Dissertation Title: Using Earth Observation-Informed Modeling to Inform Sustainable Development Decision-Making
Abstract:
This work aims to demonstrate the viability of a methodology for supporting local, sustainable development decision-making through the development of clearer linkages between environmental modeling and societal impact, with a particular emphasis on the use of earth observation data. To accomplish this, it explores the efficacy and difficulties of collaboratively developing a systems-architecture-informed, multidisciplinary GIS decision support system for sustainable development applications that makes significant use of \earth observation data.
This is done through the development and evaluation of DSSs for two applications: (1) mangrove forest management and conservation in the state of Rio de Janeiro, Brazil; and (2) coronavirus response in six regions around the world. In both cases, the methodology involves the application of the System Architecture Framework, which includes analyzing the stakeholders to inform the design of the DSS in question. Other components of the methodology are developing the \ac{dss} through a collaborative process with stakeholders; pursuing targeted analyses; and evaluating the usefulness of both the DSS and the development process through interviews, workshops, and other feedback mechanisms.
All of this takes place under the umbrella of the Environment-Vulnerability-Decisionmaking-Technology (EVDT) Framework for combining remote observation and other types of data to inform decision-making in complex socio-environmental systems, particularly those pertaining to sustainable development. As the name suggests, EVDT integrates four models into one tool: the Environment; Human Vulnerability and Societal Impact; Human Behavior and Decision-Making; and Technology Design for earth observation systems including satellites, airborne platforms and in-situ sensors. The data from each of these domains is used by established models in each domain, which are adapted to work in concert to address the needs identified during the stakeholder analysis. The capabilities provided by this framework will improve the management of earth observation and socioeconomic data in a format usable by non-experts, while harnessing cloud computing, machine learning, economic analysis, complex systems modeling, and model-based systems engineering.
Committee Members:
Prof. Danielle Wood
Benesse Corp. Career Development Asst Prof of Research in Education
Program in Media Arts and Sciences, MIT
Department of Aeronautics and Astronautics, MIT
Director of the space Enabled Research Group
Prof. Sarah Williams
Associate Professor of Technology and Urban Planning, MIT
Director of the Norman B. Leventhal Center for Advanced Urbanism
Prof. David Lagomasino
Assistant Professor of Coastal Studies, East Carolina University
Assistant Scientist, Coastal Studies Institute