A decision support system for demand and capacity modelling of an accident and emergency department
Accident and emergency (A&E) departments in England have been struggling against severe capacity constraints. In addition, A&E demands have been increasing year on year. In this study, our aim was to develop a decision support system combining discrete event simulation and comparative forecasting techniques for the better management of the Princess Alexandra Hospital in England. We used the national hospital episodes statistics data-set including period April, 2009 – January, 2013. Two demand conditions are considered: the expected demand condition is based on A&E demands estimated by comparing forecasting methods, and the unexpected demand is based on the closure of a nearby A&E department due to budgeting constraints. We developed a discrete event simulation model to measure a number of key performance metrics. This paper presents a crucial study which will enable service managers and directors of hospitals to foresee their activities in future and form a strategic plan well in advance.
Item Type | Article |
---|---|
Additional information | © 2019 Operational Research Society. |
Keywords | demand and capacity modelling, discrete event simulation, forecasting, accident and emergency department, decision support system, health care, health care, health information management, health policy, health informatics, computer science applications |
Date Deposited | 15 May 2025 13:59 |
Last Modified | 04 Jun 2025 17:09 |
-
picture_as_pdf - Health_Systems_Ordu_et_al_2019.pdf
-
subject - Submitted Version
- ['licenses_description_other' not defined]
- Available under ['licenses_typename_other' not defined]