This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
Agarwal, A., Gupta, K. and Yadav, K. P. 2016. A novel energy efficiency protocol for WSN based on optimal chain routing, p. 7.AgarwalA.GuptaK.YadavK. P.2016p.7.Search in Google Scholar
Alami, H. E. and Najid, A. 2016. Energy-efficient fuzzy logic cluster head selection in wireless sensor networks. 2016 International Conference on Information Technology for Organizations Development (IT4OD), Fez, Morocco, pp. 1–7.AlamiH. E.NajidA.2016Energy-efficient fuzzy logic cluster head selection in wireless sensor networkspp.1710.1109/IT4OD.2016.7479300Search in Google Scholar
Alami, H. E. and Najid, A. 2017. Routing-Gi: routing technique to enhance energy efficiency in WSNs.International Journal of Ad Hoc and Ubiquitous Computing 25: 241.AlamiH. E.NajidA.2017Routing-Gi: routing technique to enhance energy efficiency in WSNs.2524110.1504/IJAHUC.2017.085131Search in Google Scholar
El Alami, H. and Najid, A. 2015. CFFL: Cluster formation using fuzzy logic for wireless sensor networks. 2015 IEEE/ACS 12th International Conference of Computer Systems and Applications (AICCSA), Marrakech, Morocco, pp. 1–6.El AlamiH.NajidA.2015CFFL: Cluster formation using fuzzy logic for wireless sensor networkspp.1610.1109/AICCSA.2015.7507248Search in Google Scholar
El Alami, H. and Najid, A. 2019. ECH: an enhanced clustering hierarchy approach to maximize lifetime of wireless sensor networks. IEEE Access 7: 107142–107153.El AlamiH.NajidA.2019ECH: an enhanced clustering hierarchy approach to maximize lifetime of wireless sensor networks.710714210715310.1109/ACCESS.2019.2933052Search in Google Scholar
El Idrissi, N., Najid, A. and El Alami, H. 2020. New routing technique to enhance energy efficiency and maximize lifetime of the network in WSNs. International Journal of Wireless Networks and Broadband Technologies, pp. 81–93.El IdrissiN.NajidA.El AlamiH.2020New routing technique to enhance energy efficiency and maximize lifetime of the network in WSNs.pp.819310.4018/IJWNBT.2020070105Search in Google Scholar
Gharajeh, M. S. and Khanmohammadi, S. 2016. DFRTP: dynamic 3d fuzzy routing based on traffic probability in wireless sensor networks. IET Wireless Sensor Systems 6 Art. no. 6.GharajehM. S.KhanmohammadiS.2016DFRTP: dynamic 3d fuzzy routing based on traffic probability in wireless sensor networks.6Art. no. 6.10.1049/iet-wss.2015.0008Search in Google Scholar
Hassan El Alami, ■. and Najid, A. 2015. SEFP: a new routing approach using fuzzy logic for clustered heterogeneous wireless sensor networks. International Journal on Smart Sensing and Intelligent Systems 8: 2286–2306.Hassan El Alami■.NajidA.2015SEFP: a new routing approach using fuzzy logic for clustered heterogeneous wireless sensor networks.82286230610.21307/ijssis-2017-854Search in Google Scholar
Heinzelman, W. B., Chandrakasan, A. P. and Balakrishnan, H. 2002. An application-specific protocol architecture for wireless microsensor networks. IEEE Transactions on Wireless Communications 1 Art. no. 4.HeinzelmanW. B.ChandrakasanA. P.BalakrishnanH.2002An application-specific protocol architecture for wireless microsensor networks.1Art. no. 4.10.1109/TWC.2002.804190Search in Google Scholar
Jafarizadeh, V., Keshavarzi, A. and Derikvand, T. 2017. Efficient cluster head selection using Naïve Bayes classifier for wireless sensor networks. Wireless Network 23 Art. no. 3.JafarizadehV.KeshavarziA.DerikvandT.2017Efficient cluster head selection using Naïve Bayes classifier for wireless sensor networks.23Art. no. 3.10.1007/s11276-015-1169-8Search in Google Scholar
