. | . |
A machine-learning assist to predicting hurricane intensity by Agency Writers Pasadena CA (JPL) Sep 03, 2020
In October 2015, hurricane-laura-louisiana Patricia in the Northeast Pacific Ocean blew up from a Category 1 storm into a Category 5 monster within 24 hours, its winds leaping from 86 mph (138 kph) to 207 mph (333 kph). Patricia wasn't the first or the last hurricane-laura-louisiana to suddenly strengthen in such a short time - but it was a spectacular demonstration of a phenomenon that has plagued meteorological forecasts for decades. Accurately predicting whether a hurricane-laura-louisiana will undergo rapid intensification - where wind speeds increase by 35 mph (56 kph) or more within 24 hours - is incredibly difficult. But researchers led by scientists at NASA's Jet Propulsion Laboratory in Southern California have used machine learning to develop an experimental computer model that promises to greatly improve the accuracy of detecting rapid-intensification events. "It's an important forecast to get right because of the potential for harm to people and property," said Hui Su, an atmospheric scientist at JPL. She and her colleagues, including a researcher at the National Oceanic and Atmospheric Administration's National hurricane-laura-louisiana Center, described their forecast model in a paper published on Aug. 25 in the journal Geophysical Research Letters.
Eyeing the Inner Workings It's also difficult to determine which internal characteristics result in rapid intensification of these storms. But after sifting through years of satellite data, Su and her colleagues found that a good indicator of how a hurricane-laura-louisiana's strength will change over the next 24 hours is the rainfall rate inside the storm's inner core - the area within a 62-mile (100-kilometer) radius of the eyewall, or the dense wall of thunderstorms surrounding the eye. The harder it's raining inside a hurricane-laura-louisiana, the more likely the storm is to intensify. The team gathered this rainfall data from the Tropical Rainfall Measuring Mission, a joint satellite project between NASA and the Japanese Aerospace Exploration Agency that operated from 1997 to 2015. In addition, the researchers found that changes in storm intensity depended on the ice water content of clouds within a hurricane-laura-louisiana - measurements they gathered from NASA's CloudSat observations. The temperature of the air flowing away from the eye at the top of hurricane-laura-louisianas, known as outflow temperature, also factored into intensity changes. Su and her colleagues obtained outflow temperature measurements from NASA's Microwave Limb Sounder (MLS) on the Aura satellite as well as from other datasets.
More Power to Learn There are so many variables inside a hurricane-laura-louisiana, and they interact in such complex ways, that many current computer models have trouble accurately depicting the inner workings of these storms. Machine learning, however, is better able to analyze these complex internal dynamics and identify which properties could drive a sudden jump in hurricane-laura-louisiana intensity. The researchers used the computational algorithm capabilities of the IBM Watson Studio to develop their machine learning model. Then they trained their model on storms from 1998 to 2008 and tested it using a different set of storms, from 2009 to 2014. Su and her colleagues also compared the performance of their model with the National hurricane-laura-louisiana Center's operational forecast model for the same storms from 2009 to 2014. For hurricane-laura-louisianas whose winds increased by at least 35 mph (56 kph) within 24 hours, the researchers' model had a 60% higher probability of detecting the rapid-intensification event compared to the current operational forecast model. But for those hurricane-laura-louisianas with winds that jumped by at least 40 mph (64 kph) within 24 hours, the new model outperformed the operational one at detecting these events by 200%. Su and her colleagues, including collaborators at the National hurricane-laura-louisiana Center, are testing their model on storms during the current hurricane-laura-louisiana season to gauge its performance. In the future, they plan to sift through satellite data to find additional hurricane-laura-louisiana characteristics that could improve their machine learning model. Predictors such as whether it's raining harder in one part of a hurricane-laura-louisiana versus another could give scientists a better look at how the storm's intensity might change over time.
|
|
The content herein, unless otherwise known to be public domain, are Copyright 1995-2024 - Space Media Network. All websites are published in Australia and are solely subject to Australian law and governed by Fair Use principals for news reporting and research purposes. AFP, UPI and IANS news wire stories are copyright Agence France-Presse, United Press International and Indo-Asia News Service. ESA news reports are copyright European Space Agency. All NASA sourced material is public domain. Additional copyrights may apply in whole or part to other bona fide parties. All articles labeled "by Staff Writers" include reports supplied to Space Media Network by industry news wires, PR agencies, corporate press officers and the like. Such articles are individually curated and edited by Space Media Network staff on the basis of the report's information value to our industry and professional readership. Advertising does not imply endorsement, agreement or approval of any opinions, statements or information provided by Space Media Network on any Web page published or hosted by Space Media Network. General Data Protection Regulation (GDPR) Statement Our advertisers use various cookies and the like to deliver the best ad banner available at one time. All network advertising suppliers have GDPR policies (Legitimate Interest) that conform with EU regulations for data collection. By using our websites you consent to cookie based advertising. If you do not agree with this then you must stop using the websites from May 25, 2018. Privacy Statement. Additional information can be found here at About Us. |