Throughput bottleneck detection in manufacturing: a systematic review of the literature on methods and operationalization modes

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Abstract

Throughput is an important parameter to evaluate production system performance. It is typically constrained by one or more resources referred to as ‘throughput bottlenecks’. To start improvement actions, the first step is to identify throughput bottlenecks. Consequently, several bottleneck detection methods were developed in the literature. But this literature remains largely unstructured, which makes it difficult for practitioners to select an appropriate method. To generate clarity and to consolidate the field, a systematic literature review was conducted. The review identified 14 different bottleneck detection methods that are classified according to the information used: queue states, process states, or combined queue and process states. It further identified three different modes used to operationalize the different bottleneck detection methods: gemba walk, discrete event simulation, and data science. This study further presents important research issues, identifies contingency factors for method application, and discusses important guidelines for the choice of operationalization mode in practice.

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Skoogh, A., Thürer, M., Subramaniyan, M., Matta, A., & Roser, C. (2023). Throughput bottleneck detection in manufacturing: a systematic review of the literature on methods and operationalization modes. Production and Manufacturing Research, 11(1). https://doi.org/10.1080/21693277.2023.2283031

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