Knowledge Agora



Similar Articles

Title Profiling Energy Efficiency of Mobile Crowdsensing Data Collection Frameworks for Smart City Applications
ID_Doc 41461
Authors Tomasoni, M; Capponi, A; Fiandrino, C; Kliazovich, D; Granelli, F; Bouvry, P
Title Profiling Energy Efficiency of Mobile Crowdsensing Data Collection Frameworks for Smart City Applications
Year 2018
Published
Abstract Mobile crowdsensing (MCS) has emerged in the last years and has become one of the most prominent paradigms for urban sensing. In MCS, citizens actively participate in the sensing process by contributing data with their smartphones, tablets, wearables and other mobile devices to a collector. As citizens sustain costs while contributing data, i.e., the energy spent from the batteries for sensing and reporting, devising energy efficient data collection frameworks (DCFs) is essential. In this work, we compare the energy efficiency of several DCFs through CrowdSenSim, which allows to perform large-scale simulation experiments in realistic urban environments. Specifically, the DCFs under analysis differ one with each other by the data reporting mechanism implemented and the signaling between users and the collector needed for sensing and reporting decisions. Results reveal that the key criterion differentiating DCFs' energy consumption is the data reporting mechanism. In principle, continuous reporting to the collector should be more energy consuming than probabilistic reporting. However, DCFs with continuous reporting that implement mechanisms to block sensing and data delivery after a certain amount of contribution are more effective in harvesting data from the crowd.
PDF

Similar Articles

ID Score Article
67352 Capponi, A; Fiandrino, C; Franck, C; Sorger, U; Kliazovich, D; Bouvry, P Assessing Performance of Internet of Things-based Mobile Crowdsensing Systems for Sensing as a Service Applications in Smart Cities(2016)
39536 Barnwal, RP; Ghosh, N; Ghosh, SK; Das, SK PS-Sim: A framework for scalable data simulation and incentivization in participatory sensing-based smart city applications(2019)
40573 Vitello, P; Capponi, A; Fiandrino, C; Giaccone, P; Kliazovich, D; Sorger, U; Bouvry, P Collaborative Data Delivery for Smart City-oriented Mobile Crowdsensing Systems(2018)
Scroll