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Prediction of Remaining Useful Life (RUL) of NASA Turbofan Jet Engine using libraries such as Numpy, Matplotlib and Pandas. Prediction is done by training a model using Keras (TensorFlow).

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NASA Jet Engine Remaining Useful Life (RUL) Prediction Notebook

Prediction of Remaining Useful Life (RUL) using NASA Turbofan Jet Engine dataset with the help of libraries such as Numpy, Matplotlib and Pandas. Prediction is done by training a model using Keras (TensorFlow).

Dataset characteristics:

  • Data set name: NASA Turbojet (FD002)
  • Train trjectories: 260
  • Test trajectories: 259
  • Conditions: SIX
  • Fault Modes: ONE (HPC Degradation)

Data is provided as a text file with 26 columns of numbers, separated by spaces. Each row is a snapshot of data taken during a single operational cycle, each column is a different variable. The columns correspond to:

  • Unit number
  • Time, in cycles
  • Operational setting 1
  • Operational setting 2
  • Operational setting 3
  • Sensor measurement 1
  • Sensor measurement 2
    ...
  • Sensor measurement 26

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Prediction of Remaining Useful Life (RUL) of NASA Turbofan Jet Engine using libraries such as Numpy, Matplotlib and Pandas. Prediction is done by training a model using Keras (TensorFlow).

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