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Assessment of wavelet-based spatial verification by means of a stochastic precipitation model

Pub­lished in Geosci. Mod­el Dev., 12, 3401–3418, 2019:

The qual­i­ty of pre­cip­i­ta­tion fore­casts is dif­fi­cult to eval­u­ate objec­tive­ly because images with dis­joint­ed fea­tures sur­round­ed by zero inten­si­ties can­not eas­i­ly be com­pared pix­el by pix­el: any dis­place­ment between observed and pre­dict­ed fields is pun­ished twice, gen­er­al­ly lead­ing to bet­ter marks for coars­er mod­els. To answer the ques­tion of whether a high­ly resolved mod­el tru­ly deliv­ers an improved rep­re­sen­ta­tion of pre­cip­i­ta­tion process­es, alter­na­tive tools are thus need­ed. Wavelet trans­for­ma­tions can be used to sum­ma­rize high-dimen­sion­al data in a few num­bers which char­ac­ter­ize the field­’s tex­ture. A com­par­i­son of the trans­formed fields judges mod­els sole­ly based on their abil­i­ty to pre­dict spa­tial struc­tures. The fideli­ty of the fore­cast’s over­all pat­tern is thus inves­ti­gat­ed sep­a­rate­ly from poten­tial errors in fea­ture loca­tion. This study intro­duces sev­er­al new wavelet-based struc­ture scores for the ver­i­fi­ca­tion of deter­min­is­tic as well as ensem­ble pre­dic­tions. Their prop­er­ties are rig­or­ous­ly test­ed in an ide­al­ized set­ting: a recent­ly devel­oped sto­chas­tic mod­el for pre­cip­i­ta­tion extremes gen­er­ates real­is­tic pairs of syn­thet­ic obser­va­tions and fore­casts with pre­spec­i­fied spa­tial cor­re­la­tions. The wavelet scores are found to react sen­si­tive­ly to dif­fer­ences in struc­tur­al prop­er­ties, mean­ing that the objec­tive­ly best fore­cast can be deter­mined even in cas­es where this task is dif­fi­cult to accom­plish by naked eye. Ran­dom rain fields prove to be a use­ful test bed for any ver­i­fi­ca­tion tool that aims for an assess­ment of struc­ture.

Authors: Sebas­t­ian Buschow, Jakiw Pid­stri­gach, and Petra Friederich

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