Abstract

Crowdsensing offers a cost-effective way to collect large amounts of environmental sensor data; however, the spatial distribution of crowdsensing sensors can hardly be influenced, as the participants carry the sensors, and, additionally, the quality of the crowdsensed data can vary significantly. Hybrid systems that use mobile users in conjunction with fixed sensors might help to overcome these limitations, as such systems allow assessing the quality of the submitted crowdsensed data and provide sensor values where no crowdsensing data are typically available. In this work, we first used a simulation study to analyze a simple crowdsensing system concerning the detection performance of spatial events to highlight the potential and limitations of a pure crowdsourcing system. The results indicate that even if only a small share of inhabitants participate in crowdsensing, events that have locations correlated with the population density can be easily and quickly detected using such a system. On the contrary, events with uniformly randomly distributed locations are much harder to detect using a simple crowdsensing-based approach. A second evaluation shows that hybrid systems improve the detection probability and time. Finally, we illustrate how to compute the minimum number of fixed sensors for the given detection time thresholds in our exemplary scenario.

Highlights

  • Chair of Communication Networks, University of Würzburg, 97070 Würzburg, Germany; Department of Information Security and Communication Technology, NTNU, 7491 Trondheim, Norway; This is an extended version of our conference paper published in: Hirth, M.; Lange, S.; Seufert, M.; Tran-Gia, P

  • We focus on the event detection scenario for the performance evaluation of mobile crowdsensing (MCS)

  • To limit the parameter set of our analysis and achieve a general performance evaluation of MCS, we do not differentiate between the actual types of events, such as fire, rain, or traffic incidents, and do not consider the different types of required sensors, their costs, and detection ranges

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Summary

Introduction

Events with uniformly randomly distributed locations are much harder to detect using a simple crowdsensing-based approach. Many vendors started to offer cheap hardware boards that combine Internet connectivity, low power consumption, and simple programmability. These boards can be used as a basis for customized sensing nodes published maps and institutional affiliations. Another option to collect large amounts of environmental data is mobile crowdsensing (MCS). Due to the connectivity features of the devices, the sensor information can be made available in almost real-time and can often be further combined with location information, e.g., based on the devices’ GPS receiver. Due to the low investment costs and no need for additional sensor hardware deployment, MCS is a promising source for sensor information in smart cities

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