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Erschienen in: Wireless Personal Communications 4/2018

27.09.2018

RETRACTED ARTICLE: K-Partitioned Smallest Distance Mining Tree for Path Optimation in Wireless Sensor Network

verfasst von: A. Kannagi

Erschienen in: Wireless Personal Communications | Ausgabe 4/2018

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Abstract

In wireless sensor networks (WSN), energy efficiency is an important issue, since the sensor nodes act as both data originator and data router. The sink functionality typically includes mining and sensing data from sensors in the network via multihop relays performing data processing. The nodes which are closer to the sink have to take more substantial traffic load consequently reduce their energy quickly leading to energy hole around the sink. Then the energy hole may cause failure in the sensor network and create large coverage hole. Sink repositioning can be performed using multiple sink deployment and sink mobility. Relocating or repositioning the sink is very challenging during the regular network operation. It is challenging in a multi-hop network environment to find an optimal location. Most of the existing localization solutions had low accuracy in congested situations and did not consider the resource limitations of WSN. To rectify the issues of sink repositioning, this work presents a K-partitioned smallest distance tree (k-PSDT) utilizing the ideal scan for setting an ideal number of sinks in sensor networks. At first, the quantity of sinks is resolved utilizing the ideal sink algorithm fulfilling the h-jump requirement. k-PSDT is developed for situating numerous sink nodes and setting up the courses. In the wake of deciding the ideal number of sink positions and directing, best sink reposition is chosen by ideal pursuit technique. Sink development is finished by utilizing the canny development, and it confines the sinks developments while keeping up their bearing to the ideal positions. The performance of the new techniques is implemented using network simulator (NS2). Simulation results show that the proposed technology do the better performance as compared to the existing method regarding the metrics such as average packet delivery ratio, delay, and energy consumption.

