Paper | Journal Paper
Vol.6 , Issue.10 , pp.908-912, Oct-2018
CrossRef-DOI: https://doi.org/10.26438/ijcse/v6i10.908912
Abstract
Aquaponics is an emerging region in food manufacturing technique which combines traditional hydroponics with aquaculture in a symbiotic surroundings that enables a sustainable machine with essential input as all of the water and nutrients inside are re-circulated in order to develop terrestrial plant life and aquatic lifestyles. When aquaponics gadget meets with technology it appears to produce some first rate outputs which makes it green and productive generation. In Iot Based Smart Aquaponics System with Fuzzy Logic, we take specific readings regarding the pH stage, temperature, moisture content and the extent of the water by using using distinctive sensors. Readings from every of these sensors are stored in the server for destiny use. Also these values are utilized by the bushy controller which controls the overall working of the system in drastic condition. Iot removes the gap between the physical world and digital international. In order to introduce technologies to the conventional aquaponics machine, we use of Arduino, Fuzzy controller and Internet of Things.
Key-Words / Index Term
Aquaponics, Arduino, IOT, fuzzylogic, MachineLearning, SVM, Matlab
References
[1] Karen M. Buzby, Nicole L. Waterland, Kenneth J. Semmens, and Lian-Shin Lin.Evaluating aquaponics crops in a freshwater flowthrough fish culture system, Aquaculture, Volume 460, 1 July 2016, Pages 15-24, ISSN 0044-8486, http://0- dx.doi.org.wizard.umd.umich.edu/10.1016/j.aquaculture.2016.03.04 6 .
[2] D Wang, J Zhao, L Huang and D Xu, Design of a Smart Monitoring and Control System for Aquaponics Based on Openwrt, 5th International Conference on Information Engineering for Mechanics and Materials, 2015.
[3] L. Dan, C. Xin, H. Chongwei and J. Liangliang, "Intelligent Agriculture Greenhouse Environment Monitoring System Based on IOT Technology," Intelligent Transportation, Big Data and Smart City (ICITBS), 2015 International Conference on, Halong Bay, 2015, pp. 487-490.doi: 10.1109/ICITBS.2015.126
[4] M. U. Leatherbury, "VEGILAB and aquaponics indoor growing system," Technologies for Sustainability (SusTech), 2014 IEEE Conference on, Portland, OR, 2014, pp. 135-139. doi: 10.1109/SusTech.2014.7046233
[5] Juby Joseph, Vinodh P Vijayan” Misdirection Attack in WSN Due to Selfish Nodes; Detection and Suppression using Longer Path Protocol” International Journal of Advanced Research in Computer Science and Software Engineering, Volume 4, Issue 7, July 2014, pp. 825-829, ISSN: 2277 128X.
[6] DC Love, JP Fry, L Genello, ES Hill and KSJ Adam Frederick and Ximin Li, An International Survey of Aquaponics Practitioners, PLoS One, 2014, 9, e102662.
[7] C Somerville, M Cohen, E Pantanella, A Stankus and A Lovatelli, Small-Scale Aquaponic Food Production, Integrated Fish and Plant Farming, FAO, Fisheries and Aquaculture Technical Paper, 2014.
[8] V P Vijayan, Biju Paul “Multi Objective Traffic Prediction Using Type-2 Fuzzy Logic and Ambient Intelligence” International Conference on Advances in Computer Engineering 2010 , Published in IEEE Computer Society Proceedings, ISBN: 978-0-7695-4058-0, Print ISBN: 978-1-4244-7154-6
[9] Vinodh P Vijayan, Deepti John, Merina Thomas, Neetha V Maliackal, Sara Sangeetha Vargheese “Multi Agent Path Planning Approach to Dynamic Free Flight Environment” International Journal of Recent Trends in Engineering (IJRTE), ISSN 1797-9617 Volume 1, Number 1, May 2009, Page(s): 41-46
[10] J. E. Racoky, "Aquaculture- Aquaponics system," Agricultural Statement Experiment, 2003.
