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Fog computing based information classification in sensor cloud-agent approach

Published: 15 November 2021 Publication History

Highlights

Raw information is saved directly in Sensor Cloud that impacts latency and accuracy.
Fog computing analyzes and classifies information before saving it in sensor cloud.
Agents are triggered to optimize the energy in prolonging the network lifetime.
Random forest and genetic algorithm used to classify information with low variance.
Optimized information with great accuracy is saved into sensor cloud.

Abstract

Sensor Cloud has emerged as a rising technology in removing the barriers of Wireless Sensor Network. It increases the lifetime of the sensor network by storing all the sensed information into cloud server instead of saving in node’s memory. Yet sensor cloud has some important issues like latency, information classification and accuracy which still need an attention to improve overall performance of the sensor cloud system. Fog computing is a problem solver for sensor cloud in removing latency and carrying out computational tasks in faster way. Fog computing is acting as a middleware between physical network and cloud, located at the edge of the network for fast computation and quick response. The proposed work utilizes the functionalities of sensor cloud and fog computing to classify and save the information in better way along with minimizing the latency issue. The Random forest classifier along with Genetic Algorithm is utilized for classifying the information and saving only required amount of information into cloud server with priority. Agent paradigm is included to save the energy of the physical sensor nodes and also to perform quick analyzing and classification of information at the fog server. The result shows that proposed work is working far better than conventional methods in terms of classification accuracy, latency, packet delivery ratio, energy consumption and network lifetime.

