1. Introduction
The environmental dynamism and uncertainty experienced today cause unexpected and even devastating disruptions and consequences in almost all sectors [
1]. For example, a tsunami in Thailand in 2010 destroyed two of Seagate’s manufacturing facilities [
2]. Accordingly, due to a chain effect of the contraction in the flow of goods, there was a 29% decline in hard disk production globally. This situation caused a significant decrease in the market values and earnings of global businesses such as Hewlett-Packard [
3]. Uncertainty was created when the Trump administration imposed a tariff barrier on some products originating from China in 2018, and China responded immediately to this practice, pushing companies to look for new suppliers [
4]. The COVID-19 epidemic, which emerged in late 2019, caused the most severe problems in recent history, causing significant losses in the global supply chain, the effects of which are still ongoing [
5]. In short, it is necessary to draw attention to how fragile and, at the same time, dynamic the structure of the supply chains is and the uncertainty in the material flow. For this reason, the importance of adapting to possible new situations affecting resource and material flows emerges.
It is easier for managers to regulate the flow of resources and materials when the environmental factors change rate is considered [
6]. The main goal in supply chain management is to balance customer demand and the flow of materials, products, and information from the supplier to meet customer demands and needs on time [
7]. To achieve this balance, businesses focus on their existing capabilities and leave the tasks outside their capabilities to a third party/external resources. This practice helps to increase supply chain performance and, therefore, financial performance and reduce supply chain costs [
8]. This practice also expands supply chains [
9,
10]. The supply chain expansion increases the possibility of interrupting the flow of resources and materials toward the leading company. Inevitably, such unexpected interruptions will adversely affect the financial performance of companies [
11,
12,
13]. Some instruments, such as supply chain resilience (SCRES) and supply chain agility (SCA), can appropriately serve supply chain managers to manage such unexpected situations, stabilize the company, and achieve targeted high performance levels [
2,
14,
15]. In summary, it becomes essential for supply chain managers to understand how they can cope with environmental factors that affect their supply chain activities and, therefore, their financial performance [
6,
16,
17].
One of the most crucial strategic instruments used by organizations to participate in competitive market circumstances and strengthen their positions in this environment is supply chain management (SCM) [
18]. Companies must manage their supply chain functions effectively to survive in global markets where environmental dynamism and competition increase [
19,
20]. At this point, SCA is seen as a critical factor in manufacturing companies’ ability to carry out supply chain management processes accurately and effectively and increase their financial performance in the long term by quickly responding to changes in customer preferences, threats, and opportunities in the sector through the dynamic capabilities they will develop [
4,
11,
21]. In addition to changes in customer preferences and environmental changes, companies are also vulnerable to interruptions and disruptions that may occur in the supply chain. This situation poses a risk for companies to continue their activities successfully [
22].
SCRES refers to the supply chain’s ability to cope with unexpected disruptions and interruptions in risky situations. SCRES enables the chain itself and its elements to have the ability to return to their pre-crisis form or to transform into a more suitable formation from a crisis, interruption, or stress situation, that is, to have resilience [
23]. Previously, the design of supply chains focused on service optimization and cost reduction, but now, the focus is on resilience [
24]. Therefore, being able to demonstrate approaches focused on strength and agility at the same time will positively affect supply chain performance. Companies focused on resilience and agility will increase their competitiveness through quality, service, and time to market; strengthen their leading position in the market; and have superior financial performance [
25].
The existing body of literature encompasses studies that examine many viewpoints on supply chain management methodologies and tactics using a comprehensive view. Mason-Jones et al. [
26] put forward a different perspective by introducing the term “leagile”, which expresses the combination of lean and agile supply chain models. Similarly, Aitken et al. [
27] and Martin and Towill [
28] stated that lean and agility can be used together to create a supply chain in a competitive context. However, these studies did not consider unforeseen interruptions and disruptions in the supply chain. Therefore, questions remain unanswered about how these negativities will affect the financial performance of manufacturing companies, how the company will respond to these changing conditions, and how it can return to its former balanced state. Considering these shortcomings, our study argues that agility and resilience are critical factors in ensuring financial performance within the supply chain. Because agility is a crucial element in meeting the demand changes that may occur in the market as quickly as possible, Resilience allows the supply chain to maintain its performance even in the event of potential interruptions in the supply chain.