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Literatur
1.
Zurück zum Zitat Al-fatlawi, A. H., & Fatlawi, H. K. (2017). Recognition physical activities with optimal number of wearable sensors using data mining algorithms and deep belief network. In 2017 39th annual international conference of the IEEE on engineering in medicine and biology society (EMBC) (Vol. 4(2)). IEEE. Al-fatlawi, A. H., & Fatlawi, H. K. (2017). Recognition physical activities with optimal number of wearable sensors using data mining algorithms and deep belief network. In 2017 39th annual international conference of the IEEE on engineering in medicine and biology society (EMBC) (Vol. 4(2)). IEEE.
2.
Zurück zum Zitat Li, L., Li, X., Lu, Z., Lloret, J., & Song, H. (2017) Sequential behavior pattern discovery with frequent episode mining and wireless sensor network. IEEE Communications Magazine, 55(6), 205–211.CrossRef Li, L., Li, X., Lu, Z., Lloret, J., & Song, H. (2017) Sequential behavior pattern discovery with frequent episode mining and wireless sensor network. IEEE Communications Magazine, 55(6), 205–211.CrossRef
4.
Zurück zum Zitat Kannagi, A., Sharma, V., & Ganesan K. (2014). Analysis and implementation of ontology in web improving the search speed data in web engine. International Journal of Emerging Innovations in Science and Technology 1 (ISSN: 2348-4403). Kannagi, A., Sharma, V., & Ganesan K. (2014). Analysis and implementation of ontology in web improving the search speed data in web engine. International Journal of Emerging Innovations in Science and Technology 1 (ISSN: 2348-4403).
5.
Zurück zum Zitat Rashid, M. M., Gondal, I., & Kamruzzaman, J. (2015). Mining associated patterns from wireless sensor networks. IEEE Transactions on Computers, 2(6), 1998–2011.MathSciNetCrossRefMATH Rashid, M. M., Gondal, I., & Kamruzzaman, J. (2015). Mining associated patterns from wireless sensor networks. IEEE Transactions on Computers, 2(6), 1998–2011.MathSciNetCrossRefMATH
6.
Zurück zum Zitat Rashid, M. M., Gondal, I., & Kamruzzaman, J. (2015). Share-frequent sensor patterns mining from wireless sensor network data. IEEE Transactions on Parallel & Distributed Systems, 26(12), 3471–3484.CrossRefMATH Rashid, M. M., Gondal, I., & Kamruzzaman, J. (2015). Share-frequent sensor patterns mining from wireless sensor network data. IEEE Transactions on Parallel & Distributed Systems, 26(12), 3471–3484.CrossRefMATH
7.
Zurück zum Zitat Bhavsar, A. R., & Arolkar, H. A. (2014). Multidimensional association rule based data mining technique for cattle health monitoring using wireless sensor network. In 2014 international conference on computing for sustainable global development (INDIACom) (Vol. 5(11)). IEEE. Bhavsar, A. R., & Arolkar, H. A. (2014). Multidimensional association rule based data mining technique for cattle health monitoring using wireless sensor network. In 2014 international conference on computing for sustainable global development (INDIACom) (Vol. 5(11)). IEEE.
8.
Zurück zum Zitat Kannagi, A., Sharma, V., & Ganesan, K. (2014). Analysis of advanced data mining in search engine. International Journal of Emerging Innovations in Science and Technology 1 (ISSN: 2348-4403). Kannagi, A., Sharma, V., & Ganesan, K. (2014). Analysis of advanced data mining in search engine. International Journal of Emerging Innovations in Science and Technology 1 (ISSN: 2348-4403).
9.
Zurück zum Zitat Unbol, S., Congningw, I., & Rongxin, W. (2014). Research of data mining and network coverage optimization in early warning model of chlorine gas monitoring wireless sensor network. In International conference on software intelligence technologies and applications & international conference on frontiers of internet of things 2014 (pp. 298–304). Unbol, S., Congningw, I., & Rongxin, W. (2014). Research of data mining and network coverage optimization in early warning model of chlorine gas monitoring wireless sensor network. In International conference on software intelligence technologies and applications & international conference on frontiers of internet of things 2014 (pp. 298–304).
10.
Zurück zum Zitat Mengmeng, W., Debin, X., Rongxin, W., Fang, D., & Yunbo, S. (2014). Data mining research in wireless sensor network based on genetic bp algorithm. In 2nd international conference on measurement, information and control (ICMIC) (pp. 243–247). Mengmeng, W., Debin, X., Rongxin, W., Fang, D., & Yunbo, S. (2014). Data mining research in wireless sensor network based on genetic bp algorithm. In 2nd international conference on measurement, information and control (ICMIC) (pp. 243–247).
11.
Zurück zum Zitat Erdogan, S. Z., & Bilgin, T. T. (2012). A data mining approach for fall detection by using k-nearest neighbour algorithm on wireless sensor network data. IET Communications, 6(18), 3281–3287.CrossRef Erdogan, S. Z., & Bilgin, T. T. (2012). A data mining approach for fall detection by using k-nearest neighbour algorithm on wireless sensor network data. IET Communications, 6(18), 3281–3287.CrossRef
12.
Zurück zum Zitat Nagarajan, R., & Cuzzocrea, A. (2012). Deploying mobile software agents for distributed data mining on wireless sensor networks: A comparative analysis. Proceedings of the 2012 IEEE 24th international conference on tools with artificial intelligence (Vol. 1, pp. 1179–1185). Nagarajan, R., & Cuzzocrea, A. (2012). Deploying mobile software agents for distributed data mining on wireless sensor networks: A comparative analysis. Proceedings of the 2012 IEEE 24th international conference on tools with artificial intelligence (Vol. 1, pp. 1179–1185).
13.
Zurück zum Zitat Singh, M., & Mehta, G. (2012). Detection of malicious node in wireless sensor network based on data mining. In 2012 international conference on computing sciences (ICCS) (Vol. 4(2)). IEEE. Singh, M., & Mehta, G. (2012). Detection of malicious node in wireless sensor network based on data mining. In 2012 international conference on computing sciences (ICCS) (Vol. 4(2)). IEEE.
