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An efficient claim management assurance utilizing monarch butterfly optimization approach based EPC model

机译:一种利用基于帝王蝶的EPC模型的高效索赔管理保证

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The Engineering Procurement Construction (EPC) contract frameworks have been broadly used to play out various developments works by the private sector. The aim of the study is to reduce the claim issues such as time and cost and increase the profizility and productivity one of the popular and important construction models is EPC that incorporates work among construction, procurement, and engineering in the single contract. Engineering Procurement Construction (EPC) utilizes the project's structure of contract systems. Based on large-scale infrastructure projects, the EPC contract models are utilized with a private zone to execute the construction work. This study proposes the methodology is Monarch Butterfly Optimization (MBO) algorithm-based claim management system via the EPC mechanism. The time and cost are the major objective functions to be solved in this paper. The construction techniques and design substitutes in which it satisfies the minimum requirements of the Engineer. Thereafter, the final decision is made with the project manager views the document via cost and time. The experimental analysis for the EPC approach is reviewed in terms of utilizing the risk level classification. By using the MBO algorithm to minimizes the cost and time for the EPC construction process. The claim management problems are effectively analyzed in the result section.
机译:工程采购建设(EPC)合同框架已广泛用于发挥私营部门的各种发展。该研究的目的是减少索赔问题,如时间和成本,增加了流行的和重要施工模型之一的专业性和生产力是EPC,它在单一合同中融入了建筑,采购和工程之间的工作。工程采购建设(EPC)利用该项目的合同系统结构。基于大规模基础设施项目,EPC合同模型用于私人区域来执行施工工作。本研究提出了通过EPC机制的帝王蝶形优化(MBO)索引管理系统的方法。时间和成本是本文中的主要目标职能。施工技术和设计替代品,其满足工程师的最低要求。此后,使用成本和时间使用项目管理器进行最终决定。利用风险级别分类审查了EPC方法的实验分析。通过使用MBO算法来最小化EPC施工过程的成本和时间。在结果部分中有效地分析了索赔管理问题。

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