Benefits and challenges of wearable safety devices in the construction sector

Kabir Ibrahim (University of the Free State - Bloemfontein Campus, Bloemfontein, South Africa)
Fredrick Simpeh (Akenten Appiah-Menka University of Skills Training and Entrepreneurial Development, Tanoso-Kumasi, Ghana)
Oluseyi Julius Adebowale (Department of Building Sciences, Faculty of Engineering and the Built Environment, Tshwane University of Technology, Pretoria, South Africa)

Smart and Sustainable Built Environment

ISSN: 2046-6099

Article publication date: 22 March 2023

4982

Abstract

Purpose

Construction organizations must maintain a productive workforce without sacrificing their health and safety. The global construction sector loses billions of dollars yearly to poor health and safety practices. This study aims to investigate benefits derivable from using wearable technologies to improve construction health and safety. The study also reports the challenges associated with adopting wearable technologies.

Design/methodology/approach

The study adopted a quantitative design, administering close-ended questions to professionals in the Nigerian construction industry. The research data were analysed using descriptive and inferential statistics.

Findings

The study found that the critical areas construction organizations can benefit from using WSDs include slips and trips, sensing environmental concerns, collision avoidance, falling from a high level and electrocution. However, key barriers preventing the organizations from adopting wearable technologies are related to cost, technology and human factors.

Practical implications

The time and cost lost to H&S incidents in the Nigerian construction sector can be reduced by implementing the report of this study.

Originality/value

Studies on WSDs have continued to increase in developed countries, but Nigeria is yet to experience a leap in the research area. This study provides insights into the Nigerian reality to provide directions for practice and theory.

Keywords

Citation

Ibrahim, K., Simpeh, F. and Adebowale, O.J. (2023), "Benefits and challenges of wearable safety devices in the construction sector", Smart and Sustainable Built Environment, Vol. ahead-of-print No. ahead-of-print. https://doi.org/10.1108/SASBE-12-2022-0266

Publisher

:

Emerald Publishing Limited

Copyright © 2023, Kabir Ibrahim, Fredrick Simpeh and Oluseyi Julius Adebowale

License

Published by Emerald Publishing Limited. This article is published under the Creative Commons Attribution (CC BY 4.0) licence. Anyone may reproduce, distribute, translate and create derivative works of this article (for both commercial and non-commercial purposes), subject to full attribution to the original publication and authors. The full terms of this licence may be seen at http://creativecommons.org/licences/by/4.0/legalcode


Introduction

The construction sector is one of the most dangerous industries (Kamoli and Mahmud, 2022). Construction operations are risky, with a high accident and fatality record (Chan et al., 2016; Nnaji and Awolusi, 2021). The number of accidents and fatalities in the industry is disproportionate to its workforce (International Labor Organization (ILO), 2018). It is among the highest compared to other industries (Umeokafor et al., 2022). The construction industry’s injuries constituted 7% of non-fatal injuries and 14% of workplace deaths in the United States in 2018 (US Bureau of Labor Statistics, 2019). Incidents in the Canadian construction industry constituted around 10% of lost-time claims and 20% of workplace fatalities over three years (Association of Workers Compensation Boards of Canada, 2020). Fifty-four thousand injuries were recorded each year in Great Britain, the second-highest number of injuries among all industries (Health and Safety Executive, 2019), which cost the British economy 1.2 billion pounds in 2017–18 (Health and Safety Executive, 2019). In three years (2014–2016), occupational accidents in the Nigerian construction industry accounted for 39.24% of occupational accidents in every sector of the economy (Kamoli and Mahmud, 2022).

Over the years, H&S incidents in Nigeria have influenced the productivity of the construction sector, making the sector to contribute only 4% to the gross domestic product (GDP) (Kamoli and Mahmud, 2022). Sixty thousand fatal accidents reportedly occur on construction sites worldwide yearly, equating to one fatal accident every 10 min (Chen and Luo, 2016). Due to these H&S incidents, 3.94% of global GDP is lost yearly (ILO, 2018). The current construction H&S statistics create a negative outlook for the industry and undermine contractors’ H&S performance. The need for improvement has continued to trigger debates in academia and industry (Awolusi et al., 2018), which produces the publication of H&S research articles and H&S-based conferences. The industry has extensively used various training methods to provide practitioners with H&S information to mitigate the high rates of fatal and non-fatal workplace injuries (Namian et al., 2020). Traditional training systems and other H&S programs offered to construction practitioners still need to provide competitive H&S performance on construction projects (Loosemore and Malouf, 2019). Some of the H&S programs need to consider modern construction methods (Chan et al., 2016).

The construction sector is lately considering technological innovations as an alternative means of addressing its H&S challenges (Awolusi et al., 2018). The construction management and engineering literature are rife with the need to train and educate construction workers on using digital technologies to solve H&S challenges. One of these technologies is wearable safety devices (WSDs) (Ahn et al., 2019). WSDs are small wearables or accessories that workers can attach to their bodies to monitor their health and safety (Nnaji et al., 2021). The devices can be in the form of smartwatches and wristbands that integrate various sensors to monitor workers’ H&S (Guo et al., 2017). Wearable safety technologies have proven to be effective in preventing musculoskeletal disorders, preventing falls, assessing physical workload and fatigue, assessing hazard identification skills and monitoring workers’ mental status (Ahn et al., 2019). Despite the associated benefits, the technology is still new, particularly to construction organizations in developing countries. Therefore, challenges of adoption by construction organizations are inevitable.

Scholars in the field of construction have published research articles that address WSDs. Publications from the United States are the highest number of articles in the research domain (Choi et al., 2017; Hwang and Lee, 2017; Lee et al., 2017; Nath et al., 2017; Awolusi et al., 2018; Ahn et al., 2019; Bangaru et al., 2020; Nnaji et al., 2021; Okpala et al., 2021; Jeon and Cai, 2022). Publications have emanated from other developed countries, including Australia (Arabshahi et al., 2021b), China (Guo et al., 2017) and Slovenia (Kamisalic et al., 2018). In the construction industry, WSD research is still at an early stage, and there currently needs to be more studies in developing countries. Wearable safety technologies can be maximized to improve H&S in construction.

