Journal article

Static and roving sensor data fusion for spatio-temporal hazard mapping with application to occupational exposure assessment

G Ludwig, T Chu, J Zhu, H Wang, K Koehler

Annals of Applied Statistics | INST MATHEMATICAL STATISTICS-IMS | Published : 2017

Abstract

Rapid technological advances have drastically improved the data collection capacity in occupational exposure assessment. However, advanced statistical methods for analyzing such data and drawing proper inference remain limited. The objectives of this paper are (1) to provide new spatio-temporal methodology that combines data from both roving and static sensors for data processing and hazard mapping across space and over time in an indoor environment, and (2) to compare the new method with the current industry practice, demonstrating the distinct advantages of the new method and the impact on occupational hazard assessment and future policy making in environmental health as well as occupation..

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University of Melbourne Researchers

Grants

Awarded by National Science Foundation


Funding Acknowledgements

Supported in part by the CAPES Foundation, Brazil, Grant 5588-10-3 (Ludwig), the National Natural Science Foundation of China, Grant 11301536 (Chu), USGS CESU Award G16AC00344 (Zhu), NSF Grants DMS-1106975 and DMS-1521746 (Wang) and NIOSH Grant R01 OH010533 (Koehler).