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Article

Exploring the Effects of Safety Climate on Worker’s Safety Behavior in Subway Operation

1
School of Mechanics and Civil Engineering, China University of Mining and Technology, Xuzhou 221116, China
2
Research Center for Digitalized Construction and Knowledge Engineering, China University of Mining and Technology, Xuzhou 221116, China
*
Author to whom correspondence should be addressed.
Sustainability 2020, 12(20), 8310; https://doi.org/10.3390/su12208310
Submission received: 15 September 2020 / Revised: 30 September 2020 / Accepted: 30 September 2020 / Published: 9 October 2020

Abstract

:
The safety climate is becoming more and more important in the processes of subway operation safety management due to various accidents. The research objective of this study is to explore the effects of safety climate and personal factors on safety behavior in subway operation. First, a conceptual model is developed based on the literature review and expert experience. Then, data are collected from 352 workers in the Xuzhou subway operation company by questionnaire survey. Third, the structural equation model is employed to do model analysis based on SPSS and AMOS, and the final model is achieved through a serious of model tests and modification. At last, the quantitative effect of safety climate on worker’s safety behavior in subway operation is obtained and analyzed. The results show that the descending order of total influence effect of safety climate on safety behavior is safety attitude (0.36), safety communication (0.265), safety policy (0.238), safety education and training (0.1), management commitment (0.099), and safety participation (0.073), respectively. The total influence effects of mediator variables (safety awareness and safety ability) are 0.242 and 0.194, respectively. This study would be beneficial by offering recommendations in regard to worker’s safety behavior to raise the safety level in subway operation.

1. Introduction

In the last few decades, the effects of safety climate on worker’s safety behavior have attracted the interests of many researchers in various industries [1,2,3]. Because of the different perspectives of researchers, the results of these studies have differed. Some researchers indicated that there is an existing direct relationship between safety climate and safety behavior, while other researchers argued that the relations should be mediated by other variables [4]. Due to the diverse behavior characteristics and influence factors in different industries, their quantitative relations must be somewhat different.
As the lifeblood of urban development, public transportation is related to urban development and residents’ lives. Compared with other modes of transportation, public transportation plays a positive role in improving efficiency, saving resources, and reducing pollution. Cartenì et al. [5] mentioned that the e-Mobility Bus, as an environmentally friendly and powerful energy-saving system, plays an important role in sustainable urban transportation. Ko and Oh [6] pointed out that wireless charging trams overcome the shortcomings of traditional trams. Wireless charging electric trams can be powered remotely from wireless charging infrastructure on the railway and can store the remaining electricity in the battery. Macioszek et al. [7] indicated that the bicycle sharing system is an effective tool to promote various modes of transportation and can be used as an element to improve the sustainable transportation of cities. It brings great advantages in effectively reducing traffic congestion and using urban space. In many cities around the world, people tend to establish Park and Ride Systems in the suburbs, which enable users to combine personal transportation with public transportation, thereby helping to reduce the number of cars entering the city center [8]. Corazza et al. [9] believe that in urban transportation, local railways can not only solve the pollution problem of the urban environment, but also provide a larger capacity of transportation methods to solve the city’s growing transportation demand. After the opening of the subway, due to its advantage of speed and rapidity compared with other means of transportation, it has attracted many passengers to transfer from other means of transportation to the subway.
The subway is an important part of urban public transport system in large cities. According to the statistical data provided by China’s Ministry of Construction, up to 1 June 2020, 41 cities in total have been approved to construct subway systems by China’s central government. Of those cities, 27 subway systems have been put into operation with a total length of approximately 4000 km. In addition, there are still several other cities who have submitted their application to the central government. Owing to the nature of business and social significance of the subway system, its operation safety involves many issues, such as staff safety, passengers’ safety, and the quality of the train service. Notwithstanding continuous improvements in subway operation that have been made with time, injuries and accidents occur in daily operation from time to time [10]. Safety and the steady operation of the subway system heavily relies on committed staff of the operations division working around the clock performing numerous running and maintenance activities. Unfortunately, Heinrich [11] indicated that approximate 88% of the preventable accidents were triggered by unsafe behavior. In reality, human error and unsafe behavior are critical causes of various accidents [12]. Similarly, human behavior exerts a tremendous impact on the reliability and safety of subway operation. For instance, owing to the errors of personnel operation, which were non-compliance with safety procedures, two trains collided on 27 September 2011, in Shanghai, resulting in 284 citizens injured and severe social influence. On 17 September 2019, eight passengers were injured when a train suddenly derailed tens of meters in front of the station while approaching Hung Hom station.
Unsafe behaviors of worker and passenger are one of the key predisposing factors of subway accidents. In China, most of the subway systems have been suffering from high intensity of operation due to the large volume of passengers [13]. Under such context, unsafe behaviors from staff and passenger can hardly be prevented or even held back, giving rise to personal, financial, and social costs at irregular intervals. From a recent study of Wan et al. [14], 65% of the subway operation incidents from 2002 to 2012 were caused by unsafe passenger behaviors. Within that category, suicide is the most typical unsafe behavior and has been given much attention [15,16]. There are also variety kinds of unsafe behaviors regarding staff, such as exceeding speed limit, violation scheduling, management deficiency, and poor maintenance, to name a few. For example, the accident that occurred in Beijing subway on 5 July 2011, was triggered by the unsafe behavior of maintenance staff, and a similar accident occurred at Line 10, Shenzhen Subway, on 27 August 2019. Zhang et al. [17] grouped precursors to subway accidents into three categories, including human factors, equipment factors, and environmental factors. The statistical analysis of three factors came to the conclusion that unsafe behavior is an important direct cause of operation accidents.
For the purpose of preventing subway accidents, one of the key issues is to acknowledge how to eliminate unsafe behavior and promote safe behavior. Kyriakidis et al. [18] indicated that a better safety climate with commitment and involvement is appropriate to reduce subway accidents caused by human failure based on precursor analysis. Yuting chen et al. [19] indicated that safety climate not only affected workers’ safety performance but also indirectly affected their psychological stress. To our knowledge, there is no systematic study which has explored the effect of safety climate on worker’s safety behavior in subway operation. The mechanisms of safety climate’s influence on worker’s safety behavior is little known in subway operation. Additionally, its specific dimensions also need further exploration. Hence, from the perspective of improving subway operation safety, identifying and quantifying the effect of the safety climate on safety behavior is of great significance due to practical necessity. Furthermore, targeted measures and regulations can be established to promote safety behavior during daily work. Within such a background, an empirical study is implemented to establish and validate a conceptual model of the effects of safety climate on worker’ safety behavior in subway operation.
The rest of this paper is organized as follows. In Section 2, a literature review is presented on safety climate and safety behavior, which contributes to the production of the theoretical basis for developing the conceptual model. The structural equation model and data collection are expatiated in Section 3. Subsequently, the results are displayed and a discussion of findings, potential contributions, limitations, and suggestions is provided. In the end, the conclusions of this study are summarized and analyzed.

