Aso Hajirasouli, Saeed Banihashemi, Paul Sanders and Farzad Rahimian
Over the past decade, architecture, construction and engineering (ACE) industries have been evolving from traditional practices into more current, interdisciplinary and technology…
Abstract
Purpose
Over the past decade, architecture, construction and engineering (ACE) industries have been evolving from traditional practices into more current, interdisciplinary and technology integrated methods. Intricate digital tools and mobile computing such as computational design, simulation and immersive technologies, have been extensively used for different purposes in this field. Immersive technologies such as augmented reality (AR) and virtual reality (VR) have proven to be very advantageous while the research is in its infancy in the field. Therefore, this study aims to develop an immersive pedagogical framework that can create a more engaging teaching and learning environment and enhance students' skill in the ACE field.
Design/methodology/approach
This study developed a BIM-enabled VR-based pedagogical framework for the design studio teaching in architectural courses, using a qualitative approach. A case study method was then used to test and validate this developed framework. Architectural Master Design Studio B, at Queensland University of Technology (QUT) was selected as the case study, with South Bank Corporation (SBC) as the industry partner and stakeholder of this project.
Findings
The practicality and efficiency of this framework was confirmed through increased students' and stakeholders' engagement. Some of the additional outcomes of this digitally enhanced pedagogical framework are as follows: enhanced students' engagement, active participation, collective knowledge construction and increased creativity and motivation.
Research limitations/implications
The results have proven that the developed technology-enhanced and digitally enabled teaching pedagogy and framework can be successfully implemented into architectural design studios. This can bridge the existing gap between the technological advancements in ACE industry and higher education teaching and learning methods and outcomes. It is also expected that such innovative pedagogies will future-proof students' skill set as the future generation of architects and built environment workers. A major limitation of this framework is accessibility to the required hardware such as HMD, controllers, high-capacity computers and so on. Although the required software is widely accessible, particularly through universities licencing, the required hardware is yet to be readily and widely available and accessible.
Practical implications
The result of this study can be implemented in the architectural design studios and other ACE related classrooms in higher educations. This can bridge the existing gap between the technological advancements in ACE industry, and higher education teaching and learning methods and outcomes. It is also expected that such innovative pedagogies will future-proof students' skill set.
Social implications
Such technology-enhanced teaching methods have proven to enhance students' engagement, active participation, collective knowledge construction and increased creativity and motivation.
Originality/value
Despite the advancement of digital technologies in ACE industry, the application of such technologies and tools in higher education context are not yet completely explored and still scarce. Besides, there is still a significant gap in the body of knowledge about developing teaching methods and established pedagogies that embrace the usage of such technologies in the design and architecture curricula.
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Faris Elghaish, Saeed Talebi, Essam Abdellatef, Sandra T. Matarneh, M. Reza Hosseini, Song Wu, Mohammad Mayouf, Aso Hajirasouli and The-Quan Nguyen
This paper aims to Test the capabilities/accuracies of four deep learning pre trained convolutional neural network (CNN) models to detect and classify types of highway cracks, as…
Abstract
Purpose
This paper aims to Test the capabilities/accuracies of four deep learning pre trained convolutional neural network (CNN) models to detect and classify types of highway cracks, as well as developing a new CNN model to maximize the accuracy at different learning rates.
Design/methodology/approach
A sample of 4,663 images of highway cracks were collected and classified into three categories of cracks, namely, “vertical cracks,” “horizontal and vertical cracks” and “diagonal cracks,” subsequently, using “Matlab” to classify the sample to training (70%) and testing (30%) to apply the four deep learning CNN models and compute their accuracies. After that, developing a new deep learning CNN model to maximize the accuracy of detecting and classifying highway cracks and testing the accuracy using three optimization algorithms at different learning rates.
Findings
The accuracies result of the four deep learning pre-trained models are above the averages between top-1 and top-5 and the accuracy of classifying and detecting the samples exceeded the top-5 accuracy for the pre-trained AlexNet model around 3% and by 0.2% for the GoogleNet model. The accurate model here is the GoogleNet model as the accuracy is 89.08% and it is higher than AlexNet by 1.26%. While the computed accuracy for the new created deep learning CNN model exceeded all pre-trained models by achieving 97.62% at a learning rate of 0.001 using Adam’s optimization algorithm.
