-
Notifications
You must be signed in to change notification settings - Fork 25
4.7.13 Evolutionary Correlation Coefficient (eCOCO)
The method is applied using a sliding stratigraphic window to track variable sedimentation rates along the proxy series, in a procedure termed “eCOCO” (evolutionary correlation coefficient) analysis. (Li et al., 2018c)
Waning: the data series must have a unit in
meter
.
Two new parameters:
DATA: running window (m)
: default window is 35%
of the total length of the data series.
DATA: Number of steps (#)
: sliding steps. The default value will give about ~300
sliding windows for publication quality results.
Click the OK
button, Monte Carlo simulation steps can be displayed in the Command Window of MatLab.
A log file and the related *.AC.fig file will be generated recording all parameters used in the evolutionary correlation coefficient analysis.
The user needs to decide which figure output should be saved or not.
Tips: Users may save the main window using “File” “save ac.fig” menu anytime. This will save the data stored in the main window figure, and the user doesn’t have to re-run the eCOCO using the same parameters.
Tips: User can plot eCOCO results anytime at “Plot” --> “ECOCO plot” menu.
Q: Which window size should I use?
A: A window that covers
1.5-2
* long eccentricity cycles will give a reliable result. If your series is dominated by35
m cycles (405
kyr), then a70
m window (=35 * 2
) may be good to keep the balance: A large window eCOCO losses resolution of variable sedimentation rates and a small window may not give correct results.
Wiki - GUI - Insolation - Plot Digitizer - Detrend - Spectral Analysis - Filtering - COCO - eCOCO - DYNOT
3. Getting Started
3.1 System requirements
3.2 Downloading
3.3 MatLab version
3.4 Mac version
3.5 Windows version
3.6 Data requirement
4. Graphical User Interface
4.1 Functions and GUI
4.2 File
4.3 Edit
4.4 Plot
4.5 Basic Series
- Insolation
- Astronomical solution
- Signal/Noise Generator
- LR04 stack
- Sine wave
- White noise
- Red noise
- Examples
- Sort/Unique/Delete-empty
- Interpolation
- Select Parts
- Merge Series
- Add Gaps
- Remove Part
- Remove peaks
- Clipping
- Smoothing
- Changepoint
- Standardize
- Principle Component
- Log-transform
- Derivative
- Simple Function
- Utilities
- Image
- Plot Digitizer