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A matheuristic approach to the integration of worker assignment and vehicle routing problems: Application to home healthcare scheduling

机译:整合工人分配和车辆路径问题的数学方法:在家庭医疗保健调度中的应用

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摘要

To model a home health care planning problem by classical VRP and AP formulation, the dimensions of the problem are: 1. The staff, 2. The patients, 3. The routes (sequence of the patients for each staff member). In this study, we present an extension of the home health care planning problem by adding the extra dimension of time so that the staff are not only assigned to the patients, but they are also assigned to daily periods. The scope of the planning problem extends to multiple days in which the patient required services vary from one day to another. Hence, the problem concerns a sequence of schedules (one schedule for each day) for the staff members. This variant of the home health care planning problem is modeled mathematically by employing the sequencing generalized assignment formulation and solved by applying the Gurobi mixed-integer solver. Considering that the studied combinatorial optimization is NP-complete, a matheuristic approach based on the decomposition of the formulation is proposed in this research to simplify the mathematical model and reduce the computational time needed to solve the problem. The numerical experiences and statistical analysis show that our matheuristic approach solves 90% of the instances to optimality with a significant reduction in the computational times. (C)2019 Elsevier Ltd. All rights reserved.
机译:为了通过经典的VRP和AP公式对家庭医疗保健规划问题进行建模,问题的维度为:1.员工2.患者,3.路线(每个员工的患者顺序)。在这项研究中,我们通过增加额外的时间维度来提出家庭医疗保健计划问题的扩展,这样不仅可以将员工分配给患者,还可以将他们分配给每天。计划问题的范围延伸到多天,其中患者所需的服务一天到一天都不一样。因此,问题涉及工作人员的时间表安排(每天一个时间表)。家庭卫生保健计划问题的这种变体通过采用序列化广义分配公式进行数学建模,并通过应用Gurobi混合整数求解器进行求解。考虑到所研究的组合优化是NP完全的,本研究提出了一种基于配方分解的数学方法,以简化数学模型并减少解决问题所需的计算时间。数值经验和统计分析表明,我们的数学方法可将90%的实例求解为最优,同时大大减少了计算时间。 (C)2019 Elsevier Ltd.保留所有权利。

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