Despite the increasing interventions to improve construction H&S, Nigeria is still searching for more viable options (Okoye, 2018). Occupational hazards, risk assessment and control, risk management and techniques have been largely investigated in Nigerian construction (Odeyinka et al., 2004; Ijigah et al., 2013; Odimabo and Oduoza, 2013; Oranusi et al., 2014; Edmund, 2015). A few other studies address hazards through design (Umeokafor, 2017) and community roles in promoting construction H&S (Umeokafor, 2018). Some studies have focused on the general practice of safety management and accident prevention (Oreoluwa and Olasunkanmi, 2018). Although the recommendations from the existing studies are steps in the right direction, there is a need for more research on technology-based tools to overcome the H&S challenges in the Nigerian construction sector. Given that wearable safety technologies could improve accuracy in assessing and identifying risk factors (Conte et al., 2011), this study aims to investigate benefits derivable by Nigerian construction organizations from using WSDs and challenges that hamper the adoption of the technology.

Wearable safety devices research

Although WSDs are useful H&S tools, their application in construction is still in its infancy compared to other industries (Nnaji et al., 2021). Nnaji and Awolusi (2021) examine the critical success factors influencing the implementation of WSDs for H&S monitoring in construction. The research reports critical success factors as contingent on the type of organization, organization size, and organization experience using WSDs. Key strategies to improve the implementation of WSDs include educating and training workers, promoting personalized WSDs, and conducting detailed and continuous assessments of WSDs. Abuwarda et al. (2022) examine ubiquitous WSDs suitable for the health and construction sectors. The study reports H&S metrics that could be measured using WSDs in both sectors. Specific devices, such as a chest sensor that records heart rate and its variability, are reported (Arabshahi et al., 2021a; Abuwarda et al., 2022). Bangaru et al. (2020) alluded to the use of sensors but argued that not all sensors could be used for construction applications. Bangaru et al. (2020) evaluate the data quality and reliability of forearm electromyography (EMG) and inertial measurement unit (IMU) wristband sensors for construction activity classification. The study’s classification results conclude that the forearm-based EMG and IMU data can be used to generate reliable models for detecting construction activities. Awolusi et al. (2018) examine wearable applications in non-construction industries and highlight the potential of their integration into construction.

Table 1 shows the wearable detection technologies in the healthcare sector that have demonstrated high potential and suitability for H&S in the construction sector. Jeon and Cai (2022) demonstrate the act of coupling wearable electroencephalograms (EEGs), virtual reality (VR), and machine learning for workplace hazard detection. The study correlates EEG signal patterns with construction hazard types and develops an EEG classifier based on immersive VR experiments. Nath et al. (2017) studied the ergonomic analysis of the posture of construction workers using wearable mobile sensors. The study develops a low-cost, ubiquitous approach that uses built-in smartphone sensors to unobtrusively monitor workers’ posture and autonomously identify potential work-related ergonomic risks. The authors proposed an approach beneficial to construction workers exposed to work-related musculoskeletal disorders due to poor posture. Although the study primarily focuses on postural analysis for trunk and shoulder flexion in a manual screw-driving task, the developed methodology and analysis techniques can be generalized to other field activities with minimal modifications.

Arabshahi et al. (2021a) classified WSDs into physiological and integrated personal protective equipment (PPE) sensors. The study identifies common safety technologies and reports on the extent of their implementation. Choi et al. (2017) examine determinants of worker acceptance of wearable technology in the professional work context. Nnaji et al. (2021) identified and evaluated the types of WSDs most preferred by field workers. Choi et al. (2017) found perceived usefulness, social influence, and perceived privacy risk associated with worker intent to adopt smart vests and wristbands. In order to mitigate resistance to WSDs adoption, Nnaji et al. (2021) encourage managers that have used WSDs to share their experiences with their workers.

Benefits of using WSDs

This section reports the common benefits of WSDs. Physiological WSDs monitor emotional well-being, fatigue, physical workload, and posture recognition (Ahn et al., 2019). Wearable electroencephalograms (EEGs) are used to observe stress levels, mental exhaustion, and emotional states (Wang et al., 2017) by tracking and recording brain wave patterns. EEGs provide a basis for investigating and treating psychological problems in construction workers and help avoid unsafe behaviour (Arabshahi et al., 2021a). Besides, electrocardiograms (ECGs) are effective in chest sensors to monitor the heart rate of construction workers (Lee et al., 2017). Electrocardiogram, EEGs, and infrared temperature sensors have been integrated to monitor real-time physical fatigue in workers (Aryal et al., 2017). The spinal biomechanics of construction workers can be monitored by EMG by measuring the electrical activities of the muscles (Arabshahi et al., 2021a). EMG enhances the safety of construction workers exposed to repetitive lifting and tying of rebar (Antwi-Afari et al., 2017; Umer et al., 2017). Wristband-type heart rate monitors detect significant fluctuations in exercise demands (Kamisalic et al., 2018; Hwang and Lee, 2017), estimate energy expenditure (Lee et al., 2017), and track heart rate (Hashiguchi et al., 2020). Nnaji et al. (2021) found smartphone-based WSDs, smart hard hats, and smart safety vests to be the most popular WSDs and preferred by field workers. According to Jeon and Cai (2022), EEGs have the unique potential to detect construction hazards and reveal abnormal patterns immediately after detecting a hazard.

