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Published byDominic Ferguson Modified over 9 years ago
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Interactions - factorial designs
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A typical application Synthesis catalysttemperature Yield of product Yield=f (catalyst, temperature) Is there an optimal combination of catalyst and temperature?
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Designs Univariate Design Check the whole temperature interval for all catalysts Multivariate Design Check different Combinations of temperature and catalyst
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Variable Levels Temperature range: 120 - 200 °C Catalyst: Type 1, Type 2 Select levels Temperature : 140 °C, 180 °C Catalyst: c 1, c 2
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Multivariate design
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Coding the design
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Design Matrix 2 2 Factorial Design (FD) -1 represents the low value, while +1 represents the high value
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Variable space Temperature Catalyst (180 °C, c1) (140 °C, c2) (140 °C, c1) (180 °C, c2)
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Result of experiments 2 2 Factorial Design
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Response in variable space 5770 4881 Temperature Catalyst (180 °C, c1) (140 °C, c2) (140 °C, c1) (180 °C, c2)
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Calculation of Mean Response
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Calculation of Main Effects Temperature +1: -1: Main Effect = 23.0 Catalyst +1: -1: Main Effect = -1.0
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Apparent conclusion Yield = function of temperature only
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Predicted responses Significant lack of fit between Model and Experiments! ^^
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Residuals and variable levels Lack of fit ( ) follows the same pattern as the interaction between temperature and catalyst (tc)!
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Orthogonality and Yates algorithm Columns in Design Matrix are orthogonal! Yates algorithm for calculation of main effects and interaction.
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Model
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Interpretation Temp. 5770 4881 Catalyst 1 2 140°C180°C i) Large increase in yield for catalyst 1 with increasing temperature ii) Small increase in yield for catalyst 2 with increasing temperature
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Multivariate vs. Univariate design Multivariate Design gives a single model for the response Multivariate Design gives an interpretation of the differences between catalysts in terms of an interaction term Multivariate Design gives a lot of information by means of few (orthogonal) experiments
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Next step Multivariate orthogonal designs such as Factorial Designs can be reduced to obtain Fractional Factorial Designs, Plackett- Burman designs etc., for screening of many factors simultaneously.
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