Jain, B., Brar, G. and Malhotra, J. 2018. “EKMT-k-Means clustering algorithmic solution for low energy consumption for wireless sensor networks based on minimum mean distance from base station”, In Perez, G. M., Mishra, K. K., Tiwari, S. and Trivedi, M. C. (Eds), Networking Communication and Data Knowledge Engineering, Vol. 3, Springer Singapore, Singapore, pp. 113–23.JainB.BrarG.MalhotraJ.2018“EKMT-k-Means clustering algorithmic solution for low energy consumption for wireless sensor networks based on minimum mean distance from base station”InPerezG. M.MishraK. K.TiwariS.TrivediM. C.(Eds)Vol.3Springer SingaporeSingaporepp.1132310.1007/978-981-10-4585-1_10Search in Google Scholar
Jain, K. L. and Mohapatra, S. 2019a. Energy efficient cluster head selection for wireless sensor network: a simulated comparison. 2019 IEEE 10th Control and System Graduate Research Colloquium (ICSGRC), Shah Alam, Malaysia, pp. 162–166.JainK. L.MohapatraS.2019aEnergy efficient cluster head selection for wireless sensor network: a simulated comparisonpp.16216610.1109/ICSGRC.2019.8837086Search in Google Scholar
Jain, K. L. and Mohapatra, S. 2019b. Proceedings of the 2nd International Conference on Software Engineering and Information Management. ACM, [Online]. Available at: http://ezproxy.canterbury.ac.nz/login?url=https://dl.acm.org/citation.cfm?id=3305160 (Accessed June 20, 2020).JainK. L.MohapatraS.2019b[Online]. Available at:http://ezproxy.canterbury.ac.nz/login?url=https://dl.acm.org/citation.cfm?id=3305160(Accessed June 20, 2020).Search in Google Scholar
Khan, Z. A. and Samad, A. 2017. A study of machine learning in wireless sensor network. International Journal of Computer Networks and Applications 4: 105–102.KhanZ. A.SamadA.2017A study of machine learning in wireless sensor network.410510210.22247/ijcna/2017/49122Search in Google Scholar
Khushboo, J. and Anoop, B. 2020. An optimal cluster-head selection algorithm for wireless sensor networks. WSEAS Transactions on Communications 19, doi: 10.37394/23204.2020.19.1.KhushbooJ.AnoopB.2020An optimal cluster-head selection algorithm for wireless sensor networks.19doi:10.37394/23204.2020.19.1Open DOISearch in Google Scholar
Latif, K., Javaid, N., Saqib, M. N., Khan, Z. A. and Alrajeh, N. 2016. Energy consumption model for density controlled divide-and-rule scheme for energy efficient routing in wireless sensor networks. International Jouranl of Ad Hoc and Ubiquitous Computing. 21: 130.LatifK.JavaidN.SaqibM. N.KhanZ. A.AlrajehN.2016Energy consumption model for density controlled divide-and-rule scheme for energy efficient routing in wireless sensor networks.2113010.1504/IJAHUC.2016.075192Search in Google Scholar
Logambigai, R. and Kannan, A. 2016. Fuzzy logic based unequal clustering for wireless sensor networks. Wireless Network 22: 945–957.LogambigaiR.KannanA.2016Fuzzy logic based unequal clustering for wireless sensor networks.2294595710.1007/s11276-015-1013-1Search in Google Scholar
Lu, Y., Chen, J., Comsa, I., Kuonen, P. and Hirsbrunner, B. 2014. Construction of data aggregation tree for multi-objectives in wireless sensor networks through jump particle swarm optimization. Procedia Computer Science 35: 73–82.LuY.ChenJ.ComsaI.KuonenP.HirsbrunnerB.2014Construction of data aggregation tree for multi-objectives in wireless sensor networks through jump particle swarm optimization.35738210.1016/j.procs.2014.08.086Search in Google Scholar
Lu, Y., Comsa, I.- S., Kuonen, P. and Hirsbrunner, B. 2016. Adaptive data aggregation with probabilistic routing in wireless sensor networks. Wireless Network 22 Art. no. 8.LuY.ComsaI.- S.KuonenP.HirsbrunnerB.2016Adaptive data aggregation with probabilistic routing in wireless sensor networks.22Art. no. 8.10.1007/s11276-015-1108-8Search in Google Scholar
