SELF-CORRECTING MULTI-MODEL NUMERICAL RAINFALL ENSEMBLE FORECASTING METHOD
20170261646 · 2017-09-14
Inventors
- JIA LIU (BEIJING, CN)
- Chuanzhe LI (Beijing, CN)
- Jiyang TIAN (Beijing, CN)
- Fuliang YU (Beijing, CN)
- Yang Wang (Beijing, CN)
Cpc classification
G06Q10/04
PHYSICS
International classification
Abstract
The present application relates to a self-correcting multi-model numerical rainfall ensemble forecasting method, comprising the following steps: step 1, selecting various numerical weather prediction models; step 2, simulating forecasting and outputting rainfall data for every T hours; step 3, evaluating rainfall forecast results; step 4, determining a forecast weight coefficient of each model; and step 5, releasing a forecast result. The present application can more objectively evaluate the rainfall forecast results of all numerical weather prediction models on the basis of existing multi-model ensemble rainfall forecast, so that the final ensemble rainfall forecast result does not depend too much on man-made decisions and thus the released rainfall forecast result is more objective.
Claims
1. A self-correcting multi-model numerical rainfall ensemble forecasting method, comprising the following steps: step 1, selecting various numerical weather prediction forecast models; step 2, simulating forecasting and outputting rainfall data for every T hours; step 3, evaluating rainfall forecast results; step 4, determining a forecast weight coefficient of each model; and step 5, releasing a forecast result, wherein the step 3 further comprises: after outputting, the forecast results of T hours of rainfall through the selected various numerical models, based on an actually measured result of the rainfall, comprehensively evaluating the rainfall forecast results qualitative and quantitative manners respectively while considering time and space as well as point rainfall and areal rainfall, and scoring the comprehensive evaluation results; in the step 3, the comprehensive evaluation comprises the qualitative evaluation which first a forecasted rainfall value and an actually measured value are compared and assessed in a graded manner, and then classification evaluation indices are established according to an assessment result; specifically, when the classification evaluation indices are used in spatial dimension evaluation, firstly forecasted values and actually measured values of a specific observation time step i at different observation locations are compared to acquire classification variables NA.sub.i, NB.sub.i and NC.sub.i in a rainfall grade table, then the classification indices at all the time steps are statistically averaged according to equations (1)-(4), and finally a classification evaluation result in the spatial dimension is obtained; spatial scale evaluation indexes comprise:
2. The self-correcting multi-model numerical rainfall ensemble forecasting method according to claim 1, wherein in the step 2, the rainfall output time step T is set as 6 hours.
3. The self-correcting multi-model numerical rainfall ensemble forecasting method according to claim 1, wherein in the step 4, a coefficient, obtained by using a rainfall forecast score of each of numerical weather prediction models to divide the sum of comprehensive scores of all models, is used as a rainfall forecast weight coefficient of each of the numerical weather prediction model; and as a solution for next ensemble rainfall forecast, the weight coefficient a.sub.k is calculated as follows:
a.sub.k=S.sub.k/(S.sub.1+ . . . +S.sub.m) (19) wherein k is 1, . . . , or m, and is the number of the numerical weather prediction models, and S.sub.k represents the comprehensive score of the k-th numerical weather prediction model
4. The self-correcting multi-model numerical rainfall ensemble forecasting method according to claim 3, wherein in the step 4, after a previous rainfall forecast weight coefficient a.sub.k is obtained and when the next rainfall is completed, the previous rainfall forecast weight coefficient a.sub.k is corrected based on a forecast value and an actually measured value of the next rainfall to be used as a solution for subsequent rainfall forecast.
5. The self-correcting multi-model numerical rainfall ensemble forecasting method according to claim 1, herein in the step 5,the forecast insult of ensemble rainfall forecast is obtained by each model forecast result multiplied by its forecast weight coefficient:
P.sub.p=P.sub.p1×a.sub.1+P.sub.p2×a.sub.2+ . . . +P.sub.pm×a.sub.m (20) wherein P.sub.pm represents forecast rainfall of the m-th numerical weather prediction model at an observation location within a time period, and a.sub.m represents a weight coefficient of the m-th numerical weather prediction model at the observation location within the time period.
6. Electronic equipment, comprising: at least one processor, and a memory in communication with the at least one processor, wherein the memory stores instructions executable by the at least one processor, and when executed by the at least one processor, causing the at least one processor to perform the method according, to claim 1.
