TY - GEN
T1 - A staff utilisation-resource simulation model
T2 - 8th European Conference on Information Management and Evaluation, ECIME 2014
AU - O'Donoghue, John
AU - O'Connor, Yvonne
AU - Zarabzadeh, Atieh
AU - Adam, Frederic
AU - McCarthy, J. B.
N1 - Publisher Copyright:
© The Authors, 2014. All Rights Reserved.
PY - 2014
Y1 - 2014
N2 - Within a retail environment the scheduling of staff to accommodate the dynamic nature of customer throughput is of utmost importance. However, in outlets that face unpredictable patterns of customer activity, suboptimal staff schedules are a common occurrence. This event adversely affects the staffing rota, service time, and queue length thereby affecting the level of customer satisfaction. At present the vast majority of retail environments make use of a number of estimation techniques based on past experiences and historical data, sometimes supported by the ad-hoc observation of customer throughput. However, the lack of pervasive monitoring technologies may hide weaknesses within current staffing rotas and standard service times. A Decision Support System (DSS) with a real-time data logging architecture, referred to as the Staff Utilisation-Resource Simulation Model (SU-RSM) is the subject of this paper. The SU-RSM is designed to assist retail managers in assessing the efficiency of their staffing rotas to a high degree of granularity. In this paper, design, implementation and evaluation of SU-RSM in a single retail bank is presented. This research offers the opportunity to perform a back-to-back comparison between the existing paper-based estimation models used in the bank and the SURSM. Findings provided in this paper reveal a lack of awareness on the actual customer flow by managers and staff, and as a result a suboptimal allocation of resources within the branch. This knowledge gap provides a strong justification for the use of real-time data logging technologies combined with a simulation model (i.e. DSS). Such an approach will assist retail mangers in achieving near optimal staff resource allocation.
AB - Within a retail environment the scheduling of staff to accommodate the dynamic nature of customer throughput is of utmost importance. However, in outlets that face unpredictable patterns of customer activity, suboptimal staff schedules are a common occurrence. This event adversely affects the staffing rota, service time, and queue length thereby affecting the level of customer satisfaction. At present the vast majority of retail environments make use of a number of estimation techniques based on past experiences and historical data, sometimes supported by the ad-hoc observation of customer throughput. However, the lack of pervasive monitoring technologies may hide weaknesses within current staffing rotas and standard service times. A Decision Support System (DSS) with a real-time data logging architecture, referred to as the Staff Utilisation-Resource Simulation Model (SU-RSM) is the subject of this paper. The SU-RSM is designed to assist retail managers in assessing the efficiency of their staffing rotas to a high degree of granularity. In this paper, design, implementation and evaluation of SU-RSM in a single retail bank is presented. This research offers the opportunity to perform a back-to-back comparison between the existing paper-based estimation models used in the bank and the SURSM. Findings provided in this paper reveal a lack of awareness on the actual customer flow by managers and staff, and as a result a suboptimal allocation of resources within the branch. This knowledge gap provides a strong justification for the use of real-time data logging technologies combined with a simulation model (i.e. DSS). Such an approach will assist retail mangers in achieving near optimal staff resource allocation.
KW - Customer simulation model
KW - Decision support system
KW - Utilisation of resources
UR - http://www.scopus.com/inward/record.url?scp=84942156023&partnerID=8YFLogxK
M3 - Conference contribution
AN - SCOPUS:84942156023
T3 - Proceedings of the 8th European Conference on Information Management and Evaluation, ECIME 2014
SP - 181
EP - 189
BT - Proceedings of the 8th European Conference on Information Management and Evaluation, ECIME 2014
A2 - De Haes, Steven
A2 - Devos, Jan
A2 - Devos, Jan
PB - Academic Conferences and Publishing International Limited
Y2 - 11 September 2014 through 12 September 2014
ER -