Detailed manufacturing process data and sensor signals are typically disregarded in production scheduling. However, they have strong relations since a longer processing time triggers a change in schedule. Although promising approaches already exist for mapping the influence of manufacturing processes on production scheduling, the variability of the production environment, including changing process conditions, technological parameters and the status of current orders, is usually ignored. For this reason, this paper presents a novel, data-driven approach that adaptively refines the production schedule by applying Machine Learning (ML)-models during the manufacturing process in order to predict the process-dependent parameters that influence ...
Predictive maintenance (PM) algorithms are widely applied for detecting operational anomalies on ind...
In the production, the efficient employment of machines is realized as a source of industry competit...
Master's thesis in Industrial economics.Scheduling jobs in a manufacturing company that delivers cus...
Additive manufacturing (AM) is a promising manufacturing method for many industrial sectors. For thi...
In this paper, a machine-learning-assisted simulation approach for dynamic flow-shop production sche...
Part 5: Variety and Complexity Management in the Era of Industry 4.0International audienceAn increas...
Scheduling is a master key to succeed in the manufacturing companies in global competition. Better p...
This paper presents a Decision Support System (DSS) with inductive learning capability for model man...
Along with the fourth industrial revolution, different tools coming from optimization, Internet of T...
A common way of scheduling jobs dynamically in a manufacturing system is by means of dispatching rul...
This research aims to propose a framework for the integration of dynamic programming and machine lea...
Manufacturing lead time (LT) is often among the most important corporate performance indicators that...
Cyber-Physical Production Systems (CPPS) appeared already in recent manufacturing environments, and ...
In this thesis, various data mining methods are integrated to construct the on-line rescheduling sys...
Predictive maintenance employing machine learning techniques and big data analytics is a benefit to ...
Predictive maintenance (PM) algorithms are widely applied for detecting operational anomalies on ind...
In the production, the efficient employment of machines is realized as a source of industry competit...
Master's thesis in Industrial economics.Scheduling jobs in a manufacturing company that delivers cus...
Additive manufacturing (AM) is a promising manufacturing method for many industrial sectors. For thi...
In this paper, a machine-learning-assisted simulation approach for dynamic flow-shop production sche...
Part 5: Variety and Complexity Management in the Era of Industry 4.0International audienceAn increas...
Scheduling is a master key to succeed in the manufacturing companies in global competition. Better p...
This paper presents a Decision Support System (DSS) with inductive learning capability for model man...
Along with the fourth industrial revolution, different tools coming from optimization, Internet of T...
A common way of scheduling jobs dynamically in a manufacturing system is by means of dispatching rul...
This research aims to propose a framework for the integration of dynamic programming and machine lea...
Manufacturing lead time (LT) is often among the most important corporate performance indicators that...
Cyber-Physical Production Systems (CPPS) appeared already in recent manufacturing environments, and ...
In this thesis, various data mining methods are integrated to construct the on-line rescheduling sys...
Predictive maintenance employing machine learning techniques and big data analytics is a benefit to ...
Predictive maintenance (PM) algorithms are widely applied for detecting operational anomalies on ind...
In the production, the efficient employment of machines is realized as a source of industry competit...
Master's thesis in Industrial economics.Scheduling jobs in a manufacturing company that delivers cus...