
TL;DR
This paper develops a family of genetic algorithms tailored for complex nurse rostering problems, incorporating constraints, preferences, and fairness considerations to generate effective schedules in a hospital setting.
Contribution
It introduces modified genetic algorithms that handle constraints and soft preferences, improving nurse scheduling solutions over traditional methods.
Findings
Genetic algorithms can effectively generate nurse schedules considering multiple constraints.
Parameter tuning and local search improve schedule quality.
The approach balances demand fulfillment with nurses' preferences and fairness.
Abstract
In recent years genetic algorithms have emerged as a useful tool for the heuristic solution of complex discrete optimisation problems. In particular there has been considerable interest in their use in tackling problems arising in the areas of scheduling and timetabling. However, the classical genetic algorithm paradigm is not well equipped to handle constraints and successful implementations usually require some sort of modification to enable the search to exploit problem specific knowledge in order to overcome this shortcoming. This paper is concerned with the development of a family of genetic algorithms for the solution of a nurse rostering problem at a major UK hospital. The hospital is made up of wards of up to 30 nurses. Each ward has its own group of nurses whose shifts have to be scheduled on a weekly basis. In addition to fulfilling the minimum demand for staff over three…
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