NASA Technical Reports Server (NTRS) : Analysis pdf

NASA Technical Reports Server (NTRS) : Analysis_bookcover

NASA Technical Reports Server (NTRS) : Analysis

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The “Westland” set of empirical accelerometer helicopter data with seeded and labeled faults is analyzed with the aim of condition monitoring. The autoregressive (AR) coefficients from a simple linear model encapsulate a great deal of information in a relatively few measurements; and it has also been found that augmentation of these by harmonic and other parameters call improve classification significantly. Several techniques have been explored, among these restricted Coulomb energy (RCE) networks, learning vector quantization (LVQ), Gaussian mixture classifiers and decision trees. A problem with these approaches, and in common with many classification paradigms, is that augmentation of the feature dimension can degrade classification ability. Thus, we also introduce the Bayesian data reduction algorithm (BDRA), which imposes a Dirichlet prior oil training data and is thus able to quantify probability of error in all exact manner, such that features may be discarded or coarsened appropriately

  • Creator/s: NASA Technical Reports Server (NTRS
  • Date: 1/1/2001
  • Year: 2001
  • Book Topics/Themes: NASA Technical Reports Server (NTRS), DATA ACQUISITION, ACCELEROMETERS, HELICOPTERS, ERROR ANALYSIS, DATA REDUCTION, VECTOR QUANTIZATION, OILS, ENCAPSULATING, EDUCATION, DIRICHLET PROBLEM, DECISION THEORY, COEFFICIENTS, CLASSIFICATIONS, BAYES THEOREM, AUGMENTATION, ALGORITHMS, Wen, Fang, Willett, Peter, Deb, Somnath

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