Kaona: Deep Searching and Curating Data from Aviation Safety Reporting Systems

Poster Image
Event poster; details follow in description
Poster Session
A
Poster Number
02
Project Author(s)
Christopher Hong
Institution
Oregon State University | NASA Johnson Space Center
Project Description

Several works in the literature have examined how safety narrative databases can be leveraged to share lessons learned. However, less attention has been given in augmenting existing processes of safety reporting systems.

In this work, we introduce Kaona: An interface that weaves machine learning in existing aviation safety reporting systems activities.

We provide a use case of search, curation and newsletter writing to showcase how Kaona features build on existing processes and on its own to enhance information retrieval, curation, and synthesis of narratives.

We created two instances of Kaona internally for evaluation, one using all public NASA's ASRS narratives and another using all public C3RS narratives. Data ranged from 1998 to 2024.

Our tool provides a new way to explore safety narratives, serving to re-imagine how text databases can benefit from novel information retrieval mechanisms in the era of large language models.

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