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Auto-Suggest Capability via Machine Learning in SMART NAS

Award Information
Agency: National Aeronautics and Space Administration
Branch: N/A
Contract: NNX15CA38P
Agency Tracking Number: 154605
Amount: $122,124.00
Phase: Phase I
Program: SBIR
Solicitation Topic Code: A3.02
Solicitation Number: N/A
Timeline
Solicitation Year: 2015
Award Year: 2015
Award Start Date (Proposal Award Date): 2015-06-17
Award End Date (Contract End Date): 2015-12-17
Small Business Information
2360 Southwest Chelmsford Avenue
Portland, OR 97201-2265
United States
DUNS: 802036496
HUBZone Owned: No
Woman Owned: Yes
Socially and Economically Disadvantaged: No
Principal Investigator
 Jimmy Krozel
 Chief Scientist
 (503) 242-1761
 Jimmy.Krozel@gmail.com
Business Contact
 Michelle Camarda
Title: Business Official
Phone: (503) 242-1761
Email: Michelle.Camarda@gmail.com
Research Institution
N/A
Abstract

We build machine learning capabilities that enables the Shadow Mode Assessment using Realistic Technologies for the NAS (SMART NAS) system to synthesize, optimize, and "auto-suggest" optimized Traffic Management Initiatives (TMIs). Multi Level Multi View (MLMV) machine learning is used to identify similar historical situations (days, scenarios, or airport conditions) in the NAS. TMIs used in historically similar situations are locally modified to optimize the parameters of the TMI to be used in the current day situation. SMART NAS is used to evaluate TMIs and to present fast time simulations to the end user to review the TMI and associated performance metrics before implementation.

* Information listed above is at the time of submission. *

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