IBM Deep Thunder
Deep Thunder is a research project by IBM that aims to improve short-term local weather forecasting through the use of high-performance computing. It is part of IBM's Deep Computing initiative that also produced the Deep Blue chess computer.
Deep Thunder is intended to provide local, high-resolution weather predictions customized to weather-sensitive specific business operations. For example, it could be used to predict the wind velocity at an Olympic diving platform, destructive thunderstorms, and combined with other physical models to predict where there will be flooding, damaged power lines and algal blooms. The project is now headquartered at IBM's Watson Research Center in Yorktown Heights, New York.
History
The Deep Thunder project is headed by Lloyd Treinish, who joined IBM in 1990, after working for 12 years at NASA's Goddard Space Flight Center.The project began in 1995 as an outgrowth of a project designed to help provide accurate weather forecasts for the 1996 Atlanta Olympic Games. In collaboration with the National Oceanic and Atmospheric Administration, IBM scientists built one of the first parallel processing supercomputers to be used for weather modeling, based on the IBM RS/6000 SP. It was installed at the National Weather Service office in Peachtree City, Georgia, in 1996, where it ran for several months and produced multiple forecasts daily. After a few years of development, the team set up an implementation in New York City in 2001 to test the project. The group is currently working on establishing the Rio de Janeiro operations center.
The name Deep Thunder arose after the IBM Deep Blue system played and defeated the world chess champion Garry Kasparov in May, 1997. In the following November, a journalist used the name Deep Thunder in an article, which stuck with the developers. Current members of Deep Thunder are Lloyd Treinish, Anthony Praino, Campbell Watson and Mukul Tewari.
Technology
Deep Thunder uses a 3D telescoping grid where data from one model feeds into another and is verified with historical data. For example, they start with a global model from NOAA, and as they zoom in the resolution decreases exponentially, down to models with resolutions of 1 kilometer, and sometimes as small as 1 meter. Using this method, IBM can cut down on the amount of processing required. IBM uses many sources of data to feed Deep Thunder, including public satellite sources, and many other private sources, as well as whatever local sensors and data a location, may have.The Watson computer system will be used to generate the Deep Thunder weather forecasts. Input data will be collected from over 200,000 Weather Underground personal weather stations, weather satellite data, smartphone barometer and data from other sources.