Location via proxy:   [ UP ]  
[Report a bug]   [Manage cookies]                
skip to main content
research-article

Improving lifetime of wireless sensor networks based on nodes’ distribution using Gaussian mixture model in multi-mobile sink approach

Published: 01 May 2021 Publication History

Abstract

Saving energy in Wireless Sensor Networks (WSNs), is critical in different applications, such as environment monitoring, keeping human awareness and etc. Many studies have investigated energy consumption and improved the WSN lifetime longevity by reducing the energy consumption. Still, proposed approaches overlook the nodes’ distribution role in energy model and routing protocol, which is a key factor in a WSN. In this work, we propose a novel approach; namely GDECA; which assumes nodes’ distributions are mixtures of Gaussian distribution, as an assumption applied in real world. So GDECA rely on a distribution estimation borrowed from Machine Learning (ML) to fit the Gaussian Mixture Model (GMM) to the nodes and calculate the parameters for these distributions. Next, the estimated parameters are employed in Cluster Head CH selection policy. Besides, sinks routing is determined based on nodes distribution. Results showed the improvement close to 40–50% in energy consumption. As another outcome, GDECA keeps all the nodes active until end of the simulation. Observations also demonstrate that sinks path calculation using this approach is optimum, and randomly changing number of sinks increases energy consumption.

