This paper presents a comparison of three algorithm types (Bayesian Networks, Random Forest and Linear Regression) for Predictive Maintenance on an implanter system in semiconductor manufacturing. The comparison studies are executed using a Virtual Equipment which serves as a testing environment for prediction algorithms prior to their implementation in a semiconductor manufacturing plant (fab). The Virtual Equipment uses input data that is based on historical fab data collected during multiple filament failure cycles. In an automated study, the input data is altered systematically, e.g. by adding noise, drift or maintenance effects, and used for predictions utilizing the created Predictive Maintenance models. The resulting predictions are ...
Industry 4.0 is characterized by the availability of sensors to operate the so-called intelligent fa...
Maintenance of equipment is a crucial issue in almost all industrial sectors as it impacts the quali...
In this paper, a multiple classifier machine learning (ML) methodology for predictivemaintenance (Pd...
The Semiconductor Industry (SI) is facing the challenge of high-mix low-volume production due to inc...
International audienceThis paper presents a general methodology to improve risk assessment in the sp...
Abstract—It has been a long interest from researchers to have an effective approach optimizing maint...
Industry 4.0 the proclaimed fourth industrial revolution is unfolding at the moment. It is character...
International audienceThe evolution of microelectronics is characterized by an intense competitive e...
The increasing availability of data and computing capacity drives optimization potential. In the ind...
This paper describes practical aspects of development and implementation of novel process control en...
Process tools in leading edge semiconductor facilities represent a huge amount of capital expenditur...
International audienceThis work takes place within the IMPROVE European project aimed at increasing ...
Maintenance is an activity that cannot be separated from the context of product manufacturing. It is...
Predictive maintenance has made considerable progress within the framework of Industry 4.0, making t...
Condition monitoring together with predictive maintenance of electric motors and other equipment use...
Industry 4.0 is characterized by the availability of sensors to operate the so-called intelligent fa...
Maintenance of equipment is a crucial issue in almost all industrial sectors as it impacts the quali...
In this paper, a multiple classifier machine learning (ML) methodology for predictivemaintenance (Pd...
The Semiconductor Industry (SI) is facing the challenge of high-mix low-volume production due to inc...
International audienceThis paper presents a general methodology to improve risk assessment in the sp...
Abstract—It has been a long interest from researchers to have an effective approach optimizing maint...
Industry 4.0 the proclaimed fourth industrial revolution is unfolding at the moment. It is character...
International audienceThe evolution of microelectronics is characterized by an intense competitive e...
The increasing availability of data and computing capacity drives optimization potential. In the ind...
This paper describes practical aspects of development and implementation of novel process control en...
Process tools in leading edge semiconductor facilities represent a huge amount of capital expenditur...
International audienceThis work takes place within the IMPROVE European project aimed at increasing ...
Maintenance is an activity that cannot be separated from the context of product manufacturing. It is...
Predictive maintenance has made considerable progress within the framework of Industry 4.0, making t...
Condition monitoring together with predictive maintenance of electric motors and other equipment use...
Industry 4.0 is characterized by the availability of sensors to operate the so-called intelligent fa...
Maintenance of equipment is a crucial issue in almost all industrial sectors as it impacts the quali...
In this paper, a multiple classifier machine learning (ML) methodology for predictivemaintenance (Pd...