2. Literature Review

2.1. Safety Climate

Zohar [20] originally developed the concept of safety climate, and constructed a 40-item measure of organizational safety climate. Indicated by Zohar, safety climate could be utilized as a powerful tool for understanding safety behavior. The definition of safety climate was introduced by Neal and Griffin as “individual perceptions of policies, procedures, and practices relating to safety in the workplace”. Petitta believes that safety climate is defined as a manifestation of these beliefs, principles and policies in workplace practices and behaviors. Following this definition, safety climate could be deemed as a current reflection of underlying safety culture [21,22,23]. Various studies were carried out to investigate the influencing factors of safety climate, along with establishing numerous assessment instruments. Nevertheless, in different industries, the influencing factors of safety climate are not in agreement, and sometimes they would be contradictory [24,25]. In spite of inconsistencies, it had been empirically proven that safety climate could have a significant impact on safety-related behaviors across various industries [26,27,28,29,30,31]. The general conclusion would be that workers representing workplaces with a more positive safety climate demonstrate higher levels of hazard recognition and safety risk perception, and the better the safety climate, the less the unsafe behaviors and related accidents. For instance, empirical evidence supported this conclusion in construction industry [32,33]. Li et al. [34] result show that six SCDs (workers’ self-perception of safety, workers’ involvement in safety, co-workers’ interaction, safety environment, safety management involvement, and safety personnel support) were significantly important to the safety climate of the construction teams.
The importance of safety climate has been widely accepted. For measuring safety climate, a number of key factors encompassing safety commitment, safety policy, safety training, and social support were employed in various studies. Among those factors, safety commitment for management should be the most fundamental one. Only when perceiving high commitments on safety made by senior managers would the supervisors and workers show their increasing willingness to enhance the safety level to cater to the safety management expectations. The majority of existing safety climate measures place either direct or indirect emphasis on leader safety commitment [35]. The influence of management safety commitment on safety outcomes was explored and uncovered in some research [36,37]. Safety policy can be seen as the surface manifestation of belief and value concerning operation safety in company. It is primarily about compliance with safety training, safety procedure, safety resource, and safety feedback. DeJoy et al. [38] indicated that safety policy plays an important role in safety climate. Safety training refers to vocational education and training in order to improve personal safety knowledge and skills. It is one of the important parts of safety climate while analyzing the relationship between safety performance and safety climate [39]. Social support, referring to safety support from coworkers and supervisors, was believed to be a crucial factor at the microscopic group level. The importance of social support consisted in the fact that the interactions among colleagues had an outstanding contribution to work behavior [29]. Social support has been demonstrated to encourage safety communication and safety performance to some extent [40,41]. Pressure from production could lead to a lower priority on safety determined by managers and staff, under which some basic safety activities might be ignored. Furthermore, production pressure could result in unsafe behaviors for the sake of fulfilling the required works and avoiding possible adverse consequences [36]. Han et al. [42] pointed out that perceived production pressure could bring about a degradation of safety management and an increase in accident rate. In addition, safety knowledge and safety motivation were also key factors. Campbell et al. [43] indicated that there are three determinants in work performance, including declarative knowledge, procedural knowledge, and motivation. Subsequently, declarative knowledge and procedural knowledge are gradually combined as safety knowledge in order to explain safety behavior. Christian et al. [44] indicated that safety motivation and safety knowledge were strongly related to safety performance.
From the above analysis, safety climate involves a wide range of factors, and the study of safety climate in different industries also occupy an increasingly important significance. The safety climate not only affects the safety performance of the enterprise, but also is closely related to the working environment and safety condition of the enterprise. The security climate has proven to have a positive and pervasive impact on a range of security outcomes at the individual and overall level [45].

2.2. Safety Behavior

Safety behavior refers to all behaviors in which people obey the work rules and can protect themselves, tools, equipment, and other materials in the event of a safety accident. Research about safety behavior has mainly paid attention to specific behaviors or actions exhibited by employees. From the perspective of organizations, safety behavior is regarded as compliance actions with safety policies and procedures, for instance, using protective facilities correctly and reducing exposures to potential hazards. Habitual noncompliance behaviors against safety procedures and policies may make the whole operating system vulnerable to failure, and it can be regarded as a root cause of incidents or accidents. Some subsequent studies related to safety behaviors supported this point of view. Hofmann and Stetzer [46] found that both the individual and group-level variables are associated with unsafe behaviors, and safety climate and unsafe behaviors were associated with actual accidents in American chemical processing plants, which suggested that exploring the mechanism of unsafe behavior was most essential to reducing noncompliance and enforce safety management. Griffin and Neal [47] classified safety-related behaviors into two kinds, namely safety compliant behaviors and safety participation behaviors. The first behavior was used to describe “the core safety activities that need to be carried out by individuals to maintain workplace safety”, while the second one was deemed as “may not directly contribute to workplace safety, but do help to develop an environment that supports safety”. Safety compliance describes adherence to core safety activities that must be carried out by individuals to maintain a safe workplace. Safety participation, with its voluntary nature, usually refers to safety behavior that extend normal requirements [48]. Based on the organization’s rules and regulations, if an employee lacks safety participation, then the organization cannot punish the employee. If an employee takes safety actions, then no distinct rules and regulations are implemented for rewarding such behavior. That is, safety participation cannot be directly recognized through formal procedures [49].
A study by Neal and Griffin [50] supported the fact that staff would like to allocate effort to some discretional safety activities when perceiving safe working climate. A series of safety policies, rules, procedures, standards, regulations, and specific criteria within an organization or system were crucial to gain better safety outcomes, and safety initiative also played an important role at individual level [51]. Baysari et al. [52] concluded that violations occur regularly in the rail industry, and the majority of unsafe behaviors are caused by a slip in attention associated with decreased alertness and physical fatigue. Langford et al. [53] provided a novel model to analyze safety behavior in bicycle riding based on GPS data, and four types of unsafe behavior were evaluated, including wrong way riding, speed, compliance with traffic signals, and compliance with stop signs. It is supposed that this method could be extended to any kind of road user or vehicle. Aryee et al. [54] pointed out that safety initiative will lead to actions that minimize the occurrence of safety-related events and injuries. For example, promotion focus will motivate safety initiatives such as putting pressure on management to take steps to improve safety conditions, which will minimize the frequency of safety related events or near misses.
The importance of safety behavior has been recognized in the daily safety management. To improve the level of safety production, we must improve the unsafe behavior of employees. Human beings are the most active factor in safety production. The human factor is the main reason for the occurrence and prevention of safety accidents. Choi et al. [55] concluded that improving employees’ willingness to comply with management norms is an effective way to improve employees’ safety behavior. According to the conclusion of the comprehensive model, Guo et al. [36] suggest combining the strategies of “safety organization”, “safety group”, and “safety worker” to reduce the unsafe behavior on the construction site.