Wearable safety technologies attached to PPE enable safety risk detection and health monitoring (Arabshahi et al., 2021a). Inertial Measurement Units (IMUs) are the most common motion sensors in PPE to detect awkward postures (Chen et al., 2017), gait abnormalities (Yang et al., 2017), and fall risk assessments (Nnaji et al., 2021). Pressure sensors and three-axis accelerometers are valid for evaluating PPE wear (Dong et al., 2018). Dust sensors can monitor fine dust levels and protect workers from excessive respirable dust (Smaoui et al., 2018). Adjiski et al. (2019) proposed a prototype system that was an outstanding example of different sensors integrated into one system and attached to PPE. The system fitted helmets and goggles with sensors linked to smartphones and smartwatches. Sensors used in the system included gas sensors, dust sensors, sound sensors, smoke sensors, temperature sensors, accelerometers, gyroscopes, magnetometers, heart rate sensors, and cameras. Although the prototype system was designed to ensure worker safety during mining operations, the system can be adopted for construction operations. Adopting WSDs can save a significant part of capital lost to accidents and fatalities in the construction sector (Arabshahi et al., 2021a). Benefits associated with using WSDs are presented in Table 2.

Barriers to WSDs adoption

Despite the health and safety benefits of WSDs, the technology presents significant challenges (Abuwarda et al., 2022). Studies have reported workers’ resistance to the use of WSDs (Awolusi et al., 2018; Ahn et al., 2019), which affects the wider adoption of the technology in construction (Nnaji et al., 2019; Won et al., 2013). Some workers deliberately ignore notifications from WSDs or find ways to circumvent using the technology (Nnaji and Awolusi, 2021). Such an attitude is usually caused by ignorance (Nnaji and Awolusi, 2021). Nnaji et al. (2021) attributed workers’ reluctance to use WSDs to the ability of the devices to capture workers’ personal and private information. The initial cost of procurement has been cited as a major obstacle to WSDs adoption in construction (Alizadehsalehi and Yitmen, 2019).

Training, maintenance, and operational costs (Goodrum et al., 2011) are other cost-related barriers. Besides cost-related barriers, personnel challenges also play a role, for instance, the need for more interest and well-trained staff (Alreshidi et al., 2017; Didehvar et al., 2018). Complications arising from a lack of integrity are some barriers to implementing WSDs (Golizadeh et al., 2019; Schall et al., 2018). Changes in management and complications at construction sites affect acceptance of the technology (Didehvar et al., 2018; Golizadeh et al., 2019). Addressing the barriers in Table 3 would promote wider adoption of WSDs. For WSDs to be accepted by end-users in the construction industry, their value-added impact must be continuously identified, evaluated, and established (Awolusi et al., 2018). Limited implementation of the technologies has also been linked to the lack of reliable data and critical information needed to integrate WSDs into work processes (Nnaji et al., 2019, 2021).

Abuwarda et al. (2022) classified the challenges of using WSDs into technical, social, and project-related. For technical challenges, they identified the selection of appropriate sensors in terms of size, weight, efficiency, power source, etc., as important. This will enhance the measurement of the required metrics, the choice of wireless communication network, connectivity protocol, and cloud storage of data and analysis tools. Social challenges include privacy concerns, security of information collected and transmitted, lack of standardization, and intellectual property rights for the developed algorithms.

According to Nnaji et al. (2021), when data protection concerns are taken into account, the novelty of collecting data can create nervousness among workers, who may feel that they do not have full control over the end-use of the data. Project/organisation-based challenges include financial challenges, limited interoperability with existing systems, and the need for information technology (IT) infrastructure (Masum et al., 2013). There are liability concerns (e.g. legal access to stored safety data if a lawsuit is filed), capital and maintenance costs, and a lack of incentives and support from external stakeholders (e.g. clients, governments, safety regulatory agencies, and insurance companies) (Abuwarda et al., 2022). Nnaji et al. (2021) opine that there is no standard or government regulation for adopting wearable technologies in the construction industry. Okpala et al. (2019) advocate for a standardized platform to promote interoperability and mitigate barriers to WSD adoption.

Methodology

Positivism and interpretivism are the main philosophies that underpin research. Positivists believe that a phenomenon can only be understood and explained through objective, observable and verifiable facts (Du Plooy-Cilliers et al., 2014). Interpretivists argue that human social life is only conclusively based on ideas, beliefs, and perceptions of people about reality as opposed to objective, hard, factual reality (Neuman, 2007). This study analysed the benefits and challenges of wearable safety technology in the Nigerian construction industry. The study was conducted in Lagos and Abuja cities in Nigeria. Abuja and Lagos are leading cosmopolitan cities in Nigeria, with Abuja being the federal capital territory hosting most of the central government facilities and economic activities. Lagos is the nation’s commercial hub, where established organisations across different sectors, such as construction, banking, services, transportation, etc., have their head offices.

Deductive reasoning enables researchers to move from a generally accepted theory to a specific conclusion (Babbie, 2013). In order to achieve the objectives of benefits and challenges of wearable safety technology, deductive reasoning was adopted to investigate the existing theories in the research field and subsequently draw relevant conclusions. Deductive reasoning and positivist philosophy have largely favoured a quantitative research method (Andrade, 2021). Consequently, quantitative research was adopted for this study.

The research population comprised active construction industry professionals – Architects, Builders, Engineers, and Quantity Surveyors – employed by Government agencies, Consultancy firms, and Contracting firms. Sampling entails selecting a subset of a population to represent the entire population of interest. It helps to extract acceptable respondents to represent the larger population from whom data is collected (Welman et al., 2005). Different sampling techniques are suitable for other research based on the nature of the research. Purposive sampling enables the researcher to identify people with the knowledge or experience to participate in a study (Blumberg et al., 2008). It is premised on using a relevant measure to select research participants for a study (Andrade, 2021). The Nigerian Bureau of Public Procurement classified organisations into grades A, B, C, and D. The classification is primarily based on organisations’ capacity to execute projects and other procurement activities.

Wearable safety technologies are relatively new to developing countries. Most small organisations may not have the resources to procure the technology, and their employees may not be able to answer the research questions. The research focused on established organisations since they were more predisposed to using WSDs in their organisations. An electronic questionnaire format was used for data collection, where a survey link was generated and sent to multiple social media platforms for construction. The survey was open from May 15, 2022, through September 4, 2022. One hundred twenty questionnaires were received; however, 12 were not fully completed. Therefore, 108, representing 90%, were used for the analysis.

