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Nurse Scheduling by Cooperative GA with Effective Mutation Operator

机译:联合遗传算法和有效变异算子对护士进行调度

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In this paper, we propose an effective mutation operators for Cooperative Genetic Algorithm (CGA) to be applied to a practical Nurse Scheduling Problem (NSP). The nurse scheduling is a very difficult task, because NSP is a complex combinatorial optimizing problem for which many requirements must be considered. In real hospitals, the schedule changes frequently. The changes of the shift schedule yields various problems, for example, a fall in the nursing level. We describe a technique of the reoptimization of the nurse schedule in response to a change. The conventional CGA is superior in ability for local search by means of its crossover operator, but often stagnates at the unfavorable situation because it is inferior to ability for global search. When the optimization stagnates for long generation cycle, a searching point, population in this case, would be caught in a wide local minimum area. To escape such local minimum area, small change in a population should be required. Based on such consideration, we propose a mutation operator activated depending on the optimization speed. When the optimization stagnates, in other words, when the optimization speed decreases, the mutation yields small changes in the population. Then the population is able to escape from a local minimum area by means of the mutation. However, this mutation operator requires two well-denned parameters. This means that user have to consider the value of these parameters carefully. To solve this problem, we propose a periodic mutation operator which has only one parameter to define itself. This simplified mutation operator is effective over a wide range of the parameter value.
机译:在本文中,我们为合作遗传算法(CGA)提出了一种有效的变异算子,可应用于实际的护士调度问题(NSP)。护士调度是一项非常困难的任务,因为NSP是一个复杂的组合优化问题,必须考虑许多要求。在实际医院中,时间表经常更改。轮班时间表的变化会产生各种问题,例如护理水平下降。我们描述了一种响应变化而重新优化护士计划的技术。传统的CGA通过其交叉算子在本地搜索方面具有优越的性能,但由于不利于全局搜索,因此经常停滞在不利的情况下。当优化停滞较长的生成周期时,搜索点(在这种情况下为种群)将被捕获在较宽的局部最小区域中。为了逃避这样的局部最小面积,应该要求人口的微小变化。基于这样的考虑,我们建议根据优化速度激活的变异算子。当优化停滞时,换句话说,当优化速度降低时,突变会在总体中产生小的变化。然后,种群能够通过突变逃离局部最小区域。但是,此变异算子需要两个明确定义的参数。这意味着用户必须仔细考虑这些参数的值。为了解决这个问题,我们提出了一个周期变异算子,它只有一个参数来定义自己。这种简化的变异算子在很大的参数值范围内都是有效的。

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