利用供应链反应时间:大数据分析能力对提高汽车零部件行业组织复原力的影响

IF 3 Q2 MANAGEMENT Administrative Sciences Pub Date : 2024-08-18 DOI:10.3390/admsci14080181
Marcelo Bronzo, Marcelo Werneck Barbosa, Paulo Renato de Sousa, Noel Torres Junior, Marcos Paulo Valadares de Oliveira
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引用次数: 0

摘要

大数据分析能力(BDACs)是一种战略能力,可加快决策过程,使企业能够减轻供应链中断的影响。这些能力增强了企业在检测和预测破坏性事件时更加积极主动的能力,从而提高了企业的应变能力。本研究分析了 BDAC 对企业反应时间的影响,以及企业反应时间对其复原力的影响。研究模型通过对巴西汽车零部件公司专业人士的 263 份调查问卷进行评估。数据采用偏最小二乘法-结构方程建模法进行分析。同时还应用了聚类分析技术。本研究发现,BDAC 可缩短反应时间,从而提高企业的应变能力。我们还观察到,一线企业和工业 4.0 历程较长的企业受到的影响更大,这为进一步研究企业和供应链的数字化准备、反应时间和组织复原力绩效之间的复杂中介关系开辟了新的视角。我们的研究以动态能力理论为基础,将 BDACs 确定为具有通过减少数据、分析和决策延迟来提高复原力潜力的动态能力,这些延迟被视为反应时间概念的核心要素,在破坏性供应链事件中尤为重要。
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Leveraging Supply Chain Reaction Time: The Effects of Big Data Analytics Capabilities on Organizational Resilience Enhancement in the Auto-Parts Industry
Big data analytics capabilities (BDACs) are strategic capabilities that expedite decision-making processes, empowering organizations to mitigate the impacts of supply chain disruptions. These capabilities enhance the ability of companies to be more proactive in detecting and predicting disruptive events, increasing their resilience. This study analyzed the effects BDACs have on firms’ reaction time and the effects companies’ reaction time has on their resilience. The research model was assessed with 263 responses from a survey with professionals of auto-parts companies in Brazil. Data were analyzed with the Partial-Least-Squares—Structural Equation Modeling method. Cluster analysis techniques were also applied. This study found that BDACs reduce reaction time, which, in turn, improves firms’ resilience. We also observed greater effects in first-tier and in companies with longer Industry 4.0 journeys, opening further perspectives to investigate the complex mediations of digital readiness, reaction time, and organizational resilience performance of firms and supply chains. Our research builds upon the dynamic capabilities theory and identifies BDACs as dynamic capabilities with the potential to enhance resilience by reducing data, analytical, and decision latencies, which are recognized as core elements of the reaction time concept, which is particularly crucial during disruptive supply chain events.
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来源期刊
CiteScore
4.80
自引率
10.00%
发文量
151
审稿时长
11 weeks
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