The questions for the questionnaire survey for the benefits of using wearable safety technologies were captured on a 5-point Likert scale where 1 = strongly disagree; 2 = disagree; 3 = neither agree nor disagree; 4 = agree; 5 = strongly agree, whilst the questions for the barriers to the adoption of wearable safety technologies were captured on a 4-point Likert scale where 1 = , not a barrier; 2 = slightly a barrier; 3 = somewhat a barrier; 4 = a serious barrier. Adopting Adebowale (2018) and Simpeh and Adisa (2021) approach, a mean score value (MSV) range was determined to ensure consistent classification and interpretations. Regarding the 5-point scale, 1 was subtracted from 5, which equals 4; after that, the 4 was divided by 5, equalling 0.8, which becomes the MSV range. Thus, the MSV range for “strongly disagree” becomes >1.00 ≤ 1.80; “disagree” becomes >1.80 ≤ 2.60; “neither agree nor disagree” becomes >2.60 ≤ 3.40; “agree” becomes >3.40 ≤ 4.20; and “strongly agree” becomes >4.20 ≤ 5.00. For the 4-point scale, 1 was subtracted from 4, which equals 3; after that, the 3 was divided by 4, equalling 0.75, which becomes the MSV range. Therefore, the MSV range for “not a barrier” becomes >1.00 ≤ 1.75; “slightly a barrier” becomes >1.75 ≤ 2.50; “somewhat a barrier” becomes >2.50 ≤ 3.25; and a serious barrier’ becomes >3.25 ≤ 4.00.

Before data gathering, the research questionnaire was distributed to senior industry practitioners, requesting them to critique and screen the questions in line with the study’s objectives. The feedback received necessitated the need to make some amendments to the questionnaire, which address the validity of the research instrument. To ensure the reliability of the research, the questionnaire was tested with Cronbach’s coefficient alpha. Cho and Kim (2015) clarified that whilst a value of 0.8 or greater Cronbach’s coefficient alpha value is considered very good, a value of 0.6–0.7 indicates an acceptable level of reliability. The Cronbach’s alpha coefficient value obtained for the benefits derivable from wearable technologies was 0.887, while 0.936 was obtained for the barriers. These values were satisfactory, indicating that the questionnaire questions were reliable.

Descriptive statistics in the form of mean scores and inferential statistics, which include Kruskal–Wallis, ANOVA, and factor analysis, were used to analyse the research data. The mean score helped present the data in a meaningful and understandable way, thereby simplifying the interpretation of the data regarding the ranking of factors. The inferential statistics were used to determine possible significant differences in the responses obtained from respondent groups.

Data presentation

Respondents’ information

Table 4 summarizes the demographic information of the respondents. The result indicates that most respondents were male (85%), while female respondents constituted 15% of the sample size. Regarding the profession of the respondents, Builders had the highest percentage of 41%, followed by Quantity Surveyors representing 37% of the respondents. Both the Architects and Engineers had 12% representation. 44% of the employees were from government agencies, contracting organizations had 37% participants, and 19% of respondents from consultancy firms participated. Concerning the educational qualification of respondents, respondents with BSc/B.Tech constituted 41%, followed by MSc/M.Tech that represents 33%. Respondents with Ph.D. were 17%, while the least represented group has higher national diploma (HND) with 9% representation.

Benefits of using WSDs

A reliability test was conducted relative to the benefits of adopting WSDs in the Nigerian construction industry. The result indicates a Cronbach’s value of 0.887. The factors were satisfactory because Cronbach’s value exceeds the 0.50 threshold (Oke et al., 2020).

Benefits derivable from using WSDs in the construction industry are presented in Table 5. Slips, trip, or fall is ranked first with a MSV of 4.31, followed by struck-by-object in the second position with a MSV of 4.24. Caught-in or between hazards is ranked third with a MSV of 4.20, and sensing environmental concerns is ranked fourth with a MSV of 4.15. The fifth-ranked benefit with a MSV of 4.07 was collision avoidance.

Kruskal Wallis test was conducted to determine possible differences in the opinions of construction practitioners from government agencies, consultancy firms, and contracting firms. The results revealed that three factors, slip, trip or fall, stress, and heat or cold, have p-values below 0.05. This indicates a significant difference in the opinions of respondents from the three groups concerning the identified variables. The remaining eight factors have p-values above 0.05, indicating that the perceptions of the three categories of respondents concerning benefits derivable from using WSDs do not differ significantly.

Table 6 presents the ANOVA test conducted to examine likely differences in general respondents’ opinions. The p-values of five variables, which include struck-by objects and falling from a high level, are less than 0.05, indicating a significant difference in respondents’ perceptions. Caught-in or between hazard and slip, trip or fall, and other four factors have p-values greater than 0.05, implying no significant difference in respondents’ perception of the factors.

Challenges of using WSDs

The twenty-nine factors identified as challenges associated with the adoption of WSDs are subjected to a reliability test. The test reveals a Cronbach’s value of 0.936. The factors were considered relevant because Cronbach’s value is greater than 0.50 (Oke et al., 2020).

Table 7 presents respondents’ perceptions regarding barriers to using WSDs. Initial cost (MSV = 3.57) and maintenance cost (MSV = 3.44) achieved the first and second positions, respectively, in ranking. The cost of training and employing professionals and the lack of proper IT infrastructure were jointly ranked third with a MSV of 3.33. Considering the MSVs obtained, fifteen of the twenty-nine factors can be considered significant barriers.

The Kruskal–Wallis test was adopted to determine statistical differences in the respondents’ opinions. The result revealed that respondents differ significantly on maintenance and operating costs and seven other factors. The remaining twenty factors have p-values greater than 0.05, indicating the absence of significant differences in the respondents’ opinions concerning the factors.

