Application of Multiple Regression and Artificial Neural Networks as Tools for Estimating Duration and Life Cycle Cost of Projects

B. Galli
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引用次数: 1

Abstract

Project managers face complex challenges when planning project stages because contract durations and project costs are difficult to predict accurately. The purpose of this study is to investigate statistical tools and concepts that can be integrated in the second phase of the project life cycle: the planning stage. Furthermore, this study aims to compare the accuracy of multiple regression and artificial neural network models, as well as the application of simulation in construction models used in predicting project duration and cost. This paper will also discuss the industry's current estimation methods, the use of statistical approaches, simulation, and the relationship between the application statistical tools and project success. Thus, this review identifies the trending statistical tools used by scholars to develop regression and neural models to solve the complexity of cost and duration estimation. The findings indicate that although the industry needs more accurate predictions and estimating tools, and regardless of the investigations and advancements made with integrating statistical tools, implementing these statistical approaches is faced with barriers.
多元回归和人工神经网络在项目工期和生命周期成本估算中的应用
项目经理在规划项目阶段时面临着复杂的挑战,因为合同期限和项目成本难以准确预测。本研究的目的是调查统计工具和概念,这些工具和概念可以整合到项目生命周期的第二阶段:规划阶段。此外,本研究旨在比较多元回归模型与人工神经网络模型的准确性,以及仿真在建筑模型中用于预测工程工期和成本的应用。本文还将讨论该行业当前的评估方法、统计方法的使用、模拟以及应用统计工具与项目成功之间的关系。因此,本综述确定了学者用于开发回归和神经模型来解决成本和工期估算复杂性的趋势统计工具。研究结果表明,尽管油气行业需要更准确的预测和估计工具,而且无论整合统计工具的调查和进展如何,实施这些统计方法都面临着障碍。
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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