References

[1]
Ahmed, A., Arkian, H., Battulga, D., Fahs, A. J., Farhadi, M., Giouroukis, D., et al. (2019). Fog Computing Applications: Taxonomy and Requirements. arXiv preprint arXiv:1907.11621. 1–16.
[2]
A. Alamri, W.S. Ansari, M.M. Hassan, M.S. Hossain, A. Alelaiwi, M.A. Hossain, A survey on sensor-cloud: architecture, applications, and approaches, International Journal of Distributed Sensor Networks 9 (2) (2013).
[3]
A. Ashari, I. Paryudi, A.M. Tjoa, Performance comparison between Naïve Bayes, decision tree and k-nearest neighbor in searching alternative design in an energy simulation tool, International Journal of Advanced Computer Science and Applications (IJACSA) 4 (11) (2013) 33–39.
[4]
Bonomi, F., Milito, R., Zhu, J., & Addepalli, S. (2012, August). Fog computing and its role in the internet of things. In Proceedings of the first edition of the MCC workshop on Mobile cloud computing (pp. 13–16).
[5]
Boussaï D, I., Lepagnot, J., & Siarry, P. (2013). A survey on optimization metaheuristics. Information Sciences, 237, 82-117.
[6]
D.R. Cutler, T.C. Edwards Jr, K.H. Beard, A. Cutler, K.T. Hess, J. Gibson, J.J. Lawler, Random forests for classification in ecology, Ecology 88 (11) (2007) 2783–2792.
[7]
A.V. Dastjerdi, H. Gupta, R.N. Calheiros, S.K. Ghosh, R. Buyya, Fog computing: Principles, architectures, and applications, Morgan Kaufmann, 2016, pp. 61–75.
[8]
E. Elyan, M.M. Gaber, A genetic algorithm approach to optimising random forests applied to class engineered data, Information Sciences 384 (2017) 220–234.
[9]
Gnawali, O., Fonseca, R., Jamieson, K., Moss, D., & Levis, P. (2009, November). Collection tree protocol. In Proceedings of the 7th ACM conference on embedded networked sensor systems (pp. 1–14).
[10]
W.I. Grosky, A. Kansal, S. Nath, J. Liu, F. Zhao, Senseweb: An infrastructure for shared sensing, IEEE Multimedia 14 (4) (2007) 8–13.
[11]
L. Hang, W. Jin, H. Yoon, Y.G. Hong, D.H. Kim, Design and implementation of a sensor-cloud platform for physical sensor management on CoT environments, Electronics 7 (8) (2018) 140.
[12]
K. Hong, D. Lillethun, U. Ramachandran, B. Ottenwälder, B. Koldehofe, Mobile fog: A programming model for large-scale applications on the internet of things, in: Proceedings of the second ACM SIGCOMM workshop on Mobile cloud computing, 2013, pp. 15–20.
[13]
P. Hu, S. Dhelim, H. Ning, T. Qiu, Survey on fog computing: architecture, key technologies, applications and open issues, Journal of Network and Computer Applications 98 (2017) 27–42.
[14]
Jawaid, S., & Ahad, M. A. (2017). Enhancing random forest classifier using genetic algorithm. International Journal of Advanced Research in Computer Science, 8(5), 540–545.
[15]
S. Kumar, G. Sahoo, A random forest classifier based on genetic algorithm for cardiovascular diseases diagnosis, International Journal of Engineering-Transactions B: Applications 30 (11) (2017) 1723–1729.
[16]
G.A. Lewis, S. Echeverría, S. Simanta, B. Bradshaw, J. Root, Cloudlet-based cyber-foraging for mobile systems in resource-constrained edge environments, in: Companion Proceedings of the 36th International Conference on Software Engineering, 2014, pp. 412–415.
[17]
N. Li, X. Cheng, H. Guo, Z. Wu, Recognizing human interactions by genetic algorithm-based random forest spatio-temporal correlation, Pattern Analysis and Applications 19 (1) (2016) 267–282.
[18]
X. Liu, X. Wang, Q. Su, M. Zhang, Y. Zhu, Q. Wang, Q. Wang, Computational and mathematical methods in medicine 2017 (2017) 1–11.
[19]
S. Madden, M.J. Franklin, Fjording the stream: An architecture for queries over streaming sensor data, IEEE, 2002, pp. 555–566.
[20]
O. Maimon, L. Rokach (Eds.), Data mining and knowledge discovery handbook, 2005.
[21]
K. Matsumoto, R. Katsuma, N. Shibata, K. Yasumoto, M. Ito, Minimizing localization cost with mobile anchor in underwater sensor networks, in: Proceedings of the Fourth ACM International Workshop on UnderWater Networks, 2009, pp. 1–2.
[22]
D. Ming, T. Zhou, M. Wang, T. Tan, Land cover classification using random forest with genetic algorithm-based parameter optimization, Journal of Applied Remote Sensing 10 (3) (2016).
[23]
Mirkes, E. (2011). K-NN and Potential Energy (Applet). University of Leicester. 2011. http://www.math.le.ac.uk/people/ag153/homepage/KNN/KNN3.html.
[24]
A. Puissant, S. Rougier, A. Stumpf, Object-oriented mapping of urban trees using Random Forest classifiers, International Journal of Applied Earth Observation and Geoinformation 26 (2014) 235–245.
[25]
A. Rogers, D.D. Corkill, N.R. Jennings, Agent technologies for sensor networks, IEEE Intelligent Systems 24 (2) (2009) 13–17.
[26]
Saha, S. (2015, February). Secure sensor data management model in a sensor-cloud integration environment. In 2015 Applications and Innovations in Mobile Computing (AIMoC) (pp. 158–163). IEEE.
[27]
S. Sarkar, S. Misra, Theoretical modelling of fog computing: A green computing paradigm to support IoT applications, IET Networks 5 (2) (2016) 23–29.
[28]
Sindhanaiselvan, K., & Mekala, T. (2014). A survey on sensor cloud: architecture and applications. International Journal of P2P Network Trends and Technology (IJPTT), 6, 49–53.
[29]
S.P. Singh, A. Nayyar, R. Kumar, A. Sharma, Fog computing: from architecture to edge computing and big data processing, The Journal of Supercomputing 75 (4) (2019) 2070–2105.
[30]
Stern, M., Beck, J., & Woolf, B. P. (1999). Naive Bayes classifiers for user modeling. Center for Knowledge Communication, Computer Science Department, University of Massachusetts.
[31]
M. Tripathi, M.S. Gaur, V. Laxmi, R.B. Battula, Energy efficient LEACH-C protocol for wireless sensor network, IET (2013) 402–405.
[32]
H.L. Truong, S. Dustdar, Principles for engineering IoT cloud systems, IEEE Cloud Computing 2 (2) (2015) 68–76.
[33]
L.M. Vaquero, L. Rodero-Merino, Finding your way in the fog: Towards a comprehensive definition of fog computing, ACM SIGCOMM Computer Communication Review 44 (5) (2014) 27–32.
[34]
M. Wooldridge, An introduction to multiagent systems, John Wiley & Sons, 2009.
[35]
S. Yi, C. Li, Q. Li, A survey of fog computing: concepts, applications and issues, in: Proceedings of the 2015 workshop on mobile big data, 2015, pp. 37–42.
[36]
Yuriyama, M., & Kushida, T. (2010, September). Sensor-cloud infrastructure-physical sensor management with virtualized sensors on cloud computing. In 2010 13th International Conference on Network-Based Information Systems (pp. 1–8). IEEE.

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          Published In

          cover image Expert Systems with Applications: An International Journal
          Expert Systems with Applications: An International Journal  Volume 182, Issue C
          Nov 2021
          1359 pages

          Publisher

          Pergamon Press, Inc.

          United States

          Publication History

          Published: 15 November 2021

          Author Tags

          1. Random forest
          2. Genetic algorithm
          3. Fog computing
          4. Information classification
          5. Agents
          6. Sensor cloud

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          View all
          • (2023)A Load-Aware Energy-Efficient Clustering Algorithm in Sensor-CloudJournal of Grid Computing10.1007/s10723-023-09683-w21:3Online publication date: 31-Aug-2023
          • (2022)Fuzzy evaluation model for attribute service performance indexJournal of Intelligent & Fuzzy Systems: Applications in Engineering and Technology10.3233/JIFS-22009043:4(4849-4857)Online publication date: 1-Jan-2022
          • (2022)A new scheme of polar Fast Fourier Transform Code for iris recognition through symbolic modelling approachExpert Systems with Applications: An International Journal10.1016/j.eswa.2022.116745197:COnline publication date: 18-May-2022
          • (2022)Admission control and resource provisioning in fog-integrated cloud using modified fuzzy inference systemThe Journal of Supercomputing10.1007/s11227-022-04483-778:13(15463-15503)Online publication date: 1-Sep-2022

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