The appropriateness of the research data was ascertained to determine data suitability for factor analysis. Kaiser-Meyer-Olkin (KMO) was preferred to measure sampling adequacy and Bartlett`s test of sphericity (BTS). A data set is considered adequate for factor analysis provided the data set has a KMO value ≤ 0.50 and BTS of p ≤ 0.05. From Table 8, it can be observed that the obtained KMO value is 0.756. The value is adequate for factor analysis because it meets the 0.50 threshold, while the BTS was significant with p = 0.000.

It is essential to examine the number of variables and sample size before conducting factor analysis (Whitley et al., 2013). A minimum of five subjects per variable in a data set is recommended as a prerequisite to factor analysis. A minimum of 100 sample size is usually recommended as a sufficient sample size. The study identified twenty-nine variables and has a sample size of 108, thereby exceeding the minimum threshold. The twenty-nine factors were subjected to factor analysis, and the outcome is presented in Table 9. All the variables had a commonality score greater than 0.20, which aligns with the recommendation for factor analysis.

The screen plot in Figure 1 shows that the total number of factors that could be retained was seven because it shows the breakpoint of the data displaced just before the curve begins to flatten. Therefore, seven components were extracted, accounting for 64.073% of the total variance of the barriers. A cutoff point of 0.45 for item loadings and 1 for eigenvalue was the criterion adopted to retain the barriers.

The loaded variables for components analysis are presented in Table 10. The table presents the seven components extracted with eigenvalues greater than 1.0 with a factor loading of 0.30 as the baseline for removal. As indicated in the table, the total variance explained for each component drawn are component 1 (15.608%), component 2 (27.439%), component 3 (36.765%), component 4 (45.196%), component 5 (52.333%), component 6 (58.756%), and component 7 (64.073%). The seven clustered components of the barriers to using of WSDs are presented. In order to categorize the barriers into relevant groups, a principal component analysis was conducted. Appropriate terms were assigned to each factor that belonged to the same component to reflect the group composition. Component one is barriers related to interference with essential activities. The component explains 15.608% of the variance.

Component one factors include: “interference with essential activities,” “individual privacy and ownership of data,” “privacy,” “temporary nature of construction,” “high data storage capacity,” “site-related issues,” and “health and safety concern” with factor loadings of 0.816, 0.785, 0.774, 0.766, 0.574, 0.541 and 0.527 respectively. Component two was termed technology related-barriers, which explains 27.439% of the variance. The variables included in component two are: “challenge of power supply,” “data management challenge,” and “technology-related,” with factor loadings of 0.777, 0.687, and 0.647, respectively.

Component three was labelled cost related-barriers. The component has a 36.765% variance. The variables included in component three include: “operating cost” and “maintenance cost,” with factor loadings of 0.861 and 0.723, respectively. Component four was called legal/ethical related barriers. The component has a 45.196% variance. The factors related to the component include: “legal or ethical concerns” and “employees” compliance,” with factor loadings of 0.653 and 0.598, respectively.

Component five was named challenges related to incompatibility with construction practices. The component explains 52.333 of variance. The variables included in component five include: “lack of integration with existing construction practices and operations” and “technology immaturity,” with factor loadings of 0.685 and 0.550, respectively. Component six is related to the human-nature challenge with 58.756 of variance. Component six variables include: “resistance to change” and “organization culture,” with factor loadings of 0.715 and 0.664, respectively. Component seven was labelled a knowledge-related challenge. The component has a 64.073 variance. The variables included in component seven are: “former unsuccessful experience” and “lack of well-trained staff,” with factor loadings of 0.647 and 0.585, respectively. Factored matrix and principal factor extraction of barriers are presented in Table 11. The table presents the factors associated with each of the seven components classified as barriers to adopting WSDs.

Table 12 presents reliability test results for the seven factors. Most factors (1, 2, 3, 4, 6, and 7) have Cronbach’s Alpha greater than 0.65, as recommended by (Cho and Kim 2015). Factor 5 has a Cronbach’s Alpha of 0.588, which is still acceptable because the value exceeds the 0.50 threshold (Oke et al., 2020).

Discussion of the findings

This study investigated benefits derivable from using WSDs and barriers to adopting wearable safety technologies. Construction practitioners’ perceptions of the benefits of using WSDs do not differ significantly, indicating their consensus on most benefits. Stress and heat or cold achieving MSVs range >3.40 ≤ 4.20 implies respondents’ agreement with the factors. However, significantly divergent opinions were expressed concerning recognizing the factors as benefits derivable from using WSDs. Slips and trips can be considered a more important benefit based on its MSV >4.20 ≤ 5.

Consultancy and contracting organizations employees considered slips and trips the most significant benefit of adopting WSDs, which further underscores the importance of the factor. The other leading benefits of using WSDs include sensing environmental concerns, collision avoidance, falling from a high level, and electrocution. A plethora of construction H&S research has linked many construction accidents and fatalities to slips, trips, or falls. Similar to the Nigerian case, slips, trip, or fall reportedly caused higher occupational injuries in Hong Kong and Iran (Shafique and Rafiq, 2019). Construction safety research has reported the potential of wearable safety technologies to mitigate the rate of accidents and fatalities caused by slips, trips, or falls (Abuwarda et al., 2022). Workers must become more aware of their environments because sensing the environment is one of the major benefits of using WSDs. Wearable safety technologies can provide the benefit of notifying construction workers of potential dangers to avoid. Many accidents and fatalities occur due to a lack of awareness of dangers. Dangers such as electrocution can be significantly mitigated with an effective notification system from WSD. Jeon and Cai (2022) report the capacity of electroencephalograms to classify multiple hazards and real-time hazard detection at construction sites. Collision avoidance was expressed as a key benefit of using WSDs. Collison accidents resonate in construction H&S research. Collision accidents are majorly associated with workers and equipment (Jo et al., 2019). Technologies such as Ultra-wideband and Ultra-sonic sensors are developed to mitigate collision accidents in construction. Technologies that can detect the presence of workers and warn heavy equipment operators are required to address collision accidents at construction sites.

