Title
Improving science yield for NASA Swift with automated planning technologies
Abstract
The Neil Gehrels Swift Observatory is a uniquely capable mission, with three on-board instruments and rapid slewing capabilities. It serves as a fast-response satellite observatory for everything from gravitational-wave counterpart searches to cometary science. Swift averages 125 different observations per day, and is consistently over-subscribed, responding to about one-hundred Target of Oportunity ( ToO) requests per month from the general astrophysics community, as well as co-pointing and follow-up agreements with many other observatories. Since launch in 2004, the demands put on the spacecraft have grown consistently in terms of number and type of targets as well as schedule complexity. To facilitate this growth, various scheduling tools and helper technologies have been built by the Swift team to continue improving the scientific yield of the Swift mission. However, these tools have been used only to assist humans in exploring the local pareto surface and for fixing constraint violations. Because of the computational complexity of the scheduling task, no automation tool has been able to produce a plan of equal or higher quality than that produced by a well-trained human, given the necessary time constraints. In this proceeding we formalize the Swift Scheduling Problem as a dynamic fuzzy Constraint Satisfaction Problem ( DF-CSP) and explore the global solution space. We detail here several approaches towards achieving the goal of surpassing human quality schedules using classical optimization and algorithmic techniques, as well as machine learning and recurrent neural network ( RNN) methods. We then briefly discuss the increased scientific yield and benefit to the wider astrophysics community that would result from the further development and adoption of these technologies.
Year
DOI
Venue
2017
10.1088/1742-6596/1085/3/032010
Journal of Physics Conference Series
Field
DocType
Volume
Astronomy,Job shop scheduling,Swift,Industrial engineering,Scheduling (computing),Recurrent neural network,Automation,Schedule,Pareto principle,Physics,Computational complexity theory
Journal
1085
ISSN
Citations 
PageRank 
1742-6588
0
0.34
References 
Authors
0
1
Name
Order
Citations
PageRank
Aaron Tohuvavohu100.34