Forecasting Right-of-Way (ROW) acquisition timeline of transportation projects

IF 1.9 Q3 ENGINEERING, CIVIL
Shiqin Zeng, Frederick Chung, B. Ashuri
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引用次数: 0

Abstract

PurposeCompleting Right-of-Way (ROW) acquisition process on schedule is critical to avoid delays and cost overruns on transportation projects. However, transportation agencies face challenges in accurately forecasting ROW acquisition timelines in the early stage of projects due to complex nature of acquisition process and limited design information. There is a need of improving accuracy of estimating ROW acquisition duration during the early phase of project development and quantitatively identifying risk factors affecting the duration.Design/methodology/approachThe quantitative research methodology used to develop the forecasting model includes an ensemble algorithm based on decision tree and adaptive boosting techniques. A dataset of Georgia Department of Transportation projects held from 2010 to 2019 is utilized to demonstrate building the forecasting model. Furthermore, sensitivity analysis is performed to identify critical drivers of ROW acquisition durations.FindingsThe forecasting model developed in this research achieves a high accuracy to predict ROW durations by explaining 74% of the variance in ROW acquisition durations using project features, which is outperforming single regression tree, multiple linear regression and support vector machine. Moreover, number of parcels, average cost estimation per parcel, length of projects, number of condemnations, number of relocations and type of work are found to be influential factors as drivers of ROW acquisition duration.Originality/value This research contributes to the state of knowledge in estimating ROW acquisition timeline through (1) developing a novel machine learning model to accurately estimate ROW acquisition timelines, and (2) identifying drivers (i.e. risk factors) of ROW acquisition durations. The findings of this research will provide transportation agencies with insights on how to improve practices in scheduling ROW acquisition process.
预测交通项目的路权(ROW)获取时间表
目的按时完成路权(ROW)获取过程对于避免交通项目的延误和成本超支至关重要。然而,由于征用过程的复杂性和设计信息的有限性,交通机构在项目初期准确预测路权征用时间方面面临挑战。因此,有必要在项目开发的早期阶段提高估算 ROW 获取工期的准确性,并定量识别影响工期的风险因素。 设计/方法/途径 用于开发预测模型的定量研究方法包括基于决策树和自适应提升技术的集合算法。佐治亚州交通部 2010 年至 2019 年的项目数据集用于演示预测模型的建立。研究结果本研究开发的预测模型利用项目特征解释了 74% 的路权征用工期差异,预测路权征用工期的准确率很高,优于单一回归树、多元线性回归和支持向量机。此外,还发现地块数量、每个地块的平均成本估算、项目长度、征用数量、搬迁数量和工程类型是影响道路征用工期的驱动因素。本研究的结果将为交通机构提供有关如何改进道路征用流程安排的见解。
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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来源期刊
CiteScore
4.30
自引率
9.10%
发文量
41
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