Abstract

The economics of the forestry enterprise are largely measured by their performance in road construction and management. The construction of forest roads requires tremendous capital outlays and usually constitutes a major component of the construction industry. The availability of cost estimation models assisting in the early stages of a project would therefore be of great help for timely costing of alternatives and more economical solutions. This study describes the development and application of such cost estimation models. First, the main cost elements and variables affecting total construction costs were determined for which the real-world data were derived from the project bids and an analysis of 300 segments of a three kilometer road constructed in the Hyrcanian Forests of Iran. Then, five state-of-the-art machine learning methods, i.e., linear regression (LR), K-Star, multilayer perceptron neural network (MLP), support vector machine (SVM), and Instance-based learning (IBL) were applied to develop models that would estimate construction costs from the real-world data. The performance of the models was measured using the correlation coefficient (R), root mean square error (RMSE), and percent of relative error index (PREI). The results showed that the IBL model had the highest training performance (R = 0.998, RMSE = 1.4%), whereas the SVM model had the highest estimation capability (R = 0.993, RMSE = 2.44%). PREI indicated that all models but IBL (mean PREI = 0.0021%) slightly underestimated the construction costs. Despite these few differences, the results demonstrated that the cost estimations developed here were consistent with the project bids, and our models thus can serve as a guideline for better allocating financial resources in the early stages of the bidding process.

Highlights

  • Ensuring the sustainable management of forest resources and the economic efficiency of the forestry enterprise requires a quality transport network [1]

  • We investigated the potential application of linear regression, K-Star, multilayer perceptron neural network, support vector machine, and instance-based learning methods for machine learning-based cost estimation modeling of forest road construction that are new to the engineering literature

  • Instance-based learning (IBL) is an extension of the K-nearest neighbors (KNN) classifier and is one of the subsets of lazy algorithms in which the classifier does not sum up the training samples and postpones the generalization until a query is made to the system, rather than the concerned learning technique that sums up the training dataset initially

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Summary

Introduction

Ensuring the sustainable management of forest resources and the economic efficiency of the forestry enterprise requires a quality transport network [1]. Over the last few decades, the development and application of methodologies for cost estimation of road projects have been an active research area for forest engineers. Many software packages, such as PLANS [6], PLANEX [7], NETWORK 2001 [8], and computer-aided engineering programs [9,10,11,12,13] have been developed for the generation of road alternatives with economic considerations. We investigated the potential application of linear regression, K-Star, multilayer perceptron neural network, support vector machine, and instance-based learning methods for machine learning-based cost estimation modeling of forest road construction that are new to the engineering literature.

Case Study
Explanatory Variables
Model Development
K-Star
Model Training and Testing
Results and Discussion
Full Text
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