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How can time and motion studies be used to improve productivity in a manufacturing company? 

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Time and motion studies can be used to improve productivity in a manufacturing company by identifying and reducing cycle time, improving work standardization, and optimizing work distribution. These studies help in analyzing the time taken for each task and identifying areas where efficiency can be improved. By conducting time and motion studies, companies can reduce assembly time and cycle time, leading to increased production . Lean tools such as work standardization, line leveling, and time-and-motion study can be used to minimize wastages and improve productivity . Additionally, automated time study models based on computer vision can be employed to accurately estimate operation time and eliminate human errors . Simulation modeling can also be utilized to enhance the performance of operational processes and improve productivity in the manufacturing industry . Overall, time and motion studies provide valuable insights into the manufacturing processes, enabling companies to identify areas for improvement and implement strategies to enhance productivity.

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Open accessJournal ArticleDOI
01 Jan 2022
1 Citations
The paper proposes an automated time study model based on computer vision to accurately estimate operation time, which can be used to improve productivity in a manufacturing company.
Time and motion studies can be used to improve productivity in a manufacturing company by standardizing work processes and identifying and eliminating wasteful activities.
Time and motion studies can be used to improve productivity in a manufacturing company by standardizing work processes and identifying and eliminating wasteful activities.
Time and motion studies can be used to improve productivity in a manufacturing company by reducing cycle time and optimizing tasks and scheduling, leading to a decrease in indirect costs.

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