Practical implications
The created deep learning CNN model will enable users (e.g. highway agencies) to scan a long highway and detect types of cracks accurately in a very short time compared to traditional approaches.
Originality/value
A new deep learning CNN-based highway cracks detection was developed based on testing four pre-trained CNN models and analyze the capabilities of each model to maximize the accuracy of the proposed CNN.
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Abdulwahed Fazeli, Saeed Banihashemi, Aso Hajirasouli and Saeed Reza Mohandes
This research aims to develop an automated and optimization algorithms (OAs)-integrated 4D building information modeling (BIM) approach and a prototype and enable construction…
Abstract
Purpose
This research aims to develop an automated and optimization algorithms (OAs)-integrated 4D building information modeling (BIM) approach and a prototype and enable construction managers and practitioners to estimate the time of compound elements in building projects using the resource specification technique.
Design/methodology/approach
A 4D BIM estimation process was first developed by applying the resource specification and geometric information from the BIM model. A suite of OA including particle swarm optimization, ant colony, differential evolution and genetic algorithm were developed and compared in order to facilitate and automate the estimation process. The developed processes and porotypes were linked and integrated.
Findings
The OA-based automated 4D BIM estimation prototype was developed and validated through a real-life construction project. Different OAs were applied and compared, and the genetic algorithm was found as the best performing one. The prototype was successfully linked with BIM timeliner application. By using this approach, the start and finish dates of all object-based activities are developed, and the project completion time is automatically estimated.
Originality/value
Unlike conventional construction estimation methods which need various tools and are error prone and time-consuming, the developed method bypasses the existing time estimation tools and provides the integrated and automated process with BIM and machine learning algorithms. Furthermore, this approach integrates 4D BIM applications into construction design procedures, connected with OA automation.
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Aso Hajirasouli, Saeed Banihashemi, Rob Drogemuller, Abdulwahed Fazeli and Saeed Reza Mohandes
This study aims to present a comprehensive review, critical analysis and implications of the augmented reality (AR) application and implementation in the construction industry…
Abstract
Purpose
This study aims to present a comprehensive review, critical analysis and implications of the augmented reality (AR) application and implementation in the construction industry arena and demonstrate the gaps along with the future research agenda.
Design/methodology/approach
The construction industry has been under pressure to improve its productivity, quality and sustainability. However, the conventional methods and technologies cannot respond to this industry's ever-growing demands while emerging and innovative technologies such as building information modelling, artificial intelligence (AI), virtual reality (VR) and AR have emerged and can be used to address this gap. AR application has been acknowledged as one of the most impactful technologies in the construction digitalization process. However, a comprehensive understanding of the AR application, its areas of effectiveness and overarching implications in a construction project life cycle remain vague. Therefore, this study uses an integration of systematic literature review and thematic analysis techniques to identify the phases of a construction project life cycle in which AR is the most effective, the current issues and problems of the conventional methods, the augmented parameters, the immediate effects of using AR on each phase and, eventually, the overall influence of AR on the entire project. Nvivo qualitative data analysis software was used to code, categorize and create themes from the collected data. The result of data analysis was used to develop four principal frameworks of the AR applications – design and constructability review session; construction operation; construction assembly; and maintenance and defect inspection and management – and the gap analysis along with the future research agenda.
Findings
The findings of this study indicated that the application of AR can be most effective in the following four stages of a project life cycle: design and constructability review session; construction operation; construction assembly; and site management and maintenance, including site management and defect inspection. The results also showed that the application of AR technology in the construction industry can align and address building industry objectives by various elements such as: reducing project costs through the application of digital technologies, saving time, meeting deadlines and reduction in project delays through integrated, live scheduling and increased safety and quality of the construction work and workers.
Research limitations/implications
One of the main limitations of this study was the lack of materials and resources on the downfalls and shortcomings of using immersive technologies, AR, in the construction project life cycle. In addition, most of the reviewed papers were focused on the experiments with simulations and in the lab environment, rather than real experiments in real construction sites and projects. This may cause limitations and inaccuracy of the collected and reported data.
Practical implications
The results of this study indicated that the application of AR technology in construction industry can align and address building industry objectives by various elements such as: reducing project costs through the application of digital technologies; saving time; meeting deadlines and reduction in project delays through integrated, live scheduling; and increased safety and quality of the construction work and workers.
Social implications
Application of AR in the various stages of a project life cycle can increase the safety and quality of the construction work and workers.
