The objective of this study is to develop a neural network based decision support system for selection of appropriate dispatching rules for a real-time manufacturing system, in order to obtain the desired performance measures given by a user, at different scheduling periods. A simulation experiment is integrated with a neural network to obtain the multi-objective scheduler, where simulation is used to provide the training data. The proposed methodology is illustrated on a flexible manufacturing system (FMS) which consists of several number of machines and jobs, loading/unloading stations and automated guided vehicles (AGVs) to transport jobs from one location to another
This paper describes an intelligent fuzzy decision support system for real-time scheduling and dispa...
The competitive manufacturing global scenario today needs multi-job, multi-machine and multi criteri...
Simulation is one of the most effective methods in the Design of Manufacturing Systems (MS). Typical...
The objective of this study is to develop a neural network based decision support system for selecti...
When there is a production system With excess capacity, i.e. more capacity than the demand for the f...
Flexible manufacturing system (FMS) scheduling is a complex problem in nature that leads to a high l...
This paper presents a Decision Support System (DSS) with inductive learning capability for model man...
Dispatching rules are usually applied to schedule jobs in Flexible Manufacturing Systems (FMSs) dyna...
The research using artificial intelligence and computer simulation introduces a new approach for sol...
Despite the existence of hardware suitable for the development of advanced automated manufacturing s...
Scheduling in a job-shop system is a challenging task. Simulation modelling is a well-known approach...
Summarization: Introduction -- 2. Survey of methods for production scheduling -- 3. Non-linear adap...
This paper presents the use of Neural Networks (NN) for transmission time scheduling for the Network...
Semiconductor wafer fabrication involves perhaps the most complex manufacturing process ever used. T...
There is considerable research in decision making for the flexible manufacturing systems (FMS) domai...
This paper describes an intelligent fuzzy decision support system for real-time scheduling and dispa...
The competitive manufacturing global scenario today needs multi-job, multi-machine and multi criteri...
Simulation is one of the most effective methods in the Design of Manufacturing Systems (MS). Typical...
The objective of this study is to develop a neural network based decision support system for selecti...
When there is a production system With excess capacity, i.e. more capacity than the demand for the f...
Flexible manufacturing system (FMS) scheduling is a complex problem in nature that leads to a high l...
This paper presents a Decision Support System (DSS) with inductive learning capability for model man...
Dispatching rules are usually applied to schedule jobs in Flexible Manufacturing Systems (FMSs) dyna...
The research using artificial intelligence and computer simulation introduces a new approach for sol...
Despite the existence of hardware suitable for the development of advanced automated manufacturing s...
Scheduling in a job-shop system is a challenging task. Simulation modelling is a well-known approach...
Summarization: Introduction -- 2. Survey of methods for production scheduling -- 3. Non-linear adap...
This paper presents the use of Neural Networks (NN) for transmission time scheduling for the Network...
Semiconductor wafer fabrication involves perhaps the most complex manufacturing process ever used. T...
There is considerable research in decision making for the flexible manufacturing systems (FMS) domai...
This paper describes an intelligent fuzzy decision support system for real-time scheduling and dispa...
The competitive manufacturing global scenario today needs multi-job, multi-machine and multi criteri...
Simulation is one of the most effective methods in the Design of Manufacturing Systems (MS). Typical...