Princeton's Ph.D. program in Atmospheric and Oceanic Sciences offers interdisciplinary training in climate systems, fluid dynamics, and biogeochemistry. The following dissertation topics encourage innovation in modeling Earth's climate and forecasting environmental change.
Modeling the Influence of Ocean Eddies on Global Heat Transport
Climate Change Attribution Using Coupled Earth System Models
Machine Learning-Based Prediction of Tropical Cyclone Intensification
Simulation of Atmospheric Rivers and Their Hydrological Impacts
Carbon Sequestration in Deep Ocean Currents: A Dynamic Study
Assessing Monsoon Variability Using Paleoclimate Reconstructions
Arctic Sea Ice Feedback and Its Role in Mid-Latitude Weather
Biogeochemical Modeling of Ocean Nutrient Transport
Stratospheric Aerosol Injection: Climate Engineering Assessment
Atmospheric Chemistry Impacts of Wildfire Emissions
Cloud Microphysics and Their Role in Climate Sensitivity
Predictive Modeling of ENSO Using Hybrid Statistical Techniques
High-Resolution Modeling of Urban Heat Island Intensification
Turbulence Closure Schemes in Oceanic Boundary Layers
Ocean-Atmosphere Teleconnections in Decadal Climate Variability
Evaluating the Impact of Jet Stream Shifts on Precipitation Patterns
Inverse Modeling of CO₂ Sources and Sinks from Satellite Data
Multi-Model Ensemble Evaluation of Sea Level Rise Projections
Ocean Acidification and Its Feedback on Climate Regulation
Development of Data Assimilation Techniques for Coupled Models
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