A hierarchical modelling approach to combining environmental data at different scales

Authors: Hirst D.1; Storvik G.2; Syversveen A.R.1

Source: Journal of the Royal Statistical Society: Series C (Applied Statistics), Volume 52, Number 3, July 2003 , pp. 377-390(14)

Publisher: Wiley-Blackwell

Buy & download fulltext article:

OR

Price: $48.00 plus tax (Refund Policy)

Abstract:

Summary.

Long-transported air pollution in Europe is monitored by a combination of a highly complex mathematical model and a limited number of measurement stations. The model predicts deposition on a 150 km × 150 km square grid covering the whole of the continent. These predictions can be regarded as spatial averages, with some spatially correlated model error. The measurement stations give a limited number of point estimates, regarded as error free. We combine these two sources of data by assuming that both are observations of an underlying true process. This true deposition is made up of a smooth deterministic trend, due to gradual changes in emissions over space and time, and two stochastic components. One is non- stationary and correlated over long distances; the other describes variation within a grid square. Our approach is through hierarchical modelling with predictions and measurements being independent conditioned on the underlying non-stationary true deposition. We assume Gaussian processes and calculate maximum likelihood estimates through numerical optimization. We find that the variation within a grid square is by far the largest component of the variation in the true deposition. We assume that the mathematical model produces estimates of the mean over an area that is approximately equal to a grid square, and we find that it has an error that is similar to the long-range stochastic component of the true deposition, in addition to a large bias.

Keywords: Air pollution; Deterministic model; Hierarchical stochastic model; Maximum likelihood; Multiple resolution data; Non-stationarity

Document Type: Research article

DOI: http://dx.doi.org/10.1111/1467-9876.00411

Affiliations: 1: Norwegian Computing Center, Oslo, Norway 2: Norwegian Computing Center, Oslo, and University of Oslo, Norway

Publication date: 2003-07-01

Related content

Tools

Key

Free Content
Free content
New Content
New content
Open Access Content
Open access content
Subscribed Content
Subscribed content
Free Trial Content
Free trial content

Text size:

A | A | A | A
Share this item with others: These icons link to social bookmarking sites where readers can share and discover new web pages. print icon Print this page