[11] Vijayan V P, Gopinathan E “Improving Network Coverage and Llife-Time in a Cooperative Wireless mobile Senso Network ”Fourth International Conference on Advances incomputing and communications (ICACC)Aug,2014. Published in IEEE Computer Society Proceedings. Print ISBN: 978-1-4799-4364-7.
Citation
Vinodh P Vijayan, Neena Joseph, Neema George, Simy Mary Kurian, "IOT Implemented Smart Aquaponics System Using Arduino with Fuzzy," International Journal of Computer Sciences and Engineering, Vol.6, Issue.10, pp.908-912, 2018.
ICT based Wireless Sensor Network for Retracing the Parked Vehicle
Research Paper | Journal Paper
Vol.6 , Issue.10 , pp.913-916, Oct-2018
CrossRef-DOI: https://doi.org/10.26438/ijcse/v6i10.913916
Abstract
It is normal to be in the following 100 years, world`s most extreme populace will be living in urban areas. Henceforth the utilization of vehicle and its connected administrations will be vital. As the quantity of vehicles increases, parking of the vehicle in urban communities will be testing issue, particularly concerning contamination and keeping up with the eco arrangement of the area. Many individuals are not intrigued to utilize conventional or robotized stopping region as a result of the trouble they face during the utilization. Indeed, even individuals find it hard to follow the return way to their own vehicle. The bigger number of shrewd vehicle leaving frameworks is executed in different nations which typically take care of the issue of parking spot and powerful use of utilities. Yet, in a profoundly populated region security of individuals in a leaving opening and following of the vehicle will be extremely difficult because of its tendency of heterogeneous individuals and assortment of vehicles. An IOT empowered Sensor network based Advanced parking spot with camera and sound sensors will actually want to gather enormous measure of information which can be used to create intriguing example utilizing appropriate AI algorithms.
Key-Words / Index Term
Automated Parking, Machine Learning, IoT.
References
[1] Shen-En Shih ; Wen-Hsiang Tsai ” A Convenient Vision- Based System for Automatic Detection of Parking Spaces in Indoor Parking Lots Using Wide-Angle Cameras” IEEE Transactions on Vehicular Technology Vol. 63 , Issue. 6, pp.2521-2532,2013.
[2] C Seo, , Yunhee Lee ; Whoi-Yul Kim “Vision-based Approach in Finding Multitype Parking Stall Entrance”2018 International Conference on Network Infrastructure and Digital Content (IC-NIDC), pp.22-24 , 2018 .
[3] Alshamsi, Humaid & Këpuska, Veton,”Smart Car Parking System” International Journal of Science and Technology,pp. 390 – 395, 2016.
[4] Vinodh P Vijayan, E Gopinathan,”Improving Network Coverage Network”Fourth International Conference on Advances in Computing and Communications, pp.27-29, 2014.
[5] YanfengGengChristos G.Cassandras,“A new Smart Parking System Infrastructure and Implementation “Procedia - Social and Behavioral Sciences Vol.54, pp.1278-1287,2012.
[6] Vinodh P. Vijayan* and N. Kuma , “Extending Connectivity And Coverage Using Robot Initiated K Nearest Dynamic Search For WSN Communication”, International Journal of Control Theory and Applications (IJCTA), International Science Press,7 ,2017
[7] N Kumar Vinodh P Vijayan ,”Coverage and Lifetime Optimization of WSN using Evolutionary Algorithms and Collision Free Nearest Neighbour Assertion” Pertanika Journal of Science & Technology, Universiti Putra Malays, pp. 371 – 37,2016
[8] YacineAtifJianguoDingManfred A.Jeusfeld “Internet of Things Approach to Cloud-based Smart Car Parking “, Procedia Computer Science , Vol. 98, pp. 193-198
[9] N.Saritha Devi, K.S.R.Raju, A.Madhu, R.Raja Sekhar ,”Safety and Security for School children’s Vehicles using GPS and IoT Technology” International Journal of Advanced Trends in Computer Science and Engineering Vol. 7, Issue..6, 2018
Citation
Neethu Maria John, Simy Mary Kurian, Vinodh P Vijayan, Neema George, "ICT based Wireless Sensor Network for Retracing the Parked Vehicle," International Journal of Computer Sciences and Engineering, Vol.6, Issue.10, pp.913-916, 2018.