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Title: (Vision Paper) A Vision for Spatio-Causal Situation Awareness, Forecasting, and Planning
Successfully tackling many urgent challenges in socio-economically critical domains, such as public health and sustainability, requires a deeper understanding of causal relationships and interactions among a diverse spectrum of spatio-temporally distributed entities. In these applications, the ability to leverage spatio-temporal data to obtain causally based situational awareness and to develop informed forecasts to provide resilience at different scales is critical. While the promise of a causally grounded approach to these challenges is apparent, the core data technologies needed to achieve these are in the early stages and lack a framework to help realize their potential. In this article, we argue that there is an urgent need for a novel paradigm of spatio-causal research built on computational advances in spatio-temporal data and model integration, causal learning and discovery, large scale data- and model-driven simulations, emulations, and forecasting, as well as spatio-temporal data-driven and model-centric operational recommendations, and effective causally driven visualization and explanation. We thus provide a vision, and a road map, for spatio-causal situation awareness, forecasting, and planning.  more » « less
Award ID(s):
2125246 2200140 2311716 1909555
PAR ID:
10544345
Author(s) / Creator(s):
; ; ; ; ; ; ; ; ; ; ; ;
Publisher / Repository:
ACM
Date Published:
Journal Name:
ACM Transactions on Spatial Algorithms and Systems
Volume:
10
Issue:
2
ISSN:
2374-0353
Page Range / eLocation ID:
1 to 42
Format(s):
Medium: X
Sponsoring Org:
National Science Foundation
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