References

[1]
Islam, A.K.M.M., Zeb, A., & Wada, K. (2013). Communication protocols on dynamic cluster-based wireless sensor network. In Informatics, Electronics and Vision (ICIEV), 2013 International Conference on, pp. 1–6. IEEE.
[2]
Akyildiz Ian F, Weilian Su, Sankarasubramaniam Yogesh, and Cayirci Erdal Wireless sensor networks: a survey Computer Networks 2002 38 4 393-422
[3]
Halder, Subir, & Ghosal, Amrita. (2014). Is sensor deployment using Gaussian distribution energy balanced?. In 2014 IEEE 11th Consumer Communications and Networking Conference (CCNC), pp. 721–728. IEEE.
[4]
Wang Demin, Xie Bin, and Agrawal Dharma P Coverage and lifetime optimization of wireless sensor networks with gaussian distribution IEEE Transactions on Mobile Computing 2008 7 12 1444-1458
[5]
Yetgin Halil, Cheung Kent Tsz Kan, El-Hajjar Mohammed, and Hanzo Lajos Hanzo A survey of network lifetime maximization techniques in wireless sensor networks IEEE Communications Surveys & Tutorials 2017 19 2 828-854
[6]
Faheem, Y., Boudjit, S., & Chen, K. (2011). Dynamic sink location update scope control mechanism for mobile sink wireless sensor networks. In Wireless On-Demand Network Systems and Services (WONS), 2011 Eighth International Conference on, pp. 171–178. IEEE.
[7]
Lin, C.-J., Chou, P.-L., & Chou, C.-F. (2006). HCDD: hierarchical cluster-based data dissemination in wireless sensor networks with mobile sink. In: Proceedings of the 2006 international conference on Wireless communications and mobile computing, pp. 1189–1194. ACM.
[8]
Wang Jin, Yin Yue, Zhang Jianwei, Lee Sungyoung, and Sherratt R Simon Mobility based energy efficient and multi-sink algorithms for consumer home networks IEEE Transactions on Consumer Electronics 2013 59 1 77-84
[9]
Bishop Chris Pattern Recognition and Machine Learning (Information Science and Statistics) 2006 Berlin Springer
[10]
Boukerche A, Efstathiou D, Nikoletseas SE, and Raptopoulos C Exploiting limited density information towards near-optimal energy balanced data propagation Computer Communications 2012 35 18 2187-2200
[11]
Ebrahimi Dariush and Assi Chadi Compressive data gathering using random projection for energy efficient wireless sensor networks Ad Hoc Networks 2014 16 105-119
[12]
Narendra, K., & Varun, V. (2014). A comparative analysis of energy-efficient routing protocols in wireless sensor networks. Computer Science and Technology. In Emerging Research in Electronics (pp. 399–405). New Delhi: Springer.
[13]
Chen, S., Coolbeth, M., Dinh, H., Kim, Y.-A. & Wang, B. (2009). Data collection with multiple sinks in wireless sensor networks. Systems, and Applications. In International Conference on Wireless Algorithms (pp. 284–294). Berlin, Heidelberg: Springer.
[14]
Ammari Habib M Joint k-coverage and data gathering in sparsely deployed sensor networks-Impact of purposeful mobility and heterogeneity ACM Transactions on Sensor Networks (TOSN) 2013 10 1 8
[15]
Sara Getsy S and Sridharan D Routing in mobile wireless sensor network: A survey Telecommunication Systems 2014 57 1 51-79
[16]
Ammari Habib M On the problem of k-coverage in mission-oriented mobile wireless sensor networks Computer Networks 2012 56 7 1935-1950
[17]
Mario Di Francesco, Das Sajal K, and Anastasi Giuseppe Data collection in wireless sensor networks with mobile elements: A survey ACM Transactions on Sensor Networks (TOSN) 2011 8 1 7
[18]
Anastasi, G., Borgia, E., Conti, M., & Di Francesco, M. (2011). Reliable data delivery in sparse wsns with multiple mobile sinks: An experimental analysis. In: Computers and Communications (ISCC), 2011 IEEE Symposium on, pp. 698–705. IEEE.
[19]
Zhao Miao, Ma Ming, and Yang Yuanyuan Efficient data gathering with mobile collectors and space-division multiple access technique in wireless sensor networks IEEE Transactions on Computers 2011 60 3 400-417
[20]
Shi Lei, Zhang Baoxian, Mouftah Hussein T, and Ma Jian DDRP: An efficient data-driven routing protocol for wireless sensor networks with mobile sinks International Journal of Communication Systems 2013 26 10 1341-1355
[21]
Lu Kun-Hsien, Hwang Shiow-Fen, Yi-Yu Su, Chang Hsiao-Nung, and Dow Chyi-Ren Hierarchical ring-based data gathering for dense wireless sensor networks Wireless Personal Communications 2012 64 2 347-367
[22]
Van Duc Le, Oh Hoon, and Yoon Seokhoon Hicodg: A hierarchical data-gathering scheme using cooperative multiple mobile elements Sensors 2014 14 12 24278-24304
[23]
Hu Yifan, Ding Yongsheng, Hao Kuangrong, Ren Lihong, and Han Hua An immune orthogonal learning particle swarm optimisation algorithm for routing recovery of wireless sensor networks with mobile sink International Journal of Systems Science 2014 45 3 337-350
[24]
Liu Wang, Lu Kejie, Wang Jianping, Huang Liusheng, and Wu Dapeng Oliver On the throughput capacity of wireless sensor networks with mobile relays IEEE Transactions on Vehicular Technology 2012 61 4 1801-1809
[25]
Wichmann, A., Chester, J., & Korkmaz, T. (2012). Smooth path construction for data mule tours in wireless sensor networks. In Global Communications Conference (GLOBECOM), 2012 IEEE, pp. 86–92. IEEE.
[26]
