Hub
Pricing About
WorkflowWorkflow

Predictive_Maintenance_Model_Training

Anomaly detectionTime series analysisAuto-regressive modelsIoTInternet of Things
+3
knime profile image
Versionv4.0Latest, created on 
Mar 25, 2026 10:59 PM
Drag & drop
Like
Download workflow
Workflow preview

Predictive Maintenance - Training

This workflow trains an autoregressive model on data from a properly functioning rotor to compute error statistics. These statistics serve as a baseline, enabling early detection of anomalies during deployment.

The input data includes 313 time series of spectral amplitudes from 28 sensors located on a rotor machine. The workflow first filters the data to training data covering only normal functioning.

Then, it loops over each frequency column at a time, trains an auto-regressive model using 10 past values as predictors and calculates in-sample prediction error statistics. Lastly, it saves the model and prediction error statistics for deployment.

Loading deploymentsLoading ad hoc jobs

Used extensions & nodes

Created with KNIME Analytics Platform version 5.11.0
  • Go to item
    KNIME Base nodesTrusted extension

    KNIME AG, Zurich, Switzerland

    Version 5.11.0

    knime profile image
    knime
  • Go to item
    KNIME JavasnippetTrusted extension

    KNIME AG, Zurich, Switzerland

    Version 5.11.0

    knime profile image
    knime
  • Go to item
    KNIME Math Expression (JEP)Trusted extension

    KNIME AG, Zurich, Switzerland

    Version 5.11.0

    knime profile image
    knime
  • Go to item
    KNIME Statistics NodesTrusted extension

    KNIME AG, Zurich, Switzerland

    Version 5.9.0

    knime profile image
    knime

Legal

By using or downloading the workflow, you agree to our terms and conditions.

KNIME
Open for Innovation

KNIME AG
Talacker 50
8001 Zurich, Switzerland
  • Software
  • Getting started
  • Documentation
  • Courses + Certification
  • Solutions
  • KNIME Hub
  • KNIME Forum
  • Blog
  • Events
  • Partner
  • Developers
  • KNIME Home
  • Careers
  • Contact us
Download KNIME Analytics Platform Read more about KNIME Business Hub
© 2026 KNIME AG. All rights reserved.
  • Trademarks
  • Imprint
  • Privacy
  • Terms & Conditions
  • Data Processing Agreement
  • Credits