A Final Cost Estimating Model for Building Renovation Projects
Abstract
:1. Introduction
2. Systematic Literature Review
2.1. Artificial Neural Networks as a Tool in Construction Field
2.2. Application of ANNs to Cost Estimation in the Particular Field of Building Construction
3. Methodological Approach
4. Results
5. Discussion
6. Conclusions and Future Research
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Publishing Year | Authors/Ref. | Country | Data Base Source | Data Size | Data Type | Inputs | Outputs/Research Object | ANN Architecture/Training Algorithm | ANN Tools |
---|---|---|---|---|---|---|---|---|---|
1997 | Chua et al. [27] | Singapore, USA | Questionnaires | 75 buildings | Qualitative | 8 independent variables: Project manager and craft workers’ organizational ranks, quantity of finished detailed design at the initial phase of construction, frequency of the phase-of-construction control meetings, total amount of funding spent on managing a project, team rotation, constructability scheme usage, financial updates on a continuing basis, and project manager’s expertise | Project budget performance–cost estimation | MLP/BP | Neural Works Professional II/PLUS |
2002 | Emsley et al. [28] | UK | Real project data, questionnaires | 288 buildings | Quantitative and qualitative | 6 Project strategic variables: Building standards, type of commitment, procurement approach, procurement methodology, time frame, goals 4 Site-related variables: Geographical features, location access, specific type of place, site typology 31 Design-related variables: Internal doors, rooftop characteristics, cooling systems, interior walls, ceiling coatings, structural variety, specific installations, interior wall completes, electrical infrastructure, types of stairways, number of elevators, surroundings, quantity of stories over ground, exterior doors, subsystem, number of stories under the surface, the external walls, structural units, additional floors, mechanical installations tasks, finishes on floors, piling, wall-to-floor proportion, frame technique, windows, preventive structures, functionality of structures, rooftop structure, height, roofing finishes, and GIFA | Construction cost estimation and client’s external and internal expenditures | MLP, RBF, and GRNNs. | Trajan NN Simulator Release 4.0E |
2003 | Attalla and Hegazy [44] | Canada | Questionnaires | 50 buildings | Quantitative and qualitative | 18 independent variables: Concept of the reconstruction project, as-built designs, expenditures and baseline for spending plan, boards for design, requirements and criteria for quality, prior qualification of contractors, unit costs, cash disbursements, coordinating timetable, bar diagrams, critical path technique, augmental benchmark, variance in costs, independent evaluation companies, frequent site meetings, efficient reaction system, collaborative health and safety committee, evaluation by the customer, maintenance, and operator | Cost estimation of reconstruction projects | Statistical analysis and ANN/MLP/BP | Neuro Shell 2 and. Systat software |
2004 | Kim et al. [30] | South Korea | Real project data | 530 buildings | Quantitative | 9 independent variables: Cross floor area, stories, duration, roof types, fdn types, total unit, utilization of basement, actual costs, finishing grades | Project cost estimation | ANN/MLP (GAs)/BP | Neuro Solutions for Excel Release 4.2, NeuroDimension, Inc., Gainesville, FL, USA |
2004 | Gunaydın and Dοgan [29] | Turkey | Real project data | 30 buildings | Quantitative and qualitative | 8 independent variables: Total area of the building, ratio of the typical floor area to the total area of the building, number of floors, ratio of ground floor area to the total area of the building, console direction of the building, foundation system of the construction, location of the core of the building, floor type of the structure | Cost estimation of reinforced concrete structural systems of four–eight storey residential building | Feedforward ANN/BP | NeuroSolutions by NeuroDimensions Inc. |
2009 | Cheng et al. [31] | Taiwan | Real Project data | 28 buildings | Quantitative and qualitative | 6 Quantitative factors: total floor area, floors underground, floors above ground, number of households, household in buildings, site area 4 Qualitative factors: Soil condition, seismic zone, electromechanical infrastructure, interior decoration | Project cost estimation | Evolutionary Fuzzy Neural, MLP, inference System mechanisms (EFNISM) and process of developing construction cost estimators ((EWCCE)/BP | EWCCE system via World Wide Web |
2011 | Arafa and Alqedra [32] | Palestine | Real project data | 71 buildings | Quantitative and qualitative | 7 independent variables: Number of stories, number of rooms, usual floor size, ground floor area, type of foundation, number of columns, number of lifts. | Early building cost estimation | MLP/BP | Matlab v.2009b |
