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Understanding the Accuracy of Assembly Variation Analysis Methods ADCATS 2000 Robert Cvetko June 2000
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ADCATS 2000Slide 2 Problem Statement q There are several different analysis methods q An engineer will often use one method for all situations q The confidence level of the results is seldom estimated
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June 2000ADCATS 2000Slide 3 Outline of Presentation q New metrics to help estimate accuracy q Estimating accuracy (one-way clutch) í Monte Carlo (MC) í RSS linear (RSS) q Method selection technique to match the error of input information with the analysis
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Sample Problem One-way Clutch Assembly
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June 2000ADCATS 2000Slide 5 Clutch Assembly Problem e c b a c q Contact angle important for performance q Known to be quite non-quadratic q Easily represented in explicit and implicit form
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June 2000ADCATS 2000Slide 6 Details for the Clutch Assembly í Cost of “bad” clutch is $20 í Optimum point is the nominal angle
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June 2000ADCATS 2000Slide 7 Monte Carlo Benchmark (One Billion Samples)
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June 2000ADCATS 2000Slide 8 10,000 Sample Monte Carlo There is significant variability even using Monte Carlo with 10,000 samples.
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June 2000ADCATS 2000Slide 9 One-Sigma Bound on the Mean Estimate of the Mean versus Sample Size 0.0 0.2 0.4 0.6 0.8 1.0 1.2 1.4 1.6 -3-20123 Estimate of the Mean Probability Density for the Estimate of the Mean 16 samples = 0.25 1 sample = 1 4 samples = 0.5
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June 2000ADCATS 2000Slide 10 New Metric: Standard Moment Error q Dimensionless measure of error in a distribution moment q All moments scaled by the standard deviation Estimate True
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June 2000ADCATS 2000Slide 11 SER1 for Monte Carlo
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June 2000ADCATS 2000Slide 12 SER2 for Monte Carlo
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June 2000ADCATS 2000Slide 13 SER3-4 for Monte Carlo
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June 2000ADCATS 2000Slide 14 Standard Moment Errors
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June 2000ADCATS 2000Slide 15 10,000 Sample Monte Carlo You don’t have to do multiple Monte Carlo Simulations to estimate the error!
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June 2000ADCATS 2000Slide 16 Application: Quality Loss Function
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June 2000ADCATS 2000Slide 17 Estimating Quality Loss with MC
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RSS Linear Analysis Using First-Order Sensitivities
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June 2000ADCATS 2000Slide 19 New Metric: Quadratic Ratio q Dimensionless ratio of quadratic to linear effect q Function of derivatives and standard deviation of one input variable
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June 2000ADCATS 2000Slide 20 Calculating the QR q The variables that have the largest %contribution to variance or standard deviations q The hub radius a contributes over 80% of the variance and has the largest standard deviation
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June 2000ADCATS 2000Slide 21 Linearization Error q First and second-order moments as function of one variable q Simplified SER estimates for normal input variables
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June 2000ADCATS 2000Slide 22 Linearization of Clutch q The QR is effective at estimating the reduction in error that could be achieved by using a second- order method q If the accuracy of the linear method is not enough, a more complex model could be used Quadratic Ratio of a RSS vs. Method of System Moments RSS vs. Benchmark SER10.01410.01560.0157 SER2-0.0004 -0.0034 SER30.08440.09360.0944 SER4-0.0119-0.0144-0.0441 Error Estimates Obtained From:
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Method Selection Matching Input and Analysis Error and Matching Method with Objective
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June 2000ADCATS 2000Slide 24 Error Matching q “Things should be made as simple as possible, but not any simpler”-Albert Einstein q Method complexity increases with accuracy q Simplicity í Reduce computation error í Design iteration í Presenting results Input Error Analysis Error
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June 2000ADCATS 2000Slide 25 Converting Input Errors to SER2 q Incomplete assembly model q Input variable q Specification limits q Loss constant
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June 2000ADCATS 2000Slide 26 Design Iteration Efficiency Accuracy MSM DOE RSS MC
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June 2000ADCATS 2000Slide 27 Conclusions q Confidence of analysis method should be estimated q Confidence of model inputs should be estimated q New metrics - SER and QR help to estimate the error analysis method and input errors q Error matching can help keep analysis models simple and increase efficiency
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