JAXA Repository / AIREX 未来へ続く、宙(そら)への英知

このアイテムに関連するファイルはありません。

タイトルData Mining for Understanding and Impriving Decision-Making Affecting Ground Delay Programs
本文(外部サイト)http://hdl.handle.net/2060/20140010616
著者(英)Sridhar, Banavar; Wang, Yao Xun; Kulkarni, Deepak
著者所属(英)NASA Ames Research Center
発行日2013-10-06
言語eng
内容記述The continuous growth in the demand for air transportation results in an imbalance between airspace capacity and traffic demand. The airspace capacity of a region depends on the ability of the system to maintain safe separation between aircraft in the region. In addition to growing demand, the airspace capacity is severely limited by convective weather. During such conditions, traffic managers at the FAA's Air Traffic Control System Command Center (ATCSCC) and dispatchers at various Airlines' Operations Center (AOC) collaborate to mitigate the demand-capacity imbalance caused by weather. The end result is the implementation of a set of Traffic Flow Management (TFM) initiatives such as ground delay programs, reroute advisories, flow metering, and ground stops. Data Mining is the automated process of analyzing large sets of data and then extracting patterns in the data. Data mining tools are capable of predicting behaviors and future trends, allowing an organization to benefit from past experience in making knowledge-driven decisions. The work reported in this paper is focused on ground delay programs. Data mining algorithms have the potential to develop associations between weather patterns and the corresponding ground delay program responses. If successful, they can be used to improve and standardize TFM decision resulting in better predictability of traffic flows on days with reliable weather forecasts. The approach here seeks to develop a set of data mining and machine learning models and apply them to historical archives of weather observations and forecasts and TFM initiatives to determine the extent to which the theory can predict and explain the observed traffic flow behaviors.
NASA分類Air Transportation and Safety
レポートNOARC-E-DAA-TN10152
権利No Copyright
URIhttps://repository.exst.jaxa.jp/dspace/handle/a-is/68342


このリポジトリに保管されているアイテムは、他に指定されている場合を除き、著作権により保護されています。