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  • Analysis cookbook: Effective Xarray for analysis of Trajectory output
  • Probability Density Function**
  • CLUSTERING METHODS FOR LAGRANGIAN ANALYSIS
  • Finite-Time Lyapunov Exponents
  • Gaussian Kernel Density Estimation (method 1)
  • Absolute distance
  • Cumulative distance
  • Diagnositics for a flock of particels
  • Gaussian Kernel Density Estimation (method 2: with land mask)
  • Load data and check raw data
  • Tutorials

Tutorials#

You can browse the notebooks below, clone the repository and browse the notebooks locally, or you can open them in a cloud environment using Binder:

Launch Binder

General#

Analysis cookbook: Effective Xarray for analysis of Trajectory output

Spatial Distributions#

Histograms and Clustering#

Probability Density Function**
CLUSTERING METHODS FOR LAGRANGIAN ANALYSIS

Finite-Time Lyapunov Exponent#

Finite-Time Lyapunov Exponents

Gaussian Kernel Density Estimation methods#

Gaussian Kernel Density Estimation (method 1)

Distance methods#

Absolute distance
Cumulative distance
Diagnositics for a flock of particels

🚧 Needs work#

Gaussian Kernel Density Estimation (method 2: with land mask)
Load data and check raw data

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Lagrangian Diagnostics

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Analysis cookbook: Effective Xarray for analysis of Trajectory output

On this page
  • General
  • Spatial Distributions
    • Histograms and Clustering
    • Finite-Time Lyapunov Exponent
    • Gaussian Kernel Density Estimation methods
  • Distance methods
  • 🚧 Needs work
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