Resource planning in the emergency departments: A simulation-based metamodeling approach
暂无分享,去创建一个
[1] Fred W. Glover,et al. Simulation optimization: a review, new developments, and applications , 2005, Proceedings of the Winter Simulation Conference, 2005..
[2] Jack P. C. Kleijnen,et al. A Comment on Blanning's “Metamodel for Sensitivity Analysis: The Regression Metamodel in Simulation” , 1975 .
[3] Russell R. Barton,et al. Chapter 18 Metamodel-Based Simulation Optimization , 2006, Simulation.
[4] Ken R. McNaught,et al. A comparison of experimental designs in the development of a neural network simulation metamodel , 2004, Simul. Model. Pract. Theory.
[5] Timothy W. Simpson,et al. Metamodels for Computer-based Engineering Design: Survey and recommendations , 2001, Engineering with Computers.
[6] Avraham Shtub,et al. Toward simulation-based real-time decision-support systems for emergency departments , 2009, Proceedings of the 2009 Winter Simulation Conference (WSC).
[7] G. Jelinek,et al. The association between hospital overcrowding and mortality among patients admitted via Western Australian emergency departments , 2006, The Medical journal of Australia.
[8] José A. Sepúlveda,et al. Multi-objective simulation optimization for a cancer treatment center , 2001, Proceeding of the 2001 Winter Simulation Conference (Cat. No.01CH37304).
[9] Randall P. Sadowski,et al. Simulation with Arena , 1998 .
[10] Andy J. Keane,et al. Engineering Design via Surrogate Modelling - A Practical Guide , 2008 .
[11] Pnina Vortman,et al. InEDvance: Advanced IT in Support of Emergency Department Management , 2009, NGITS.
[12] Russell R. Barton,et al. A review on design, modeling and applications of computer experiments , 2006 .
[13] Humberto Rocha,et al. On the selection of the most adequate radial basis function , 2009 .
[14] G. Box,et al. On the Experimental Attainment of Optimum Conditions , 1951 .
[15] Frank Zilm,et al. New Directions in Emergency Service Operations and Planning , 2010, The Journal of ambulatory care management.
[16] Jack P. C. Kleijnen,et al. An Overview of the Design and Analysis of Simulation Experiments for Sensitivity Analysis , 2005, Eur. J. Oper. Res..
[17] K. Preston White,et al. Using RFID Technologies to Capture Simulation Data in a Hospital Emergency Department , 2006, Proceedings of the 2006 Winter Simulation Conference.
[18] Sally C. Brailsford,et al. Advances and challenges in healthcare simulation modeling: tutorial , 2007, WSC.
[19] Jack P. C. Kleijnen,et al. EUROPEAN JOURNAL OF OPERATIONAL , 1992 .
[20] Madhu C. Reddy,et al. A Systematic Review of Simulation Studies Investigating Emergency Department Overcrowding , 2010, Simul..
[21] Elizabeth H Bradley,et al. US emergency department performance on wait time and length of visit. , 2010, Annals of emergency medicine.
[22] Peter J. Kolesar,et al. Improving the Sipp Approach for Staffing Service Systems That Have Cyclic Demands , 2001, Oper. Res..
[23] Pnina Vortman,et al. Simulation-based models of emergency departments:: Operational, tactical, and strategic staffing , 2011, TOMC.
[24] Yariv N. Marmor,et al. Emergency department operations: The basis for developing a simulation tool , 2005 .
[25] Jack P. C. Kleijnen,et al. Optimization of simulated systems: OptQuest and alternatives , 2007, Simul. Model. Pract. Theory.
[26] Cathal Heavey,et al. Comparison of experimental designs for simulation-based symbolic regression of manufacturing systems , 2011, Comput. Ind. Eng..
[27] S. Trzeciak,et al. Emergency department overcrowding in the United States: an emerging threat to patient safety and public health , 2003, Emergency medicine journal : EMJ.
[28] Ana Paula Cabral Seixas Costa,et al. Improving decision-making and management of hospital resources: An application of the PROMETHEE II method in an Emergency Department , 2014 .
[29] Emilio Luque,et al. Optimization of Healthcare Emergency Departments by Agent-Based Simulation , 2011, ICCS.
[30] Min Xie,et al. A systematic comparison of metamodeling techniques for simulation optimization in Decision Support Systems , 2010, Appl. Soft Comput..
[31] Feng Yang,et al. Neural network metamodeling for cycle time-throughput profiles in manufacturing , 2010, Eur. J. Oper. Res..
[32] Fulya Altiparmak,et al. Buffer allocation and performance modeling in asynchronous assembly system operations: An artificial neural network metamodeling approach , 2007, Appl. Soft Comput..
[33] Eric W Nawar,et al. National Hospital Ambulatory Medical Care Survey: 2005 emergency department summary. , 2007, Advance data.
[34] Sanjay B. Joshi,et al. Metamodeling: Radial basis functions, versus polynomials , 2002, Eur. J. Oper. Res..
[35] T. Simpson,et al. Computationally Inexpensive Metamodel Assessment Strategies , 2002 .
[36] Jack P. C. Kleijnen,et al. Robust Optimization in Simulation: Taguchi and Response Surface Methodology , 2008 .
[37] David A Thompson,et al. Five-level triage: a report from the ACEP/ENA Five-level Triage Task Force. , 2005, Journal of emergency nursing: JEN : official publication of the Emergency Department Nurses Association.
[38] Talal M. Alkhamis,et al. Simulation optimization for an emergency department healthcare unit in Kuwait , 2009, Eur. J. Oper. Res..
[39] Jack P. C. Kleijnen,et al. A methodology for fitting and validating metamodels in simulation , 2000, Eur. J. Oper. Res..
[40] Abbas Al-Refaie,et al. Applying simulation and DEA to improve performance of emergency department in a Jordanian hospital , 2014, Simul. Model. Pract. Theory.
[41] In-Jeong Chung,et al. A real time process management system using RFID data mining , 2014, Comput. Ind..
[42] D. Aronsky,et al. Systematic review of emergency department crowding: causes, effects, and solutions. , 2008, Annals of emergency medicine.
[43] Clark A. Mount-Campbell,et al. Process optimization via neural network metamodeling , 2002 .
[44] Shih-Cheng Horng,et al. Evolutionary algorithm assisted by surrogate model in the framework of ordinal optimization and optimal computing budget allocation , 2013, Inf. Sci..
[45] Mustafa Y. Sir,et al. Multi-objective simulation optimization using data envelopment analysis and genetic algorithm: Specific application to determining optimal resource levels in surgical services , 2013 .