Accurate Modelling of IoT Data Traffic Based on Weighted Sum of Distributions

This work proposes a novel mathematical approach to accurately model data traffic for the Internet of Things (IoT). Most of the conventional results on statistical data traffic models for IoT are based on the underlying assumption that the data generation follows standard Poisson or Exponential distribution which lacks experimental validation. However, in some of the use case applications a single statistical distribution is not adequate to provide the best fit for the inter-arrival time of the data packets generation. Based on the real data collected for over 10 weeks using our customized experimental IoT prototype for smart home application, in this paper we have established this very fact, citing barometric air pressure as an example. The statistical distribution of the inter-arrival time between the data packets for a specified barometric pressure fluctuation threshold is initially determined by approximating the best-fit with a set of standard classical distributions. The goodness-of-fit with the empirical data is numerically quantified using Kolmogorov-Smirnov (KS) Test. Furthermore, it is observed that any single standard distribution is unable to provide a good fit which is at least less than 10%. Therefore, a novel weighted distribution scheme is proposed that could provide an acceptable fit. The weighing factor including the location, scaling and weighing parameters of the best fitting distribution are estimated and analyzed. The distribution parameters are finally expressed as a function of the differential pressure value that can be used for different theoretical analysis and network optimization.

[1]  Giovanni Stea,et al.  Mobile-Edge Computing Come Home Connecting things in future smart homes using LTE device-to-device communications , 2016, IEEE Consumer Electronics Magazine.

[2]  Jaime Lloret,et al.  Intelligent IoT Traffic Classification Using Novel Search Strategy for Fast-Based-Correlation Feature Selection in Industrial Environments , 2018, IEEE Internet of Things Journal.

[3]  Hao Xu,et al.  An overview of 3GPP enhancements on machine to machine communications , 2016, IEEE Communications Magazine.

[4]  Olga Galinina,et al.  Understanding the IoT connectivity landscape: a contemporary M2M radio technology roadmap , 2015, IEEE Communications Magazine.

[5]  Miguel López-Benítez,et al.  Time-Dimension Models of Spectrum Usage for the Analysis, Design, and Simulation of Cognitive Radio Networks , 2013, IEEE Transactions on Vehicular Technology.

[6]  Pietro Cassarà,et al.  Modeling Reliable M2M/IoT Traffic Over Random Access Satellite Links in Non-Saturated Conditions , 2018, IEEE Journal on Selected Areas in Communications.

[7]  Sandra Sendra,et al.  Integration of LoRaWAN and 4G/5G for the Industrial Internet of Things , 2018, IEEE Communications Magazine.

[8]  S. N. Merchant,et al.  Experimental Evaluation of the Poissoness of Real Sensor Data Traffic in the Internet of Things , 2019, 2019 16th IEEE Annual Consumer Communications & Networking Conference (CCNC).

[9]  Abbas Javed,et al.  Improving Energy Consumption of a Commercial Building with IoT and Machine Learning , 2018, IT Professional.

[10]  Takuro Sato,et al.  One Integrated Energy Efficiency Proposal for 5G IoT Communications , 2016, IEEE Internet of Things Journal.

[11]  Maria Rita Palattella,et al.  Internet of Things in the 5G Era: Enablers, Architecture, and Business Models , 2016, IEEE Journal on Selected Areas in Communications.

[12]  Markus Laner,et al.  Traffic models for machine-to-machine (M2M) communications: types and applications , 2014 .

[13]  Nour Kouzayha,et al.  Measurement-Based Signaling Management Strategies for Cellular IoT , 2017, IEEE Internet of Things Journal.

[14]  Tobias Hoßfeld,et al.  Traffic modeling for aggregated periodic IoT data , 2018, 2018 21st Conference on Innovation in Clouds, Internet and Networks and Workshops (ICIN).

[15]  Miguel López-Benítez,et al.  Prototype for multidisciplinary research in the context of the Internet of Things , 2017, J. Netw. Comput. Appl..