1 / 18

Blocking & Confounding in the 2 k Factorial Design

Blocking & Confounding in the 2 k Factorial Design. Text reference, Chapter 7 Blocking is a technique for dealing with controllable nuisance variables Two cases are considered Replicated designs Unreplicated designs. Blocking a Replicated Design.

kiral
Download Presentation

Blocking & Confounding in the 2 k Factorial Design

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Blocking & Confounding in the 2k Factorial Design • Text reference, Chapter 7 • Blocking is a technique for dealing with controllable nuisance variables • Two cases are considered • Replicated designs • Unreplicated designs

  2. Blocking a Replicated Design • This is the same scenario discussed previously (Chapter 5, Section 5-6) • If there are n replicates of the design, then each replicate is a block • Each replicate is run in one of the blocks (time periods, batches of raw material, etc.) • Runs within the block are randomized

  3. Blocking a Replicated Design Consider the example from Section 6-2; k = 2 factors, n = 3 replicates This is the “usual” method for calculating a block sum of squares Section 6-2

  4. ANOVA for the Blocked Design Page 267 Section 6-2 Analysis of variance table [Partial sum of squares] Sum ofMeanFSourceSquaresDFSquareValueProb > FA208.331208.3353.19< 0.0001B75.00175.0019.150.0024AB8.3318.332.130.1828 Pure Error 31.33 8 3.92 Cor Total 323.00 11

  5. Confounding in Blocks • Now consider the unreplicated case • Clearly the previous discussion does not apply, since there is only one replicate • To illustrate, consider the situation of Example 6-2, Page 228 • This is a 24, n = 1 replicate

  6. Confounding in Two Blocks • A single replicate 22 design • Each raw material is only enough for two runs – needs two materials (blocks) A possible design

  7. Confounding in Two Blocks • Estimating effects • A = ½[ab + a – b – (1)] • B = ½[ab + b – a – (1)] • AB = ½[ab + (1) – a – b]

  8. Example of Confounding for a 23 design in Two Blocks

  9. Other Methods of Constructing the Blocks • Use of a defining contrast • L = a1x1 + a2x2 + a3x3 + …+ akxk • xi: level of the ith factor in a particular treatment combination (0 or 1) • ai: exponent appearing on the ith factor in the effect to be confounded (0 or 1) • Treatment combinations that produce the same value of L (mod 2) will be placed in the same block

  10. Other Methods of Constructing the Blocks • Example: a 23 design with ABC confounded with blocks • a1 = 1; a2 = 1; a3 = 1 • x1 A; x2 B; x3 C; • L = x1 + x2 + x3 • (1) 000: L = 0 = 0 a 100: L = 1 = 1 • ab 110: L = 2 = 0 b 010: L = 1 = 1 • ac 101: L = 2 = 0 c 001: L = 1 = 1 • bc 011: L = 2 = 0 abc 111: L = 3 = 1

  11. Estimation of Error • Example: a 23 design, must be run in two blocks with ABC confounded, four replicates

  12. It would be better if blocks are designed differently in each replicate, to confound a different effect in each replicate – partial confounding

  13. Example of Unreplicated Design (Ex. 7-2) • Response: filtration rate of a resin • Factors: A = temperature, B = pressure, C = mole ratio/concentration, D= stirring rate • One batch of raw material is only enough for 8 runs. Two materials are required. • ABCD is chosen for confounding. • L = x1 + x2 + x3 + x4

  14. Example 6-2 Suppose only 8 runs can be made from one batch of a raw material

  15. The Table of + & - Signs, Example 6-2 Construction and analysis of the 2k factorial design in 2p incomplete blocks (p<k).

  16. ABCD is Confounded with Blocks (Page 272) Observations in block 1 are reduced by 20 units…this is the simulated “block effect”

  17. Effect Estimates Term Effect SumSqr A 21.625 1870.56 B 3.125 39.0625 C 9.875 390.062 D 14.625 855.563 AB 0.125 0.0625 AC -18.125 1314.06 AD 16.625 1105.56 BC 2.375 22.5625 BD -0.375 0.5625 CD -1.125 5.0625 ABC 1.875 14.0625 ABD 4.125 68.0625 ACD -1.625 10.5625 BCD -2.625 27.5625 ABCD 1.375 7.5625 Example 6-2

  18. The ANOVA The ABCD interaction (or the block effect) is not considered as part of the error term The rest of the analysis is unchanged from Example 6-2

More Related