7. A non-transitory computer-readable storage medium storing computer instructions, which cause a computer to perform the method according to claim 1 when the computer instructions are executed by the computer.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
[0040] One or more, embodiments are illustrated by corresponding accompanying drawings which are not intended to limit the scope of the present invention. Components in the drawings with the same reference numbers in the accompanying drawings represent similar elements and there is no scale limitation in the drawings otherwise particularly represented.
[0041]
[0042]
DETAILED DESCRIPTION
[0043] In order to illustrate purposes, technical solutions and advantages of the present application more clearly, the technical solutions will be clearly and completely described through implementations with reference to the accompanying drawings in the embodiments of the present application hereinafter. Obviously, the described embodiments below are merely for illustrating sonic embodiments of the present application.
Embodiment I
[0044] The present application will be further illustrated with reference to
[0045] The technical solution adopted in the present application is a self-correcting multi-model numerical rainfall ensemble forecasting method based on a scoring method. The method mainly comprises two parts, namely, firstly, running of each numerical weather prediction model, and secondly, evaluation on each numerical weather prediction model running result and ensemble of the forecast results so that more objective ensemble rainfall forecast can be achieved and uncertainty of model forecast can be reduced. The method can be implemented by a self-correcting numerical rainfall ensemble forecasting device. For example, the device may be a weather forecasting platform, and can be configured in a smart terminal for use. The method is implemented by the steps as follows.
[0046] In step 1, numerical weather prediction models are selected. In this step, a plurality of currently popular numerical weather prediction models are selected to be installed on the same weather forecast platform.
[0047] In step 2, a forecast is simulated. In this step, on the weather forecast platform, an initial time, a boundary condition, a physical parameterization solution, terrain data and the like of each model are set and processed respectively. And, running is carried out according to an operation method of each model respectively to perform rainfall forecast and rainfall forecast results are output based on a time step of 6 hours.
[0048] In step 3, the rainfall forecast results are evaluated, wherein, based on an actually measured result of the rainfall, the rainfall forecast results of all models are comprehensively evaluated in a qualitative and quantitative manner respectively considering time and space as well as point rainfall and areal rainfall, and the evaluated results are scored.
[0049] For qualitative evaluation, firstly, rainfall forecasted values and actually measured values are compared and assessed in a graded manner, in which grading standards are shown in below table 1. According to the assessment results, classification evaluation indices are established. Spatial dimension evaluation indices are shown in equations (1)-(4), and temporal dimension evaluation indexes are shown in equations (5)-(8).
TABLE-US-00002 TABLE 1 Rainfall Grade Table Ex- Rainfall Light Moderate Heavy Torrential Down- cessively grades rain rain rain rain pour heavy rain 6 hr. 0.1-2.5 2.6-6 6.1-12 12.1-25 25.1-60 >60 rainfall (mm)
[0050] NA.sub.i, NB.sub.i and NC.sub.i respectively indicate whether the forecasted values and the actually measured values at different observation locations within an i-th 6h observation time step are in, corresponding rainfall grades in the table 1, N is the number of observation time periods (6hr), and the areal rainfall is a rainfall average at all rainfall stations.
[0051] NA.sub.j, NB.sup.j and NC.sub.j respectively indicate whether the forecast values and the actually measured values of the observation location j at the different observation time points are in corresponding rainfall grades in the table 1, and M is the number of the observation locations.
[0052] The variables NA, NB and NC are calculated as follows: for example, during the spatial dimension evaluation, within a specific observation time step i if both a rainfall forecasted value and a rainfall observation value at an observation location are in the range of 0.1-2.5 mm (light rain), NA.sub.i is marked as 1; if the rainfall observation value is in the range of 0.1-2.5 mm (light rain), but, the rainfall forecasted value is not in the range, and is not equal to 0, NB.sub.j is marked as 1; if the rainfall observation value is in the range of 0.1-2.5 mm (light rain), and the rainfall forecasted value is 0 mm; that is, the numerical weather prediction model does not acquire rainfall information, NC.sub.i is marked as 1.