2012 | Wang et al. [33] | Taiwan | Questionnaires | 92 buildings | Quantitative | Εarly planning data and project performance data | Final cost estimation Schedule success | SVMs and ANNs * ensemble techniques | 1. NeuroSolutions TM by NeuroDimension, 2011, 2. LS-SVMlab |
2014 | Roxas and Ongpeng [37] | Philippines | Real project data | 30 buildings | Quantitative | 6 independent variables: Number of stories, total ground area, number of basements, concrete capacity, reinforcing steel mass, and formwork area | Project cost estimation | MLP/BP, weights and bias values updated according to Levenberg–Marquardt | Matlab (R2010a) |
2014 | El-Sawalhi and Shehatto [35] | Gaza | Questionnaire, interviews, literature review | 169 buildings | Quantitative and qualitative | 11 independent variables: Type of project, number of floors, area of typical floor, type of foundation, type of slab, type of external finishing, type of air-conditioning, type of electricity, type of tilling, type of sanitary, and number of elevators | Total cost estimation | MLP/BP (Tanh transfer function and momentum learning rate) | NeuroSolutions 5.07 |
2016 | Bayram et al. [38] | Turkey | Real project data | 232 buildings | Quantitative | 5 independent variables: Approximate cost, contract value, entire constr. zone, number of floors, and structure height | Project cost estimation | MLP and RBF | Matlab v.7.9.0 |
2017 | Amprule and Bhirud [39] | India | Not specified | Not specified | Not specified | Not specified | Early cost estimation | ANN GUI model in general | Not specified |
2019 | Abbas Mahde Abd et al. [40] | Iraq | Real project data | 501 projects | Quantitative and qualitative | 25 independent variables: Excavation the groundwork works, filling with foundation workings, landfill works, construction works under moisture proof layer, construction works above moisture proof layer, building works of sections, ordinary concrete for walkways, reinforced concrete foundation, reinforced concrete column, reinforced concrete lintel, reinforced concrete slabs, reinforced concrete beams, reinforced concrete stair, reinforced concrete for the sun bumper, plaster finishing workings, cement finishing workings, plastic paints, pentolite paints, pigment color, stone packaging, workings of placing marble, ceramic works for floor, ceramic works for walls, flattening (2 opposite layers), tiling | Project cost estimation | ANN not specified | Matlab |
2019 | Chandanshive et al. [41] | India | Questionnaires | 78 buildings | Quantitative and qualitative | 11 independent variables: Ground floor zone, typical floor zone, quantity of floors, structural parking zone, size of elevator walls, size of exterior walls, size of exterior plaster, flooring area, number of columns, foundation category, and amount of households | Project cost estimation | MLP/BP Bayesian regularization Levenberg–Marquardt | Matlab v.R2015a |
2019 | Hakami and Hassan [42] | Yemen | Real project data, literature review | 136 buidings | Quantitative and qualitative | 17 independent variables: Project type, number of stories, area of floors, type of groundwork, quantity of elevators, external finishing type, inner decoration, conditioning system category, HVAC, electrical work category, mechanical work type, basement floor, flooring height, slab category, site zone, tile type, and project position | Project cost estimation | MLP/BP | SPSS IBM v.19.0-NeuroSolutions v.6 |
2021 | Sitthikankun et al. [43] | Thailand | Real project data | 50 buildings | Quantitative and qualitative | 11 independent variables: Whole usable floor area, average perimeter length, average story height, total building height, number of floorings, total rooftop area, whole area of openings, entire rest room area, ground flooring slab area, category of rooftop, and kind of slab structure | Project cost estimation | A 2 hidden layers (10 and 8 nodes) AΝΝ structure | Rapid Miner Studio |
Tender Offer | Project Contract Duration | Initial Demolition Cost per Contract | ||
---|---|---|---|---|
Final Renovation Cost | Pearson Correlation | 0.989 | 0.826 | 0.479 |
Sig. (1-tailed) | 0.000 | 0.000 | 0.000 | |
N | 54 | 54 | 54 |
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Papadimitriou, V.E.; Aretoulis, G.N. A Final Cost Estimating Model for Building Renovation Projects. Buildings 2024, 14, 1072. https://doi.org/10.3390/buildings14041072
Papadimitriou VE, Aretoulis GN. A Final Cost Estimating Model for Building Renovation Projects. Buildings. 2024; 14(4):1072. https://doi.org/10.3390/buildings14041072
Chicago/Turabian StylePapadimitriou, Vasso E., and Georgios N. Aretoulis. 2024. "A Final Cost Estimating Model for Building Renovation Projects" Buildings 14, no. 4: 1072. https://doi.org/10.3390/buildings14041072
APA StylePapadimitriou, V. E., & Aretoulis, G. N. (2024). A Final Cost Estimating Model for Building Renovation Projects. Buildings, 14(4), 1072. https://doi.org/10.3390/buildings14041072