肯尼亚食品和饮料加工企业供应链绩效中的无浪分拣技术

Kellen Karimi Njiru, G. Namusonge, M. Thogori
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引用次数: 0

摘要

本研究旨在分析无浪分拣在肯尼亚食品和饮料制造企业供应链绩效中的作用。研究集中于在肯尼亚制造商协会注册的 134 家食品和饮料制造商,这些制造商均在内罗毕市县经营。研究采用了定性和定量相结合的混合研究设计。研究的目标人群是内罗毕县的 134 家食品和饮料生产企业。本研究的抽样框架包括内罗毕县 134 家制造公司的名单,这些公司都是肯尼亚制造商协会的成员。研究采用了简单随机抽样法。借助 Yamane 1967 公式选取了 100 个样本量。主要数据和二手数据均通过问卷收集。该问卷在基安布县的 10 家食品和饮料制造公司进行了试点测试。这些试点研究问卷由仓库经理填写。数据分析使用了社会科学统计软件包(SPSS)第 25 版。采用内容分析法对定性数据进行了分析。定量数据采用统计方法进行分析,包括描述性数据和推论性数据。采用多元线性回归模型分析变量之间的关系。还对相关性进行了分析。本研究使用表格和图表来展示研究结果。数据展示采用了百分比、频率、平均值和其他中心倾向的方式。研究揭示了几种提高运营效率和生产率的方法。大多数企业都没有减少仓库的运输时间,这表明有改进的潜力。研究建议缩短仓库旅行时间、实施批量分拣、指定分拣区、提高产品预测准确性、改善现金流管理和供应链调度、接受技术和自动化,以及促进持续学习和发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Waveless Picking in Supply Chain Performance of Food and Beverages Processing Firms in Kenya
The purpose of this study was to analyze the role of waveless picking in supply chain performance of food and beverages manufacturing firms in Kenya. The research concentrated on the 134 food and beverage manufacturers that are operating in Nairobi City County besides being registered with Kenya Association of Manufacturers. The study adopted a mixed research design with both qualitative and quantitative approaches. The target population of the study was the 134 food and beverages manufacturing firms in Nairobi County. A sampling frame of this study included a list of the 134 manufacturing companies in Nairobi County that are members of the Kenya Association of Manufacturers. The study utilized simple random sampling. A sample size of 100 was selected with the aid of Yamane 1967 formula. Both primary and secondary data was collected using a questionnaire. The questionnaire was tested pilot at 10 food and beverages manufacturing companies in Kiambu county. These pilot study questionnaires were filled out by warehouse managers. The statistical package for social sciences (SPSS) version 25 was used to analyze the data. Using content analysis, the qualitative data was analyzed. Quantitative data was analyzed using statistical methods involving descriptive and inferential data. A multiple linear regression model was applied to analyze the relationship between the variables. Analysis was also performed on the correlation. In this study, the findings were presented using tables and graphs. Data presentation made use of percentages, frequencies, means and other means of central tendencies. The study on revealed several ways to improve operational efficiency and productivity. Most enterprises have not reduced warehouse travel time, indicating potential for improvement. The study recommended reducing warehouse travel time, implementing batch picking, designating picking zones, increasing product forecasting accuracy, improving cash flow management and supply chain scheduling, accepting technology and automation, and promoting continuous learning and development.
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