22nd Conference on Weather Analysis and Forecasting/18th Conference on Numerical Weather Prediction

P2.25

Contributions of mixed physics and perturbed lateral boundary conditions to the skill and spread of precipitation forecasts from a WRF ensemble

Adam J. Clark, Iowa State University, Ames, IA; and W. A. Gallus and T. C. Chen

An experiment is designed to examine the contributions of model and initial condition (IC) and lateral boundary condition (LBC) errors to the spread and skill of precipitation forecasts from two regional eight member 15-km grid-spacing Weather Research and Forecasting (WRF) ensembles covering a 1575 x 1800 km domain. It is widely recognized that a skillful ensemble (i.e., an ensemble with a PDF that generates forecast probabilities with high resolution and reliability) should account for both error sources. Previous work suggests that model errors make a larger contribution than IC/LBC errors to forecast uncertainty in the short range before synoptic-scale error growth becomes non-linear. However, in a regional model with unperturbed LBCs, the infiltration of the lateral boundaries will negate increasing spread. To obtain a better understanding of the contributions to the forecast errors in precipitation and to examine the window of forecast lead time before unperturbed LBCs begin to cause degradation in ensemble forecast skill, the “perfect model” assumption is made in one ensemble which uses perturbed ICs and LBCs (PILB ensemble), and the “perfect analysis” assumption is made in another ensemble which uses mixed physics/dynamic cores (MP ensemble), thus isolating the error contributions.

For the domain and time period used in this study, unperturbed LBCs in the MP ensemble begin to negate increasing spread around forecast hour 24, and ensemble forecast skill as measured by ROC scores becomes lower in the MP ensemble than in the PILB ensemble with statistical significance beginning after forecast hour 48. However, degradation in forecast skill in the MP ensemble relative to the PILB ensemble is not observed in an analysis of deterministic forecasts calculated from each ensemble using the probability matching method. Both ensembles were found to lack statistical consistency (i.e. be underdispersive) with the PILB ensemble (MP ensemble) maintaining a fairly constant level of (exhibiting less) statistical consistency with respect to forecast lead time. Spread ratios in the PILB ensemble are greater than those in the MP ensemble at all forecast lead times and thresholds examined; however, ensemble variance in the MP ensemble is greater than that in the PILB ensemble during the first 24 hours of the forecast. This discrepancy in spread measures likely results from greater bias in the MP ensemble leading to an increase in ensemble variance and decrease in spread ratio relative to the PILB ensemble.

Poster Session 2, Wednesday Poster Viewing
Wednesday, 27 June 2007, 4:30 PM-6:30 PM, Summit C

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