DataStorm: Coupled, Continuous Simulations for Complex Urban Environments
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Published:2021-07-12
Issue:3
Volume:2
Page:1-37
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ISSN:2691-1922
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Container-title:ACM/IMS Transactions on Data Science
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language:en
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Short-container-title:ACM/IMS Trans. Data Sci.
Author:
Behrens Hans Walter1ORCID,
Candan K. Selçuk1ORCID,
Chen Xilun1,
Garg Yash1,
Li Mao-Lin1,
Li Xinsheng1,
Liu Sicong1,
Sapino Maria Luisa2,
Shadab Md1,
Turner Dalton1,
Vijayakumaren Magesh1
Affiliation:
1. Arizona State University, Tempe, Arizona, USA
2. University of Turin
Abstract
Urban systems are characterized by complexity and dynamicity. Data-driven simulations represent a promising approach in understanding and predicting complex dynamic processes in the presence of shifting demands of urban systems. Yet, today’s silo-based, de-coupled simulation engines fail to provide an end-to-end view of the complex urban system, preventing informed decision-making. In this article, we present
DataStorm
to support integration of existing simulation, analysis and visualization components into integrated workflows.
DataStorm
provides a flow engine,
DataStorm-FE
, for coordinating data and decision flows among multiple actors (each representing a model, analytic operation, or a decision criterion) and enables ensemble planning and optimization across cloud resources.
DataStorm
provides native support for simulation ensemble creation through parameter space sampling to decide which simulations to run, as well as distributed instantiation and parallel execution of simulation instances on cluster resources. Recognizing that simulation ensembles are inherently sparse relative to the potential parameter space, we also present a density-boosting partition-stitch sampling scheme to increase the effective density of the simulation ensemble through a sub-space partitioning scheme, complemented with an efficient stitching mechanism that leverages partial and imperfect knowledge from partial dynamical systems to effectively obtain a global view of the complex urban process being simulated.
Funder
NSF “DataStorm: A Data Enabled System for End-to-End Disaster Planning and Response,”
NSF “BIGDATA: Discovering Context-Sensitive Impact in Complex Systems,”
NSF “pCAR: Discovering and Leveraging Plausibly Causal (p-causal) Relationships to Understand Complex Dynamic Systems,”
“FourCmodeling”: EUH2020 Marie Sklodowska-Curie
Publisher
Association for Computing Machinery (ACM)
Reference47 articles.
1. Modeling the spatial spread of infectious diseases: The GLobal epidemic and mobility computational model;Balcan Duygu;J. Comput. Sci.,2010
2. Visually-driven urban simulation: Exploring fast and slow change in residential location;Batty Michael;Environ. Plan. A: Econ. Space,2013
3. Datastorm-FE: A data- and decision-flow and coordination engine for coupled simulation ensembles;Behrens Hans Walter;Proc. VLDB Endow.,2018
Cited by
1 articles.
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