main content

preprocess data -凯发k8网页登录

clean and transform data to prepare it for extracting condition indicators at the command line and in the app

in algorithm design for predictive maintenance, data preprocessing is often necessary to clean the data and convert it into a form from which you can extract condition indicators. you can perform data preprocessing on arrays or tables of measured or simulated data that you manage with predictive maintenance toolbox™ ensemble datastores. for an overview of some common types of data preprocessing, see .

the diagnostic feature designer app lets you perform many preprocessing operations interactively. the processing tools in the app include filtering, time-domain processing, frequency-domain processing, and interpolation. app time-domain processing options include specialized filtering for rotating machinery. for more information on the app, see .

apps

diagnostic feature designerinteractively extract, visualize, and rank features from measured or simulated data for machine diagnostics and prognostics

functions

fill missing entries
detect and replace outliers in data
smooth noisy data
moving mean
remove polynomial trend
scale range of array elements
1-d digital filter
design digital filters
time-synchronous signal average
difference signal of a time-synchronous averaged signal
regular signal of a time-synchronous averaged signal
residual signal of a time-synchronous averaged signal
track and extract order magnitudes from vibration signal
track and extract rpm profile from vibration signal
analyze signals in the frequency and time-frequency domains
envelope spectrum for machinery diagnosis
average spectrum versus order for vibration signal
frequency-response functions for modal analysis
generate frequency bands around the characteristic fault frequencies of ball or roller bearings for spectral feature extraction
construct frequency bands around the characteristic fault frequencies of meshing gears for spectral feature extraction
generate fault frequency bands for spectral feature extraction
spectral entropy of signal
spectral kurtosis from signal or spectrogram
visualize spectral kurtosis
spectrogram using short-time fourier transform
hilbert-huang transform
empirical mode decomposition

topics


  • use signal-processing techniques to preprocess data, cleaning it and converting it into a form from which you can extract condition indicators. knowledge of your system can help you choose an appropriate preprocessing approach.


  • follow this workflow for interactively exploring and processing ensemble data, designing and ranking features from that data, and exporting data and selected features, and generating matlab® code.


  • organize measurements and information for multiple systems into data sets that you can import into the app.


  • filter and transform data within the app. extract features from the imported and derived signals, and assess feature effectiveness.

网站地图