Graeco Latin Square Design lecture 19


Graeco Latin Square Design

lecture - 19 

Graeco Latin Square Design

The Graeco-Latin square is an extension of a Latin square and can simultaneously manage to control three sources of nuisance variability other than treatment. The experimental units grouped in three different ways, by rows, by columns, by Greek letters. The Graeco Latin square design is also called triple grouping design.

Construction of Graeco Latin Square

The Graeco Latin square is created by superimposing the two Latin squares (Latin letters & Greek letters) of the identical size and each Latin letter each Greek letter absolutely correspond once.  The construction of the  Graeco Latin square design involves using the  Latin square,  where treatments are denoted by Latin letters and superimposing on it a  second Latin square in which variable levels are denoted by Greek letters. The Greek letters are usually assigned in a way that each Greek letter occurs once and only once in each row, column and each Latin letter.

Let us create two Latin squares, one using Latin letters and the other using Greek letters.

A 3 X 3 Graeco Latin square is created by superimposing the two Latin squares.

Imagine that you build two 4 X 4 Latin squares one with Latin letters and the other with the Greek characters.


Superimposing the above two Latin squares


Statistical Model and Analysis

The Graeco Latin square design is represented by the following linear statistical model.

Yijkl = μ + ρi +βj + τk + σl + ϵijkl        i, j, k , l =1, 2, ..., P




ANOVA Table:

SV

df

SS

MS

F

Rows

P - 1

SSR

MSR

F1

Columns

P - 1

SSC

MSC

F2

Greek letters

P - 1

SSG

MSG

F3

Treatments

P - 1

SST

MST

F4

Error

(P – 1) (P – 3)

SSE

MSE

 

Total

P x P - 1

SSTotal

 

 

Short cut to compute various sums of squares:

Short cut to compute various sums of squares:

Example:

Tests are done on four cars with four drivers over the course of four days in order to compare four different petrol additives. Each day, a maximum of four runs may be completed. The total amount of vehicle emissions is the response.

 Treatment factor: petrol additive, denoted by A, B, C and D.

Block factor 1: driver, denoted by 1, 2, 3, 4.

Block factor 2: day, denoted by 1, 2, 3, 4.

Block factor 3: car, denoted by α, β, γ, δ.


Write the appropriate statistical model for the experiment and test the significance of petrol additive consumption at 5 % significance level.

Solution:  let Yijkl is the consumption of petrol additive, μ is the mean consumption of petrol additive (historical). The effect of four drivers (Ri), four days (Ci) , four types of cars (Greek letters) and four petrol additives (Latin letters) on Petrol consumption is represented by the following linear model:

Yijkl = μ + Ri +Cj + τk + σl + ϵijkl        i, j, k , l =1, 2, 3, 4.

 Setup our hypothesis as:

i.H0: The four petrol additives are consumed in the same amounts.

Vs.
   H1: The four petrol additives are not consumed in the same way.

ii. The significance level; α = 0.05
iii. The test statistic:
F = MST / MSE ~ F(3, 3)
iv. Reject H0, if F >= 9.28
v. Computation:

 

Treatment (Gasoline)

 

Total

 

Car

 

 

A

B

C

D

 

 

32

24

28

34

 

 

32

28

34

24

 

 

36

25

35

30

 

 

30

25

36

35

 

 

23

29

31

20

 

 

29

20

31

23

 

 

33

31

25

27

 

 

25

33

31

27

 

124

109

119

111

 

116

106

132

109

 

15376

11881

14161

12321

53739

13456

11236

17424

11881

53997




ANOVA Table:

SV

df

SS

MS

F

Rows

3

90.6875

30.229

2.50

Columns

3

68.1875

22.73

1.88

Greek letters

3

101.1875

33.73

2.80

Treatments

3

36.6875

12.33

0.27

Error

3

36.1875

12.06

 

Total

15

332.9375

 

 


F = MST / MSE = 0.27
vi. Remarks:
he calculated F value falling in the acceptance region, we have not sufficient evidence to reject H0 . Thus, it is concluding that the 4 petrol additive consumption is identical.

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