2.3. Conceptual Model

Based on existing research and the actual situation of subway operations, a conceptual model was established as shown in Figure 1. It contains a series of hypotheses, which can be introduced as follows.
Hypothesis 1a:
Management commitment (MC) has a direct positive impact on safety awareness (SAW).
Hypothesis 1b:
Management commitment (MC) has a direct positive impact on safety behavior (SB).
Hypothesis 2a:
Safety communication (SC) has a direct positive influence on safety awareness (SAW).
Hypothesis 2b:
Safety communication (SC) has a direct and positive influence on safety behavior (SB).
Hypothesis 3a:
Safety policy (SPO) has a direct and positive influence on safety awareness (SAW).
Hypothesis 3b:
Safety policy (SPO) has a direct and positive influence on safety behavior (SB).
Hypothesis 4a:
Safety education and training (SET) have a direct positive influence on safety awarenes s (SAW).
Hypothesis 4b:
Safety education and training (SET) have a direct positive impact on safety behavior (SB).
Hypothesis 4c:
Safety education and training (SET) have a direct positive influence on safety ability (SAB).
Hypothesis 5a:
Safety participation (SPA) has a direct and positive influence on safety awareness (SAW).
Hypothesis 5b:
Safety participation (SPA) has a direct and positive influence on safety ability (SAB).
Hypothesis 6a:
Safety attitude (SAT) has a direct and positive influence on safety awareness (SAW).
Hypothesis 6b:
Safety attitude (SAT) has a direct and positive influence on safety behavior (SB).
Hypothesis 6c:
Safety attitude (SAT) has a direct positive influence on safety ability (SAB).
Hypothesis 7a:
Safety awareness (SAW) has a direct positive influence on safety ability (SAB).
Hypothesis 7b:
Safety awareness (SAW) has a direct positive influence on safety behavior (SB).
Hypothesis 8:
Safety ability (SAB) has a direct and positive influence on safety behavior (SB).
In addition, the item measures of model constructs are displayed in Table 1. The substance and content of the majority of the 39 questions has been adopted from the existing questionnaires of Al-Refaie [56], Guo et al. [36], Neal et al. [12], Vinodkumar and Bhasi [57], Vredenburgh [58], Zohar [20], and a variety of related reports. The items in this draft questionnaire had been discussed with safety experts and senior managers to ensure their validity. Then, a pilot study was performed in order to gain feedback and clarify these items.

3. Methodology

3.1. Structural Equation Model

Structural equation model (SEM) is a powerful method to analyze and evaluate the causal relations based on statistic data and reasonable hypotheses [59,60,61,62]. There are two key points in SEM, one is using a series of regression equations to represent the causal processes, the other is modelling the structural relations pictorially to conceptualize the theory [56]. Relation hypothesis is the indispensable basis and guarantee for establishing a structural equation model. The hypothesized model could be tested in systematical analysis to judge to what extent it is matched with the statistical data.
The general procedures of applying SEM are as follows. First, according to existing knowledge and theories, a structural model of the relationships among identified variables is established based on hypothesis. Secondly, an investigation is implemented to gain the data of observed variables. Third, SEM is employed to verify the reliability and validity of the proposed model. Fourth, the final model is achieved by modifying the proposed model based on path analysis. At last, the results are obtained by calculating the final model.

3.2. Data Collection

Questionnaire survey is one of the most popular approaches to collecting specific data, which is particularly applicable for cases in which direct data could not be obtained. In this research, the data collection was implemented in the manner of a two-stage process to keep its effectiveness.
Taking into account the good cooperation between the Xuzhou Metro Corporation and the China University of Mining and Technology, the subjects of this questionnaire are mainly subway operators of the Xuzhou Metro, that is, those who are or have been engaged in relevant subway operations and other staff with operational safety management. In order to make the scope of the study wider and draw more general conclusions, the questionnaire does not provide options for positions to ensure data are collected for senior and middle managers and workers at the grass-roots level. This research questionnaire is divided into three parts: the first part is the introduction, so that the survey subjects understand the significance and content of the survey; the second part is to understand the basic situation of the survey subjects, including the gender, age, length of service, and education; the third part is the main part of the questionnaire, which includes the safety climate scale, the intermediary variable scale, and the safety behavior scale.
This questionnaire uses the Likert 5-point scoring method, divided into the forward question and the reverse question; among the positive questions, “strongly agree”, “agree”, “general”, “disagree”, and “strongly disagree” correspond to 1, 2, 3, 4, and 5 points respectively. In contrast, in this questionnaire, the second and third questions about safety attitude are reverse questions.
In this study, 450 samples were distributed and 422 samples were collected. The recovery rate of the questionnaire was 93.8%. After removing the invalid questionnaires, such as incomplete answers and identical answers, there were valid questionnaires 352, and the effective rate was 83.4%.

4. Results

4.1. Demographic Characteristics

In Table 2, the demographic characteristics of attendees are presented. As can be seen from Table 2, the age distribution of the respondents is mainly 21–30 years old and 31–40 years old in terms of age, while about half of them have worked for more than five years; the distribution of junior college, bachelor’s degree and master’s degree is more average. From the demographic characteristics of the sample, it can be seen that its variables are more in line with the actual situation, meet the sample requirements for this survey, and avoid the accidental factors caused by a single sample, which gives this study more universal and practical significance.

