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An artificial neural network model to relate organisation characteristics and delivery methods of construction projects

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12 juin 2025
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Fig. 1:

The general process of this research. ANN, artificial neural network.
The general process of this research. ANN, artificial neural network.

Fig. 2:

Delphi executive process.
Delphi executive process.

Fig. 3:

The structure of a neural network with one hidden layer.
The structure of a neural network with one hidden layer.

Fig. 4:

Accuracy of models with different numbers of neurons and hidden layers.
Accuracy of models with different numbers of neurons and hidden layers.

Fig. 5:

Schematic of the developed neural network model.
Schematic of the developed neural network model.

Fig. 6:

The result of data classification accuracy.
The result of data classification accuracy.

Cronbach’s alpha coefficient for reliability analysis

Construct Cronbach’s alpha
Managerial expertise 0.82
Financial stability 0.84
Technical capability 0.80
Project experience 0.83
Contextual factors 0.85
Overall questionnaire 0.85

Statistical summary of the collected data

Variable Mean Standard deviation Minimum Maximum
Managerial expertise 3.8 0.7 2 5
Financial stability 3.5 0.8 1 5
Technical capability 4.0 0.6 2 5
Project experience 3.7 0.7 2 5
Contextual factors 3.6 0.8 1 5

Comparing the accuracy of data mining models

Models Accuracy criterion
Naive Bayes 48.11
Decision tree 26.42
Random forest 13.21
SVM 13.21
Selected neural network model 76.42

Performance comparison of different models

Model R2 MAPE (%)
ANN 0.82 12.5
Linear regression 0.65 18.3
Decision tree 0.70 15.2

Example of normalised data

Respondent ID Managerial expertise Financial stability Technical capability Project experience Contextual factors
1 0.75 0.80 0.60 0.70 0.65
2 0.60 0.55 0.75 0.65 0.70
354 0.80 0.70 0.85 0.75 0.80

Connection coefficients of nodes in the output layer (best model)

Node Output Node 1 Output Node 2 Output Node 3 Output Node 4 Output Node 5 Output Node 6
Node 1 –1.454 –1.818 –1.712 –2.103 –2.073 –4.525
Node 2 –3.075 –3.961 –2.565 –11.451 –10.190 2.895
Node 3 2.199 –4.315 –0.647 0.256 2.389 –1.400
Node 4 –2.566 –2.195 0.493 6.947 16.573 9.320
Node 5 –3.351 –3.045 –1.206 –2.245 –5.482 –3.947
Node 6 9.765 10.638 2.272 –3.172 –14.231 –23.596
Threshold –4.720 –4.891 –2.454 –3.010 –5.765 –4.569

Overview of input variables

Variable Type Description Indicators
Managerial expertise Numerical Measures the level of expertise and experience of the managerial team Project management plan, supervision team management, coordination of planning, managerial support, adoption of new methods, and continuous monitoring and control
Financial stability Numerical Assesses the financial health and stability of the organisation Timely payment, cost planning, planning and control system, project pricing, economic justification, and financial resource creation
Technical capability Numerical Evaluates the technical skills and capabilities of the organisation Technical foundation, reporting systems, and optimisation programmes
Project experience Numerical Reflects the organisation’s experience with similar projects Project management experience, training and development, and human resources satisfaction
Contextual factors Numerical Considers external factors that might impact project delivery Infrastructure, legal obstacles, training, and culture development

Connection coefficients of nodes in the hidden layer (best model)

Variable Node 1 Node 2 Node 3 Node 4 Node 5 Node 6
Managerial 4.814 5.094 4.814 –4.811 –4.052 –3.215
Financial 9.256 8.379 9.256 –9.498 –8.366 –5.841
Background 5.696 3.822 5.696 –4.698 –3.133 –2.998
Optimisation 2.981 2.587 2.981 –2.511 –2.684 –1.871
Energy efficiency 0.581 0.510 0.581 –0.940 0.019 –0.506
Bias –7.437 2.136 –7.437 1.524 9.801 –3.991

PDMs

Escrow (one factor)
Percentage
Unit price
Price list (without aggregates or with aggregates)
MC
BOT
Purchase and installation
Design, purchase (procurement), and execution (Engineering, Procurement, and Construction – EPC) or design and construction
Project delivery systems
Multifactorial method (multiple prime)
Construction manager method
DB method
Langue:
Anglais
Périodicité:
1 fois par an
Sujets de la revue:
Ingénierie, Présentations et aperçus, Ingénierie, autres