Recommending Strategic Air Traffic Management Initiatives in Convective Weather

Abstract

The presence of uncertainty in weather forecasts poses significant challenges for air traffic managers. These challenges can have major repercussions on stakeholders in terms of their impact on the delay within the system. In this paper, we discuss an approach for recommending traffic management initiative (TMI) parameters during uncertain weather conditions. We propose four methods for TMI selection. The first two favor random exploration of TMI decisions. An epsilon-greedy approach and a softmax algorithm are also evaluated against the two random exploration approaches. A parallel fast-time simulation framework is presented for evaluating the proposed methods over a range of weather forecast scenarios. A set of regional TMIs is applied and tested against a set of case days in which the airspace capacity in the Northeast United States was compromised by convective weather. Both the softmax and epsilon-greedy approaches demonstrate strong performance relative to the other methods. The results suggest that the approach could potentially aid air traffic stakeholders in understanding how to best deal with weather forecast uncertainty.

Document Details

Document Type
Pub Defense Publication
Publication Date
Apr 01, 2023
Source ID
10.2514/1.d0297

Entities

People

  • James C. Jones
  • Yan Glina
  • Zach Ellenbogen

Organizations

  • MIT Lincoln Laboratory
  • United States Air Force

Tags

Fields of Study

  • Computer science
  • Environmental science

Readers

  • Adaptive Control and Estimation with Uncertainty in Dynamic Systems.
  • Aviation Safety and Air Traffic Management
  • Emergency Management and Homeland Security.

Technology Areas

  • Space