4.2. Reliability Test

There are four methods to measure reliability: test–retest coefficient, parallel-forms Coefficient, spit-half reliability and Cronbach’s a. Cronbach’s alpha (α) coefficient is powerful for testing the data reliability [63]. Cronbach’s alpha (α) coefficient is currently the most commonly used method of reliability analysis, which can handle multiple scoring measurements and overcome the shortcomings of the partial split-half method and can be used in conjunction with exploratory factor analysis. Therefore, the Cronbach’s alpha (α) coefficient is used in this paper.
In general, when the coefficient is greater than 0.7, it means that the new scale is better, and there is no need to adjust the measuring tools; when the coefficient is higher than 0.8, or even higher than 0.9, it is in a very ideal state. We used statistical analysis software SPSS to further analyze the data. The values of Cronbach’s α were calculated by SPSS 24.0, and the CITC (Corrected Item Total Correlation) and reliability analyses of the safety climate, mediator variables, and safety behavior are shown in Table 3.
It can be seen from the above table that the CITC values of each initial scale are all greater than 0.5 and each value is greater than 0.7, which satisfies the related critical value condition and indicates that each initial total scale and subscale has good consistency and stability.

4.3. Exploratory Factor Analysis

Exploratory factor analysis (EFA) is one of the most commonly used methods to test the validity of structure. It is a technique to explore the basic structure of multivariable and deal with multivariate dimensionality reduction, which is used to identify potential factors in potential structures. In this study, in order to avoid using the original data repeatedly, 150 samples were randomly selected, and EFA was implemented with SPSS 24.0 software. The Kaiser–Meyer–Olkin (KMO) and Bartlett’s sphericity tests were used to determine the correlation between the potential conformations. It is generally believed that exploratory factor analysis is appropriate when KMO is greater than 0.6 and the significance probability of Bartlett sphere test is less than 0.001 Sig. In exploratory factor analysis, if the item factor load of the latent variable is greater than 0.5, the scale has good convergence validity. The item factor load of the latent variable was less than 0.5 in the other variables, which indicated that the latent variable had good discriminant validity. Exploratory factor analysis was used to verify the validity of the scale.
Firstly, the exploratory factors of safety climate were analyzed. SPSS 24.0 was used for exploratory factor analysis of the safety climate scale. KMO and Bartlett’s tests of sphericity were performed on the 24 items of the safety climate. As shown in Table 4, KMO is suitable for factor analysis. The probability of significance of the χ 2 statistic is close to 0, less than 1%, indicating the data is relevant and meets the criteria.
The factor extraction method was principal component analysis, and the rotation method was the maximum variance method. All factors with characteristic value greater than 1 were extracted. Six factors were obtained by orthogonal rotation. The characteristic roots were 11.029, 2.191, 1.549, 1374, 1.115, and 1.004, respectively, and the cumulative variance interpretation rate was 76.092%. By analyzing the items of measurement of different factors, it is proved that it is reasonable to divide the dimension of safety into management commitment, safety communication, safety policy, safety education and training, safety participation, and safety attitude.
Table 5 is the rotating composition matrix of the six factors. First, the items with factor loading less than 0.5 were checked and deleted under the principal component, so SC5 and SPA4 were deleted. After eliminating the items with small factor loads and those that do not conform to the preset dimensions, a total of 22 items remained.
Secondly, exploratory factor analysis of intermediate variables was carried out. KMO and Bartlett‘s test of sphericity were performed on eight items of the intermediary variable (safety awareness, safety ability). As shown in Table 6, KMO is suitable for factor analysis. The probability of significance of the χ 2 statistic is “0.000”, less than 1%, indicating the data is relevant and meets the criteria.
SPSS24.0 was used to carry out exploratory factor analysis on the medium variable scale. The method of factor extraction was principal component analysis, and the method of rotation was the maximum variance method. All factors with eigenvalues greater than 1 were extracted. The eigenvalues of the two factors were 4.407 and 1.251, respectively, and the cumulative variance interpretation rate was 70.729%. By analyzing the measurement items of different factors, it is proved that it is reasonable to set safety awareness and safety ability as intermediary variables.
Table 7 is the composition matrix after the medium variable is rotated. From the data in the table, it can be seen that eight items of measurement are well distributed under two principal component factors without cross-loading. Moreover, the factor load of each item under single factor is greater than 0.5, which indicates that the data of the item under other factors are all less than 0.5, the results showed that the data of items in the scale had good validity.
Finally, the exploratory factor analysis of safety behavior was carried out. KMO and Bartlett‘s test of sphericity were performed on the seven items of safety behavior. As shown in Table 8, KMO is suitable for factor analysis. The probability of significance of the χ 2 statistic is “0.000”, less than 1%, indicating the data is relevant and meets the criteria.
SPSS24.0 was used for exploratory factor analysis of the safety behavior scale. The factor extraction method was principal component analysis, and the rotation method was the maximum variance method. All factors with characteristic value greater than 1 were extracted. Only one factor can be obtained by orthogonal rotation, the characteristic root is 4.266, and the cumulative variance interpretation rate is 60.939%. It is in accordance with the preset dimension, which proves the rationality of the scale setting.
Table 9 is the composition matrix after the rotation of the safe behavior. From the data in the table, it can be seen that the factor loads of each item of the seven measurement items are all over 0.5 under one principal component factor, which indicates that the item setting is more suitable, and all items may be retained.

4.4. Confirmatory Factor Analysis

The remaining 202 questionnaires without the deleted items were used to do confirmatory factor analysis (CFA) using Amos software 24.0 in this study. According to the conceptual model and EFA results, a structural equation model could be established to measure the effect of safety climate on worker’s safety behavior in subway operation, as depicted in Figure 2. The observed variable is represented as a rectangle, the latent construct is represented as an oval, and the residual is represented as round. Moreover, the arrow between latent constructs represents the influence relationship.
Further, chi-square, root mean square error of approximation (RMSEA), goodness-of-fit (GFI), Tucker Lewis index (TLI), and standardized root mean residual (SRMR) are employed to judge the goodness-of-fit of data. In addition, the average fitting index (IFI), comparative fitting index (CFI), and frugality adjustment index (PGFI, PCFI) can be used as auxiliary discrimination.
Convergent validity of the model can be estimated through factor loading, composite reliability (CR), and average variance extracted (AVE). As a good rule of thumb, standardized factor loadings should be greater than or equal to 0.50 due to statistical significance. The minimum thresholds of CR and AVE are 0.7 and 0.5, respectively.

4.4.1. Confirmatory Factor Analysis of Safe Climate

(1) Construct validity of safety climate
Using the software Amos24.0, the safety climate was analyzed by confirmatory factor analysis (CFA) to analyze its construct validity. According to the relevant criteria in Table 10, the fitting degree of the safety climate model is good, and all meet the corresponding standards.
(2) Convergent validity of safety climate
As shown in Table 11, in the causal path, the absolute values of all path coefficients CR were greater than the reference value criterion of 0.7, and P < 0.05, indicating that a significant test had been passed.
(3) Discriminant validity of safety climate
According to Table 12, there is a significant correlation among the dimensions ( P < 0.01), and the correlation coefficient is less than the square root of AVE, which means there is a certain correlation among the latent variables, and there is a certain degree of differentiation between them. Therefore, the discriminant validity of this scale is ideal. The diagonal in the table is the AVE value.

