Title :
A wavelet-based procedure for process fault detection
Author :
Lada, Emily K. ; Lu, Jye-Chyi ; Wilson, James R.
Author_Institution :
Graduate Program in Operations Res., North Carolina State Univ., Raleigh, NC, USA
fDate :
2/1/2002 12:00:00 AM
Abstract :
To detect faults in a time-dependent process, we apply a discrete wavelet transform (DWT) to several independently replicated data sets generated by that process. The DWT can capture irregular data patterns such as sharp "jumps" better than the Fourier transform and standard statistical procedures without adding much computational complexity. Our wavelet coefficient selection method effectively balances model parsimony against data reconstruction error. The few selected wavelet coefficients serve as the "reduced-size" data set to facilitate an efficient decision-making method in situations with potentially large-volume data sets. We develop a general procedure to detect process faults based on differences between the reduced-size data sets obtained from the nominal (in-control) process and from a new instance of the target process that must be tested for an out-of-control condition. The distribution of the test statistic is constructed first using normal distribution theory and then with a new resampling procedure called "reversed jackknifing" that does not require any restrictive distributional assumptions. A Monte Carlo study demonstrates the effectiveness of these procedures. Our methods successfully detect process faults for quadrupole mass spectrometry samples collected from a rapid thermal chemical vapor deposition process
Keywords :
Monte Carlo methods; chemical vapour deposition; computational complexity; data reduction; fault diagnosis; integrated circuit technology; mass spectrometer accessories; normal distribution; process control; rapid thermal processing; semiconductor technology; statistical analysis; wavelet transforms; DWT; Fourier transform; Monte Carlo study; computational complexity; data reconstruction error; decision-making method; discrete wavelet transform; irregular data patterns; large-volume data sets; model parsimony; nominal in-control process; normal distribution theory; out-of-control condition test; process fault detection; process faults; quadrupole mass spectrometry samples; rapid thermal chemical vapor deposition process; reduced-size data set; replicated process data sets; resampling procedure; reversed jackknifing; statistical procedures; target process; test statistic distribution; time-dependent process; wavelet coefficient selection method; wavelet coefficients; wavelet-based procedure; Computational complexity; Decision making; Discrete wavelet transforms; Fault detection; Fourier transforms; Gaussian distribution; Statistical analysis; Statistical distributions; Testing; Wavelet coefficients;
Journal_Title :
Semiconductor Manufacturing, IEEE Transactions on