Article ID Journal Published Year Pages File Type
476908 European Journal of Operational Research 2012 12 Pages PDF
Abstract

We consider a problem where different classes of customers can book different types of service in advance and the service company has to respond immediately to the booking request confirming or rejecting it. The objective of the service company is to maximize profit made of class-type specific revenues, refunds for cancellations or no-shows as well as cost of overtime. For the calculation of the latter, information on the underlying appointment schedule is required. In contrast to most models in the literature we assume that the service time of clients is stochastic and that clients might be unpunctual. Throughout the paper we will relate the problem to capacity allocation in radiology services. The problem is modeled as a continuous-time Markov decision process and solved using simulation-based approximate dynamic programming (ADP) combined with a discrete event simulation of the service period. We employ an adapted heuristic ADP algorithm from the literature and investigate on the benefits of applying ADP to this type of problem. First, we study a simplified problem with deterministic service times and punctual arrival of clients and compare the solution from the ADP algorithm to the optimal solution. We find that the heuristic ADP algorithm performs very well in terms of objective function value, solution time, and memory requirements. Second, we study the problem with stochastic service times and unpunctuality. It is then shown that the resulting policy constitutes a large improvement over an “optimal” policy that is deduced using restrictive, simplifying assumptions.

► Presentation of a model for capacity allocation in service industries. ► The model takes into account the sequential delivery of appointment-based services. ► Consideration of stochastic service times, cancellations and no-shows. ► Application of a simulation-based approximate dynamic programming (ADP) algorithm. ► Experimental investigation using data from the radiological department of a hospital.

Related Topics
Physical Sciences and Engineering Computer Science Computer Science (General)
Authors
, ,