Originality/value
The reviewed literature indicated that substantial research and studies are yet to be done, to demonstrate the full capacity and impact of these emerging technologies in the field. The collected data and literature indicate that amongst the digital technologies, AR is one of the least researched topics in the field. Therefore, this study aims to examine the application of AR in construction projects’ life cycle to identify the stages and practices of a project life cycle where AR and its capabilities can be exploited and to identify the respective problems and issues of the conventional methods and the ways in which AR can address those shortcomings. Furthermore, this study focuses on identifying the overall outcome of AR applications in a construction project in terms of cost and time efficiency, process precision and safety.
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Apeesada Sompolgrunk, Saeed Banihashemi, M. Reza Hosseini, Hamed Golzad and Aso Hajirasouli
The business benefits envisaged for BIM represent the main criteria for decision-making about BIM implementation – or shy away from BIM. Despite the significance, traditional…
Abstract
Purpose
The business benefits envisaged for BIM represent the main criteria for decision-making about BIM implementation – or shy away from BIM. Despite the significance, traditional evaluation techniques have difficulty to capture “the true value” of BIM from multiple levels and dimensions – as an effective evaluation method is supposed to. This study aims to identify the significant factors that affect BIM return on investment (ROI), develop an integrated model for companies and examine the influence of intangible returning factors of BIM on the rate of BIM implementation.
Design/methodology/approach
A cluster sampling technique was used; 92 questionnaires completed by Australian architecture, engineering and construction small- and medium-sized enterprises (SMEs) provided the basis to identify and analyse the key measurable returning factors, value drivers and strategic benefits associated with BIM ROI.
Findings
Applying the PLS-SEM technique, findings reveal that a lack of reliable quantification methods for the ROI factors associated with BIM significantly affects the organisation's commitments to implement BIM. In essence, the failure to adequately identify and assess these benefits could result in the system not being appropriately implemented and supported by executive sponsors, who give priority to hard and tangible ROI measurements.
Practical implications
The outcome of this study would be of direct appeal to policymakers, industry professionals and the academic community alike, in providing data-informed insight into the intersection between the implementation of BIM and the concept of ROI. Findings would provide a springboard for further research into using ROI factors to increase BIM implementation. Though the findings are directly applicable and contextualised for Australia, they provide lessons and offer a blueprint for similar studies in other countries and settings. That is, regardless of the context, findings raise awareness and provide a point of reference for the quantification of intangible returning factors rather than the tangible returning factors, as one of the first studies in its kind.
Originality/value
The study provides original insight in drawing attention to an untapped area for research in BIM implementation, namely BIM ROI. Apart from raising awareness around BIM ROI, the study is novel in providing a quantified model that establishes the links and level of impacts of various factors associated with BIM ROI. Findings of this study, particularly add value to the body of knowledge related to the business implications associated with BIM implementation in the context of Australian SMEs, while providing lessons for other countries and settings.
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Mohammad Javad Zoleykani, Hamidreza Abbasianjahromi, Saeed Banihashemi, Seyed Amir Tabadkani and Aso Hajirasouli
Extended reality (XR) is an emerging technology, with its popularity rising in different industry sectors, where its application has been recently considered in construction…
Abstract
Purpose
Extended reality (XR) is an emerging technology, with its popularity rising in different industry sectors, where its application has been recently considered in construction safety. This study aims to investigate the applications of XR technologies in the safety of construction through projects lifecycle perspective.
Design/methodology/approach
Scientometric analysis was conducted to discover trends, keywords, contribution of countries and publication outlets in the literature. The content analysis was applied to categorize previous studies into three groups concerning the phase of lifecycle in which they used XR.
Findings
Results of the content analysis showed that the application of XR in the construction safety is mostly covered in two areas, namely, safety training and risk management. It was found that virtual reality was the most used XR tool with most of its application dedicated to safety training in the design phase. The amount of research on the application of augmented reality and mixed reality in safety training, and risk management in all phases of lifecycle is still insignificant. Finally, this study proposed three main areas for using the XR technologies regarding the safety issues in future research, namely, control of safety regulations and safety coordination in construction phase, and safety reports in the operation phase.
Originality/value
This paper inspected the utilization of all types of XR for safety in each phase of construction lifecycle and proposed future directions for research by addressing the safety challenges in each phase.