How to model manufacturing shift data with irregular production times? Announcing the arrival of Valued Associate #679: Cesar Manara Planned maintenance scheduled April 17/18, 2019 at 00:00UTC (8:00pm US/Eastern) 2019 Moderator Election Q&A - Questionnaire 2019 Community Moderator Election ResultsHow to use survival analysis for predictive maintenance for time series data?model for univariate time series with 0,1 as data valuesHow to evaluate performance of a time series model?How to choose validation set for production environment?Feature selection with many Time stamp data and Model classificationCan Recurrent Neural Networks (LSTM) run distributed in production?How to treat missing data for survival analysisWhat kind of algorithm should I use to build ML model that can predict just next reoccurence of an event in the future (at irregular time interval)?Train LSTM model with multiple time seriesHow to manage missing data in meteorological time series?

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How to model manufacturing shift data with irregular production times?



Announcing the arrival of Valued Associate #679: Cesar Manara
Planned maintenance scheduled April 17/18, 2019 at 00:00UTC (8:00pm US/Eastern)
2019 Moderator Election Q&A - Questionnaire
2019 Community Moderator Election ResultsHow to use survival analysis for predictive maintenance for time series data?model for univariate time series with 0,1 as data valuesHow to evaluate performance of a time series model?How to choose validation set for production environment?Feature selection with many Time stamp data and Model classificationCan Recurrent Neural Networks (LSTM) run distributed in production?How to treat missing data for survival analysisWhat kind of algorithm should I use to build ML model that can predict just next reoccurence of an event in the future (at irregular time interval)?Train LSTM model with multiple time seriesHow to manage missing data in meteorological time series?










0












$begingroup$


Problem Setting:



Let's say there are three shifts a day in a manufacturing plant. The plant suffers from irregular power supply thereby affecting in how it is functioning in time and the shift's production. Therefore, you have the manufacturing process going on for a while and then pauses due to power outage(or lunch break) to be resumed when the power is back on. This on/off pattern of power is pretty much inconsistent and unpredictable.



Objective:



By mining data of the past history, I want to come up with a model that given a point in a day of a shift I want it to be able to forecast the production for the rest of the shift(possibly accounting for the likelihood of experiencing power outages).



I was hoping for some perspective and idea in how to go about making this problem a machine learning problem and some advise in picking techniques amenable to the problem.










share|improve this question









$endgroup$




bumped to the homepage by Community 1 hour ago


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  • $begingroup$
    Do you have access to the time of stoppages (outage, lunch breaks) if so, you could model these as feature too.
    $endgroup$
    – The Lyrist
    Jul 18 '18 at 15:23















0












$begingroup$


Problem Setting:



Let's say there are three shifts a day in a manufacturing plant. The plant suffers from irregular power supply thereby affecting in how it is functioning in time and the shift's production. Therefore, you have the manufacturing process going on for a while and then pauses due to power outage(or lunch break) to be resumed when the power is back on. This on/off pattern of power is pretty much inconsistent and unpredictable.



Objective:



By mining data of the past history, I want to come up with a model that given a point in a day of a shift I want it to be able to forecast the production for the rest of the shift(possibly accounting for the likelihood of experiencing power outages).



I was hoping for some perspective and idea in how to go about making this problem a machine learning problem and some advise in picking techniques amenable to the problem.










share|improve this question









$endgroup$




bumped to the homepage by Community 1 hour ago


This question has answers that may be good or bad; the system has marked it active so that they can be reviewed.














  • $begingroup$
    Do you have access to the time of stoppages (outage, lunch breaks) if so, you could model these as feature too.
    $endgroup$
    – The Lyrist
    Jul 18 '18 at 15:23













0












0








0





$begingroup$


Problem Setting:



Let's say there are three shifts a day in a manufacturing plant. The plant suffers from irregular power supply thereby affecting in how it is functioning in time and the shift's production. Therefore, you have the manufacturing process going on for a while and then pauses due to power outage(or lunch break) to be resumed when the power is back on. This on/off pattern of power is pretty much inconsistent and unpredictable.



Objective:



By mining data of the past history, I want to come up with a model that given a point in a day of a shift I want it to be able to forecast the production for the rest of the shift(possibly accounting for the likelihood of experiencing power outages).



I was hoping for some perspective and idea in how to go about making this problem a machine learning problem and some advise in picking techniques amenable to the problem.










share|improve this question









$endgroup$




Problem Setting:



Let's say there are three shifts a day in a manufacturing plant. The plant suffers from irregular power supply thereby affecting in how it is functioning in time and the shift's production. Therefore, you have the manufacturing process going on for a while and then pauses due to power outage(or lunch break) to be resumed when the power is back on. This on/off pattern of power is pretty much inconsistent and unpredictable.



