通过物流驱动提升运营绩效:来自制造业的证据

Mintesnot Abay Miteku, Bahayilu Dessalegn WoldSilase, Endris Ali Dawed
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引用次数: 1

摘要

该研究的目的是研究物流驱动对埃塞俄比亚大型制造业运营绩效的影响。为此,研究者采用了混合方法的解释性研究设计。在案例行业的选择上,研究人员采用了普查抽样技术和分层抽样技术进行调查对象的选择。对该问题的主要和次要数据进行了访问以进行分析。在数据收集过程中,本研究使用偏最小二乘结构方程模型(PLS-SEM)来寻找假设构式之间的关系。本研究在智能PLS软件的支持下进行了推理分析。研究结果表明,R2值的乘积表明,内生变量(即运营绩效)的69.1%的增强是由外生变量(即运输、库存和设施管理)的共同结果引起的。这一发现还表明,原材料和货币问题使这些行业的产量低于其产能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Boosting operational performance through logistics drivers: Evidence from manufacturing industry
The aim of the study was to examine the impact of logistics drivers on the operational performance of large manufacturing industries in Ethiopia. To this end, the researchers employed an explanatory research design with a mixed approach. To select the case industries the researchers used the census sampling technique and stratified sampling technique for respondents’ selection. Both primary and secondary data were accessed about the issue to analyze. After the data collection process, the study used a partial least square structural equation model (PLS-SEM) to find the relationships between the hypothesized constructs. In this study, inferential analysis was made with the support of smart PLS software. The result of the finding depicts that the product of R2 Value specifies that 69.1% of enhancement in an endogenous variable (i.e., Operational performance) is caused by the joint results from the exogenous variable (i.e. Transportation, Inventory, and facility Management). The finding also shows that there are raw materials and currency problems that made the industries produce below their capacity.
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