displaced calibration of pm10 measurements using spatio-temporal models
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2007
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Abstract
PM10 monitoring networks are equipped with heterogeneous samplers. Some of these samplers are known to underestimate true levels of concentrations (non-reference samplers). In this paper we propose a hierarchical spatio-temporal Bayesian model for the calibration of measurements recorded using non-reference samplers, by borrowing strength from non co-located reference sampler measurements.Reference Key |
cocchi2007statisticadisplaced
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Authors | ;Daniela Cocchi;Fedele Greco;Carlo Trivisano |
Journal | advances in mathematical physics |
Year | 2007 |
DOI | 10.6092/issn.1973-2201/491 |
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