[0053] Assuming that there are six observation locations totally, if there is one observation location whose forecasted value and the observation value are in the range of 0.1-2.5 mm (light rain), NA.sub.i=1; if there are two observation locations whose forecasted values and the observation values are in the range of 0.1-2.5 mm (light rain), NB.sub.l=2; if there are three observation locations whose forecasted values and the observation values are in the range of 0.1-2.5 mm (light rain), NC.sub.i=3. Therefore, within an i-th time period, POD.sub.s=1/(3+1)=¼, FBI.sub.s=(1+2)/(1+3)=¾, FAR.sub.s=2/(1+2)=⅔ and CSI.sub.s=1(1+2+3)=⅙, which are statistical results within the i-th time period, and then all index values within N time periods are calculated to obtain a mean. For temporal dimension evaluation, the calculation method is the same as that of the spatial dimension evaluation.
[0054] Quantitative evaluation adopts four common quantitative evaluation indices in the error analysis. For temporal dimension evaluation, P.sub.i and Q.sub.i respectively represent a forecast value and an actually measured value of a mean rainfall in the study area at the observation time i, which are shown in equations (9)-(12).
[0055] For spatial dimension evaluation, P.sub.j and O.sub.j respectively represent a forecast value and an actually measured value of accumulated rainfall in the whole observation time period at a specific spatial location j, which are shown in equations (13)16):
[0056] The above 8 classification indices and 8 quantitative indices are combined to establish an index system for rainfall forecast of each numerical weather prediction model, and thus a rainfall forecast result of each numerical weather prediction model is scored based on the above 16 indices. Assuming that m numerical weather prediction models are used, each index is normalized.
[0057] With respect to indexes, POD.sub.tk;
SPOD.sub.tk=(POD.sub.tk−POD.sub.tmin)/(POD.sub.tmax−POD.sub.tmin) (17)
wherein k is 1, . . . , or m.
[0058] After normalization, each numerical weather prediction model is scored, a comprehensive score is represented by S, and S.sub.k represents the comprehensive score of a k-th numerical weather prediction model, wherein
[0059] In step 4, a forecast weight coefficient of each model is determined, wherein a coefficient, obtained by using a rainfall forecast score of any one of numerical weather prediction models to divide the sum of the scores of all models, is used as a rainfall forecast weight coefficient of the numerical weather prediction model. As a solution for the next ensemble rainfall forecast, if and only if the actually measured rainfall of this rainfall is greater than 0.1 mm, a rainfall forecast weight coefficient can be adjusted, and each weight coefficient is calculated as follows:
a.sub.k=S.sub.k/(S.sub.l+ . . . +S.sub.m) tm (19)
[0060] The larger the weight coefficient is, the greater the a.sub.k is, which indicates that a forecast value of a k-th numerical weather prediction model is closer to its observation value.
[0061] In step 5, a forecast result is released, wherein the next rainfall is forecasted and the forecast result is released according to the determined forecast weight coefficients of the all models in this rainfall, and the forecast result is obtained by each model forecast result multiplied by its forecast weight coefficient:
P.sub.p=P.sub.p1×a.sub.1+P.sub.p2×a.sub.2+ . . . +P.sub.Pm×a.sub.m (20)
in which P.sub.Pm represents forecast rainfall of an m-th numerical weather prediction model at an observation location within a time period.
Embodiment II
[0062] It should be understood by those skilled in the art that, all or part of the steps of the above method provided by the embodiments may he implemented through programs that give instructions to respective hardware. The above programs may be stored in a computer-readable storage medium. During program implementation, the steps of the above method provided by the embodiments are implemented. The above storage medium may be an ROM, an RAM, a magnetic disk, an optical disk or other media capable of storing program codes,
[0063] The embodiments of the present application provide a non-transitory computer storage medium storing computer-executable instructions, which cause a computer to perform the self-correcting multi-model numerical rainfall ensemble forecasting method provided by any of the above embodiments.
[0064] As an embodiment, the non-transitory computer storage medium of the present application stores computer-executable instructions, and the computer-executable instructions is set as follows:
[0065] step 1, selecting various numerical weather prediction models;
[0066] step 2, simulating forecasting, and outputting rainfall data for every T hours;
[0067] step 3, evaluating rainfall forecast results,
[0068] step 4, determining a forecast weight coefficient each model; and
[0069] step 5, releasing a forecast result.
[0070] As a non-transitory computer-readable storage medium, it can be used to store non-transitory software programs, non-transitory computer-executable programs and modules, and corresponding program instructions/modules used in the self-correcting multi-model numerical rainfall ensemble forecasting method provided by the embodiments of the present application. When the one or more modules stored in the non-transitory computer-readable storage medium are executed by the processor, the self-correcting multi-model numerical rainfall ensemble forecasting method provided by any of the above embodiments is performed.