14.
Zurück zum Zitat Kannagi, A., Sharma, V., & Ganesan, K. (2014). Database description of enhanced data mining analysis. International Journal of Emerging Innovations in Science and Technology 1 (ISSN: 2348-4403). Kannagi, A., Sharma, V., & Ganesan, K. (2014). Database description of enhanced data mining analysis. International Journal of Emerging Innovations in Science and Technology 1 (ISSN: 2348-4403).
15.
Zurück zum Zitat Tripathy, A. K., Adinarayana, J., Sudharsan, D., Merchant, S. N., Desai, U. B., Vijayalakshmi, K., & Raji, D. (2011). Data mining and wireless sensor network for agriculture pest/disease predictions. In 2011 world congress on information and communication technologies (WICT) (Vol. 4(2)). IEEE. Tripathy, A. K., Adinarayana, J., Sudharsan, D., Merchant, S. N., Desai, U. B., Vijayalakshmi, K., & Raji, D. (2011). Data mining and wireless sensor network for agriculture pest/disease predictions. In 2011 world congress on information and communication technologies (WICT) (Vol. 4(2)). IEEE.
16.
Zurück zum Zitat Loseu, V., Ghasemzadeh, H., & Jafari, R. (2012). A mining technique using n-grams andmotion transcripts for body sensor network data repository. In Proceedings of the IEEE (Vol. 5(2)). IEEE. Loseu, V., Ghasemzadeh, H., & Jafari, R. (2012). A mining technique using n-grams andmotion transcripts for body sensor network data repository. In Proceedings of the IEEE (Vol. 5(2)). IEEE.
17.
Zurück zum Zitat Yuehua, H., Shuang, X., & Huajian, W. (2010). Study on distributed data mining model in wireless sensor networks. In 2010 international conference on intelligent computing and integrated systems (ICISS) (Vol. 5(2)). IEEE. Yuehua, H., Shuang, X., & Huajian, W. (2010). Study on distributed data mining model in wireless sensor networks. In 2010 international conference on intelligent computing and integrated systems (ICISS) (Vol. 5(2)). IEEE.
18.
Zurück zum Zitat Ye, X.-G., & He, Y.-H. (2010). Service oriented distributed data mining system in sensor network. In 2010 3rd international conference on information and computing (ICIC) (Vol. 4(2)). IEEE. Ye, X.-G., & He, Y.-H. (2010). Service oriented distributed data mining system in sensor network. In 2010 3rd international conference on information and computing (ICIC) (Vol. 4(2)). IEEE.
19.
Zurück zum Zitat Kannagi, A., Sharma, V., & Ganesan, K. (2014). Implementation of association rules research problem in data mining. International Journal of Emerging Innovations in Science and Technology 1 (ISSN: 2348-4403). Kannagi, A., Sharma, V., & Ganesan, K. (2014). Implementation of association rules research problem in data mining. International Journal of Emerging Innovations in Science and Technology 1 (ISSN: 2348-4403).
20.
Zurück zum Zitat Wang, B., Wang, T., & Mikou, N. (2009). An efficient data streams mining method for wireless sensor network’s data aggregation. In 1st international workshop on education technology and computer science, 2009. ETCS’09 (Vol. 5(2)). IEEE. Wang, B., Wang, T., & Mikou, N. (2009). An efficient data streams mining method for wireless sensor network’s data aggregation. In 1st international workshop on education technology and computer science, 2009. ETCS’09 (Vol. 5(2)). IEEE.
21.
Zurück zum Zitat Ren, S. Q. (2008). Density mining based resilient data aggregation for wireless sensor network. In 4th international conference on networked computing and advanced information management, 2008. NCM’08 (Vol. 5(2)). IEEE. Ren, S. Q. (2008). Density mining based resilient data aggregation for wireless sensor network. In 4th international conference on networked computing and advanced information management, 2008. NCM’08 (Vol. 5(2)). IEEE.
22.
Zurück zum Zitat Duc Phung, N., Gaber, M. M., & Röhm, U. (2007). Resource-aware online data mining in wireless sensor networks. In IEEE symposium on computational intelligence and data mining, 2007. CIDM 2007 (Vol. 5(2)). IEEE. Duc Phung, N., Gaber, M. M., & Röhm, U. (2007). Resource-aware online data mining in wireless sensor networks. In IEEE symposium on computational intelligence and data mining, 2007. CIDM 2007 (Vol. 5(2)). IEEE.
23.
Zurück zum Zitat Cantoni, V., Lombardi, L., & Lombardi, P. (2007). Challenges for data mining in distributed sensor networks. In 18th international conference on pattern recognition, 2006. ICPR 2006 (Vol. 5(2)). IEEE. Cantoni, V., Lombardi, L., & Lombardi, P. (2007). Challenges for data mining in distributed sensor networks. In 18th international conference on pattern recognition, 2006. ICPR 2006 (Vol. 5(2)). IEEE.
24.
Zurück zum Zitat Boukerche, A., & Samarah, S. (2006). A novel data mining technique for extracting events and inter knowledge based information from wireless sensor networks. In Proceedings. 2006 31st IEEE conference on local computer networks (Vol. 2(1)). IEEE. Boukerche, A., & Samarah, S. (2006). A novel data mining technique for extracting events and inter knowledge based information from wireless sensor networks. In Proceedings. 2006 31st IEEE conference on local computer networks (Vol. 2(1)). IEEE.
25.
Zurück zum Zitat Kannagi, A., & Muthuraja, M. (2014). Data security description of enhanced data mining analysis using symmetric inference model. International Journal of Advanced Information and Communication Technology 1(5). Kannagi, A., & Muthuraja, M. (2014). Data security description of enhanced data mining analysis using symmetric inference model. International Journal of Advanced Information and Communication Technology 1(5).
Metadaten
Titel
RETRACTED ARTICLE: K-Partitioned Smallest Distance Mining Tree for Path Optimation in Wireless Sensor Network
verfasst von
A. Kannagi
Publikationsdatum
27.09.2018
Verlag
Springer US
Erschienen in
Wireless Personal Communications / Ausgabe 4/2018
Print ISSN: 0929-6212
Elektronische ISSN: 1572-834X
DOI
https://doi.org/10.1007/s11277-018-5996-7

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