基于机器学习的临时交通控制成本分析

Yuhan Jiang, Sisi Han, Yong Bai
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引用次数: 2

摘要

在设计-投标-建造基础设施项目中,代理机构可能会对临时交通控制(TTC)项目采用一次性付款或单价,而其成本难以估计。本文介绍了基础设施项目中TTC项目成本与项目总成本和非TTC项目之间关系的机器学习模型的研究成果。具体而言,我们收集了163个基础设施项目的数据,分析了两个研究问题:第一,TTC项目与项目总成本和非TTC项目之间的关系;第二,TTC项目的支付方式与项目总成本和非TTC项目的关系。结果表明,所提出的前馈神经网络模型在分类任务上优于回归方法。它在确定TTC项目的成本占项目总成本的百分比范围方面有36%的准确性。此外,当项目总成本信息和主要非TTC项目信息已知时,所提出的模型在确定TTC项目的支付选项方面具有94%的准确率。通过本研究,可以自信地确定新建基础设施项目的TTC项目的支付方式,并且可以很容易地估计出TTC项目的成本占项目总成本的百分比范围,这有助于项目业主和代理机构评估承包商的投标质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning-Based Temporary Traffic Control Cost Analysis
In a design-bid-build infrastructural project, the agency may use a lump-sum, or unit-price for temporary traffic control (TTC) items, while their cost is hard to estimate. This paper presents the research results of developing a machine learning model of the relationship between the TTC items’ cost with the project total cost and non-TTC items in infrastructural projects. In detail, 163 infrastructural projects’ data were collected for analyzing two research questions: first, the relationship between the TTC items with the project total cost and non-TTC items; second, the relationship between the TTC items’ payment option with the project total cost and non-TTC items. The results showed that the proposed feed-forward neural network model outperforms regression methods on classification tasks. It has a 36% accuracy in determining the TTC items’ cost as a percentage range of project total cost. Additionally, the proposed model has 94% accuracy in determining the TTC items’ payment options, when the information of the project total cost and the major non-TTC items’ information are known. With this research, the TTC items’ payment option for a new infrastructural project could be confidently decided, and the TTC items’ cost could be easily estimated as percentage ranges of the project total cost, which helps project owners and agencies to evaluate the quality of contractors’ bids.
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