More is better? The role of strategic data management in a lean manufacturing process

IF 1.9 4区 管理学 Q3 MANAGEMENT Chinese Management Studies Pub Date : 2024-05-28 DOI:10.1108/cms-03-2023-0120
Chao-Lung Yang, Chun-Fu Chen, Jin-Yu Chen, Hendri Sutrisno
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Abstract

Purpose

Lean manufacturing has been pivotal in emphasizing the reduction of cycle times, minimizing manufacturing costs and diminishing inventories. This research endeavors to formulate a lean data management paradigm, through the design and execution of a strategic edge-cloud data governance approach. This study aims to discern anomalous or unforeseen patterns within data sets, enabling an efficacious examination of product shortcomings within manufacturing processes, while concurrently minimizing the redundancy associated with the storage, access and processing of nonvalue-adding data.

Design/methodology/approach

Adopting a lean data management framework within both edge and cloud computing contexts, this study ensures the preservation of significant time series sequences, while ascertaining the optimal quantity of normal time series data to retain. The efficacy of detected anomalous patterns, both at the edge and in the cloud, is assessed. A comparative analysis between traditional data management practices and the strategic edge-cloud data governance approach facilitates an exploration into the equilibrium between anomaly detection and space conservation in cloud environments for aggregated data analysis.

Findings

Evaluation of the proposed framework through a real-world inspection case study revealed its capability to navigate alternative strategies for harmonizing anomaly detection with data storage efficiency in cloud-based analysis. Contrary to the conventional belief that retaining comprehensive data in the cloud maximizes anomaly detection rates, our findings suggest that a strategic edge-cloud data governance model, which retains a specific subset of normal data, can achieve comparable or superior accuracy with less normal data relative to traditional methods. This approach further demonstrates enhanced space efficiency and mitigates various forms of waste, including temporal delays, storage of noncontributory normal data, costs associated with the analysis of such data and excess data transmission.

Originality/value

By treating inspected normal data as nonvalue-added, this study probes the intricacies of maintaining an optimal balance of such data in light of anomaly detection performance from aggregated data sets. Our proposed methodology augments existing research by integrating a strategic edge-cloud data governance model within a lean data analytical framework, thereby ensuring the retention of adequate data for effective anomaly detection.

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越多越好?战略数据管理在精益生产流程中的作用
目的 精益生产在强调缩短周期时间、最大限度地降低生产成本和减少库存方面一直举足轻重。本研究致力于通过设计和执行战略性边缘云数据治理方法,制定精益数据管理范例。本研究旨在识别数据集中的异常或不可预见模式,从而有效检查制造流程中的产品缺陷,同时最大限度地减少与非增值数据的存储、访问和处理相关的冗余。设计/方法/途径本研究在边缘和云计算环境中采用精益数据管理框架,确保保留重要的时间序列序列,同时确定保留正常时间序列数据的最佳数量。研究还评估了在边缘和云中检测到的异常模式的功效。通过对传统数据管理实践和战略性边缘-云数据治理方法进行比较分析,有助于探索云环境中异常检测和空间保护之间的平衡,以进行聚合数据分析。 研究结果通过对真实世界检测案例的研究,对所提出的框架进行了评估,结果表明该框架能够在基于云的分析中,为协调异常检测和数据存储效率的替代策略提供导航。与在云中保留全面数据可最大限度提高异常检测率的传统观点相反,我们的研究结果表明,保留特定正常数据子集的战略性边缘-云数据治理模型可在使用较少正常数据的情况下实现与传统方法相当或更高的准确性。这种方法进一步提高了空间效率,并减少了各种形式的浪费,包括时间延迟、非贡献正常数据的存储、与此类数据分析相关的成本以及多余的数据传输。原创性/价值通过将检测到的正常数据视为非增值数据,本研究根据聚合数据集的异常检测性能,探究了保持此类数据最佳平衡的复杂性。我们提出的方法在精益数据分析框架内整合了战略性边缘云数据治理模型,从而确保为有效的异常检测保留足够的数据,从而增强了现有的研究。
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来源期刊
CiteScore
3.90
自引率
13.60%
发文量
63
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