A Methodology for Network Analysis to Improve the Cyber-Physicals Communications in Next-Generation Networks
Abstract
:1. Introduction
- A methodology is presented to analyze real network data sets, extract the comportment of each analyzed area and acquire the knowledge of the network users’ behavior.
- Two data sets are analyzed in order to prove the methodology introduced in [15]. These real data sets are provided by Telecom Italia and cover different areas of Italy. One is located in the Trento province in Italy, which is a mainly rural area and covers a larger zone than the other analyzed data set. The second one is located in the city of Milan, which covers a metropolitan zone; the area is smaller and the number of connected devices is bigger.
- A new technique is developed to compare the comportments obtained in both analyses, grouping them in a single cluster set and reducing those that are similar, making more accurate the methodology presented in this work.
2. Proposed Methodology
Algorithm 1 Pseudocode of Orthogonal Subspace Projection algorithm. |
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3. Experimental Results
3.1. Description of the Used Data Sets
3.2. Analysis Conducted of the Data Set
4. Conclusions
Author Contributions
Funding
Conflicts of Interest
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RMSE | 0.016 | 0.052 | 0.116 | 0.295 | 0.439 |
Number of Classes Decreased | 61 (25.42%) | 127 (52.92%) | 176 (73.33%) | 190 (79.17%) | 213 (88.75%) |
Number of Classes Extracted | |||||
from the Milan Data Set | 93 (51.95%) | 59 (52.21%) | 31 (48.44%) | 28 (56%) | 12 (59.26%) |
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Cortés-Polo, D.; Jimenez Gil, L.I.; González-Sánchez, J.-L.; Calle-Cancho, J. A Methodology for Network Analysis to Improve the Cyber-Physicals Communications in Next-Generation Networks. Sensors 2020, 20, 2247. https://doi.org/10.3390/s20082247
Cortés-Polo D, Jimenez Gil LI, González-Sánchez J-L, Calle-Cancho J. A Methodology for Network Analysis to Improve the Cyber-Physicals Communications in Next-Generation Networks. Sensors. 2020; 20(8):2247. https://doi.org/10.3390/s20082247
Chicago/Turabian StyleCortés-Polo, David, Luis Ignacio Jimenez Gil, José-Luis González-Sánchez, and Jesús Calle-Cancho. 2020. "A Methodology for Network Analysis to Improve the Cyber-Physicals Communications in Next-Generation Networks" Sensors 20, no. 8: 2247. https://doi.org/10.3390/s20082247