Neamatollahi, P., Naghibzadeh, M. and Abrishami, S. 2017. Fuzzy-based clustering-task scheduling for lifetime enhancement in wireless sensor networks. IEEE Sensors Journal 17: 6837–6844.NeamatollahiP.NaghibzadehM.AbrishamiS.2017Fuzzy-based clustering-task scheduling for lifetime enhancement in wireless sensor networks176837684410.1109/JSEN.2017.2749250Search in Google Scholar
Praveen Kumar, D., Amgoth, T. and Annavarapu, C. S. R. 2019. Machine learning algorithms for wireless sensor networks: a survey. Information Fusion 49: 1–25.Praveen KumarD.AmgothT.AnnavarapuC. S. R.2019Machine learning algorithms for wireless sensor networks: a survey.4912510.1016/j.inffus.2018.09.013Search in Google Scholar
Ray, A. and De, D. 2016. Energy efficient clustering protocol based on K-means (EECPK-means)-midpoint algorithm for enhanced network lifetime in wireless sensor network. IET Wireless Sensor Systems 6: 181–191.RayA.DeD.2016Energy efficient clustering protocol based on K-means (EECPK-means)-midpoint algorithm for enhanced network lifetime in wireless sensor network.618119110.1049/iet-wss.2015.0087Search in Google Scholar
Sheta, A. F. and Solaiman, B. 2015. Evolving clustering algorithms for wireless sensor networks with various radiation patterns to reduce energy consumption. 2015 Science and Information Conference (SAI), London, pp. 1037–1045.ShetaA. F.SolaimanB.2015Evolving clustering algorithms for wireless sensor networks with various radiation patterns to reduce energy consumptionpp.1037104510.1109/SAI.2015.7237270Search in Google Scholar
Singh, J., Singh, B. P. and Shaw, S. 2014. A new LEACH-based routing protocol for energy optimization in wireless sensor network. 2014 International Conference on Computer and Communication Technology (ICCCT), Allahabad, September, pp. 181–186.SinghJ.SinghB. P.ShawS.2014A new LEACH-based routing protocol for energy optimization in wireless sensor networkSeptemberpp.18118610.1109/ICCCT.2014.7001489Search in Google Scholar
Sohn, I., Lee, J.- H. and Lee, S. H. 2016. Low-energy adaptive clustering hierarchy using affinity propagation for wireless sensor networks. IEEE Communications Letters 20: 558–561.SohnI.LeeJ.- H.LeeS. H.2016Low-energy adaptive clustering hierarchy using affinity propagation for wireless sensor networks.2055856110.1109/LCOMM.2016.2517017Search in Google Scholar
Thangaramya, K., Kulothungan, K., Logambigai, R., Selvi, M., Ganapathy, S. and Kannan, A. 2019. Energy aware cluster and neuro-fuzzy based routing algorithm for wireless sensor networks in IoT. Computer Networks 151: 211–223.ThangaramyaK.KulothunganK.LogambigaiR.SelviM.GanapathyS.KannanA.2019Energy aware cluster and neuro-fuzzy based routing algorithm for wireless sensor networks in IoT.15121122310.1016/j.comnet.2019.01.024Search in Google Scholar
Wang, J., Cao, J., Sherratt, R. S. and Park, J. H. 2018. An improved ant colony optimization-based approach with mobile sink for wireless sensor networks. The Journal of Supercomputing 74: 6633–6645.WangJ.CaoJ.SherrattR. S.ParkJ. H.2018An improved ant colony optimization-based approach with mobile sink for wireless sensor networks.746633664510.1007/s11227-017-2115-6Search in Google Scholar
Wang, J., Gao, Y., Wang, K., Sangaiah, A. and Lim, S.- J. 2019. An affinity propagation-based self-adaptive clustering method for wireless sensor networks. Sensors 19:2579.WangJ.GaoY.WangK.SangaiahA.LimS.- J.2019An affinity propagation-based self-adaptive clustering method for wireless sensor networks.19257910.3390/s19112579660351431174313Search in Google Scholar
Wang, Q., Lin, D., Yang, P. and Zhang, Z. 2019. An energy-efficient compressive sensing-based clustering routing protocol for WSNs. IEEE Sensors Journal 19 Art. no. 10.WangQ.LinD.YangP.ZhangZ.2019An energy-efficient compressive sensing-based clustering routing protocol for WSNs.19Art. no. 10.10.1109/JSEN.2019.2893912Search in Google Scholar