Innovative approaches, such as stochastic dosimetry and Machine Learning, can be complementary to traditional methods for electromagnetic field (EMF) exposureassessment, overcoming limitations and allowing extraction of new/deeper information. In this study, two examples of innovative EMF exposure assessment approaches are presented: (i) a stochastic approach based on low rank tensor approximations to assess indoor exposure to WLAN access point with unknown location and (ii) an application of Machine Learning to characterize indoor residential exposures to ELF magnetic field in children by considering the type of electric networks near the child home, the age and type of the child home, the type of heating and the family size.

Stochastic Dosimetry and Machine Learning: Innovative Approaches for Facing Challenges in Exposure Assessment in Realistic Scenarios

Emma Chiaramello;Gabriella Tognola;Marta Bonato;Silvia Gallucci;Serena Fiocchi;Marta Parazzini;Paolo Ravazzani
2020

Abstract

Innovative approaches, such as stochastic dosimetry and Machine Learning, can be complementary to traditional methods for electromagnetic field (EMF) exposureassessment, overcoming limitations and allowing extraction of new/deeper information. In this study, two examples of innovative EMF exposure assessment approaches are presented: (i) a stochastic approach based on low rank tensor approximations to assess indoor exposure to WLAN access point with unknown location and (ii) an application of Machine Learning to characterize indoor residential exposures to ELF magnetic field in children by considering the type of electric networks near the child home, the age and type of the child home, the type of heating and the family size.
2020
Istituto di Elettronica e di Ingegneria dell'Informazione e delle Telecomunicazioni - IEIIT
Inglese
URSI GASS 2020
XXXIIIrd General Assembly and Scientific Symposium of the International Union of Radio Science (URSI GASS 2020)
IEEE
New York
STATI UNITI D'AMERICA
Sì, ma tipo non specificato
29/08/2020-05/09/2020
Roma
electromagnetic field
exposure assessment
Stochastic Dosimetry
Due to the COVID-19 pandemic, the GASS 2020 LOC and the URSI Board decided to cancel the organization of the 33rd URSI General Assembly and Scientific Symposium as a physical event. However the GASS 2020 LOC and the URSI Board also decided, in view of the record number of submitted papers and in order to value the work of all our fellow researchers, to publish the proceedings of the 33rd General Assembly and Scientific Symposium, available through the URSI website. The present contributions will also be published on IEEExplore.
9
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Chiaramello, Emma; Tognola, Gabriella; Bonato, Marta; Gallucci, Silvia; Magne, Isabelle; Souques, Martine; Fiocchi, Serena; Parazzini, Marta; Ravazzan...espandi
273
info:eu-repo/semantics/conferenceObject
04 Contributo in convegno::04.01 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/406984
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