Objective:



By mining data of the past history, I want to come up with a model that given a point in a day of a shift I want it to be able to forecast the production for the rest of the shift(possibly accounting for the likelihood of experiencing power outages).



I was hoping for some perspective and idea in how to go about making this problem a machine learning problem and some advise in picking techniques amenable to the problem.







time-series rnn survival-analysis






share|improve this question













share|improve this question











share|improve this question




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asked Jul 18 '18 at 15:14









user007user007

183




183





bumped to the homepage by Community 1 hour ago


This question has answers that may be good or bad; the system has marked it active so that they can be reviewed.







bumped to the homepage by Community 1 hour ago


This question has answers that may be good or bad; the system has marked it active so that they can be reviewed.













  • $begingroup$
    Do you have access to the time of stoppages (outage, lunch breaks) if so, you could model these as feature too.
    $endgroup$
    – The Lyrist
    Jul 18 '18 at 15:23
















  • $begingroup$
    Do you have access to the time of stoppages (outage, lunch breaks) if so, you could model these as feature too.
    $endgroup$
    – The Lyrist
    Jul 18 '18 at 15:23















$begingroup$
Do you have access to the time of stoppages (outage, lunch breaks) if so, you could model these as feature too.
$endgroup$
– The Lyrist
Jul 18 '18 at 15:23




$begingroup$
Do you have access to the time of stoppages (outage, lunch breaks) if so, you could model these as feature too.
$endgroup$
– The Lyrist
Jul 18 '18 at 15:23










1 Answer
1






active

oldest

votes


















0












$begingroup$

From the information at hand, you could break this down into two problems -



  1. Predicting the production for the shift, and

  2. Finding the probability of breakdown during the shift

For (1) you could either go down the time-series route (ARIMA, Box-Jenkins, Exponential smoothening) or the regression route (provided you have good features)



For (2) you could build a logistic regression model that gives you a probability score



Possible features you could look into are



  • Time of day, week, month and year

  • Time between breakdowns

  • Available labor

  • Electricity Board data?





share|improve this answer









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    1 Answer
    1






    active

    oldest

    votes








    1 Answer
    1






    active

    oldest

    votes









    active

    oldest

    votes






    active

    oldest

    votes









    0












    $begingroup$

    From the information at hand, you could break this down into two problems -



    1. Predicting the production for the shift, and

    2. Finding the probability of breakdown during the shift

    For (1) you could either go down the time-series route (ARIMA, Box-Jenkins, Exponential smoothening) or the regression route (provided you have good features)



    For (2) you could build a logistic regression model that gives you a probability score



    Possible features you could look into are



    • Time of day, week, month and year

    • Time between breakdowns

    • Available labor

    • Electricity Board data?





    share|improve this answer









    $endgroup$

















      0












      $begingroup$

      From the information at hand, you could break this down into two problems -



      1. Predicting the production for the shift, and

      2. Finding the probability of breakdown during the shift

      For (1) you could either go down the time-series route (ARIMA, Box-Jenkins, Exponential smoothening) or the regression route (provided you have good features)



      For (2) you could build a logistic regression model that gives you a probability score



      Possible features you could look into are



      • Time of day, week, month and year

      • Time between breakdowns

      • Available labor

      • Electricity Board data?





      share|improve this answer









      $endgroup$















        0












        0








        0





        $begingroup$

        From the information at hand, you could break this down into two problems -



        1. Predicting the production for the shift, and

        2. Finding the probability of breakdown during the shift

        For (1) you could either go down the time-series route (ARIMA, Box-Jenkins, Exponential smoothening) or the regression route (provided you have good features)



        For (2) you could build a logistic regression model that gives you a probability score



        Possible features you could look into are



        • Time of day, week, month and year

        • Time between breakdowns

        • Available labor

        • Electricity Board data?





        share|improve this answer









        $endgroup$



        From the information at hand, you could break this down into two problems -



        1. Predicting the production for the shift, and

        2. Finding the probability of breakdown during the shift

        For (1) you could either go down the time-series route (ARIMA, Box-Jenkins, Exponential smoothening) or the regression route (provided you have good features)



        For (2) you could build a logistic regression model that gives you a probability score



        Possible features you could look into are



        • Time of day, week, month and year

        • Time between breakdowns

        • Available labor

        • Electricity Board data?






        share|improve this answer












        share|improve this answer



        share|improve this answer










        answered Jul 18 '18 at 15:49









        SrikrishnaSrikrishna

        1062




        1062



























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