[0071] The non-transitory computer-readable storage medium may include a storage program area and a storage data area, wherein the storage program area may store an operating system, an application program required by at least one function; the storage data area may store data and the like created during the operation of a self-correcting multi-model numerical rainfall ensemble forecasting device. In addition, the non-transitory computer-readable storage medium may include a high-speed random access memory and may also include a non-transitory memory. For example, the memory comprises at least one disk storage device, a flash memory device or other non-transitory solid state memory. In some embodiments, the non-transitory computer-readable storage medium may optionally include memories remotely configured with respect to the processor, and the memories may be connected to the self-correcting multi-model numerical rainfall ensemble forecasting device via networks. Examples of the networks include, but are not limited to, the Internet, an intranet, a local area network, a mobile communication network, and combinations thereof.
Embodiment III
[0072] The embodiments of the present application provide a computer program product comprising a computer program stored on a non-transitory computer-readable storage medium, when program instructions included in the computer program are executed by a computer, the computer can perform any above-mentioned self-correcting multi-model numerical rainfall ensemble forecasting method.
Embodiment IV
[0073]
[0074] One or more processors 210 and a memory 220, wherein in
[0075] The equipment for implementing the self-correcting multi-model numerical rainfall ensemble forecasting method may further include an input device 230 and an output device 240.
[0076] The processor 210, the memory 220, the input device 230, and the output device 240 may be connected via a bus or other means. As shown in
[0077] The input device 230 may receive input digital or character information and generate a key signal input related to user setting and function control of the self-correcting multi-model numerical rainfall ensemble forecasting device. The output device 240 may include display equipment, such as a display screen.
[0078] When the one or more modules stored in the memory 220 are executed by the one or processors 220, the self-correcting multi-model numerical rainfall ensemble forecasting method provided by any of the above embodiments is performed.
[0079] The above-described product can implement the method provided by the embodiments of the present invention, and has corresponding function modules for implementing the method and beneficial effects. Technical details which are not described in detail in the embodiments can refer to the method provided by the embodiments of the present application.
[0080] The electronic equipment of the embodiments of the present application exists in a variety of forms, and comprises, but is not limited to:
[0081] 1) mobile communication equipment: this type of equipment is characterized by having mobile communication capabilities and mainly aims to provide voice and data communication, and these terminals include: smart phones (such as iPhone), multimedia phones, functional phones, low-end phones and the like;
[0082] 2) ultra-mobile personal computer equipment: this type of equipment belongs to the field of personal computers, has computing and processing functions, and generally, also has a mobile Internet feature, and these terminals include: PDA, MID, UMPC and others, such as an iPad;
[0083] 3) a server: this is equipment used for providing computing services, the server is composed of a processor, a hard disk, a memory, a system bus and the like, an architecture of the server is similar to that of a general computer, however, the server needs to provide highly reliable services, so it has high requirements on processing capacity, stability, reliability, security, scalability, manageability and other aspects; and
[0084] 4 other electronic devices with data processing functions.
[0085] The above device embodiments are illustrative only. The units described as separate members may be or may not be physically separated. The members described as units may be or may not be physical units, may be located at the same place or may be distributed in multiple network units. The objectives of the solutions of this application may be realized by selecting some or all of the modules according to the actual needs.
[0086] Through the description of the above embodiments, those skilled in the art can understand clearly that the all embodiments may be implemented through software and an indispensable universal hardware platform, of course, also he implemented through hardware. Based on such understanding, essentially, the above technical solutions or parts contributing to the related arts can be embodied in the form of a software product, the computer software product may be stored in a computer-readable storage medium, such as ROM/RAM, a magnetic disk, an optical disk, or the like, which includes a plurality of instructions to make computer equipment (which may be a personal computer, a server, network equipment, or the like) to perform all or part of the steps of the method of all embodiments of the application.
[0087] At last, it should be noted that the above embodiments are merely illustrative of the technical solutions of the present application and not intended to limit them. Although the present application has been described in detail with reference to the foregoing embodiments, those skilled in the art can understand that the technical solutions described in the foregoing embodiments can be modified or some of the technical features thereof can be equivalently replaced, and these modifications or substitutions do not depart from the spirit and scope of the technical solutions of the embodiments of the present application.