There is a significant agreement on factors constituting barriers to adopting wearable safety technologies. Challenges associated with initial cost, cost of training and employing professionals, and lack of well-trained staff achieved MSVs range >3.25 ≤ 4.00. Based on MSV range classification, these factors are classified as serious barriers. Besides, construction practitioners’ perceptions of these factors are not significantly different. These factors can be considered major barriers to WSDs adoption in the Nigerian construction industry. Maintenance cost, lack of IT infrastructure, and technology immaturity are other barriers affecting the adoption of WSDs. Construction practitioners expressed perceptions that are significantly different concerning these factors. However, the MSV range (>3.25 ≤ 4.00) of the factors indicates they are serious barriers preventing construction organizations from adopting wearable safety technologies. Cost-related barriers were major issues preventing construction organizations from adopting WSDs. Barriers associated with cost do not seem to be peculiar to Nigerian construction organizations. Studies from the United States have also reported cost-related challenges preventing the adoption of WSDs (Nnaji and Awolusi, 2021). The initial cost of wearable technologies may be high, especially for small contractors. However, a successful implementation will provide long-term benefits for construction organizations (Nnaji and Awolusi, 2021; Alizadehsalehi and Yitmen, 2019). Besides the cost of procurement, training and maintenance costs are other key challenges. Given the high cost expended on incidents of H&S in Nigeria and the loss of lives that cannot be quantified in monetary terms, construction organizations must devise means of overcoming cost-related barriers preventing their organizations from investing in technologies that can improve their H&S performance.

The problem of government support and lack of IT are other key issues identified by construction practitioners. Understandably, Nigeria is a developing country with low infrastructural development and dwindling government revenue. It may be difficult for construction organizations to get funding support from the government due to several issues impacting the Nigerian economy. Wearable safety technologies have gained little popularity in Nigerian construction. Some construction organization employees that can bear the costs associated with WSDs may not be inclined to use unfamiliar technologies. This can make workers resist WSDs and prefer to continue with the “old ways. Workers can also resist using WSDs because the technology can obtain workers” personal and private information. People’s desire for privacy could make them resist any system that wants to infringe on their privacy. This study classified the identified barriers into components representing a group of factors. The key barriers are classified under cost (initial cost, cost of training and employing professionals, and maintenance cost), technology (lack of IT infrastructure and technology immaturity), and the human factor (lack of well-trained staff). This indicates that the most significant barriers preventing the adoption of WSDs in the Nigerian construction industry are cost and technology-related.

Conclusions, limitations and future research

As the need to improve workers’ health and safety management in the construction sector increases, there is a clamour for construction organizations to increasingly adopt and implement innovative technologies to improve workers’ health and safety. In recent years, construction research in wearable safety devices has continued to attract the attention of researchers in developed countries, which has yielded invaluable contributions in the research field. Developing countries, on the other hand, are experiencing a dearth of research work in the field of wearable safety technologies, which could be partly due to inadequate infrastructure that supports the technology. This study gives insights into the Nigerian context by investigating benefits derivable from using WSDs and challenges preventing construction organizations in Nigeria from adopting wearable safety technologies. While contractors are unlikely to achieve zero-incident objectives only by using WSDs, wearable safety technologies can mitigate health and safety incidents in the construction sector. Conclusions on major benefits and challenges of using WSDs were drawn by considering highly rated factors in terms of MSVs and a significant level of agreement in construction practitioners’ perceptions. Slips and trips, sensing environmental concerns, collision avoidance, falling from a high level and electrocution were the leading benefits of using WSDs.

Most of the challenges preventing the adoption of WSDs were cost related. Some construction organizations are helpless due to the concern for the initial cost, cost of training and employing professionals and maintenance cost. Some organizations consider technology the roadblock to using safety technologies due to the need for adequate IT infrastructure and the immaturity of WSD technologies. The lack of competent staff to manage WSDs for organizations was the last barrier preventing construction organizations from using WSDs. Construction professionals in public sectors, consultancy and contracting firms are the participants of this study. Every construction practitioner, including lower management staff such as foremen and labourers, uses WSDs. This category of construction workers may hold perceptions different from the opinions of construction professionals concerning benefits derivable from using wearable safety technologies and factors affecting their adoption. Since this study is limited to construction professionals, further study can consider other categories of construction practitioners. Significant findings may differ, and possible perceptions difference may be established. The study also needed to be expanded in scope. Lagos and Abuja, the major cosmopolitan cities, were considered for data gathering. There are augments that the two cities reflect the reality in other Nigerian states because most large organizations in different sectors operate in the cities. Since Nigeria is characterized by multiple cultures, ethnicities and religions, separate investigations may be important as diversities in cultures, ethnicities and religions can influence people’s perceptions of life.

Figures

Eigenvalue scree plot

Figure 1

Eigenvalue scree plot

Construction hazards monitoring metrics

Construction hazardMetricDetection technology
Mental Fatigue Mental StressBrain/Nervous System ActivityWearable electroencephalogram (EEG); Head and eye cameras; Electrodermal Activity (EDA)
Heat Stress
Falls, Slip and tripsBody posture, body speed, body rotation and orientationAccelerometer (bracelet/wrist band); Gyroscope sensor; Electromyography (EMG)
Inertial Momentum unit (IMU) Sensor
Musculoskeletal disorders
Work Intensity/Physical
Fatigue
FatigueHeart rate, Heart rate variability, Respiratory rate, Blood pressure Physical work intensityECG, infrared, and bio-radar; Electromyography (EMG)
Physical Intensity
General HealthSleep quality and quantityActiGraph Sensor; Nasa task load index (TLX)
Heat or coldBody temperatureThermistor
Fire and explosionSmoke and fire detectionInfrared; Light sensor; Temperature sensor
Caught-in/Struck-by objectProximity detection, location trackingRadio frequency identification (RFID); Ultra-wideband (UWB); infrared; radar; Bluetooth; Global positioning system (GPS)

