1 / 12

Customization of a Mesoscale Numerical Weather Prediction System for Energy & Utility Applications

Customization of a Mesoscale Numerical Weather Prediction System for Energy & Utility Applications Anthony P. Praino and Lloyd A. Treinish Deep Computing Institute IBM Thomas J. Watson Research Center Yorktown Heights, NY, USA {lloydt, apraino}@us.ibm.com

delora
Télécharger la présentation

Customization of a Mesoscale Numerical Weather Prediction System for Energy & Utility Applications

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Customization of a Mesoscale Numerical Weather Prediction System for Energy & Utility Applications Anthony P. Prainoand Lloyd A. Treinish Deep Computing Institute IBM Thomas J. Watson Research Center Yorktown Heights, NY, USA {lloydt, apraino}@us.ibm.com http://www.research.ibm.com/weather/DT.html

  2. Customization of a Mesoscale Numerical Weather Prediction System for Energy Industry Applications • Background and motivation • Architecture and implementation • Customization for energy applications • Energy Distribution • Energy Generation • Discussion, conclusions and future work

  3. Background and Motivation • Estimated impact of weather on all types of energy & sanitary service across all geographic and temporal scales in the US is ~$230B/year • $ 0.1B to $1B per year for US energy industry related to poor temperature forecasts • Weather-sensitive utility operations are often reactive to short-term (3 to 36 hours), local conditions (city, county, state) due to unavailability of appropriate predicted data at this scale • Mesoscale (cloud-scale) NWP has shown "promise" for years as a potential enabler of proactive decision making for both economic and societal value

  4. Background and Motivation • Despite the "promise" of cloud-scale NWP • Can models be coupled to weather sensitive business problems to demonstrate real value? • Can a practical and usable system be implemented at reasonable cost? • Evaluate concept via implementations in several location around the country. • New York domain has the longest operational history • Operational end-to-end infrastructure and automation with focus on HPC, visualization and system integration • Forecasts to 1 km resolution for metropolitan area with 3 to 21 hours lead time • Prototype applications with actual end users

  5. Model Forecast Domains • Triply nested telescoping grids • Modelling code derived from highly modified version of non-hydrostatic RAMS • Explicit, full cloud microphysics • Typically, one or two 24-hour runs per day • NAM-212/215 via NOAAport for lateral boundaries nudged every 3 hours • NAM-212/215 for initial conditions after isentropic analysis

  6. Implementation and Architecture • Sufficiently fast (>10x real-time), robust, reliable and affordable • E.g., 1.5 hours (42x375MHz Power3), 2.0 hours (24x375MHz Power3) • Focus on HPC, visualization, system integration and automation • Ability to provide usable products in a timely manner • Visualization integrated into all components Post-processing and Tracking Weather Data Pre-processing Processing RS/6000 SP Synoptic Model ETA NOAAPORT Data Ingest Advanced Visualization Boundary Conditions FCST Weather Server Other Input Products Data Explorer NCEP Forecast Products Satellite Images Other NWS Data http://www... Forecast Modelling Systems Analysis Initial Conditions Custom Products for Business Applications and Traditional Weather Graphics Analysis Cloud-Scale Model Observations Data Assimilation

  7. Visualization Component • Traditional meteorological visualization is typically driven by data for analysis -- inappropriate for energy utility applications • Timely usability of cloud-scale NWP results requires • Understanding of how weather data need to be used for end users • Identification of user goals, which are mapped to visualization tasks • Mapping of data to visualization tasks • Users have limited control over content (targeted design) and simple interaction • Products designed in terms relevant for user • Wide range of generic capabilities needed • Line plots to 2d maps to 3d animations -- but customized • Assessment, decision support, analysis and communications • Automated (parallelized) generation of products for web dissemination • Highly interactive applications on workstations

  8. Example Customizations for Utility Operations • Distribution operations • Generation operations

  9. Electricity Transmission • New York State Transmission System • Color-contoured to show forecasted temperature • Available in 10 minute intervals from each 24-hour Deep Thunder forecast at 4 and 1 km resolution • Can be used to estimate transmission efficiency • 115 kV and above • Map also shows • State and county boundaries • Major cities

  10. Example -- Electricity Demand Forecasting • Simple estimated load • f(t,T,H) -- color and height • Scaled by capacity • Generator data from Georgia Power • Deep Thunder forecast • Map shows • Heat index • State & county boundaries • Major cities • Generating plants

  11. Emergency Planning for Severe Winds • Geographic correlation of demographic and forecast data • Map shows • Zip code locations colored by wind-induced residential building damage • Constrained by value, population and wind damage above thresholds

  12. Summary • Deep Thunder is an integrated system that is • Usable forecasts are available automatically, in a timely, regular fashion • Illustrates the viablity of cloud-scale weather modelling to provide more precise forecasts of severe weather • Can be customized for different business applications and processes for safety, economic benefit and efficiency • Continued research and development • Improving quality of forecasts as well as product delivery • Adaptation of other research efforts to support operational applications • Multiple model forecast domains as platforms for development and collaboration • Future work • Adaptation and evaluation to other geographic areas • Enhanced workstation and web-based visualization, model tracking/steering and interactivity for both decision support and analysis • Improved computational performance and throughput • Extensions to still other models and data products • Customized interfaces, products and packaging for other applications (e.g., emergency planning, aviation, surface transportation, broadcast, insurance, agriculture, etc.)

More Related