4.4.2. Confirmatory Factor Analysis of Intermediate Variable

(1) Construct validity of Intermediate variable
As shown in Table 13, the χ 2 / d f value of the mediating variable is 2.090, the values of rand RMSEA are all less than 0.08, the indexes of GFI, TLI, IFI, and CFI are all more than 0.9, and the values of PGFI and PCFI are also more than 0.5. The results show that the data fitting degree of the medium variable is good and meets the critical value requirement of each index.
(2) Convergent validity of intermediate variable
As shown in Table 14, the absolute value of the path coefficient CR is above 0.8, while the AVE value is above 0.6, and all the indexes are above the critical value. The results show that the validity of the questionnaire data of safety awareness and safety ability is ideal, and the fitting degree of the model of safety awareness and safety ability is good.
(3) Discriminant validity of intermediate variable
According to Table 15, there is a significant correlation between safety awareness and safety ability ( P < 0.01), and the correlation coefficient between them is less than the square root of AVE; that is to say, there is a certain correlation between two intermediate variables, and there is a certain degree of distinction between them. Therefore, the discriminant validity of this scale is ideal.

4.4.3. Confirmatory Factor Analysis of Safety Behavior

(1) Construct validity of safety behavior
As shown in Table 16, the χ 2 / d f value of safety behavior is 1.565, the RMR value and RMSEA value are less than 0.08, the GFI, TLI, IFI, and CFI are all more than 0.9, and PCFI is also more than 0.5. Although PGFI is less than 0.5, its value of 0.485 is close to 0.5. The results show that the data fitting degree of safety behavior is good and meets the critical value requirements of each index.
(2) Convergent validity of safety behavior
As shown in Table 17, the absolute value of path coefficient CR between safety behaviors is 0.899, and the AVE value is 0.561. This indicates that the convergence validity of safety behavior questionnaire data is ideal, and the fitting degree of safety behavior model is good.

4.5. Model Modification

According the evaluation results, the SEM meets the corresponding requirements. Then, the SEM can be optimized by path analysis, which can test the aforementioned hypotheses. The critical ratio is used to do path analysis in this study. Critical ratio is the ratio between the parameter value and the standard error of the parameter, and it should be greater than 1.96 if P is less than 0.05. Model modification can be executed by deleting the non-significant paths one at a time. The path with lowest value of critical ratio should be regarded as the first candidate for deletion [57]. Following this trimming procedure, the final model can be obtained, as shown in Figure 3.
As shown in Table 18, this is the path analysis for the final model. The path coefficient of CR can be found by observation. The absolute value is between 2.049 and 3.843, which is much larger than the reference standard of 1.96. The standard error (SE) of each path coefficient was significantly reduced, and all passed the significance test. The “***” in the table means the P value is too small to be shown.
As shown in Table 19, the bootstrap mediator effect test is standardized. The intermediate effect of the model was tested by the bootstrap program in the structural equation model. Using the repeated random sampling method, 1000 bootstrap samples were sampled from the data (N = 352), an approximate sampling distribution was generated, and the 90% confidence interval of the mediating effect was estimated by the 5th percentile and 95th percentile. It is obvious that the confidence interval of the data does not include 0, which indicates that the mediating effect is statistically significant.

4.6. Running Results of Final Model

The standardized path coefficient among latent constructs in final model can be obtained by calculation, as shown in Figure 4.

5. Discussion

5.1. Discussion of Findings

The influence effects among latent constructs can be divided into three kinds, including direct influence effect, indirect influence effect, and total influence effect. The direct influence effect is the direct effect of the causal variable on the resulting variable; it is measured by the path coefficient. The indirect effect is the indirect effect of the causal variable on the resulting variable by influencing the mediator variables. The total influence effect is the sum of the direct influence effect and indirect influence effect, and it can comprehensively reflect the influence effect of each latent construct on safety behavior. The direct, indirect, and total influence effect among latent constructs are expatiated in Table 20. The descending order of total influence effect of safety climate on safety behavior is SAT, SC, SPO, SET, MC, and SPA, and the values of total influence effect are 0.360, 0.265, 0.238, 0.100, 0.099, and 0.073, respectively. In addition, the total influence effects of SAW and SAB are 0.329 and 0.228, respectively. The SET, MC, and SPA have the lowest impact on safety behavior. It can be explained that SPA, MC, and SET only bring indirect impact to safety behavior by promoting safety awareness and improving safety ability. However, the indirect influence is far less than direct influence according to the computation rule. This is why SET, MC, and SPA have a low impact on safety behavior.

5.2. Potential Contributions for Subway Operation Safety Management

The potential contributions of this study can be summarized as follows. First, the proposed dimensions and indicators could be used to measure the safety climate of subway operation. The scale could be altered for various subways in different cities and more details are needed to tailor its application. Second, it is beneficial to understand the mechanisms of safety climate influences on worker’ safety behavior. The influence paths are identified and their standardized path coefficients are calculated and analyzed. It is evident that the formation of safety behavior in subway operation can be traced back to management and individual level. The study could enable staff in their daily work to be more conscious to avoid unsafe behavior, enhance their own safety awareness, and improve their own safety ability. Meanwhile, employees can also find problems at work and put forward methods and countermeasures to improve safety management. Third, it is beneficial to enhance the safety performance by paying more attention to the key influence paths and indicators. For instance, managers and supervisors should put more focus on safety communication, safety policy, and safety attitude. It is beneficial to reduce the occurrence of operational accidents due to the unsafe behavior of employees. In order to promote safety management and sustainable development, it is possible to apply this type of study in other regions of the world, such as Europe and the United States. According to the actual situation in different regions, the research results and suggestions could be obtained through this research process.

5.3. Limitations of This Research

There is no mature measurement scale for exploring the effects of safety climate on worker’s safety behavior in subway operation, and the safety behavior scale of other research area sis used for reference in this study. Two limitations need to be taken into account to interpret the research results. First, six dimensions (MC, SC, SPO, SET, SPA, and SAT) are used to measure safety climate, and two mediator variables (SAW and SAB) are taken into account in subway operation. Some unimportant and negligible factors may not be considered in this study. Second, this study is only implemented at project level (Xuzhou subway) and suitable sample size. The results may be slightly different in Shanghai or Beijing. Future study is needed to seek a larger sample size and consolidate the results of this study.

