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Cyclic preference scheduling of nurses using a Lagrangian-based heuristic

机译:使用基于拉格朗日启发式算法的护士循环偏好调度

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This paper addresses the problem of developing cyclic schedules for nurses while taking into account the quality of individual rosters. In this context, quality is gauged by the absence of certain undesirable shift patterns. The problem is formulated as an integer program (IP) and then decomposed using Lagrangian relaxation. Two approaches were explored, the first based on the relaxation of the preference constraints and the second based on the relaxation of the demand constraints. A theoretical examination of the first approach indicated that it was not likely to yield good bounds. The second approach showed more promise and was subsequently used to develop a solution methodology that combined subgradient optimization, the bundle method, heuristics, and variable fixing. After the Lagrangian dual problem was solved, though, there was no obvious way to perform branch and bound when a duality gap existed between the lower bound and the best objective function value provided by an IP-based feasibility heuristic. This led to the introduction of a variable fixing scheme to speed convergence. The full algorithm was tested on data provided by a medium-size U.S. hospital. Computational results showed that in most cases, problem instances with up to 100 nurses and 20 rotational profiles could be solved to near-optimality in less than 20min.
机译:本文解决了在考虑个人花名册质量的同时制定护士周期性时间表的问题。在这种情况下,通过缺少某些不期望的换档模式来评估质量。该问题被公式化为整数程序(IP),然后使用拉格朗日松弛法进行分解。探索了两种方法,第一种基于放宽偏好约束,第二种基于放宽需求约束。对第一种方法的理论检验表明,它不太可能产生良好的界限。第二种方法显示出更大的希望,随后被用于开发结合了次梯度优化,bundle方法,启发式方法和变量固定的解决方案方法。但是,在解决了拉格朗日对偶问题之后,当基于IP的可行性试探法提供的下限和最佳目标函数值之间存在对偶间隙时,就没有明显的执行分支定界的方法。这导致引入可变固定方案以加速收敛。完整算法已在美国中型医院提供的数据上进行了测试。计算结果表明,在大多数情况下,可以在不到20分钟的时间内将具有多达100名护士和20个旋转轮廓的问题实例解决到接近最佳状态。

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