As far as is known, research in the literature has yet to examine the relationships between supply chain management, supply chain agility, supply chain resilience, and financial performance of manufacturing companies. When considered in the long term, it is crucial to determine the premises that will increase the financial performance of manufacturing companies to survive by providing a competitive advantage. In this context, we created our research questions as follows:
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What are the antecedents of financial performance from a supply chain perspective? What is its connection with supply chain management?
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What are the distinguishing characteristics of supply chains with agility and resilience? Do agility and resilience practices in supply chains strengthen financial performance?
Because Turkey is a bridge connecting the European and Asian continents and the seas surrounding it, it is obvious how vital supply chain management is for the Turkish economy. However, uncertainty, such as that in Turkey, is high. Companies that continue operating where geopolitical, economic, and political conditions change frequently cannot respond promptly because their supply chain practices cannot be successfully managed. Many companies cannot recover or even survive in the long term [
29]. For this reason, we decided to research manufacturing companies in Turkey, as it is in a location that reflects the environmental conditions suitable for our subject.
In our literature review, we realized some areas for improvement in how companies should implement supply chain management practices to strengthen their financial performance (FP) by focusing on elements such as supply chain resilience and agility in combating environmental changes. This research was conducted to fill the gaps in the literature and to consider the topics that some researchers suggested to be studied in the future [
2,
30,
31,
32]. Shi and Yu [
32] stated in their study that both market-based and accounting-based financial performances are closely related to SCM; in the literature, not much attention is given to the factors that will increase the effects of SCM on FP. Therefore, there is a need for research on this issue. Kale et al. [
33] stated that there is a need to conduct studies that will contribute to the literature by drawing companies’ attention to the importance of agility and ensuring that they fully understand the concept of agility. Carvalho et al. [
30] mentioned that new research is needed to address the possible intermediary and regulatory role of SCA and SCRES between supply chains’ operational and financial performances and different variables.
Based on this, the aim of this study, prepared based on dynamic capabilities theory, was to examine the effects of supply chain management practices of manufacturing companies in Turkey on financial performance as well as the interaction of supply chain agility and supply chain resilience and the moderating effect of supply chain resilience on the relationship between these two variables. In this context, a survey was conducted among the white-collar employees of 27 businesses in Türkiye’s Top 500 Industrial Enterprises (ISO 500).
This study uniquely addresses manufacturing companies’ supply chain management and financial performance. In addition, the interaction of supply chain agility and flexibility in the relationship between these two variables and the regulatory effect of supply chain flexibility are evaluated from different perspectives. In addition, the current research is essential in explaining the background of the success of the performance of manufacturing companies in countries with a collectivist culture, such as Turkey. In this context, the dynamic capabilities theory on which the research is based contributes to the idea by showing the impact of cultural factors in understanding how the dynamic capabilities approach works in practice.
This research gave information about the theoretical background, the research hypotheses were created, and the research model was designed. In the next phase, the scales used in the research are included, and the analyses used to test the hypotheses and their results are mentioned. In the last section, the results obtained from the examination are evaluated, the study’s limitations are noted, and some suggestions are made to academics and sector managers who may want to work on this subject in the future.
4. Results
In this section, first, the demographic characteristics of the participants are presented. Subsequently, the EFA, CFA, and hypothesis testing results are presented in tables.
4.1. Descriptive Statistics of the Sample
According to demographic data, 64% of the participants in the study were male, and 42 of them were between the ages of 25–35. Furthermore, 79.6% of the participants had a bachelor’s degree, and 49.0% of the companies they work for had a sectoral background between 11–20 years. Additionally, 36.5 participants had worked in their companies for 6–9 years, and 39.7 had over ten years of work experience.
The demographic characteristics of the sample are shown in
Table 1.