5.4. Suggestions

According to the research results and discussion, it can be seen that relevant effective measures should be taken to promote the safety behavior of subway operation workers. First, enhancing safety communication in daily work: Sharing safety knowledge, experience, and opinions will help to improve the safety behavior to a large extent. Hence, creating a good organizational environment is also important. Subway enterprises should encourage safe communication among employees, cultivate the concept of safe communication, and maintain a good safe communication channel to ensure timely feedback and resolution of problems. Second, developing and implementing perfect safety policies: Safety policy should be updated according to operating experience and occurred accidents continuously. Third, strengthening safety training: Subway operation companies should pay attention to safety education and training of workers. It will help workers to acquire sufficient safety knowledge and safety skills, and then the workers could avoid a variety of low-level error and reduce unsafety behavior. Fourth, implementing management safety commitment: Due to the particularity of management status, its attitude and behavior towards safety have a great impact on the workers. If the workers can deeply appreciate the management’s safety commitment, they will be incentivized to enhance safety awareness and improve safety behavior. Fifth, encouraging safety participation: Workers can improve their safety performance by participating in safety activities, such as developing safety plans and accident prevention measures.

6. Conclusions

This research aimed to improve the understanding and insight into the mechanism by which safety climate and individual factors affect worker’s safety behavior in subway operation. It was envisaged that this study could help managerial personnel to deeply understand the shaping mechanisms of safety behavior and the develop necessary corresponding strategies that can improve safety management in the complex and dynamic subway operating environment.
In this study, a conceptual model of the effect of safety climate on safety behavior was constructed at first, and the data were subsequently collected by a questionnaire survey in Xuzhou subway operation company. Then, SPSS software 24.0 and Amos software 24.0 were employed to analyze the data and structural equation model. The main results are as follows. The hypothesis that management commitment has a positive and direct influence on safety awareness is supported, but its impact on safety behavior is invalid. Management commitment can have an indirect impact on safety behavior through safety awareness and safety ability, and its total influence effect is 0.099. The hypothesis that safety communication has a positive and direct influence on safety awareness and safety behavior is supported. Safety communication can have an indirect impact on safety behavior through safety awareness and safety ability, and its total influence effect is 0.265. The hypothesis that safety policy has a positive and direct influence on safety behavior is supported, but its impact on safety awareness is invalid. Its total influence effect is 0.238. The hypothesis that safety education has a positive and direct influence on safety awareness and safety ability is supported, but its impact on safety behavior is invalid. Safety education can have an indirect impact on safety behavior through safety awareness and safety ability, and its total influence effect is 0.100. The hypothesis that safety participation has a positive and direct influence on safety ability is supported, but its impact on safety awareness is invalid. Safety participation can have an indirect impact on safety behavior through safety ability, and its total influence effect is 0.073. The hypothesis that safety attitude has a positive and direct influence on safety awareness and safety behavior is supported, but its impact on safety ability is invalid. Safety attitude can have an indirect impact on safety behavior through safety awareness and safety ability, and its total influence effect is 0.360. The hypothesis that safety awareness has a positive and direct influence on safety ability and safety behavior is supported. Safety awareness can have an indirect impact on safety behavior through safety ability, and its total influence effect is 0.329. The hypothesis that safety ability has a positive and direct influence on safety behavior is supported. Its total influence effect is 0.228. The total effect of safety climate on safety behavior was as follows: safety attitude (0.360), safety communication (0.265), safety policy (0.238), safety education and training (0.100), management commitment (0.099), and safety participation (0.073). The total effects of safety awareness and safety capability on safety behavior were 0.329 and 0.228, respectively. It is not difficult to see that for safety education training, management commitment, and safety participation, the effect of exerting influence on safety behavior through only intermediate variables is relatively small, which is why they are ranked last. However, it also gives us a deeper understanding of the dimensions, as well as targeted improvement measures to provide a certain basis.
The research results provide strong support for promoting understanding of the formation mechanism of safe behavior in subway operation. This study demonstrates the reliability and validity of the proposed structural equation model. The final model indicates that safety behavior is directly or indirectly influenced by management commitment, safety communication, safety policy, safety education and training, safety participation, and safety attitude. It also demonstrates that the safety climate influences safety behavior directly and indirectly through its effects on safety awareness and safety ability. The findings offer valuable guidance for subway operation safety managers to identify the mechanisms by which they could promote safety management level.
This study also can provide practical insights into subway operation safety and a theoretical foundation for safety strategies and safety management. For instance, senior managers have to be convinced of the important and significant influences of management commitment to safety behavior in subway operation. Hence, it is important to give a higher priority to subway operation safety and implement essential safety practices in all circumstances.

Author Contributions

Formal analysis: H.G.; investigation: M.M.; project administration: Y.D.; writing—original draft: Y.Z.; writing—review & editing: S.P. All authors have read and agreed to the published version of the manuscript.

Funding

The research described in this paper is supported by National Natural Science Foundation of China (71801214) and the Fundamental Research Funds for the Central Universities (2017QNB13). The authors also gratefully acknowledge those who provided data and suggestions.

