KENTUCKY CHRISTMAS TREE PRODUCTION WORKBOOK:
DEVELOPING A DEMONSTRATION PLOT
ISSUED: 4-86
REVISED:
Bonnie L. Appleton
We are periodically faced with new products
or techniques that can be applied to Christmas tree production. Most of
us are often reluctant, however, to try anything new on a very large scale
and would prefer to see for ourselves that new products and techniques
will be worthwhile before abandoning our current practices.
One way to test a new product or technique
without making a major commitment is to run a small trial or experiment/demonstration.
Since experiments are neither too complex nor expensive to design and conduct,
you can use them for evaluating new products and techniques under your
own conditions. Terms used in describing how experiments are designed and
conducted can be confusing, but some basic principles will allow you to
do some testing on your own.
If a new fertilizer was available and
the claims sounded very tempting, would you switch? Hopefully not without
testing the new fertilizer against the product(s) you are currently using.
How do you know that the manufacturer's rate will give equal results under
your light, water, temperature and other conditions?
To test the new fertilizer set up an
experiment using the new and your current fertilizer (A= currently used,
B=new fertilizer) each at three different rates (1 = lower than recommended,
2 = recommended, 3 = higher rate). Because you will want all possible combinations
of fertilizers and rates, you can set up a factorial experiment using the
two products tried at all three rates. Multiplying the two products by
the three rates, you would have six treatments (2 fertilizers (A and B)
x 3 rates (1, 2, 3) = 6 treatments: A1, A2, A3, B1, B2, B3).
How many trees should you use per treatment?
One tree treated with each fertilizer and rate combination is not enough.
What if that one tree dies? How do you know whether it was killed by the
treatment or by a rabbit grazing or by a disease or if a weak seedling
was used? Because you may not be able to say with certainty what caused
the tree's death, you can't trust only one tree to tell you how each treatment
works.
Statisticians say to use a minimum
of three trees, but a minimum of 6 to 10 would be even better. If you then
test 6 trees with each treatment combination, you will have repeated or
replicated each treatment 6 times.
How are you going to select those trees?
Logic might suggest that to keep track of everything easily you should
set the 6 reps of each treatment up in straight rows. An experiment set
up that way would look like this:
|
|
|
WEST
|
B3 |
B3 |
B3 |
B3 |
B3 |
B3 |
B2 |
B2 |
B2 |
B2 |
B2 |
B2 |
SOUTH |
B1 |
B1 |
B1 |
B1 |
B1 |
B1 |
NORTH |
A3 |
A3 |
A3 |
A3 |
A3 |
A3 |
|
A2 |
A2 |
A2 |
A2 |
A2 |
A2 |
A1 |
A1 |
A1 |
A1 |
A1 |
A1 |
|
|
EAST
|
The diagram shows nice straight rows,
everything easy to find, but what's wrong? You have all the possible combinations
and you replicated everything 6 times. However, all the environmental conditions
to which your trees will be exposed may not be equal across your plantation.
For example, what if your treatment rows run east-west and the row containing
all of the A1 plants is the most southerly? Then those trees would get
less shading and their roots more heat; consequently, you would bias your
results.
Instead of putting each treatment in
its own row, set up randomized blocks to prevent bias. Each block will
contain one of each of the 6 treatments but the position of each treatment
is randomly determined. Pull numbers from a hat to ensure that no treatment
gets any favored location.
|
|
|
|
WEST
|
Rep. 1 |
A2 |
B2 |
A1 |
Rep. 2 |
A3 |
B1 |
A1 |
|
B1 |
B3 |
A3 |
|
B3 |
B2 |
A2 |
SOUTH |
Rep. 3 |
B3 |
A3 |
A2 |
Rep. 4 |
B1 |
B2 |
A1 |
NORTH |
|
A1 |
B1 |
B2 |
|
A3 |
B3 |
A2 |
|
Rep. 5 |
A1 |
B1 |
B3 |
Rep. 6 |
B2 |
A1 |
A3 |
|
B3 |
A2 |
A3 |
|
A2 |
B1 |
B3 |
|
|
|
EAST
|
(Note that in some cases a particular treatment may occupy the same
position in more than one rep. As long as that situation occurred by the
"luck-of-the-draw," there is no problem.)
You may want to repeat the experiment
with two or three different field locations or more than one species of
Christmas tree to lend additional credibility to your results. All trees
used should be as uniform as possible to prevent the trees themselves from
becoming a complicating factor. Be sure that all other factors--tree age,
shearing, weed control, etc. are the same for all trees to avoid any unwanted
interference by non-test factors.
You will also need to decide how to
evaluate your results. You might visually grade the plants, measure height
or count the number of branches after each growing season. Color, fullness,
general "health" of trees may all be characteristics you would use to decide
whether the new product/technique is worth the change from an old method/treatment.
This simple experimental design should
allow you to test new products and techniques to help you to determine
the best way to produce top quality trees. Keep these basic factors in
mind:
(a)use well chosen treatments or treatment
combinations,
(b)provide at least 6 replications
(trees/treatment),
(c)randomize treatments in blocks,
(d)apply the treatments to several
species or at several locations.
Use the average treatment response as your most believable value, but
look at the variation among the replicates of the same treatment as well
before deciding.
DEMONSTRATION -- BEREA COLLEGE HYDROGELS
TREATMENTS
1 = Control
2 = Viterra
3 = Liqua-Gel
4 = Terra-Sorb GB
5 = Hydreserve
Each vertical row has every treatment represented.
2-yr-old Scots and white pine stock
1-yr-old Virginia pine stock
Planted 3-31-86 on 6-foot centers
Scots Pine |
White Pine |
Virginia Pine |
2 |
5 |
4 |
5 |
3 |
2 |
5 |
4 |
5 |
3 |
2 |
5 |
4 |
5 |
3 |
3 |
3 |
3 |
1 |
5 |
3 |
3 |
3 |
1 |
5 |
3 |
3 |
3 |
1 |
5 |
5 |
4 |
1 |
4 |
2 |
5 |
4 |
1 |
4 |
2 |
5 |
4 |
1 |
4 |
2 |
4 |
1 |
2 |
2 |
4 |
4 |
1 |
2 |
2 |
4 |
4 |
1 |
2 |
2 |
4 |
1 |
2 |
5 |
3 |
1 |
1 |
2 |
5 |
3 |
1 |
1 |
2 |
5 |
3 |
1 |
A |
B |
C |
D |
E |
A |
B |
C |
D |
E |
A |
B |
C |
D |
E |