Neural Network-Based Prediction Model for Sites' Overhead in Commercial Projects

Ali H. Hassan, A. Idrees, Ahmed I. B. Elseddawy
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Abstract

Construction companies need to improve the accuracy of their projects' budgeting to achieve the targeted profit. Site overheads are the expenses related to a project but are not allocated to a specific work package. The main objective of this research is to develop a neural network model for commercial projects to predict and estimate project site overhead costs as a percentage of the direct cost. The focal point of the research is focused on the main factors affecting site overhead costs for commercial projects in Egypt. These factors and their weights were identified by experts through the collected structured data. Cost data for 55 projects in the past seven years was collected with various conditions of company rank, direct cost, project duration, project location, contract type, and type of company ownership. The results have shown that the best model developed consists of six input neurons; two hidden layers with six and five neurons respectively, and one output layer representing the percentage of project site overhead. The model was tested on six projects with accuracy of 84%.
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基于神经网络的商业项目场地开销预测模型
建筑企业需要提高项目预算的准确性,以实现目标利润。现场管理费用是与项目相关的费用,但不分配给特定的工作包。本研究的主要目的是开发一个商业项目的神经网络模型,以预测和估计项目现场间接成本占直接成本的百分比。研究的重点是影响埃及商业项目现场间接费用的主要因素。专家通过收集的结构化数据确定了这些因素及其权重。收集了过去7年55个项目的成本数据,包括公司级别、直接成本、项目工期、项目地点、合同类型和公司所有权类型等各种条件。结果表明:构建的最佳模型由6个输入神经元组成;两个隐藏层分别有6个和5个神经元,一个输出层表示项目站点开销的百分比。该模型在6个项目上进行了测试,准确率达到84%。
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