Acknowledgments

The authors sincerely acknowledge the editors and anonymous reviewers for their valuable comments and constructive suggestions, which considerably improve the exposition of this work.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. The conceptual model.
Figure 1. The conceptual model.
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Figure 2. The structural equation model.
Figure 2. The structural equation model.
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Figure 3. The final model.
Figure 3. The final model.
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Figure 4. The standardized path coefficient in final model.
Figure 4. The standardized path coefficient in final model.
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Table 1. Safety climate, intermediate variable and safety behavior scale.
Table 1. Safety climate, intermediate variable and safety behavior scale.
DimensionsSerial NumberItem
Management Commitment
(MC)
MC1Leaders attach importance to safety rules and regulations
MC2Leaders are willing to put money into providing safety equipment or safety insurance
MC3Leaders often make safety speeches or hold safety meetings
MC4The leaders take active measures to correct the problems caused by unsafe conditions
Safety Communication
(SC)
SC1Safety issues are often discussed among colleagues
SC2You often discuss work safety issues with your direct supervisor
SC3You have reported or reported to your supervisor on site safety concerns and problems
SC4You are often notified of safety-related information in a timely manner
SC5aThe unit can make the quick response to the safety related question, the safety inspection will result in feedback to you
Safety Policy
(SPO)
SPO1The unit has formulated the quite perfect safety system standard
SPO2The revised safety operating rules of the unit will not be too old and cumbersome, not in line with the actual work
SPO3The unit has earnestly implemented the safety reward and punishment measures
SPO4You can see a file or identification of the safe job specification at your workplace
Safety Education and training
(SET)
SET1The unit regularly organizes safety education and training
SET2The safety education and training can improve the safety operation level of the staff
SET3The safety education and training can improve the safety knowledge of the staff (such as understanding the rules and regulations of the unit, emergency skills, etc.)
SET4Unit Safety Training Assessment and evaluation of scientific and reasonable way, not a mere formality
Safety Participation
(SPA)
SPA1Your opinion will be consulted when the company formulates the revised safety regulations
SPA2You are often involved in company safety related activities or meetings
SPA3Your suggestions for improving safety are encouraged and implemented regularly
SPA4aYou act like a manager, alerting and stopping your colleagues to unsafe behavior
Safety Attitude
(SAT)
SAT1Job Safety is not just the responsibility of the leader or supervisor
SAT2The occurrence of safety accidents is accidental, random, and uncontrollable
SAT3There are safety rules that you don’t have to follow if you do your job right
Safety Awareness
(SAW)
SAW1During work, you are always careful
SAW2You changed your “to be safe” mindset to “I want to be safe. “
SAW3Even with a lot of experience, you can be cautious at work
SAW4You’ll learn in advance how to deal with any emergencies you may encounter at work
Safety Ability
(SAB)
SAB1You have sufficient experience in what you do
SAB2You have a relatively rich theoretical knowledge, able to deal with problems in the work
SAB3You have a strong technical capability, adequate to meet the challenges of the work
SAB4You prefer to study, to work in the new problems will be actively explored
Safety Behavior
(SB)
SB1During work, you strictly adhere to the safe operating procedures
SB2At work, you strictly abide by safety rules and regulations
SB3At work, you use safety protection equipment in a standard way
SB4At work, you do not enter dangerous areas that are not within the scope of your work
SB5Before work, you will carefully check the equipment and the safety environment around
SB6You will not be tired at work
SB7During working, you do not ignore safety warning signs and safety operation signs
Table 2. Demographic characteristics of attendees.
Table 2. Demographic characteristics of attendees.
VariablesTypeFrequencyPercentage
GenderMale30185.5%
Female5114.5%
Age21~3016847.7%
31~4012936.6%
41~504111.7%
51~144.0%
Working years1~310028.4%
3~56017.0%
5~73510.0%
7~15744.6%
EducationCollege and below10931.0 %
University16647.2%
Master and above7721.8%
Table 3. CITC and reliability analysis.
Table 3. CITC and reliability analysis.
Latent VariableItemsCITCMonomial ααOverall Cronbach’s α
Management Commitment (MC)MC10.7780.8550.8920.942
MC20.7890.850
MC30.7600.861
MC40.7210.876
Safety Communication (SC)SC10.6340.8640.875
SC20.7290.842
SC30.7240.843
SC40.7290.842
SC50.7020.848
Safety PolicySPO10.7060.7860.841
SPO20.6580.805
SPO30.6550.814
SPO40.6960.789
Safety Education and TrainingSET10.6800.8240.854
SET20.7720.788
SET30.7940.776
SET40.6140.879
Safety ParticipationSPA10.7490.8190.867
SPA20.7810.805
SPA30.8340.782
SPA40.5260.899
Safety AttitudeSAT10.5970.7040.772
SAT20.5450.759
SAT30.6830.609
Safety AwarenessSA10.6630.7870.8310.867
SA20.6670.787
SA30.6980.770
SA40.6210.804
Safety AbilitySAB10.6680.7840.831
SAB20.7050.766
SAB30.7050.765
SAB40.5640.829
Safety BehaviorSB10.6690.8830.8950.895
SB20.6550.886
SB30.7420.875
SB40.7320.876
SB50.7190.877
SB60.7030.880
SB70.6640.884
Table 4. Safety climate’s KMO and Bartlett test.
Table 4. Safety climate’s KMO and Bartlett test.
KMO0.896
Bartlett‘s test of sphericityApproximate chi-square2728.548
df276
Significance probability0.000
Table 5. Rotating composition matrix of safety climate.
Table 5. Rotating composition matrix of safety climate.
ItemsCompositions
123456
SPO40.7500.1740.0380.2290.2920.275
SPO10.7490.2550.1260.1560.0900.201
SPO20.7390.1170.1250.0990.0060.158
SPO30.7070.2300.2830.0560.2110.116
SC50.6610.2510.1550.3040.3920.091
MC20.1880.8190.2420.1890.1450.113
MC30.1480.8160.1180.2420.2500.066
MC10.2750.8060.0110.1480.1350.161
