Nowadays, scheduling on a shop floor is only focused on the availabil-ity of resources, where the potential faults are not able to be predicted. A big data analytics based fault prediction was proposed to be ap-plied in scheduling, which require a real-time decision making. To select a proper machine learning algorithm for real-time scheduling, this paper first proposes a data generation method in terms of pattern complexity and scale. Three levels of depth, an index of data complex-ity, and three levels of data attributes, an index of data scale, are used to obtain the data sets. Based on those data sets, ten commonly used machine learning algorithms are trained, in which the parameters are adjusted to achieve a high accuracy. The testing ...
With the fast evolution of the Industry 4.0, the increased use of sensors and the rapid development ...
The amount of data generated by computing clusters is very large, including nodes resources data or ...
This report explores whether machine learning methods such as regression and classification can be u...
Nowadays, scheduling on a shop floor is only focused on the availabil-ity of resources, where the po...
Scheduling is a master key to succeed in the manufacturing companies in global competition. Better p...
In the production, the efficient employment of machines is realized as a source of industry competit...
Detta arbete har utvärderat om maskininlärning kan tillföra nytta vid schemaplanering.Utvärderingen ...
Improving the reliability and performance are of utmost importance for any system. This thesis prese...
The Industrial Internet of Things (IIoT) is the use of Internet of Things (IoT) technologies in manu...
In recent years, the advancement of industry 4.0 and smart manufacturing has made a large number of ...
Manufacturing organizations need to use different kinds of techniques and tools in order to fulfill ...
Background: The gearbox and machinery faults prediction are expensive both in terms of repair and lo...
Job Shop Scheduling (JSS) is considered an optimization problem for implementing optimal job schedul...
Abstract In recent years, the rapid development of artificial intelligence and data science has give...
In this paper, a machine-learning-assisted simulation approach for dynamic flow-shop production sche...
With the fast evolution of the Industry 4.0, the increased use of sensors and the rapid development ...
The amount of data generated by computing clusters is very large, including nodes resources data or ...
This report explores whether machine learning methods such as regression and classification can be u...
Nowadays, scheduling on a shop floor is only focused on the availabil-ity of resources, where the po...
Scheduling is a master key to succeed in the manufacturing companies in global competition. Better p...
In the production, the efficient employment of machines is realized as a source of industry competit...
Detta arbete har utvärderat om maskininlärning kan tillföra nytta vid schemaplanering.Utvärderingen ...
Improving the reliability and performance are of utmost importance for any system. This thesis prese...
The Industrial Internet of Things (IIoT) is the use of Internet of Things (IoT) technologies in manu...
In recent years, the advancement of industry 4.0 and smart manufacturing has made a large number of ...
Manufacturing organizations need to use different kinds of techniques and tools in order to fulfill ...
Background: The gearbox and machinery faults prediction are expensive both in terms of repair and lo...
Job Shop Scheduling (JSS) is considered an optimization problem for implementing optimal job schedul...
Abstract In recent years, the rapid development of artificial intelligence and data science has give...
In this paper, a machine-learning-assisted simulation approach for dynamic flow-shop production sche...
With the fast evolution of the Industry 4.0, the increased use of sensors and the rapid development ...
The amount of data generated by computing clusters is very large, including nodes resources data or ...
This report explores whether machine learning methods such as regression and classification can be u...