Ha Ilkyu, Djuraev Mamurjon, and Ahn Byoungchul An energy-efficient data collection method for wireless multimedia sensor networks International Journal of Distributed Sensor Networks 2014 10 9 698452
[27]
Liu Danpu, Zhang Kailin, and Ding Jie Energy-efficient transmission scheme for mobile data gathering in wireless sensor networks China Communications 2013 10 3 114-123
[28]
Tang, Q., Sun, C., Wen, H., & Liang, Y. (2010). Cross-layer energy efficiency analysis and optimization in WSN. In Networking, Sensing and Control (ICNSC), 2010 International Conference on, pp. 138–142. IEEE.
[29]
Konstantopoulos Charalampos, Pantziou Grammati, Gavalas Damianos, Mpitziopoulos Aristides, and Mamalis Basilis A rendezvous-based approach enabling energy-efficient sensory data collection with mobile sinks IEEE Transactions on Parallel and Distributed Systems 2012 23 5 809-817
[30]
Amini S Moloud, Karimi A, and Shehnepoor SR Improving lifetime of wireless sensor network based on sinks mobility and clustering routing Wireless Personal Communications 2019 109 3 2011-2024
[31]
Pottie Gregory J and Kaiser William J Wireless integrated network sensors Communications of the ACM 2000 43 5 51-58
[32]
Wahyuni, E. D., & Djunaidy, A. (2016). Fake review detection from a product review using modified method of iterative computation framework. In Proceeding MATEC Web of Conferences.
[33]
Perkins CE Ad hoc networking 2001 Reading Addison-wesley
[34]
Abdul-Salaam Gaddafi, Abdullah Abdul Hanan, Anisi Mohammad Hossein, Gani Abdullah, and Alelaiwi Abdulhameed A comparative analysis of energy conservation approaches in hybrid wireless sensor networks data collection protocols Telecommunication Systems 2016 61 1 159-179
[35]
Anisi Mohammad Hossein, Abdullah Abdul Hanan, Coulibaly Yahaya, and Razak Shukor Abd EDR: efficient data routing in wireless sensor networks International Journal of Ad Hoc and Ubiquitous Computing 2013 12 1 46-55
[36]
Khan Abdul Waheed, Abdullah Abdul Hanan, Razzaque Mohammad Abdur, and Bangash Javed Iqbal VGDRA: a virtual grid-based dynamic routes adjustment scheme for mobile sink-based wireless sensor networks IEEE Sensors Journal 2015 15 1 526-534
[37]
Wang Jin, Zuo Liwu, Shen Jian, Li Bin, and Lee Sungyoung Multiple mobile sink-based routing algorithm for data dissemination in wireless sensor networks Concurrency and Computation: Practice and Experience 2015 27 10 2656-2667
[38]
Wang Jin, Li Bin, Xia Feng, Kim Chang-Seob, and Kim Jeong-Uk An energy efficient distance-aware routing algorithm with multiple mobile sinks for wireless sensor networks Sensors 2014 14 8 15163-15181
[39]
Ma Ming, Yang Yuanyuan, and Zhao Miao Tour planning for mobile data-gathering mechanisms in wireless sensor networks IEEE Transactions on Vehicular Technology 2013 62 4 1472-1483
[40]
Incel Ozlem Durmaz, Ghosh Amitabha, Krishnamachari Bhaskar, and Chintalapudi Krishna Fast data collection in tree-based wireless sensor networks IEEE Transactions on Mobile computing 2012 11 1 86-99
[41]
Chen Young-Long, Wang Neng-Chung, Shih Yi-Nung, and Lin Jia-Sheng Improving low-energy adaptive clustering hierarchy architectures with sleep mode for wireless sensor networks Wireless Personal Communications 2014 75 1 349-368
[42]
Madani Sajjad A, Hayat Khizar, and Khan Samee Ullah Clustering-based power-controlled routing for mobile wireless sensor networks International Journal of Communication Systems 2012 25 4 529-542
[43]
Shah Rahul C, Roy Sumit, Jain Sushant, and Brunette Waylon Data mules: Modeling and analysis of a three-tier architecture for sparse sensor networks Ad Hoc Networks 2003 1 2–3 215-233
[44]
Medhi Nabajyoti and Sarma Nityananda Mobility aided cooperative mimo transmission in wireless sensor networks Procedia Technology 2012 6 362-370

Index Terms

  1. Improving lifetime of wireless sensor networks based on nodes’ distribution using Gaussian mixture model in multi-mobile sink approach
        Index terms have been assigned to the content through auto-classification.

        Recommendations

        Comments

        Information & Contributors

        Information

        Published In

        cover image Telecommunications Systems
        Telecommunications Systems  Volume 77, Issue 1
        May 2021
        14 pages

        Publisher

        Kluwer Academic Publishers

        United States

        Publication History

        Published: 01 May 2021
        Accepted: 04 January 2021

        Author Tags

        1. Wireless sensor network
        2. Gaussian mixture model
        3. Cluster head selection
        4. Energy model
        5. Energy consumption

        Qualifiers

        • Research-article

        Contributors

        Other Metrics

        Bibliometrics & Citations

        Bibliometrics

        Article Metrics

        • 0
          Total Citations
        • 0
          Total Downloads
        • Downloads (Last 12 months)0
        • Downloads (Last 6 weeks)0
        Reflects downloads up to 19 Feb 2025

        Other Metrics

        Citations

        View Options

        View options

        Figures

        Tables

        Media

        Share

        Share

        Share this Publication link

        Share on social media