Abstract

The predicted growth of urban populations has prompted researchers and administrations to improve services provided to citizens. At the heart of these services are wireless networks of multiple different sensors supported by the Internet of Things. The main purpose of these networks is to provide sufficient information to achieve more intelligent transport, energy supplies, social services, public environments (indoor and outdoor) and security, etc. Two major technological advances would improve such networks in Smart Cities: efficient communication between nodes and a reduction in each node's power consumption. The present paper analyses how event-based sampling techniques can address both challenges. We describe the fundamentals of the triggering mechanisms that characterise Send-on-Delta, Send-on-Area, Send-on-Energy and Send-on-Prediction techniques to restrict the number of transmissions between the sensor node and the supervision or monitoring node without degrading tracking of the sensed variable. At the same time, these aperiodic techniques reduce consumption by sensor node electronic devices. In order to quantify the energy savings, we evaluate the increase achieved in the average lifetime of sensor node batteries. The data provided by Smart City tools in the city of Santander (Spain) were selected to conduct a case study of the main pollutants that determine city air quality: $SO_{2}$ , $NO_{2}$ , $O_{3}$ and $PM_{10}$ . We conclude that event-based sensing techniques can yield up to 50% savings in sensor node consumption compared to classical periodic sensing techniques.

Highlights

  • AND MOTIVATIONAccording to predictions, two-thirds of the world’s population will live in cities by 2050 [1], [2]

  • To evaluate sensor node performance according to the different sampling strategies, several parameters are considered: number of transmissions per month, average consumption, battery lifetime, percentage of transmission savings compared to periodic sampling and tracking error

  • Numerical and graphical paper results focus on different items to compare the effect of periodic and aperiodic (SoD, SoA, SoE and SoP) sampling strategies to remotely monitor changes over time in air pollutants in a Smart City

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Summary

INTRODUCTION

Two-thirds of the world’s population will live in cities by 2050 [1], [2]. In the context of Smart Cities, WSN and IoT, the present study examines the event-based sensing approach, i.e. the sensed variable is only transmitted when a relevant change is detected, without degrading signal tracking at the remote monitoring node. This ensures low computational cost and significant savings in sensor node power consumption what increases battery lifetime. This paper evaluates the effect of different measurement-based sampling techniques on reducing the consumption of commercial sensor nodes To this end, a case study is conducted of the city of Santander (Spain) using the periodic data on several environmental pollution parameters provided by this Smart City’s services.

CASE STUDY
Findings
DISCUSSION AND CONCLUSION
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