According to
Table 1, the study sample consists of 305 participants, with 64% male and 36% female. Age distribution shows 6.2% under 25, 42% between 25 and 35, 38% between 36 and 45, and 13.8% over 45. Regarding education, 7.9% had a high school education, 79.6% held a bachelor’s degree, and 12.5% had a master’s degree. In terms of the sectoral history of their companies, 4.6% worked in companies with 1–5 years of history, 22.2% in companies with 6–10 years, 49% in companies with 11–20 years, and 24.2% in companies with over 20 years. For time at work, 22.2% had been at their current job for 1–2 years, 26.8% for 3–5 years, 36.5% for 6–9 years, and 14.5% for over 10 years. Total work experience shows 9.1% with 1–2 years, 20.3% with 3–5 years, 30.9% with 6–9 years, and 39.7% with more than 10 years of experience. In the next stage, exploratory factor analysis was performed on the collected data.
4.2. Exploratory Factor Analysis Results
Before performing CFA analysis, EFA was performed as the first step to test the validity of the scales. The findings are shown in
Table 2.
Table 2 illustrates the factor loadings, means, and standard deviations for items under various constructs related to supply chain management. Under the Alliance construct, items ALL1, ALL2, and ALL3 have high factor loadings above 0.88, with means around 4.66 and a standard deviation of approximately 0.59, while ALL4 was removed due to low factor loading. The CRM construct includes items CRM1, CRM2, CRM3, and CRM4, with factor loadings ranging from 0.705 to 0.914, means around 4.48, and standard deviations from 0.613 to 0.663. For the Logistics construct, items LOG1, LOG2, and LOG3 have factor loadings above 0.87, means around 4.23, and standard deviations near 0.51, with LOG4 removed. Information Sharing includes items INF1, INF2, and INF3 with factor loadings above 0.87, means around 4.24, and standard deviations around 0.73, with INF4 removed. Supply Chain Resilience has items SCRES1 to SCRES4, with factor loadings ranging from 0.766 to 0.869, means between 3.534 and 3.836, and standard deviations from 0.954 to 1.016. The Supply Chain Agility construct includes items SCA2, SCA3, SCA4, SCA6, and SCA8, with factor loadings from 0.707 to 0.916, means around 4.49, and standard deviations between 0.669 and 0.703, with SCA1, SCA5, and SCA7 removed. Financial Performance includes items FP1, FP2, FP3, and FP5, with factor loadings above 0.815, means around 4.39, and standard deviations from 0.643 to 0.731, with FP4 removed. The Kaiser–Meyer–Olkin (KMO) values and chi-square statistics for these constructs indicate good sampling adequacy and significant results, with total variance explained ranging from 68.65% to 82.23%. As a result of EFA, it was determined that the factor loadings for all scales were sufficient. KMO values were determined as KMO > 0.70. The Bartlett tests were significant.
4.3. Confirmatory Factor Analysis Results
In the second stage, CFA was conducted for the construct validity of the scales. The findings are presented in
Table 3.
The CFA results indicated that the scales met the acceptable criteria for goodness of fit.
The AVE and CR values were calculated to test the component validity and the factor loadings obtained from the CFA results. A reliability analysis was also conducted, and Cronbach’s alpha coefficient values were examined. The findings are presented in
Table 4.
In the calculations, AVE was computed by dividing the sum of λ2, representing the factor loadings, by the number of items. CR was calculated using the following formula: (Sum of the squares of λ)/(Sum of the squares of λ + 1 − Sum of λ2). As AVE > 0.50, CR > 0.70, and Cronbach’s alpha > 0.70, it was determined that the scales are reliable.
4.4. Hayes Process Macro Model 3 Results
This section illustrates the relationships between variables in the analysis. The dependent variable was defined as “FP”, and the effects of the “SCM”, “SCA”, and “SCRES” variables on “FP” were examined. Additionally, conditional effects were analyzed based on different values of the “SCR” variable for the interactions (Int_1, Int_2, Int_3, and Int_4) between independent variables. The effects of the independent variable vary depending on the values of “SCA” and “SCRES”.
