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Leer Challenge: Predict Equipment Failure Time | Engineering Data Science Applications
Python for Engineers

bookChallenge: Predict Equipment Failure Time

Predictive modeling plays a crucial role in engineering maintenance, allowing you to anticipate equipment failures and schedule repairs before breakdowns occur. In the previous chapter, you learned how predictive models can use historical data to estimate when a system might need attention. Now, you will apply this knowledge to a practical scenario using scikit-learn's LinearRegression: you have data on total operating hours and corresponding time-to-failure in days for several machines. Your goal is to build a model that predicts how long a machine will last before failing, given its operating hours.

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Given lists of machine operating hours and their corresponding time-to-failure in days, build a linear regression model to predict future failures.

  • Fit a linear regression model using hours_list as input and failure_days_list as output.
  • Retrieve the model coefficient and intercept.
  • Use the model to predict the time-to-failure for the given query_hours.
  • Return the coefficient, intercept, and prediction.

Oplossing

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bookChallenge: Predict Equipment Failure Time

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Predictive modeling plays a crucial role in engineering maintenance, allowing you to anticipate equipment failures and schedule repairs before breakdowns occur. In the previous chapter, you learned how predictive models can use historical data to estimate when a system might need attention. Now, you will apply this knowledge to a practical scenario using scikit-learn's LinearRegression: you have data on total operating hours and corresponding time-to-failure in days for several machines. Your goal is to build a model that predicts how long a machine will last before failing, given its operating hours.

Taak

Swipe to start coding

Given lists of machine operating hours and their corresponding time-to-failure in days, build a linear regression model to predict future failures.

  • Fit a linear regression model using hours_list as input and failure_days_list as output.
  • Retrieve the model coefficient and intercept.
  • Use the model to predict the time-to-failure for the given query_hours.
  • Return the coefficient, intercept, and prediction.

Oplossing

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Was alles duidelijk?

Hoe kunnen we het verbeteren?

Bedankt voor je feedback!

Sectie 3. Hoofdstuk 5
single

single

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