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Regression-Based Prediction Methods for Adjusting Construction Cost Estimates by Project Location

机译:基于回归的预测方法,根据项目位置调整施工成本估算

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Construction cost estimates are fundamental to the success of a construction project. Several estimates are performed throughout a project lifecycle to make decisions on the project with stakeholders often relying on historical data to estimate costs of future construction activities. Location cost adjustment factors (LCAFs) are commonly used to adjust historically based estimates by project location with the selection of the LCAF being one important step of this process. Various datasets provide LCAF values for sampled locations, but, obviously, not all locations across North America are included. Therefore, spatial interpolation and prediction methods are needed to infer LCAF for un-sampled locations. The current industry practice is to select the value for a location using only one variable, namely the nearest linear-distance between two sites. Arguably, construction costs could be affected by other variables, including socio-economics. This research investigated relationships between a commonly used set of location adjustment factors, the City Cost Indexes (CCI) by RSMeans and other attributes, included in the ESRI Community Sourcebook. Regression-based prediction modeling was investigated to understand if it could be an appropriate way to model CCI as a function of multiple covariates. WEKA and ArcGIS packages were used to develop and test the prediction models. The prediction models did not outperform interpolation methods, as expected. In addition, among the two prediction models, the GIS-based regression (GISBR) model slightly outperformed the WEKA-based regression (WEKABR) model.
机译:建设成本估算是建设项目成功的基础。在项目的整个生命周期中,都会进行几次估算,以使项目决策者与利益相关者经常依靠历史数据来估算未来建设活动的成本。位置成本调整因子(LCAF)通常用于按项目位置调整基于历史的估算,而选择LCAF是此过程的重要一步。各种数据集都提供了采样地点的LCAF值,但是显然,并非包括北美地区的所有地点。因此,需要空间插值和预测方法来推断未采样位置的LCAF。当前的行业惯例是仅使用一个变量(即两个站点之间的最近线性距离)选择一个位置的值。可以说,建筑成本可能会受到其他变量的影响,包括社会经济因素。这项研究调查了一组常用的位置调整因子,RSMeans的城市成本指数(CCI)与其他属性之间的关系,这些属性包含在ESRI社区资料中。对基于回归的预测建模进行了研究,以了解它是否可能是将CCI建模为多个协变量的函数的合适方法。 WEKA和ArcGIS软件包用于开发和测试预测模型。预测模型没有像预期的那样胜过插值方法。此外,在这两种预测模型中,基于GIS的回归(GISBR)模型略胜于基于WEKA的回归(WEKABR)模型。

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