Table 5 displays the overall performance of the utilized model. The model’s R-squared value was 0.1642, indicating that the independent variables (SCM, SCA, and SCRES) account for 16.42% of the variance in the dependent variable (FP). The model’s F value is 8.3328, with a
p-value of 0.0000, demonstrating the statistical significance of the model and indicating that at least one independent variable significantly affects the dependent variable.
Table 6 illustrates the impact of each independent variable (SCM, SCA, and SCRES) on the dependent variable (FP). The coefficient for SCM was calculated as 37.5993, with a
p-value of 0.0096, indicating a significant effect of SCM on FP. The coefficient for SCA was 8.0088, with a
p-value of 0.0154, a significant effect of SCA on FP. The coefficient for SCRES was 9.7585, with a
p-value of 0.0119, demonstrating a significant effect of SCRES on FP. Product terms used to examine interactions between variables were found to be statistically significant based on the analysis results. The
p-values for these terms are 0.0214, 0.0167, 0.0190, and 0.0258, respectively. These results indicate that these product terms have additional effects on “FP”.
According to the analysis results as shown in
Table 7, conditional effects were observed for the “SCRES” at different values. When the “SCRES” has a value of 2.3757, the SCA * SCRES interaction has a statistically significant effect of −2.8409. However, the effect is not statistically significant when the “SCRES” is 3.2050. These results indicate that the impact of the independent variable can vary depending on different values of the “SCRES” variable.
Table 8 shows the effect of the interaction between the SCA and SCRES variables. The table presents each combination’s moderation effect (Effect) and the relevant statistics (Standard Error, t-value,
p-value, LLCI, and ULCI).
For example, when the value of SCA is 3.8714, and the value of SCRES is 2.3757, the moderation effect was calculated as 4.2267. The standard error is 0.9132, the t-value is 4.6285, and the p-value is 0.0000, indicating the statistical significance of the moderation effect. The LLCI and ULCI range from 2.4296 to 6.0239. Similarly, when the value of SCA is 3.8714, and the value of SCRES is 3.2050, the moderation effect was calculated as 2.8456, statistically significant, with a p-value of 0.0000. The LLCI and ULCI range from 1.7988 to 3.8924.
Furthermore, when the value of SCA is 4.7945, and the value of SCRES is 2.3757, the moderation effect was calculated as 1.6041. This effect is not statistically significant, as the p-value is 0.0776, above the significance level of 0.05. The LLCI and ULCI range from 0.1786 to 3.3867.
These results indicate that SCRES moderates the relationship between SCA and FP. The analysis results reveal that SCM directly affects FP, SCA moderates the relationship between SCM and FP, and SCRES moderates the moderation effect of SCA.
The interaction of SCA and SCRES is demonstrated in
Figure 2.
Table 9 presents the results of the test(s) of highest-order unconditional interaction(s). The R-squared change value for the SCM * SCA * SCRES interaction is 0.0141, with an F-value of 5.0221 and respective degrees of freedom df1 = 1.0 and df2 = 297.0. The
p-value of this test is 0.0258, indicating that the SCM * SCA * SCRES interaction is significant, as it is below the 0.05 significance level.
Based on these results, we can evaluate our hypotheses as follows: It was observed that SCM has a positive effect on FP, confirming Hypothesis 1. The SCM variable positively affects FP (effect = 37.5993, p < 0.01). This result supports our hypothesis, suggesting that the impact of SCM on FP is statistically significant and that an increase in SCM is associated with an increase in financial performance. Additionally, it was observed that SCA moderates the interaction between SCM and FP, and SCRES moderates the moderation effect of SCA on this interaction. The term “Int_1” in the table represents the interaction between SCM and SCA. According to the analysis results, the “Int_1” term is statistically significant (p < 0.05), indicating that SCA moderates the effect of SCM on FP.
Furthermore, “Int_2” represents the triple interaction between SCM, SCRES, and SCA. This term was statistically significant (p < 0.05), indicating that SCRES moderates the interaction between SCM and FP mediated by SCA. This also supports Hypotheses 2 and 3.