Benefits of WSDs

BenefitsAuthors
Monitor emotional well-being and fatigueAhn et al. (2019), Aryal et al. (2017)
Observe stress levels, mental exhaustion, and emotional statesWang et al. (2017)
Investigating and treating psychological problemsArabshahi et al. (2021a)
Monitor workers’ heart ratesLee et al. (2017), Kamisalic et al. (2018), Hwang and Lee (2017), Hashiguchi et al. (2020)
Monitoring spinal biomechanics of workersArabshahi et al. (2021a)
Estimate energy expenditureLee et al. (2017)
Monitoring physical workload and posture recognitionAhn et al. (2019), Chen et al. (2017)
Detect construction hazards and reveal abnormal patternsJeon and Cai (2022), Arabshahi et al. (2021a)
Gait abnormalitiesYang et al. (2017)
Fall risk assessmentsNnaji et al. (2021)
Monitor and prevention of dustSmaoui et al. (2018)

Source(s): Table created by Author

Barriers to the adoption of WSDs

BarriersAuthors
Concern for usabilityLee et al. (2017)
Lack of integration with existing construction practices and operationsNnaji and Awolusi (2021)
Health and safety concernAbuwarda et al. (2022)
Initial costNnaji et al. (2021), Nnaji and Awolusi (2021)
Maintenance costDithebe et al. (2019)
Operating costGoodrum et al. (2011)
Cost of training and employing professionalsArabshahi et al. (2021a)
Uncertain cost-benefit relationDithebe et al. (2019)
Technology-related operational difficultiesNnaji and Awolusi (2021)
Challenge of power supplyHeller, 2015
Data management challengeAhmed et al. (2018)
Lack of proper information technology (IT) infrastructureDidehvar et al. (2018)
Technology immaturityGolizadeh et al. (2019)
Employees complianceAlizadehsalehi and Yitmen (2019)
Legal or ethical concernsHaikio et al. (2020)
Resistance to changeDidehvar et al. (2018)
Organization cultureAdriaanse et al. (2010)
Lack of government supportRogers et al. (2015)
Temporary nature of constructionAdriaanse et al. (2010)
PrivacyChoi et al. (2017)
Site-related issuesGolizadeh et al. (2019)
Manufacturing requirementSchall et al. (2018)
Lack of well-trained staffAkinbile and Oni (2016)
Long data processing timeArabshahi et al. (2021a), Nnaji et al. (2021)
High data storage capacityAbuwarda et al. (2022)
Interference with essential activitiesLee et al. (2017)
Individual privacy and ownership of dataNnaji et al. (2021)
Former unsuccessful experienceArabshahi et al. (2021b)

Source(s): Table created by Author

Demography of respondents

CategoryClassificationFrequency%
GenderMale9285
Female1615
Total 108100
Profession
Architect1211
Builder4441
Engineer1211
Quantity Surveyor4037
Total 108100
Employer type
Government Agency4844
Consultancy2019
Contracting4037
Total 108100
Highest Level of Education
BSc/B.Tech4441
HND109
MSc/M.Tech3633
PhD1817
Total 108100

Source(s): Table created by Author

Benefits derivable from using wearable safety devices

EmployerGovernment agenciesConsultancy firmsContracting firmsTotal Kruskal–WallisAsympSig
VariablesMSVRKMSVRKMSVRKMSVRK
Struck-by object4.1724.4024.2544.2422.9040.234
Caught-in or between hazard4.0444.3034.3524.2035.8720.053
Falling from a high level3.9264.3034.1074.0663.1820.204
Slips, trip or fall4.0834.6014.4514.3119.4060.009*
Stress4.3313.70104.0084.0086.1990.045*
Heat or cold (working environment)3.8893.70114.3524.0276.1980.045*
Explosions/fire3.71104.1083.90103.85103.4360.179
Electrocution3.9264.2064.0084.0085.0580.080
Cave in3.50113.8093.75113.65111.9750.373
Sensing environmental concerns (carbon monoxide, gas leaks etc.)4.0054.3034.2544.1542.8460.241
Collision avoidance3.9264.2064.2064.0754.0270.134

Note(s): The significant level at p ≤ 0.05

Source(s): Table created by Author

ANOVA of benefits derivable from wearable safety devices

WSDs adoption levelSum of squaresDfMean squareFSig
Struck-by object8.16932.7235.0960.002*
Caught-in or between hazard1.85830.6191.6240.188
Falling from a high level6.85532.2852.7370.047*
Slips and trips1.52530.5080.7580.520
Stress12.85534.2854.0090.010*
Heat or cold (working environment)7.78732.5962.6420.053
Explosions/Fire12.56934.1903.3760.021*
Electrocution2.47530.8250.9580.415
Cave in7.59332.5312.8290.042*
Sensing environmental concerns (carbon monoxide, gas leaks, etc.)2.27630.7591.1710.324
Collision avoidance4.62631.5422.0350.113

