🧰Engineering Applications of Statistics Unit 8 – Design of Experiments in Engineering Stats
Design of Experiments is a crucial tool in engineering statistics, enabling systematic optimization of processes and products. This unit covers key concepts like factors, levels, and response variables, as well as principles of randomization, replication, and blocking.
Various experimental designs are explored, from simple randomized designs to complex factorial and fractional factorial designs. The unit also delves into analysis techniques like ANOVA and response surface methods, emphasizing their practical applications in engineering fields.
Design of Experiments (DOE) involves planning, conducting, and analyzing experiments to optimize processes or products
Factors are the independent variables manipulated in an experiment (temperature, pressure)
Levels are the specific values or settings of a factor (low, medium, high)
Response variable is the dependent variable measured to evaluate the effect of factors (yield, strength)
Main effect is the individual effect of a factor on the response variable
Interaction effect occurs when the effect of one factor depends on the level of another factor
Replication involves repeating the entire experiment or individual runs to estimate experimental error
Randomization is the random assignment of experimental units to treatments to minimize bias
Blocking is a technique used to reduce the impact of nuisance factors on the response variable
Experimental Design Principles
Randomization ensures that the allocation of experimental units to treatments is unbiased
Helps to minimize the effect of unknown or uncontrollable factors
Replication allows for the estimation of experimental error and increases the precision of the results
Provides a measure of the inherent variability in the process or system
Blocking is used to reduce the variability caused by nuisance factors (batch, operator)
Groups similar experimental units together to minimize the impact of these factors
Factorial designs enable the study of multiple factors simultaneously and their interactions
Confounding is a design technique that deliberately confuses the effects of certain factors with blocks
Allows for the efficient use of resources while maintaining the ability to estimate main effects
Orthogonality ensures that the effects of different factors can be estimated independently
Balanced designs have an equal number of observations for each treatment combination
Types of Experimental Designs
Completely Randomized Design (CRD) is the simplest design, where treatments are randomly assigned to experimental units
Randomized Complete Block Design (RCBD) uses blocking to reduce the impact of nuisance factors
Each block contains a complete set of treatments
Latin Square Design (LSD) is used when there are two nuisance factors (row and column effects)
Each treatment appears exactly once in each row and column
Split-Plot Design is used when some factors are harder to change than others (whole-plot and sub-plot factors)
Nested Design is used when the levels of one factor are different for each level of another factor
Fractional Factorial Design is a subset of a full factorial design that allows for the estimation of main effects and some interactions
Useful when the number of factors is large and resources are limited
Plackett-Burman Design is a screening design used to identify the most important factors from a large set of potential factors
Factorial Designs and Their Applications
Factorial designs allow for the simultaneous study of multiple factors and their interactions
Full factorial designs include all possible combinations of factor levels (2^k for k factors at two levels)
Fractional factorial designs are a subset of full factorial designs that maintain the ability to estimate main effects and some interactions
Useful when the number of factors is large and resources are limited
Factorial designs are widely used in engineering to optimize processes or products
Helps to identify the most important factors and their optimal settings
Interaction plots are used to visualize the presence and nature of interactions between factors
Confounding is a technique used in fractional factorial designs to deliberately confuse the effects of certain interactions with blocks
Allows for the efficient use of resources while maintaining the ability to estimate main effects
Analysis of Variance (ANOVA) in Experiments
ANOVA is a statistical method used to analyze the results of experiments and determine the significance of factors
ANOVA partitions the total variability in the response variable into components attributable to different sources (factors, interactions, error)
The F-test is used to compare the variance between treatments to the variance within treatments
A large F-value indicates that the treatment means are significantly different
The p-value is the probability of observing a test statistic as extreme as the one calculated, assuming the null hypothesis is true
A small p-value (typically < 0.05) suggests that the null hypothesis should be rejected and the factor is significant
Main effects and interaction effects can be tested for significance using ANOVA
Residual analysis is used to check the assumptions of ANOVA (normality, homogeneity of variance, independence)
Multiple comparison procedures (Tukey's HSD, Dunnett's test) are used to determine which treatment means are significantly different from each other
Randomization and Blocking Techniques
Randomization is the process of randomly assigning experimental units to treatments
Helps to minimize the effect of unknown or uncontrollable factors on the response variable
Blocking is a technique used to reduce the impact of nuisance factors on the response variable
Groups similar experimental units together to minimize the variability within blocks
Randomized Complete Block Design (RCBD) is a common blocking design
Each block contains a complete set of treatments, and treatments are randomly assigned within each block
Latin Square Design (LSD) is used when there are two nuisance factors (row and column effects)
Each treatment appears exactly once in each row and column
Incomplete Block Designs are used when the number of treatments is large and it is not feasible to include all treatments in each block
Balanced Incomplete Block Design (BIBD) ensures that each treatment appears an equal number of times and each pair of treatments appears together an equal number of times
Blocking can increase the precision of the experiment by reducing the experimental error
The efficiency of blocking can be measured by the relative efficiency (RE) compared to a completely randomized design
Optimization and Response Surface Methods
Response Surface Methodology (RSM) is a collection of statistical and mathematical techniques used to optimize processes or products
RSM involves designing experiments to fit a model that relates the response variable to the factors
The model is then used to find the optimal settings of the factors that maximize or minimize the response variable
Central Composite Design (CCD) is a common RSM design that allows for the estimation of quadratic models
Consists of a factorial design, center points, and axial points
Box-Behnken Design (BBD) is another RSM design that requires fewer runs than CCD
Useful when the factors are limited to three levels and the experimental region is irregular
Steepest Ascent (or Descent) Method is used to sequentially move towards the optimum by following the path of steepest ascent (or descent) in the response surface
Contour Plots and Surface Plots are used to visualize the response surface and identify the optimal region
Desirability Functions are used to simultaneously optimize multiple response variables by combining them into a single desirability score
Real-World Applications in Engineering
Design of Experiments is widely used in various engineering fields to optimize processes, products, and systems
In manufacturing, DOE is used to optimize process parameters (temperature, pressure, feed rate) to improve product quality and reduce costs
Example: Optimizing injection molding parameters to minimize defects and cycle time
In chemical engineering, DOE is used to optimize reaction conditions (catalyst, temperature, pressure) to maximize yield and selectivity
Example: Optimizing the synthesis of a pharmaceutical compound to improve yield and purity
In aerospace engineering, DOE is used to optimize aircraft design parameters (wing shape, engine placement) to improve performance and fuel efficiency
Example: Optimizing the design of a turbine blade to maximize power output and durability
In materials science, DOE is used to optimize the composition and processing of materials to achieve desired properties (strength, toughness, conductivity)
Example: Optimizing the heat treatment process of a metal alloy to maximize hardness and wear resistance
In environmental engineering, DOE is used to optimize the design and operation of treatment systems (wastewater, air pollution) to minimize environmental impact and cost
Example: Optimizing the dosage of coagulants in a water treatment plant to improve removal efficiency and reduce sludge production
DOE is also used in combination with other techniques such as simulation, machine learning, and optimization algorithms to solve complex engineering problems
Example: Using DOE to generate training data for a machine learning model that predicts the performance of a solar panel based on its design parameters