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Using Deep Learning to Automate Inference of Meteoroid Pre-Entry PropertiesProperly assessing the asteroid threat depends on the knowledge of asteroid pre-entry parameters, such as size, velocity, mass, density, and strength. Although a vast number of possible bodies to study exist, such characterization of asteroid populations is currently limited by substantial costs associated with space rendezvous missions and rare meteorite findings. As asteroids fragment, ablate, and decelerate in the atmosphere, they emit light detectable by ground-based and space-borne instruments. Earth’s atmosphere, thus, becomes an accessible laboratory that enables impactor risk assessments by facilitating inference of the pre-entry parameters. These asteroid pre-entry conditions are typically deduced by modeling the entry and breakup physics that best reproduce the observed light or energy deposition curve. However, this process requires extensive manual trial-and-error of uncertain modeling parameters. Automating meteor modeling and inference would improve property distributions used in risk assessments and enable population characterization as more light curves become more readily available through the presence of space assets and ground-based camera networks. We previously developed a genetic algorithm to automate meteor modeling by using the fragment-cloud model (FCM) to search for the values of the FCM input parameters (e.g., diameter) that generate energy deposition profiles that match the observed one. Now, we apply deep learning to infer asteroid diameter, velocity, and density from observed energy deposition curves. We trained and tested our neural network models with synthetic energy deposition curves modeled using the FCM rubble pile implementation. We present an application of a 1D convolutional neural network and compare its performance to other attempted regressors and machine learning techniques, such as a fully connected neural network and Random Forest regression, to demonstrate its capabilities. We validate our model weights and approach using the Chelyabinsk, Tagish Lake, Benešov, Košice, and Lost City meteors.
Document ID
20200000439
Acquisition Source
Ames Research Center
Document Type
Poster
Authors
Tarano, Ana Maria
(Science and Technology Corp. Moffett Field, CA, United States)
Gee, Jonathan
(Science and Technology Corp. Moffett Field, CA, United States)
Wheeler, Lorien
(NASA Ames Research Center Moffett Field, CA, United States)
Close, Sigrid
(Stanford Univ. Stanford, CA, United States)
Mathias, Donovan
(NASA Ames Research Center Moffett Field, CA, United States)
Date Acquired
January 16, 2020
Publication Date
December 9, 2019
Subject Category
Astronomy
Report/Patent Number
ARC-E-DAA-TN76511
Meeting Information
Meeting: AGU Fall 2019 Meeting
Location: San Francisco, CA
Country: United States
Start Date: December 9, 2019
End Date: December 13, 2019
Sponsors: American Geophysical Union (AGU)
Funding Number(s)
CONTRACT_GRANT: NNA16BD60C
Distribution Limits
Public
Copyright
Public Use Permitted.
Technical Review
NASA Peer Committee
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