vamsi sundus shawnalee. “data collected under different conditions (i.e. treatments) whether the...

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Vamsi Sundus Shawnalee

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Page 1: Vamsi Sundus Shawnalee. “Data collected under different conditions (i.e. treatments)  whether the conditions are different from each other and […] how

VamsiSundus

Shawnalee

Page 2: Vamsi Sundus Shawnalee. “Data collected under different conditions (i.e. treatments)  whether the conditions are different from each other and […] how

“Data collected under different conditions (i.e. treatments) whether the conditions are different from each other and […] how the differences manifest themselves.”

This data concerns soil.

Page 3: Vamsi Sundus Shawnalee. “Data collected under different conditions (i.e. treatments)  whether the conditions are different from each other and […] how

Soils are first chisel-plowed in the springSamples from 0-2 inches were collected.

Measured N percentage (TN)Measured C percentage (CN)

Calculated C/N, ratio between the two treatments.

Looking at the sample setup on 674, we see that it wasn’t randomly allocated.

We expect perhaps some spatial autocorrelation among the sample sites.

Page 4: Vamsi Sundus Shawnalee. “Data collected under different conditions (i.e. treatments)  whether the conditions are different from each other and […] how

Author: calculated simple pooled t-test: p = .809. p > αThus no relation…

Doesn’t account for spatial autocorrelation among the 195 chisel-plow and 200 non-till strips.

Doesn’t convey the differences in the spatial structure of the treatments.

Page 5: Vamsi Sundus Shawnalee. “Data collected under different conditions (i.e. treatments)  whether the conditions are different from each other and […] how

They used SAS to obtain least squares + restricted maximum likelihood common nugget effect was fit.

Considerable variability of C/N ratios due to nugget effect.

Using “proc mixed” we get predictions of the C/N ratio.

Page 6: Vamsi Sundus Shawnalee. “Data collected under different conditions (i.e. treatments)  whether the conditions are different from each other and […] how

With proc mixed we assume that the C/N ratios are assumed to depend on the tillage treatments.

The SAS program is included in the section. Omitted since this is a class in R.

But, in the programmingSemivariogram – ensure both have same

nugget effect.

Page 7: Vamsi Sundus Shawnalee. “Data collected under different conditions (i.e. treatments)  whether the conditions are different from each other and […] how

Pg 677-678 (SAS Output)Looking at the curvy wavy thingy (surface

plots)We see one looks smoother and more

predictable (no-tillage). This means greater spatial continuity (larger range). I.e. positive autocorrelations = stronger over same distance.

Page 8: Vamsi Sundus Shawnalee. “Data collected under different conditions (i.e. treatments)  whether the conditions are different from each other and […] how

At this point in the analysis:There is no difference in the average C/N values in

the study. [when sampling two months after installment of treatment.] [pooled t-test]

There are differences in the spatial structure of the treatments [3D plot].

If we do a SSR (sum of squares reduction) we see that it’s extremely significant that a single spherical semivariogram cannot be used for bother semivariograms (Ha). Using ordinary least squares we also find significance, but

less so. .0001 versus .00009 .-3-1 versus .-4-9.

Page 9: Vamsi Sundus Shawnalee. “Data collected under different conditions (i.e. treatments)  whether the conditions are different from each other and […] how
Page 10: Vamsi Sundus Shawnalee. “Data collected under different conditions (i.e. treatments)  whether the conditions are different from each other and […] how

What if only one variable was important (i.e. either C or N) but not the combination of the two (i.e. C/N or N/C ratio)?

Here: Consider: predicting soil carbon as a function of soil nitrogen.From the scatterplot (TC v TN) we see an

extremely strong correlation of sorts. [pg. 679]

Page 11: Vamsi Sundus Shawnalee. “Data collected under different conditions (i.e. treatments)  whether the conditions are different from each other and […] how

If we wanted to have a more accurate model though, we’d have to include spatiality: instead of linear model:TC(si) = β0 + β1*TN(si) + e(si)Errors are spatially correlated.We need to model it though

Page 12: Vamsi Sundus Shawnalee. “Data collected under different conditions (i.e. treatments)  whether the conditions are different from each other and […] how

Need to model the semivariogram. Two stepsModel fit by normal least squares and the

“empirical semivariogram of the OLS residuals is computed to suggest a theoretical semivariogram model.” We need the theoretical model to get initial

semivariogram parameters.Need mean and autocorrelation structure

restricted maximum likelihood.Here: we use proc mixed to estimate both the

mean function and the autocorrelation structure (and predictions at unobserved locations).

Page 13: Vamsi Sundus Shawnalee. “Data collected under different conditions (i.e. treatments)  whether the conditions are different from each other and […] how

(1-Residual sum of squares)/corrected total sum of squares = .92 = estimate of R2

Doing the proc mixed procedure, we generate a lot of output: 9.17 (pg 682 – 683)

From the output generated we look at the “solutions for fixed effects” for estimates of the parameters were interested in. Specifically, β0 = intercept and β1 = TN.

Page 14: Vamsi Sundus Shawnalee. “Data collected under different conditions (i.e. treatments)  whether the conditions are different from each other and […] how

For every additional percent of N, we increase C by 11.11 percentage points.

After playing a short game of “find the difference” on 9.50, I see that they are nearly the same patterns. Wow…estimates of the expected value of TC and Predictions of TC are almost the same. Amazing! [pg 684]