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EGR 105 Foundations of Engineering I. Fall 2007 – week 7 Excel part 3 - regression. Analysis of x-y Data. Independent versus dependent variables y y = f(x) x. dependent. independent. Finding Other Values. Interpolation
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EGR 105 Foundations of Engineering I Fall 2007 – week 7 Excel part 3 - regression
Analysis of x-y Data • Independent versus dependent variables y y = f(x)x dependent independent
Finding Other Values • Interpolation • Data between known points • Regression – curve fitting • Simple representation of data • Understand workings of system • Useful for prediction • Extrapolation • Data beyond the measured range data points
Regression • Useful for noisy or uncertain data • n pairs of data (xi , yi) • Choose a functional form y = f(x) • polynomial • exponential • etc. and evaluate parameters for a “close” fit
y (x3,y3) (x4,y4) (x1,y1) (x2,y2) e3 ei= yi – f(xi), i =1,2,…,n x What Does “close” Mean? errors squared sum • Want a consistent rule • Common is the least squares fit (SSE):
y x Quality of the Fit: Notes: is the average y value 0 R2 1 closer to 1 is a “better” fit
Linear Regression • Functional choicey = m x + b slopeintercept • Squared errors sum to • Set m and b derivatives to zero
Further Regression Possibilities: • Could force intercept: y = m x + c • Other two parameter ( a and b ) fits: • Logarithmic: y = a ln x + b • Exponential: y = a e bx • Power function: y = a x b • Other polynomials with more parameters: • Parabola: y = a x2 + bx + c • Higher order: y = a xk + bxk-1 + …
Function Discoveryor How to find the best relationship • Look for straight lines on log axes: àlinear on semilog x y = a ln x + b àlinear on semilog y y = ae bx àlinear on log log y = ax b • No rule for 2nd or higher order polynomial fits (not very useful toward real problems)