BEE 4850
Last Updated
- Schedule of Classes - May 19, 2024 7:32PM EDT
- Course Catalog - May 19, 2024 7:07PM EDT
Classes
BEE 4850
Course Description
Course information provided by the Courses of Study 2023-2024.
Understanding data is an increasingly integral part of working with environmental systems. Data analysis is an integral part of developing statistical and numerical models to understand system dynamics and project future conditions and outcomes. Simulation from models can represent alternative datasets consistent with a set of assumptions about the underlying data-generating process, facilitating model assessment and hypothesis testing. This course will provide an overview of a generative approach to environmental data analysis, which uses simulation and assessments of predictive performance to provide insight into the structure of data and its data-generating process. The goal is to provide students with a framework and an initial toolkit of methods that they can use to formulate and update hypotheses about data and models. Students will actively analyze and use real data from a variety of environmental systems, potentially including the climate system, sea levels, air pollution, and the electric power system.
When Offered Spring.
Comments Prerequisites: One introductory course in probability and statistics (CEE 3040, ENGRD 2700, or equivalent), one course in programming (CS 1110/CS 1112, ENGRD 2700, CEE 3040, or equivalent), one course in systems analysis (BEE 4750/BEE 5750 or equivalent), or permission of instructor.
Outcomes- Create, interpret, and critique data visualizations.
- Calibrate environmental models to observations, possibly including censored and missing data.
- Simulate alternative datasets from models using statistical methods such as the bootstrap and Monte Carlo.
- Assess model adequacy and performance using predictive simulations.
- Apply and contextualize model selection criteria.
- Evaluate evidence for and against hypotheses about environmental systems using model simulations.
- Emulate computationally-complex models with simpler representations.
Regular Academic Session. Combined with: BEE 5850
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Credits and Grading Basis
3 Credits Graded(Letter grades only)
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Class Number & Section Details
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Meeting Pattern
- MW Riley-Robb Hall 160
- Jan 22 - May 7, 2024
Instructors
Srikrishnan, V
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Additional Information
Instruction Mode: In Person
Pre-requisite:CEE 3040, ENGRD 2700, or equivalent, CS 1110/1112, ENGRD 2700, CEE 3040, or equivalent, BEE 4750/5750 or equivalent, or permission of instructor.
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