{"title":"通过项目交付方法对交通项目进行施工后评估,监督学习成本风险","authors":"Junseo Bae","doi":"10.1108/ecam-01-2024-0136","DOIUrl":null,"url":null,"abstract":"<h3>Purpose</h3>\n<p>The main objectives of this study are to (1) develop and test a cost contingency learning model that can generalize initially estimated contingency amounts by analyzing back the multiple project changes experienced and (2) uncover the hidden link of the learning networks using a curve-fitting technique for the post-construction evaluation of cost contingency amounts to cover cost risk for future projects.</p><!--/ Abstract__block -->\n<h3>Design/methodology/approach</h3>\n<p>Based on a total of 1,434 datapoints collected from DBB and DB transportation projects, a post-construction cost contingency learning model was developed using feedforward neural networks (FNNs). The developed model generalizes cost contingencies under two different project delivery methods (i.e. DBB and DB). The learning outputs of generalized contingency amounts were curve-fitted with the post-construction schedule and cost information, specifically aiming at uncovering the hidden link of the FNNs. Two different bridge projects completed under DBB and DB were employed as illustrative examples to demonstrate how the proposed modeling framework could be implemented.</p><!--/ Abstract__block -->\n<h3>Findings</h3>\n<p>With zero or negative values of change growth experienced, it was concluded that cost contingencies were overallocated at the contract stage. On the other hand, with positive values of change growth experienced, it was evaluated that set cost contingencies were insufficient from the post-construction standpoint. Taken together, this study proposed a tangible post-construction evaluation technique that can produce not only the plausible ranges of cost contingencies but also the exact amounts of contingency under DBB and DB contracts.</p><!--/ Abstract__block -->\n<h3>Originality/value</h3>\n<p>As the first of its kind, the proposed modeling framework provides agency engineers and decision-makers with tangible assessments of cost contingency coupled with experienced risks at the post-construction stage. Use of the proposed model will help them evaluate the allocation of appropriate contingency amounts. If an agency allocates a cost contingency benchmarked from similar projects on aspects of the base estimate and experienced risks, a set contingency can be defended more reliably. The main findings of this study contribute to post-construction cost contingency verification, enabling agency engineers and decision-makers to systematically evaluate set cost contingencies during the post-construction assessment stage and achieving further any enhanced level of confidence for future cost contingency plans.</p><!--/ Abstract__block -->","PeriodicalId":11888,"journal":{"name":"Engineering, Construction and Architectural Management","volume":"9 2 1","pages":""},"PeriodicalIF":3.6000,"publicationDate":"2024-06-25","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Supervised learning to covering cost risk through post-construction evaluation of transportation projects by project delivery methods\",\"authors\":\"Junseo Bae\",\"doi\":\"10.1108/ecam-01-2024-0136\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<h3>Purpose</h3>\\n<p>The main objectives of this study are to (1) develop and test a cost contingency learning model that can generalize initially estimated contingency amounts by analyzing back the multiple project changes experienced and (2) uncover the hidden link of the learning networks using a curve-fitting technique for the post-construction evaluation of cost contingency amounts to cover cost risk for future projects.</p><!--/ Abstract__block -->\\n<h3>Design/methodology/approach</h3>\\n<p>Based on a total of 1,434 datapoints collected from DBB and DB transportation projects, a post-construction cost contingency learning model was developed using feedforward neural networks (FNNs). 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引用次数: 0
摘要
