Chapter 7: Design of Experiment (DOE) – Exam Revision Notes

1. Introduction

  • Design of Experiment (DOE): A structured method for planning experiments, collecting data, and analyzing results.
  • Used to study the effect of one or more factors on a response variable.
  • Provides valid and statistically efficient conclusions.

2. Concept of Analysis of Variance (ANOVA)

  • ANOVA: Statistical technique to compare means of two or more groups.
  • Determines whether observed differences are statistically significant or due to random variation.
  • Key components:
    • F-statistic: Ratio of variance between groups to variance within groups.
    • Null Hypothesis (H₀): All group means are equal.
    • Alternative Hypothesis (H₁): At least one group mean is different.

3. Linear Model in ANOVA

  • General form:
    Yij=μ+τi+ϵijY_{ij} = \mu + \tau_i + \epsilon_{ij}
    1. YijY_{ij} = Observation from i-th treatment and j-th replicate
    2. μ\mu = Overall mean
    3. τi\tau_i = Effect of i-th treatment
    4. ϵij\epsilon_{ij} = Random error
  • Assumptions:
    1. Errors are independent and normally distributed.
    2. Homogeneity of variance (equal variance across groups).

4. Types of ANOVA

4.1 One-Way ANOVA

  • Tests differences among means of one factor with multiple levels.
  • Steps:
    1. Compute group means and overall mean
    2. Calculate Sum of Squares Between (SSB) and Sum of Squares Within (SSW)
    3. Compute F-statistic:
      F=MSBMSWF = \frac{MSB}{MSW}
      where MSB = Mean Square Between, MSW = Mean Square Within
    4. Compare F with critical value from F-table.

4.2 Two-Way ANOVA

  • Analyzes two factors simultaneously.
  • Can include interactions between factors.
  • Example: Study effect of fertilizer type and irrigation level on crop yield.

5. Observations per Cell

  • Balanced Design: Same number of observations in each group.
  • Unbalanced Design: Unequal number of observations; requires special computation methods.

6. Fixed Effect Model

  • Factor levels are fixed and pre-determined.
  • Interest lies in comparing specific treatments rather than generalizing to all possible levels.

7. Key Takeaways

  • DOE increases efficiency, precision, and reliability of experimental results.
  • ANOVA is the core tool in DOE for comparing group means.
  • One-way ANOVA → Single factor, multiple levels.
  • Two-way ANOVA → Two factors, can assess interactions.
  • Balanced design simplifies calculations; fixed effect model focuses on specific treatments.

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