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Autores principales: Yildirim, Suleyman, Murat, Alper Ekrem, Yildirim, Murat, Arslanturk, Suzan
Formato: Preprint
Publicado: 2020
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Acceso en línea:https://arxiv.org/abs/2005.05385
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author Yildirim, Suleyman
Murat, Alper Ekrem
Yildirim, Murat
Arslanturk, Suzan
author_facet Yildirim, Suleyman
Murat, Alper Ekrem
Yildirim, Murat
Arslanturk, Suzan
contents Initial development and subsequent calibration of discrete event simulation models for complex systems require accurate identification of dynamically changing process characteristics. Existing data driven change point methods (DD-CPD) assume changes are extraneous to the system, thus cannot utilize available process knowledge. This work proposes a unified framework for process-driven multi-variate change point detection (PD-CPD) by combining change point detection models with machine learning and process-driven simulation modeling. The PD-CPD, after initializing with DD-CPD's change point(s), uses simulation models to generate system level outputs as time-series data streams which are then used to train neural network models to predict system characteristics and change points. The accuracy of the predictive models measures the likelihood that the actual process data conforms to the simulated change points in system characteristics. PD-CPD iteratively optimizes change points by repeating simulation and predictive model building steps until the set of change point(s) with the maximum likelihood is identified. Using an emergency department case study, we show that PD-CPD significantly improves change point detection accuracy over DD-CPD estimates and is able to detect actual change points.
format Preprint
id arxiv_https___arxiv_org_abs_2005_05385
institution arXiv
publishDate 2020
record_format arxiv
spellingShingle Process Knowledge Driven Change Point Detection for Automated Calibration of Discrete Event Simulation Models Using Machine Learning
Yildirim, Suleyman
Murat, Alper Ekrem
Yildirim, Murat
Arslanturk, Suzan
Machine Learning
Systems and Control
Initial development and subsequent calibration of discrete event simulation models for complex systems require accurate identification of dynamically changing process characteristics. Existing data driven change point methods (DD-CPD) assume changes are extraneous to the system, thus cannot utilize available process knowledge. This work proposes a unified framework for process-driven multi-variate change point detection (PD-CPD) by combining change point detection models with machine learning and process-driven simulation modeling. The PD-CPD, after initializing with DD-CPD's change point(s), uses simulation models to generate system level outputs as time-series data streams which are then used to train neural network models to predict system characteristics and change points. The accuracy of the predictive models measures the likelihood that the actual process data conforms to the simulated change points in system characteristics. PD-CPD iteratively optimizes change points by repeating simulation and predictive model building steps until the set of change point(s) with the maximum likelihood is identified. Using an emergency department case study, we show that PD-CPD significantly improves change point detection accuracy over DD-CPD estimates and is able to detect actual change points.
title Process Knowledge Driven Change Point Detection for Automated Calibration of Discrete Event Simulation Models Using Machine Learning
topic Machine Learning
Systems and Control
url https://arxiv.org/abs/2005.05385