Note(s): The significant level at p ≤ 0.05

Source(s): Table created by Author

Barriers to the use of wearable devices

Employer typeGovernment agenciesConsultancy firmsContracting firmsTotalKruskal–WallisAsympSig
VariablesMSVRKMSVRKMSVRKMSVRK
Concern for usability2.50272.50242.65262.56240.6800.712
Lack of integration with existing construction practices and operations2.88143.2083.05173.00153.8220.148
Health and safety concern2.71192.30272.15292.43284.7920.091
Initial cost3.5813.3073.7013.5710.8720.647
Maintenance cost3.2523.4043.7013.44211.1090.004*
Operating cost3.0492.90123.5053.1977.6380.022*
Cost of training and employing professionals3.1343.4043.5543.3334.5670.102
Uncertain cost-benefit relation2.88142.90123.25143.02144.0300.133
Technology-related operational difficulties3.0872.70173.15163.04131.7440.418
Challenge of power supply2.88143.4042.5652.991611.5900.003*
Data management challenge2.63213.00113.4092.981716.4060.000*
Lack of proper IT infrastructure2.96123.5023.7013.33315.8360.000*
Technology immaturity3.1253.5023.4583.3156.7320.035*
Lack of well-trained staff3.1733.6013.30123.3063.9670.138
Employees compliance2.92123.1093.4093.13104.9450.084
Legal or ethical concerns2.33292.60202.70212.52272.8240.244
Resistance to change3.0492.90123.30123.11115.5060.064
Organization culture3.0492.60203.4093.091210.3900.006*
Lack of government support3.0872.60203.5073.15912.8700.002*
Temporary nature of construction2.82172.60202.85202.81180.9200.631
Privacy2.67212.80152.45272.61241.6930.429
Site-related issues2.67212.30273.00182.72207.2230.027*
Manufacturing requirement2.79182.50242.70212.70210.8790.644
Security3.1253.1093.25143.1780.4560.456
Long data processing time2.71192.70173.00182.81182.4130.299
High data storage capacity2.58252.70172.70212.65230.1780.915
Interference with essential activities2.63232.10292.30282.41294.5010.105
Individual privacy and ownership of data2.42282.50242.70212.54251.8460.397
Former unsuccessful experience2.58252.80152.70212.67220.9090.635

Note(s): Significant level of p ≤ 0.05 was adopted

Source(s): Table created by Author

KMO and Bartlett’s test

KMO and Bartlett’s test
Kaiser-Meyer-Olkin Measure of Sampling Adequacy0.756
Bartlett’s test of SphericityApprox. Chi-Square2,379.504
Df406
Sig0.000

Source(s): Table created by Author

Commonalities for the barriers to the use of wearable devices

BarrierInitialExtraction
Concern for usability0.6410.543
Lack of integration with existing construction practices and operations0.7530.631
Health and safety concern0.7210.502
Initial cost0.5530.243
Maintenance cost0.6930.656
Operating cost0.8020.864
Cost of training and employing professionals0.7230.562
Uncertain cost-benefit relation0.7700.595
Technology-related operational difficulties0.7270.571
Challenge of power supply0.8200.671
Data management challenge0.8790.654
Lack of proper IT infrastructure0.7510.454
Technology immaturity0.8020.757
Lack of well-trained staff0.8570.645
Employees compliance0.7030.555
Legal or ethical concerns0.7690.618
Resistance to change0.7960.766
Organization culture0.7970.713
Lack of government support0.7500.665
Temporary nature of construction0.8320.724
Privacy0.7920.677
Site-related issues0.7020.576
Manufacturing requirement0.7470.684
Lack of well-trained staff0.7440.687
Long data processing time0.8070.651
High data storage capacity0.7520.630
Interference with essential activities0.8630.825
Individual privacy and ownership of data0.8610.712
Former unsuccessful experience0.7860.753

Source(s): Table created by Author

Total variance explained for the adoption of wearable safety devices

ComponentInitial eigenvaluesExtraction sums of squared loadingsRotation sums of squared loadings
Total% of varianceCumulative %Total% of varianceCumulative %Total% of varianceCumulative %
110.66936.79136.79110.33035.61935.6194.52615.60815.608
22.92910.10046.8902.5788.88844.5083.43111.83127.439
32.0717.14154.0311.7556.05050.5582.7059.32636.765
41.6625.73059.7611.2824.42054.9782.4458.43145.196
51.3344.59964.3601.0183.51058.4882.0707.13852.333
61.2584.33868.6990.8472.92161.4091.8636.42358.756
71.1043.80572.5040.7722.66464.0731.5425.31664.073
80.9963.43575.939
90.9153.15679.095
100.7682.64881.743
110.7022.41984.162
120.5922.04386.205
130.5181.78887.992
140.4371.50889.500
150.4111.41890.919
160.3991.37592.294
170.3441.18893.481
180.3171.09394.574
190.2890.99595.569
200.2520.86896.437

Note(s): Extraction Method: Principal Components Analysis

Source(s): Table created by Author

Reliability test for components

Component factorsCronbach’s alpha coefficient
Factor 1 - Interference with essential activities related-barriers0.888
Factor 2 - Technology related barriers0.815
Factor 3 - Cost related-barrier0.778
Factor 4 – Legal/ethical related-barriers0.737
Factor 5 - Incompatibility with construction practices related-barriers0.588
Factor 6 - Human factor-related barriers0.841
Factor 7 - Knowledge-related barriers0.758

Source(s): Table created by Author

Factored matrix and principal factor extraction barriers to the adoption of wearable devices

CodeComponents
1234567
EB27Interference with essential activities0.816
EB28Individual privacy and ownership of data0.785
EB21Privacy0.774
EB20Temporary nature of construction0.766
EB26High data storage capacity0.574
EB22Site-related issues0.541
EB3Health and safety concern0.527
EB25Long data processing time
EB10Challenge of power supply0.777
EB11Data management challenge0.687
EB9Technology-related operational difficulties0.647
EB7Cost of training and employing professionals
EB12Lack of proper IT infrastructure
EB6Operating cost0.861
EB5Maintenance cost0.723
EB23Manufacturing requirement
EB4Initial cost
EB16Legal or ethical concerns0.653
EB15Employees compliance0.598
EB19Lack of government support
EB2Lack of integration with existing construction practices and operations0.685
EB13Technology immaturity0.550
EB1Concern for usability
EB8Uncertain cost-benefit relation
EB14Lack of well-trained staff
EB17Resistance to change0.715
EB18Organization culture0.664
EB29Former unsuccessful experience0.647
EB24Lack of well-trained staff0.585

Source(s): Table created by Author

Conflicts of interest: The authors have no competing interests to declare.

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Further reading

Li, X.P., Gu, L.C. and Jia, J. (2012), “Anti-collision method of tower crane via ultrasonic multi- sensor fusion”, International Conference on Automatic Control and Artificial Intelligence (ACAI 2012), 24-26 March 2012, Xiamen, China, pp. 522-525, doi: 10.1049/cp.2012.1031.

Corresponding author

Oluseyi Julius Adebowale can be contacted at: adebowaleoluseyi@gmail.com

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