Scheduling in a semiconductor back-end factory is an extremely sophisticated and complex task. In semiconductor industry, more often than not, the scheduling of maintenance is underexposed to production scheduling. This is a missed opportunity as maintenance and production activities are deeply intertwined. This study considers the dynamic scheduling of maintenance activities on an assembly line. A policy is constructed to schedule a cleaning activity on the last machine of an assembly line such that the average production rate is maximized. The policy takes into account the given flexibility and the buffer content of the buffers in-between the machines in the assembly line. A Markov Decision Process is formulated for the problem and solved...
In this paper, we focus on the problem of optimally scheduling a closed reentrant system with one ty...
Discovering the optimal maintenance planning strategy can have a substantial impact on production ef...
This paper proposes a predictive maintenance methodology for a machine in manufacturing with deterio...
Scheduling in a semiconductor back-end factory is an extremely sophisticated and complex task. In se...
The primary goal for this research is to obtain the optimal or near-optimal joint production and mai...
The Assembly-to-order production strategy is widely used to fulfill the growing demand for customiza...
Recently, manufacturing companies have been making efforts to increase resource utilization while en...
In recent years, the public has been paying ever greater attention to problems related to resilience...
Part 7: Knowledge Based Production Planning and ControlInternational audienceThe stocker system is t...
With the rapid development of Industrial 4.0, the modern manufacturing system has been experiencing ...
This research aims to propose a framework for the integration of dynamic programming and machine lea...
An intelligent agent-based scheduling system, consisting of a reinforcement learning agent and a sim...
We present a maintenance scheduling problem arising from semi-conductor manufacturing which is chara...
Decision-making in a complex, dynamic, interconnected, and data-intensive industrial environment can...
This paper focuses on a preventive maintenance plan and production scheduling problem under reentran...
In this paper, we focus on the problem of optimally scheduling a closed reentrant system with one ty...
Discovering the optimal maintenance planning strategy can have a substantial impact on production ef...
This paper proposes a predictive maintenance methodology for a machine in manufacturing with deterio...
Scheduling in a semiconductor back-end factory is an extremely sophisticated and complex task. In se...
The primary goal for this research is to obtain the optimal or near-optimal joint production and mai...
The Assembly-to-order production strategy is widely used to fulfill the growing demand for customiza...
Recently, manufacturing companies have been making efforts to increase resource utilization while en...
In recent years, the public has been paying ever greater attention to problems related to resilience...
Part 7: Knowledge Based Production Planning and ControlInternational audienceThe stocker system is t...
With the rapid development of Industrial 4.0, the modern manufacturing system has been experiencing ...
This research aims to propose a framework for the integration of dynamic programming and machine lea...
An intelligent agent-based scheduling system, consisting of a reinforcement learning agent and a sim...
We present a maintenance scheduling problem arising from semi-conductor manufacturing which is chara...
Decision-making in a complex, dynamic, interconnected, and data-intensive industrial environment can...
This paper focuses on a preventive maintenance plan and production scheduling problem under reentran...
In this paper, we focus on the problem of optimally scheduling a closed reentrant system with one ty...
Discovering the optimal maintenance planning strategy can have a substantial impact on production ef...
This paper proposes a predictive maintenance methodology for a machine in manufacturing with deterio...