4.7 Article

Cyberinfrastructure for sustainability sciences

Journal

ENVIRONMENTAL RESEARCH LETTERS
Volume 18, Issue 7, Pages -

Publisher

IOP Publishing Ltd
DOI: 10.1088/1748-9326/acd9dd

Keywords

cyberinfrastructure; sustainability; multi-scale; global-local-global; fair; sustainable development goals; SDG

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Meeting the United Nations' Sustainable Development Goals (SDGs) requires a comprehensive scientific approach that integrates expertise, data, models, and tools across disciplines to address sustainability challenges. This paper highlights the key components and technologies of advanced cyberinfrastructure (CI) needed for SDG research. It also discusses barriers to adopting CI in sustainability research, such as access to support structures, recruitment of an agile workforce, and lack of local infrastructure. The paper emphasizes challenges in pursuing SDGs, including multi-scale integration of data and models, data availability and usability, uncertainty quantification, and scientific reproducibility. Ongoing and future research for bridging CI and SDGs is also discussed.
Meeting the United Nation' Sustainable Development Goals (SDGs) calls for an integrative scientific approach, combining expertise, data, models and tools across many disciplines towards addressing sustainability challenges at various spatial and temporal scales. This holistic approach, while necessary, exacerbates the big data and computational challenges already faced by researchers. Many challenges in sustainability research can be tackled by harnessing the power of advanced cyberinfrastructure (CI). The objective of this paper is to highlight the key components and technologies of CI necessary for meeting the data and computational needs of the SDG research community. An overview of the CI ecosystem in the United States is provided with a specific focus on the investments made by academic institutions, government agencies and industry at national, regional, and local levels. Despite these investments, this paper identifies barriers to the adoption of CI in sustainability research that include, but are not limited to access to support structures; recruitment, retention and nurturing of an agile workforce; and lack of local infrastructure. Relevant CI components such as data, software, computational resources, and human-centered advances are discussed to explore how to resolve the barriers. The paper highlights multiple challenges in pursuing SDGs based on the outcomes of several expert meetings. These include multi-scale integration of data and domain-specific models, availability and usability of data, uncertainty quantification, mismatch between spatiotemporal scales at which decisions are made and the information generated from scientific analysis, and scientific reproducibility. We discuss ongoing and future research for bridging CI and SDGs to address these challenges.

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