1 / 15

Weather Information for Surface Transportation (WIST)

Weather Information for Surface Transportation (WIST). Panel 3 Technical Risks and Challenges Bill Mahoney National Center for Atmospheric Research. WIST. Technical Risks & Challenges. Weather Data Acquisition. Weather Diagnoses & Forecasts. Decision Support System. DOT

bianca
Download Presentation

Weather Information for Surface Transportation (WIST)

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. Weather Information for Surface Transportation (WIST) Panel 3 Technical Risks and Challenges Bill Mahoney National Center for Atmospheric Research

  2. WIST Technical Risks & Challenges Weather Data Acquisition Weather Diagnoses & Forecasts Decision Support System DOT Operations Data Acquisition

  3. Weather Diagnoses & Forecasts • The weather information requirements of the • surface transportation community are highly • specialized. • The weather community has not traditionally • been focused to serve surface transportation • needs.

  4. Weather Diagnoses & Forecasts • The transportation community requires: • - Very high resolution information • (misoscale = 40 m to 4 km) • - Rapid updates • (minutes to hours) • - Long lead time forecasts • (at least 48 hours)

  5. Weather Diagnoses & Forecasts • The transportation community also requires: • - Surface information (0 to 2 m AGL) • - Probability metrics for meteorological • parameters • “What is the probability of receiving • 3 inches of snow between mile marker • x and y from 6:00 to 9:00 am tomorrow?”

  6. Weather Diagnoses & Forecasts • Scientific challenges: • - Boundary layer meteorology (0 to 2 m AGL) • - Thermodynamics (heat flux, mixing, etc.) • - Probability & Statistics • - Numerical modeling (meso- to misoscale) • - Verification (with limited verification data) • - Quality control of non-standard data

  7. Weather Diagnoses & Forecasts • If the weather information utilized by a DSS • Is not sufficiently accurate, then the stakeholders • will ignore DSS guidance. • There are no off-the-shelf plug and play weather • capabilities that can fully address the needs • of the surface transportation community; • however, there are several emerging technologies • that are likely to provide benefits.

  8. Weather Data Acquisition • Access to surface observational data is • critical as it provides input to forecast systems • and is necessary for forecast verification. • Without these data, there is a significant • risk that the forecast output will be poor. • There is also a risk associated with using • non-traditional data. Quality control issues • must be addressed.

  9. DOT Operations & Data Acquisition • Access to live DOT operations data is critical as it provides input to DSS systems. • Required DOT data includes: • - Traffic (volume, speed) - Staff availability • - Road surface condition - Work schedules • - Friction - Equipment • - Road subsurface conditions - Treatment type • - Chemical concentrations - Treatment location • - Level of service - Beat completed

  10. DOT Operations & Data Acquisition • A DSS with even limited utility will require • live access to these kind of data. • The technology and resources required • to develop and maintain a dynamic DOT • data base cannot be underestimated. • There are several risks associated with • managing operational data, particularly when • data become old or invalid.

  11. Decision Support System (DSS) • The STWDSR process clearly illustrates that • the user community is large and diverse. • There is a risk associated with the assumption • that a specific DSS solution will be broadly • applicable across the surface transportation • community.

  12. Decision Support System (DSS) • Nearly every road maintenance district has • a unique operation. In addition, individuals within • districts have unique needs. • There is no “one-size-fits-all” DSS solution. There • are significant human factor issues associated • with DSS development that need to be addressed. • There is also a risk that users will reject a DSS • that makes too many decisions for them.

  13. Decision Support System (DSS) • A “bottoms-up” rather than a “tops-down” • approach should be used for DSS system • development. • Local DOT organizations need to determine • the level of sophistication that is required • for their specific DSS application. • The FAA has and continues to experience many • of these challenges in their automation programs. • FAA experiences should be considered.

  14. Summary There are numerous challenges associated with the WIST-DSS initiative; however, scientific and engineering solutions are coming to fruition that, given time and appropriate resources, are likely to produce significant benefits to the surface transportation community.

  15. Summary (cont.) A long term, multifaceted WIST R & D program should be established in order to properly address user needs and to extract the scientific and technical capabilities that reside in organizations (government and private) across the country.

More Related