Multivariate quantile mapping bias correction: an N-dimensional probability density function transform for climate model simulations of multiple variables
Environment and Climate Change Canada
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Abstract
Most bias correction algorithms used in climatology, for example quantile mapping, are applied to univariate time series. They neglect the dependence between different variables. Those that are multivariate often correct only limited measures of joint dependence, such as Pearson or Spearman rank correlation. Here, an image processing technique designed to transfer colour information from one image to another—the N-dimensional probability density function transform—is adapted for use as a multivariate bias correction algorithm (MBCn) for climate model projections/predictions of multiple climate variables. MBCn is a multivariate generalization of quantile mapping that transfers all aspects of an observed…
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1Topics & keywords
Topics
Keywords
- Univariate
- Quantile
- Multivariate statistics
- Projection (relational algebra)
- Statistics
- Climate model
- Mathematics
- Climate change
UN Sustainable Development Goals
- Climate action
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