5. Conclusions and Discussion
This study investigated the relationships among supply chain management (SCM), financial performance (FP), supply chain agility (SCA), and supply chain resilience (SCRES). Additionally, the study sought to explore the potential moderating effects of supply chain agility and supply chain resilience in this relationship. The study’s findings support the hypothesis that supply chain management significantly impacts financial performance. Through the lens of dynamic capability theory and compared with the literature, our finding of a positive relationship between SCM and FP has also been supported in previous studies in the literature [
32,
69,
70,
71,
72]. Organizations where SCM is managed effectively tend to perform better. This is associated with organizations optimizing their supply chain processes, using resources efficiently, and gaining competitive advantage. This also entails the prompt acknowledgment of the capacity to discern alterations, patterns, and prospects in the surroundings and the ability to promptly reconfigure team members to efficiently execute tasks and swiftly adjust to changing circumstances [
117]. Furthermore, the attainment of financial performance will be facilitated by establishing a strategic, expansive, and all-encompassing networking capability with suppliers and distributors.
The study also highlights the moderating role of supply chain agility in the association between supply chain management and financial performance. This finding highlights the complexity of the relationship between supply chain management and performance. SCA can strengthen or weaken the impact of SCM on FP by enabling organizations to adapt to changing market conditions. This highlights the importance of organizations developing flexibility, innovation, and responsiveness.
Similarly, the findings that SCRES moderates the moderating effect of SCA suggest that if SCRES increases the resilience of organizations to external challenges, the interaction of SCRES with SCA may influence the relationship between SCM and FP. If SCRES is implemented effectively, organizations become more resilient to external challenges, which can increase the positive relationship between SCM and FP. However, when SCRES is adequately applied, this interaction may be more vital or negatively affected. According to this conclusion, organizations must maintain SCRES as a strategic advantage to support supply chain resilience. SCRES can provide organizations with resilience to external shocks or crises, thus strengthening or weakening the interaction between SCA, SCM, and FP.
In conclusion, the results of the analysis revealed complex interactions between SCM, SCA, and SCRES and the effects of these variables on FP. These findings emphasize that organizations should consider supply chain agility, management, and resilience factors to achieve performance. This study offers a new perspective to the literature and guides managers in their strategic decisions.
We can list the essential contributions of the findings of this study to the literature as follows:
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This study highlights the interdependent nature of SCM, SCA, and SCRES in achieving financial performance. Organizations need to consider all three factors for a holistic approach;
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The research provides a comprehensive framework for manufacturing companies, emphasizing the importance of both SCA and SCRES for maximizing the benefits of effective SCM practices;
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Our findings contribute to the existing body of knowledge by demonstrating the moderating roles of SCA and SCRES. This enriches the understanding of how these capabilities influence financial performance in manufacturing contexts;
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The research offers valuable insights for managers in making strategic decisions regarding supply chain management, agility, and resilience to achieve optimal financial outcomes.
Limitations and Recommendations for the Future Studies
Although utmost care was taken regarding the reliability and validity of the study, some things could be improved regarding this issue. Although web-based surveys offer some convenience benefits to practitioners, they may also have some features that may cause possible bias, such as nonresponse bias, common method bias, and coverage error [
118]. To reduce these effects of prejudice, several initiatives were taken to ensure the validity and reliability of the study by applying appropriate statistical tests. As a result, we obtained the necessary proof that the data analysis results from the survey used in this study were not significantly affected.
Since the information obtained from this study reflects research conducted on the employees of 27 companies operating in the manufacturing sector in Türkiye’s Top 500 Industrial Enterprises (ISO 500), it would not be correct to generalize these results to the entire manufacturing sector and other sectors. Researchers who will work in this field in the future can conduct new studies by adding moderator, mediator, or different variables to the model used in this research; by running the model used in this research on other sectors; or by using data obtained from different logistics and supply chain activities in the model used. The data collecting processes and generalizability of the sample to the population challenges also should be taken into consideration for future research.