目的本研究的主要目标是:(1) 开发和测试一个成本应急学习模型,该模型可以通过分析经历的多个项目变更来概括最初估算的应急金额;(2) 使用曲线拟合技术挖掘学习网络的隐藏环节,用于施工后评估成本应急金额,以应对未来项目的成本风险。设计/方法/途径基于从 DBB 和 DB 交通项目中收集的 1,434 个数据点,使用前馈神经网络(FNN)开发了一个施工后成本应急学习模型。所开发的模型对两种不同项目交付方法(即 DBB 和 DB)下的成本或有事项进行了归纳。通用应急金额的学习输出与施工后的进度和成本信息进行了曲线拟合,目的是揭示前馈神经网络的隐藏环节。两个不同的桥梁项目分别以 DBB 和 DB 模式完成,作为示例演示了如何实施所建议的建模框架。另一方面,如果变化增长值为正数,则从施工后的角度来看,所设定的成本应急款不足。综上所述,本研究提出了一种切实可行的施工后评估技术,该技术不仅可以得出成本意外开支的合理范围,还可以得出 DBB 和 DB 合同下意外开支的准确金额。使用建议的模型将有助于他们评估分配适当的意外开支金额。如果一个机构根据类似项目的基本估算和经验风险来分配成本应急款,就能更可靠地维护设定的应急款。本研究的主要结论有助于施工后成本应急验证,使机构工程师和决策者能够在施工后评估阶段系统地评估设定的成本应急,并进一步提高未来成本应急计划的可信度。
Supervised learning to covering cost risk through post-construction evaluation of transportation projects by project delivery methods
Purpose
The main objectives of this study are to (1) develop and test a cost contingency learning model that can generalize initially estimated contingency amounts by analyzing back the multiple project changes experienced and (2) uncover the hidden link of the learning networks using a curve-fitting technique for the post-construction evaluation of cost contingency amounts to cover cost risk for future projects.
Design/methodology/approach
Based on a total of 1,434 datapoints collected from DBB and DB transportation projects, a post-construction cost contingency learning model was developed using feedforward neural networks (FNNs). The developed model generalizes cost contingencies under two different project delivery methods (i.e. DBB and DB). The learning outputs of generalized contingency amounts were curve-fitted with the post-construction schedule and cost information, specifically aiming at uncovering the hidden link of the FNNs. Two different bridge projects completed under DBB and DB were employed as illustrative examples to demonstrate how the proposed modeling framework could be implemented.
Findings
With zero or negative values of change growth experienced, it was concluded that cost contingencies were overallocated at the contract stage. On the other hand, with positive values of change growth experienced, it was evaluated that set cost contingencies were insufficient from the post-construction standpoint. Taken together, this study proposed a tangible post-construction evaluation technique that can produce not only the plausible ranges of cost contingencies but also the exact amounts of contingency under DBB and DB contracts.
Originality/value
As the first of its kind, the proposed modeling framework provides agency engineers and decision-makers with tangible assessments of cost contingency coupled with experienced risks at the post-construction stage. Use of the proposed model will help them evaluate the allocation of appropriate contingency amounts. If an agency allocates a cost contingency benchmarked from similar projects on aspects of the base estimate and experienced risks, a set contingency can be defended more reliably. The main findings of this study contribute to post-construction cost contingency verification, enabling agency engineers and decision-makers to systematically evaluate set cost contingencies during the post-construction assessment stage and achieving further any enhanced level of confidence for future cost contingency plans.
期刊介绍:
ECAM publishes original peer-reviewed research papers, case studies, technical notes, book reviews, features, discussions and other contemporary articles that advance research and practice in engineering, construction and architectural management. In particular, ECAM seeks to advance integrated design and construction practices, project lifecycle management, and sustainable construction. The journal’s scope covers all aspects of architectural design, design management, construction/project management, engineering management of major infrastructure projects, and the operation and management of constructed facilities. ECAM also addresses the technological, process, economic/business, environmental/sustainability, political, and social/human developments that influence the construction project delivery process.
ECAM strives to establish strong theoretical and empirical debates in the above areas of engineering, architecture, and construction research. Papers should be heavily integrated with the existing and current body of knowledge within the field and develop explicit and novel contributions. Acknowledging the global character of the field, we welcome papers on regional studies but encourage authors to position the work within the broader international context by reviewing and comparing findings from their regional study with studies conducted in other regions or countries whenever possible.