Prioritising improvement and maintenance activities is an important part of the production management and development process. Companies need to direct their efforts to the production constraints (bottlenecks) to achieve higher productivity. The first step is to identify the bottlenecks in the production system. A majority of the current bottleneck detection techniques can be classified into two categories, based on the methods used to develop the techniques: Analytical and simulation based. Analytical methods are difficult to use in more complex multi-stepped production systems, and simulation-based approaches are time-consuming and less flexible with regard to changes in the production system. This research paper introduces a real-Time, d...
Improving production system performance is a constant need and a priority for manufacturers. Plannin...
Bottleneck detection is vital for improving production capacity or reducing production time. Many di...
The thesis work develops an automated, data-driven bottleneck detection procedure based on real-worl...
Prioritising improvement and maintenance activities is an important part of the production managemen...
Prioritising improvement and maintenance activities is an important part of the production managemen...
Manufacturing companies continuously capture shop floor information using sensors technologies, Manu...
This paper presents a new method to identify and rank the bottlenecks in a manufacturing system. The...
Manufacturing companies are increasingly adopting digital solutions to monitor and manage production...
Production systems and production management are getting smart. Manufacturing companies are increasi...
Bottleneck identification is of great interest in discrete manufacturing fields, as they limit the s...
AbstractBottleneck detection in manufacturing is the key to improving production efficiency and stab...
The digital transformation of manufacturing industries is expected to yield increased productivity. ...
Bottleneck detection in manufacturing is the key to improving production efficiency and stability in...
Bottlenecks within a production line significantly reduce the productivity. Quick and correct identi...
Data-driven bottleneck detection has received an increasing interest during the recent years. This a...
Improving production system performance is a constant need and a priority for manufacturers. Plannin...
Bottleneck detection is vital for improving production capacity or reducing production time. Many di...
The thesis work develops an automated, data-driven bottleneck detection procedure based on real-worl...
Prioritising improvement and maintenance activities is an important part of the production managemen...
Prioritising improvement and maintenance activities is an important part of the production managemen...
Manufacturing companies continuously capture shop floor information using sensors technologies, Manu...
This paper presents a new method to identify and rank the bottlenecks in a manufacturing system. The...
Manufacturing companies are increasingly adopting digital solutions to monitor and manage production...
Production systems and production management are getting smart. Manufacturing companies are increasi...
Bottleneck identification is of great interest in discrete manufacturing fields, as they limit the s...
AbstractBottleneck detection in manufacturing is the key to improving production efficiency and stab...
The digital transformation of manufacturing industries is expected to yield increased productivity. ...
Bottleneck detection in manufacturing is the key to improving production efficiency and stability in...
Bottlenecks within a production line significantly reduce the productivity. Quick and correct identi...
Data-driven bottleneck detection has received an increasing interest during the recent years. This a...
Improving production system performance is a constant need and a priority for manufacturers. Plannin...
Bottleneck detection is vital for improving production capacity or reducing production time. Many di...
The thesis work develops an automated, data-driven bottleneck detection procedure based on real-worl...