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Published byJared Hamilton Modified over 9 years ago
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Vibrating Beam Inverse Problem Team K.E.Y Scott Clark ● Asya Monds ● Hanh Pham SAMSI Undergraduate Workshop 2007
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Outline First Model (spring) Potential Problems How to improve Second Model (beam) Results
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The first model: Spring Model We have observations : (t 1 ; y 1 ); … ; (t m ; y m ). The goal is to estimate the unknown parameters C and K.
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Our cost function: Now we need to minimize the cost function. After running the script, we get: C=0.7284; K=1537.8
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Checking the assumptions Homoscedasticity Assumption:
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Normality assumption
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Independence Assumption
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Beam Model
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Cost Function Minimize it. How? 7 parameters, YI, CI, ρ, etc Extremum may be dense in parameter space Find “reasonable” values Set beam to same as patch, search near given data, try to minimize a new cost function
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A new cost function Needs to take into account spatial variations as well as frequency variations from the model and the data So we use a weighted least squares cost function minimized a simplex method (fminsearch). This doesn’t work. Phase change too much to overcome.
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What now then? Limit the search. Fewer parameters, smaller variations. And then, it works! (kind of)
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The data
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The parameters found gamma 0.17916724273807 air damping YI_beam ** 0.00000669769791 beam -- Young's modulus CI_beam 0.01013780051727 beam -- internal damping Kp 0.00036441688104 Kp for beam rho_patch ** 0.08291057427864 linear density of patch YI_patch ** 0.20912090251615 patch -- Young's modulus CI_patch 0.00009783931434 patch -- internal damping
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Thank You Any Questions?
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