BSC Post-processed Sub-seasonal Climate Forecast for vineyard management (Q6750)

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Dataset published at Zenodo repository.
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BSC Post-processed Sub-seasonal Climate Forecast for vineyard management
Dataset published at Zenodo repository.

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    The Climate Services Team at the Barcelona Supercomputing Center has deployed a climate service for vineyard management in the context of the vitiGEOSS project. This dataset results from post-processing, i.e. by downscaling, calibrating and assessing, the subeasonal climate prediction system NCEP-CFSv2. Probabilistic predictions have as output several solutions (ensemble members) to account for forecast uncertainty. The forecast information is conveyed as probabilities, in this case as the probabilities of occurrence of three categories or terciles (below normal, normal and above normal). The categories are defined based on the terciles of the model climatology distribution over a period in the past. Additional information regarding the probability of occurrence of extremes is also provided, considered as the probability of not reaching the 10th percentile or surpassing the 90th percentile of the model climatology distribution. The skill scores provide information on the forecast quality (fair Ranked Probability Skill Score for the tercile categories and fair Brier Skill Score for the probabilities of extremes). A positive skill score indicates that the prediction is good (better than using average past conditions) in the long term, while a negative skill score indicates a prediction is not beating the climatological forecast. Prediction system: National Centers for Environmental Prediction (NCEP) CFSv2, post-processed by BSC (create a lagged ensemble, downscaling and calibration). Issue frequency: Weekly (Initialization every Thursday, post-processed prediction every Friday). Lead times: weeks 1 to 4 (e.g. For a forecast issued on Friday 4th November, forecasts will be weekly averages starting the following Monday-Thursday and the 4 following weeks (e.g. week 1 will be 8th-15th November). The initialization date is indicated in the name of each file (e.g. 20211104). Variables: mean, minimum and maximum 2 m temperature, accumulated precipitation, and incoming solar radiation. Ensemble size: 48 members Postprocessing: Create a lagged ensemble of 48 ensemble members, downscaling from the original (1x 1) resolution to 0.1x 0.1 for the three domains and weekly calibration with variance inflation. Spatial coverage of the domains: Catalonia region is indicated by cat and covers latitudes [10 N, 44 N], and longitudes [1 W, 4 E]. The latitude indices range [1:41], and the longitude indices range [1:51]. Douro region is indicated by douro and covers latitudes [40 N, 43N ] and longitudes [9 W, 6 W]. The latitude indices range [1:31], and the longitude indices range [1:31]. Campana region is indicated by campania and covers latitudes [39 N, 43 N] and longitudes [13 E,17.3 E]. The latitude indices range [1:41], and the longitude indices range [1:44]. The specific latitude and longitude indices to extract the predictions corresponding to each vitiGEOSS site are indicated in Table 2. Forecast probabilities E.g t2_campania_prob_20211104.ncml The file name contains the name of the variable, domain, the label prob and the initialization date of the forecasts (Always a Thursday). It contains the forecast probabilities in (%) of each tercile category below normal (prob_bn), normal (prob_n) and above normal (prob_an) and the probability of lower extreme (prob_bp10) and the probability of upper extreme (prob_ap90). The latitude, longitude and lead time (weeks 1 to 4) can be selected. Forecast ensemble members E.g. t2_campania_20211104.ncml The file name contains the name of the variable, domain and initialization date of the forecasts (Always a Thursday). It contains the 48 absolute values of the forecast variables in their corresponding units (see Table 2). The latitude, longitude and lead time (weeks 1 to 4) can be selected. Category limits E.g. t2_campania_percentiles_week44.ncml The file name contains the name of the variable, domain, the label percentiles and the month for which the category limits apply. It contains the limits of the predicted categories ( below normal, normal and above normal). These categories are defined with respect to a period in the past. The 33rd, 66th percentiles (p33 and p66) divide the model climatological distribution into 3 equiprobable categories. The 33rd percentile is the boundary between below-normal and normal, and the 66th percentile is the boundary between the normal and above-normal categories. The 10th and 90th percentiles, which define the threshold for the lower and upper extreme conditions, are also provided (p10 and p90). It should be noted that the definition of the categories is specific to each location (latitude and longitude), initialization month and lead time (valid month). Skill scores E.g t2_campania_skill_week44.ncml The file name contains the name of the variable, domain, the label skill and the week of the year for which the skill scores apply. It contains the measures of forecast quality, the fair Ranked probability score for terciles (rpss) and the fair Brier Skill Score for lower and upper extremes (bsp10 and bsp90). It should be noted that the skill level is specific to each location (latitude and longitude), initialization and lead time (valid week).
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    28 March 2024
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