Application Research of Soft Computing Based on Machine Learning Production Scheduling

An efficient and flexible production system can contribute to production solutions. These advantages of flexibility and efficiency are a benefit for small series productions or for individual articles. The aim of this research was to produce a genetic production system schedule similar to the sustai...

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Veröffentlicht in:Processes 2022-03, Vol.10 (3), p.520
Hauptverfasser: Fülöp, Melinda Timea, Gubán, Miklós, Gubán, Ákos, Avornicului, Mihály
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container_issue 3
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container_title Processes
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creator Fülöp, Melinda Timea
Gubán, Miklós
Gubán, Ákos
Avornicului, Mihály
description An efficient and flexible production system can contribute to production solutions. These advantages of flexibility and efficiency are a benefit for small series productions or for individual articles. The aim of this research was to produce a genetic production system schedule similar to the sustainable production scheduling problem of a discrete product assembly plant, with more heterogeneous production lines, and controlled by one-time orders. First, we present a detailed mathematical model of the system under investigation. Then, we present the IT for a solution based on a soft calculation method. In connection with this model, a computer application was created that analyzed various versions of the model with several practical problems. The applicability of the method was analyzed with software specifically developed for this algorithm and was demonstrated on a practical example. The model handles the different products within an order, as well as their different versions. These were also considered in the solution. The solution of this model is applicable in practice, and offers solutions to better optimize production and reduce the costs of production and logistics. The developed software can not only be used for flexible production lines, but also for other problems in the supply chain that can be employed more widely (such as the problem of delivery scheduling) to which the elements of this model can be applied.
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subjects Algorithms
Assembly lines
Automation
Computer programs
Delivery scheduling
Genetic algorithms
Heuristic
Linear programming
Logistics
Machine learning
Mathematical models
Mathematical programming
Methods
Mutation
Optimization
Production lines
Production planning
Production scheduling
Schedules
Scheduling
Soft computing
Software
Supply chains
Sustainability
title Application Research of Soft Computing Based on Machine Learning Production Scheduling
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