Optimization Models for Multiple Resource Planning

Norah Mohammed Z. Al-Dossari, M. Haouari, Mohamed Kharbeche
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Abstract

Multiple resource planning is a very crucial undertaking for most organizations. Apart from reducing operational complexity, multiple resource planning facilitates efficient allocation of resources, which reduces costs by minimizing the cost of tardiness and the cost for additional capacity. The current research investigates multiple resource loading problems (MRLP). MRLPs are very prevalent in today’s organizational environments and are particularly critical for organizations that handle concurrent, time-intensive, and multiple-resource projects. Using data obtained from the Ministry of Administrative Development, Labor and Social Affairs (ADLSA), a MRLP is proposed. The problem utilizes data regarding staff, time, equipment, and finance to ensure efficient resource allocation among competing projects. In particular, the research proposes a novel model and solution approach for the MRLP. Computational experiments are then performed on the model. The results show that the model performs well, even for higher instances. The positive results attest to the effectiveness of the proposed MRLP problem.
多资源规划的优化模型
对大多数组织来说,多重资源规划是一项非常重要的工作。除了降低操作复杂性外,多种资源规划还促进了资源的有效分配,从而通过最小化延迟成本和额外容量成本来降低成本。本文主要研究多资源加载问题(MRLP)。mrlp在当今的组织环境中非常普遍,对于处理并发的、时间密集的和多资源项目的组织来说尤其重要。利用从行政发展、劳动和社会事务部(ADLSA)获得的数据,提出了一个MRLP。该问题利用有关人员、时间、设备和财务的数据来确保在相互竞争的项目之间有效地分配资源。特别地,本研究提出了一个新的MRLP模型和解决方法。然后对该模型进行了计算实验。结果表明,即使对于更高的实例,该模型也表现良好。积极的结果证明了MRLP问题的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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