MC40.2680.7100.2810.1080.1170.184
SPA10.1900.1700.8480.2240.0810.025
SPA20.1330.1530.8350.2130.2230.029
SPA30.2020.1800.7980.1760.3150.049
SET20.1340.1430.2250.8070.2660.199
SET30.1190.2050.2190.8060.2850.163
SET10.2500.3170.1720.7270.1350.091
SET40.3430.1280.4210.5530.1500.104
SC30.2080.1690.1290.2530.7540.080
SC20.2790.2390.3930.2220.617−0.019
SC10.3310.3090.1930.2720.6010.143
SPA4−0.0240.0720.4240.1950.6000.322
SC40.5050.3460.2080.1420.5290.139
SAT30.1630.204−0.0530.0800.2020.833
SAT20.3130.118−0.0320.0980.1910.787
SAT10.1560.0850.2040.200−0.0820.762
Table 6. Intermediate variable’s KMO and Bartlett test.
Table 6. Intermediate variable’s KMO and Bartlett test.
KMO0.875
Bartlett‘s test of sphericityApproximate chi-square600.524
df28
Significance probability0.000
Table 7. Composition matrix after rotation of intermediate variable.
Table 7. Composition matrix after rotation of intermediate variable.
ItemsCompositions
12
SAW40.8780.101
SAW30.8090.210
SAW20.7730.344
SAW10.7210.381
SAB40.1150.884
SAB20.2210.818
SAB10.3000.787
SAB30.4030.644
Table 8. Safe behavior’s KMO and Bartlett test.
Table 8. Safe behavior’s KMO and Bartlett test.
KMO0.900
Bartlett‘s test of sphericityApproximate chi-square514.608
df21
Significance probability0.000
Table 9. Composition matrix of safety behavior.
Table 9. Composition matrix of safety behavior.
ItemsCompositions
1
SB20.836
SB30.820
SB10.815
SB50.769
SB40.752
SB70.738
SB60.728
Table 10. Fit index of safety climate structure validity.
Table 10. Fit index of safety climate structure validity.
Fit Index χ 2 / d f RMRRMSEAGFITLIIFICFIPGFIPCFI
Fitness threshold<3<0.08<0.08>0.8>0.9>0.9>0.9>0.5>0.5
model2.1210.0430.0750.8400.9000.9180.9160.6440.770
Table 11. Fit Index of convergence validity of safety climate.
Table 11. Fit Index of convergence validity of safety climate.
PathEstimateCRAVE
MC4MC0.7860.8860.660
MC3MC0.793
MC2MC0.823
MC1MC0.845
SC4SC0.7560.8420.574
SC3SC0.822
SC2SC0.814
SC1SC0.621
SPO4SPO0.7320.8450.577
SPO3SPO0.724
SPO2SPO0.802
SPO1SPO0.777
SET4SET0.6810.8620.611
SET3SET0.857
SET2SET0.830
SET1SET0.747
SPA3SPA0.9100.8920.734
SPA2SPA0.814
SPA1SPA0.843
SAT3SAT0.8180.7530.507
SAT2SAT0.635
SAT1SAT0.670
Table 12. Fit index of safety climate discrimination validity.
Table 12. Fit index of safety climate discrimination validity.
MCSCSPOSETSPASAT
MC0.660
SC0.5950.574
SPO0.6760.6940.577
SET0.5570.5350.7540.611
SPA0.4870.7130.6160.6140.734
SAT0.4190.3950.5130.4200.2630.507
Square root of AVE0.8120.7580.7600.7820.8570.712
Table 13. Fit index of intermediate variable structure validity.
Table 13. Fit index of intermediate variable structure validity.
Fit Index χ 2 / d f RMRRMSEAGFITLIIFICFIPGFIPCFI
Fitness threshold<3<0.08<0.08>0.8>0.9>0.9>0.9>0.5>0.5
model2.0900.0180.0740.9530.9510.9670.9670.5030.656
Table 14. Fit index of convergence validity of intermediate variable.
Table 14. Fit index of convergence validity of intermediate variable.
PathEstimateCRAVE
SAW4SAW0.6840.8140.524
SAW3SAW0.804
SAW2SAW0.707
SAW1SAW0.695
SAB4SAB0.5860.8220.539
SAB3SAB0.781
SAB2SAB0.823
SAB1SAB0.725
Table 15. Fit index of intermediate variable discrimination validity.
Table 15. Fit index of intermediate variable discrimination validity.
SAWSAB
SAW0.524
SAB0.6640.539
Square root of Ave0.7240.734
Table 16. Fit index of safety behavior structure validity.
Table 16. Fit index of safety behavior structure validity.
Fit Index χ 2 / d f RMRRMSEAGFITLIIFICFIPGFIPCFI
Fitness threshold<3<0.08<0.08>0.8>0.9>0.9>0.9>0.5>0.5
model1.5650.0090.0530.9710.9830.9890.9890.4850.659
Table 17. Fit index of convergence validity of safety behavior.
Table 17. Fit index of convergence validity of safety behavior.
PathEstimateCRAVE
SB7SB0.7350.8990.561
SB6SB0.724
SB5SB0.803
SB4SB0.780
SB3SB0.775
SB2SB0.690
SB1SB0.728
Table 18. Path analysis.
Table 18. Path analysis.
PathNonstandard CoefficientStandard CoefficientSECRp
MCSAW0.2030.3000.0414.918***
SCSAW0.1800.2390.0503.612***
SETSAW0.1080.1430.0452.4040.016
SATSAW0.3530.4170.0477.444***
SETSAB0.1540.2330.0503.0830.002
SPASAB0.1620.3200.0334.930***
SAWSAB0.2980.3410.0624.776***
SCSB0.1140.1860.0382.9770.003
SPOSB0.1530.2380.0393.957***
SATSB0.1540.2230.0403.831***
SABSB0.2130.2280.0484.428***
SAWSB0.2050.2510.0653.1300.002
Table 19. Standardized bootstrap intermediate effect test.
Table 19. Standardized bootstrap intermediate effect test.
PathEstimateSEBias-Corrected 90%CIPercentile 90%CI
LowerUpperpLowerUpperp
MCSAW0.3000.0790.1060.2940.0020.1090.2990.002
SCSAW0.2390.0800.0770.2750.0040.0790.2760.004
SETSAW0.1430.0760.0130.2120.0670.0090.2060.081
SATSAW0.4170.0650.2480.4500.0030.2550.4550.002
SETSAB0.2330.0900.0650.2640.0030.0520.2540.005
SPASAB0.3200.0670.1000.2260.0020.0990.2260.002
SAWSAB0.3410.0740.1720.4150.0030.1790.4220.002
SCSB0.1860.0870.0340.2200.0300.0340.2210.030
SPOSB0.2380.0720.0720.2400.0040.0720.2410.004
SATSB0.2230.0740.0670.2510.0070.0710.2530.005
SABSB0.2280.0540.1290.3020.0010.1250.2950.002
SAWSB0.2510.1170.0420.3580.0480.0380.3550.051
Table 20. The influence effect among latent constructs.
Table 20. The influence effect among latent constructs.
Latent ConstructsSAWSABSB
DirectIndirectTotalDirectIndirectTotalDirectIndirectTotal
MC0.300 0.300 0.1020.102 0.0990.099
SC0.239 0.239 0.0810.0810.1860.0790.265
SPO 0.238 0.238
SET0.143 0.1430.2330.0490.282 0.1000.100
SPA 0.320 0.320 0.0730.073
SAT0.417 0.417 0.1420.1420.2230.1370.360
SAW 0.341 0.3410.2510.0780.329
SAB 0.228 0.228

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Deng, Y.; Guo, H.; Meng, M.; Zhang, Y.; Pei, S. Exploring the Effects of Safety Climate on Worker’s Safety Behavior in Subway Operation. Sustainability 2020, 12, 8310. https://doi.org/10.3390/su12208310

AMA Style

Deng Y, Guo H, Meng M, Zhang Y, Pei S. Exploring the Effects of Safety Climate on Worker’s Safety Behavior in Subway Operation. Sustainability. 2020; 12(20):8310. https://doi.org/10.3390/su12208310

Chicago/Turabian Style

Deng, Yongliang, Haolun Guo, Miaomiao Meng, Ying Zhang, and Shuangshuang Pei. 2020. "Exploring the Effects of Safety Climate on Worker’s Safety Behavior in Subway Operation" Sustainability 12, no. 20: 8310. https://doi.org/10.3390/su12208310

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