Compared with traditional onsite construction, prefabricated construction has a more complex working environment, resulting in more safety risks. While cognitive failure has been identified as a primary cause of intentional unsafe behaviors, there remains a lack of knowledge on the formation mechanism underlying intentional unsafe behaviors among workers in precast construction. Using the Theory of Planned Behavior and the risk preference variable, this study constructs a theoretical model for intentional unsafe behaviors of precast construction workers. Data related to precast construction and safety management activities is collected from 208 frontline workers. Structural Equation Modeling is used to test and modify the theoretical model in order to identify the formation mechanism and pathway underlying intentional unsafe behaviors. The findings show that: (1) workers' perceptual behavior control, behavior and attitude, risk preference, and subjective norms influence their intention to engage in unsafe behavior and subsequently lead to intentional unsafe behavior; (2) the effect of personal risk preference on intentional unsafe behaviors is significant, contributing 7.71% to overall intentional unsafe behavior; and (3) the effects of the observed variables are more evident than the initial theoretical model. The most prominent of these are the effects of task intensity (IBC1), safety equipment (IBC2), worker behavior (IOW1), historical behavior (IBC3), and behavioral belief (BAA3). Finally, comprehensive measures to control the intentional unsafe behaviors of precast construction workers are recommended. The results of this study are useful for reducing the occurrence of intentional unsafe behaviors by workers and reducing the incidence of accidents in a complex manufacturing-oriented construction environment.
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http://dx.doi.org/10.1007/s11356-023-30894-x | DOI Listing |
Bull Emerg Trauma
January 2024
Guilan Road Trauma Research Center, Guilan University of Medical Sciences, Rasht, Iran.
Objective: Cycling is a healthy and pleasurable activity, but it can also be hazardous. The risk factors for cycling injury are unknown, considering the cycling infrastructure and cyclists' behavior in northern Iran. This study aimed to explain the experiences of injured cyclists admitted to Poursina Educational and Medical Center, Rasht in 2021, as one of the risk factors associated with cycling.
View Article and Find Full Text PDFJ Nepal Health Res Counc
October 2024
Ipas Nepal.
Background: For more than two decades abortion is legalized in Nepal, recognizing unsafe abortion as one of the leading but preventable cause of maternal morbidity and mortality. To safeguard safe abortion as women’s rights, several policies, guidelines, training manuals have been developed along with training human resources and increasing access to abortion services across Nepal. However, access to safe abortion services remains a challenge.
View Article and Find Full Text PDFTraffic Inj Prev
November 2024
Department of Industrial Engineering and Management, Ben-Gurion University of the Negev, Beer-Sheva, Israel.
Objectives: Currently, pedestrians' road-crossing decisions depend on the traffic at the crossing point, crossing opportunities, and circumstantial elements. Longer wait times on the curb and time pressure raise the number of traffic violations among pedestrians. The era of fully autonomous vehicles (FAVs) promises new interactions.
View Article and Find Full Text PDFJ Agromedicine
January 2025
Department of Agricultural Development, Democritus University of Thrace, Orestiada Greece.
Objectives: The level of greenhouse farmers' personal protection in pesticide use and the possibility of environmental protection through farmers' willingness to reduce chemical sprayings were assessed in Khuzestan Province, Iran.
Methods: A survey of 80 active greenhouse vegetable growers was carried out in 2021 with face-to-face interviews. Willingness to reduce chemical sprayings was examined with the theory of planned behavior (TPB) model.
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