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Articles

Solving a multiple-qualifications physician scheduling problem with multiple types of tasks by dynamic programming and variable neighborhood search

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Pages 2043-2058 | Received 30 Apr 2020, Accepted 05 Jul 2021, Published online: 12 Aug 2021
 

Abstract

This article investigates a novel physician scheduling problem. Different types of tasks can be performed by physicians with certain qualifications. Tasks have different properties depending on their types, lengths, and starting times. Physicians performing tasks can yield different values of benefit and cost according to their qualifications and the task property. The objective is to maximise the sum of profit (i.e., benefit minus cost). For solving the studied problem, three layer-progressive processes are proposed and corresponding solution strategies are developed for them respectively. A Variable Neighbourhood Search is applied in the first-layer process to assign a certain qualification of physicians to each task property. The problem is then decomposed into scheduling physicians of single qualification as the second-layer process. On this layer, a heuristic incorporating a Dynamic Programming algorithm is developed to generate a task property list for each qualification of physicians to guarantee the optimum of the solutions. The Dynamic Programming algorithm is applied on the third-layer process to get the task property list for a physician. In the computational experiments, the proposed approach is compared with three meta-heuristic algorithms and Gurobi. The results show that the proposed approach outperforms other compared algorithms.

Disclosure statement

No author associated with this article has disclosed any potential or pertinent conflicts which may be perceived to have impending conflict with this work.

Additional information

Funding

This work is supported by the National Natural Science Foundation of China (Nos. 72071057, 71922009), the Basic scientific research Projects in central colleges and Universities (JZ2018HGTB0232), and Innovative Research Groups of the National Natural Science Foundation of China (71521001). P.M. Pardalos is supported by a Humboldt Research Award (Germany).

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