Ant colony optimization with semi random initialization for nurse rostering problem

Said Achmad, Antoni Wibowo, Diana Diana
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引用次数: 3

Abstract

A nurse rostering problem is an NP-Hard problem that is difficult to solve during the complexity of the problem. Since good scheduling is the schedule that fulfilled the hard constraint and minimizes the violation of soft constraint, a lot of approaches is implemented to improve the quality of the schedule. This research proposed an improvement on ant colony optimization with semi-random initialization for nurse rostering problems. Semi-random initialization is applied to avoid violation of the hard constraint, and then the violation of soft constraint will be minimized using ant colony optimization. Semi-random initialization will improve the construction solution phase by assigning nurses directly to the shift that is related to the hard constraint, so the violation of hard constraint will be avoided from the beginning part. The scheduling process will complete by pheromone value by giving weight to the rest available shift during the ant colony optimization process. This proposed method is tested using a real-world problem taken from St. General Hospital Elisabeth. The objective function is formulated to minimize the violation of the constraints and balance nurse workload. The performance of the proposed method is examined by using different dimension problems, with the same number of ant and iteration. The proposed method is also compared to conventional ant colony optimization and genetic algorithm for performance comparison. The experiment result shows that the proposed method performs better with small to medium dimension problems. The semi-random initialization is a success to avoid violation of the hard constraint and minimize the objective value by about 24%. The proposed method gets the lowest objective value with 0,76 compared to conventional ant colony optimization with 124 and genetic algorithm with 1.
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护士值勤问题的半随机初始化蚁群优化
护士名册问题是NP-Hard问题,在问题的复杂性中难以解决。由于好的调度是在满足硬约束的同时最大限度地减少对软约束的违反,因此人们采用了许多方法来提高调度的质量。本文提出了一种改进的半随机初始化蚁群算法。采用半随机初始化方法避免对硬约束的违反,然后采用蚁群优化方法使对软约束的违反最小化。半随机初始化通过将护士直接分配到与硬约束相关的班次,改善了施工解决阶段,从一开始就避免了违反硬约束的情况。蚁群优化过程中,信息素值通过对剩余可用位移赋值来完成调度过程。这一建议的方法是测试使用从圣总医院伊丽莎白现实世界的问题。制定目标函数,最大限度地减少违反约束,平衡护士工作量。采用相同的蚁数和迭代数,对不同维数的问题进行了性能测试。并与传统蚁群算法和遗传算法进行了性能比较。实验结果表明,该方法对中小维问题有较好的处理效果。半随机初始化成功地避免了硬约束的违反,使目标值降低了约24%。与传统蚁群优化的124和遗传算法的1相比,该方法获得的目标值最低,为0.76。
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来源期刊
CiteScore
2.00
自引率
0.00%
发文量
19
审稿时长
16 weeks
期刊介绍: The International Journal for Simulation and Multidisciplinary Design Optimization is a peer-reviewed journal covering all aspects related to the simulation and multidisciplinary design optimization. It is devoted to publish original work related to advanced design methodologies, theoretical approaches, contemporary computers and their applications to different fields such as engineering software/hardware developments, science, computing techniques, aerospace, automobile, aeronautic, business, management, manufacturing,... etc. Front-edge research topics related to topology optimization, composite material design, numerical simulation of manufacturing process, advanced optimization algorithms, industrial applications of optimization methods are highly suggested. The scope includes, but is not limited to original research contributions, reviews in the following topics: Parameter identification & Surface Response (all aspects of characterization and modeling of materials and structural behaviors, Artificial Neural Network, Parametric Programming, approximation methods,…etc.) Optimization Strategies (optimization methods that involve heuristic or Mathematics approaches, Control Theory, Linear & Nonlinear Programming, Stochastic Programming, Discrete & Dynamic Programming, Operational Research, Algorithms in Optimization based on nature behaviors,….etc.) Structural Optimization (sizing, shape and topology optimizations with or without external constraints for materials and structures) Dynamic and Vibration (cover modelling and simulation for dynamic and vibration analysis, shape and topology optimizations with or without external constraints for materials and structures) Industrial Applications (Applications Related to Optimization, Modelling for Engineering applications are very welcome. Authors should underline the technological, numerical or integration of the mentioned scopes.).
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