This paper addresses the problem of predicting machine failures in an industrial manufacturing process based on multivariate time series data. A workflow is presented for cleaning and preprocessing the data, and for training and evaluating a predictive model. Its implementation is modular and extensible to support changes in the underlying produc- tion processes and the gathered data. Two predictive models are presented, based on Convolutional Neural Networks and Recurrent Neural Networks, and evaluated on data from an advanced machining process used for cutting complex shapes into metal pieces
Data is everything - at least this is one of the main messages of the ongoing industrial revolution....
Industry 4.0 the proclaimed fourth industrial revolution is unfolding at the moment. It is character...
An automated manufacturing industry makes use of many interacting moving parts and sensors. Data fro...
This paper addresses the problem of predicting machine failures in an industrial manufacturing proce...
International audienceThis research investigates detecting machine failures in a manufacturing proce...
We focus on machine failure prediction in industry 4.0.Indeed, it is used for classification problem...
The sudden downtime and unplanned maintenance not only drastically increase the maintenance cost but...
The proliferation of sensing technologies such as sensors has resulted in vast amounts of time-serie...
Any company in the industrial sector requires constant and uninterrupted operation of its systems as...
The use of prognostics is critically to be implemented in industrial. This paper presents an appli...
Abstract The operation of industrial manufacturing processes can suffer greatly when critical compo...
Time series data often involves big size environment that lead to high dimensionality problem. Many ...
ABSTRACT In this study an attempt is made to use the Artificial Neural Network (ANN) model predict t...
Although textile production is heavily automation-based, it is viewed as a virgin area with regard t...
In a competitive production environment, a manufacturing company must have plans to improve producti...
Data is everything - at least this is one of the main messages of the ongoing industrial revolution....
Industry 4.0 the proclaimed fourth industrial revolution is unfolding at the moment. It is character...
An automated manufacturing industry makes use of many interacting moving parts and sensors. Data fro...
This paper addresses the problem of predicting machine failures in an industrial manufacturing proce...
International audienceThis research investigates detecting machine failures in a manufacturing proce...
We focus on machine failure prediction in industry 4.0.Indeed, it is used for classification problem...
The sudden downtime and unplanned maintenance not only drastically increase the maintenance cost but...
The proliferation of sensing technologies such as sensors has resulted in vast amounts of time-serie...
Any company in the industrial sector requires constant and uninterrupted operation of its systems as...
The use of prognostics is critically to be implemented in industrial. This paper presents an appli...
Abstract The operation of industrial manufacturing processes can suffer greatly when critical compo...
Time series data often involves big size environment that lead to high dimensionality problem. Many ...
ABSTRACT In this study an attempt is made to use the Artificial Neural Network (ANN) model predict t...
Although textile production is heavily automation-based, it is viewed as a virgin area with regard t...
In a competitive production environment, a manufacturing company must have plans to improve producti...
Data is everything - at least this is one of the main messages of the ongoing industrial revolution....
Industry 4.0 the proclaimed fourth industrial revolution is unfolding at the moment. It is character...
An automated manufacturing industry makes use of many interacting moving parts and sensors. Data fro...