Abstract
<strong class="journal-contentHeaderColor">Abstract.</strong> The nowcast of rainfall storms at fine temporal and spatial resolutions is quite challenging due to the unpredictable nature of rainfall at such scales. Typically, rainfall storms are recognized by weather radar and extrapolated in the future by the Lagrangian persistence. However, storm evolution is much more dynamic and complex than the Lagrangian persistence, leading to short forecast horizons, especially for convective events. Thus, the aim of this paper is to investigate the improvement that past similar storms can introduce to the object-oriented radar-based nowcast. Here we propose a nearest-neighbour approach that measures first the similarity between the âto-be-nowcastedâ storm and past observed storms and later uses the behaviour of the past most similar storms to issue either a single nowcast (by averaging the 4 most similar storm responses) or an ensemble nowcast (by considering the 30 most similar storm responses). Three questions are tackled here. (i) What features should be used to describe storms in order to check for similarity? (ii)Â How should similarity between past storms be measured? (iii) Is this similarity useful for object-oriented nowcast? For this purpose, individual storms from 110 events in the period 2000â2018 recognized within the Hanover Radar Range (<span class="inline-formula"><i>R</i>â¼115</span>âkm<span class="inline-formula"><sup>2</sup></span>), Germany, are used as a basis for investigation. A âleave-one-event-outâ cross-validation is employed to test the nearest-neighbour approach for the prediction of the area, mean intensity, the <span class="inline-formula"><i>x</i></span> and <span class="inline-formula"><i>y</i></span> velocity components, and the total lifetime of the to-be-nowcasted storm for lead times from <span class="inline-formula">+</span>â5âmin up to <span class="inline-formula">+</span>â3âh. Prior to the application, two importance analysis methods (Pearson correlation and partial information correlation) are employed to identify the most important predictors. The results indicate that most of the storms behave similarly, and the knowledge obtained from such similar past storms helps to capture better the storm dissipation and improves the nowcast compared to the Lagrangian persistence, especially for convective events (storms shorter than 3âh) and longer lead times (from 1 to 3âh). The main advantage of the nearest-neighbour approach is seen when applied in a probabilistic way (with the 30 closest neighbours as ensembles) rather than in a deterministic way (averaging the response from the four closest neighbours). The probabilistic approach seems promising, especially for convective storms, and it can be further improved by either increasing the sample size, employing more suitable methods for the predictor identification, or selecting physical predictors.
Highlights
Radar based nowcasts are used for short-term rainfall nowcast
Even with a small database for the long storms, the 30-NN can recognize 1-5 similar past storms that can give useful information in improving the nowcast when compared to the Accurate predictions of rainfall storms at fine temporal and spatial scales based on radar data are quite challenging to achieve
The errors associated with the radar measurements, identification and tracking of the storms, and more importantly the extrapolation of the storms in the future based on the Lagrangian persistence, are limiting the forecast horizons of such radar based nowcasts to 30-45 min for convective storms and to 1 hour for stratiform events
Summary
Radar based nowcasts are used for short-term rainfall nowcast. The rainfall is either considered as an object (a set of radar grid cells with the intensity above a threshold that moves together as a unit and is regarded as a storm (Dixon & Wiener, 1993; Johnson et al, 1998)) or as an intermittent field (intensity is moving from one pixel of the radar image to the other (Ruzanski et al, 2011; Zahraei et al, 2012)). Whilst the field-based approach of rainfall nowcasting has gained popularity recently, here the focus is only on the object-oriented forecast, on the nowcasting of storms
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