Article (Scientific journals)
Supervised-learning-based approximation method for multi-server queueing networks under different service disciplines with correlated interarrival and service times
Khayyati, Siamak; Tan, Barış
2022In International Journal of Production Research, 60 (17), p. 5176 - 5200
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Keywords :
machine learning; manufacturing systems; Queueing networks; sequence dependent systems; simulation; stochastic models; Approximation methods; Coefficient of variation; Complex production systems; Cycle-time distributions; Different services; Evaluation methods; Gaussian process regression; Performance measure; Strategy and Management; Management Science and Operations Research; Industrial and Manufacturing Engineering
Abstract :
[en] Developing efficient performance evaluation methods is important to design and control complex production systems effectively. We present an approximation method (SLQNA) to predict the performance measures of queueing networks composed of multi-server stations operating under different service disciplines with correlated interarrival and service times with merge, split, and batching blocks separated with infinite capacity buffers. SLQNA yields the mean, coefficient of variation, and first-lag autocorrelation of the inter-departure times and the distribution of the time spent in the block, referred as the cycle time at each block. The method generates the training data by simulating different blocks for different parameters and uses Gaussian Process Regression to predict the inter-departure time and the cycle time distribution characteristics of each block in isolation. The predictions obtained for one block are fed into the next block in the network. The cycle time distributions of the blocks are used to approximate the distribution of the total time spent in the network (total cycle time). This approach eliminates the need to generate new data and train new models for each given network. We present SLQNA as a versatile, accurate, and efficient method to evaluate the cycle time distribution and other performance measures in queueing networks.
Disciplines :
Production, distribution & supply chain management
Author, co-author :
Khayyati, Siamak  ;  Université de Liège - ULiège > HEC Liège Research > HEC Liège Research: Business Analytics & Supply Chain Mgmt ; College of Engineering, Koç University, Istanbul, Turkey
Tan, Barış ;  College of Administrative Sciences and Economics, College of Engineering, Koç University, Istanbul, Turkey
Language :
English
Title :
Supervised-learning-based approximation method for multi-server queueing networks under different service disciplines with correlated interarrival and service times
Publication date :
2022
Journal title :
International Journal of Production Research
ISSN :
0020-7543
eISSN :
1366-588X
Publisher :
Taylor and Francis Ltd.
Volume :
60
Issue :
17
Pages :
5176 - 5200
Peer reviewed :
Peer Reviewed verified by ORBi
Funders :
TÜBİTAK - Scientific and Technological Research Council of Turkey
Funding text :
Research leading to these results has received funding from the EU ECSEL Joint Undertaking [grant number 737459] (project Productive4.0) and from TUBITAK [grant number 217M145].
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