2 research outputs found

    Progress control in iterated local search for nurse rostering

    Get PDF
    This paper describes an approach in which a local search technique is alternated with a process which ā€˜jumpsā€™ to another point in the search space. After each ā€˜jumpā€™ a (time-intensive) local search is used to obtain a new local optimum. The focus of the paper is in monitoring the progress of this technique on a set of real world nurse rostering problems. We propose a model for estimating the quality of this new local optimum. We can then decide whether to end the local search based on the predicted quality. The fact that we avoid searching these bad neighbourhoods enables us to reach better solutions in the same amount of time. We evaluate the approach on five highly constrained problems in nurse rostering. These problems represent complex and challenging real world rostering situations and the approach described here has been developed during a commercial implementation project by ORTEC bv
    corecore