Assembly Line Balancing Under Demand Uncertainty


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Assembly-Line Balancing Under Demand Uncertainty


Assembly-Line Balancing Under Demand Uncertainty

Author: Celso Gustavo Stall Sikora

language: en

Publisher:

Release Date: 2022


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Assembly lines are productive systems, which are very efficient for homogeneous products. In the automotive industry, an assembly line is used in the production of several vehicle variants, including numerous configurations, options, and add-ins. As a result, assembly lines must be at the same time specialized to provide high efficiency, but also flexible to allow the mass customization of the vehicles. In this book, the planning of assembly lines for uncertain demand is tackled and optimization algorithms are offered for the balancing of such lines. Building an assembly line is a commitment of several months or even years, it is understandable that the demand will fluctuate during the lifetime of an assembly line. New products are developed, others are removed from the market, and the decision of the final customer plays a role on the immediate demand. Therefore, the variation and uncertainty of the demand must be accounted for in an assembly line. In this book, methods dealing with random demand or random production sequence are presented, so that the practitioners can plan more robust and efficient production systems. About the author Celso Gustavo Stall Sikora is an industrial engineer and was a research assistant at the Institute for Operations Research at the University of Hamburg where he received his PhD in 2021. His work focus on optimization procedures for the design and operation of automotive production systems.

Assembly-Line Balancing under Demand Uncertainty


Assembly-Line Balancing under Demand Uncertainty

Author: Celso Gustavo Stall Sikora

language: en

Publisher: Springer Nature

Release Date: 2022-01-11


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Assembly lines are productive systems, which are very efficient for homogeneous products. In the automotive industry, an assembly line is used in the production of several vehicle variants, including numerous configurations, options, and add-ins. As a result, assembly lines must be at the same time specialized to provide high efficiency, but also flexible to allow the mass customization of the vehicles. In this book, the planning of assembly lines for uncertain demand is tackled and optimization algorithms are offered for the balancing of such lines. Building an assembly line is a commitment of several months or even years, it is understandable that the demand will fluctuate during the lifetime of an assembly line. New products are developed, others are removed from the market, and the decision of the final customer plays a role on the immediate demand. Therefore, the variation and uncertainty of the demand must be accounted for in an assembly line. In this book, methods dealing with random demand or random production sequence are presented, so that the practitioners can plan more robust and efficient production systems.

Assembly Line Balancing under Uncertain Task Time and Demand Volatility


Assembly Line Balancing under Uncertain Task Time and Demand Volatility

Author: Yuchen Li

language: en

Publisher: Springer Nature

Release Date: 2022-09-10


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This book introduces several mathematical models in assembly line balancing based on stochastic programming and develops exact and heuristic methods to solve them. An assembly line system is a manufacturing process in which parts are added in sequence from workstation to workstation until the final assembly is produced. In an assembly line balancing problem, tasks belonging to different product models are allocated to workstations according to their processing times and precedence relationships among tasks. It incorporates two features, uncertain task times, and demand volatility, separately and simultaneously, into the conventional assembly line balancing model. A real-life case study related to the mask production during the COVID-19 pandemic is presented to illustrate the application of the proposed framework and methodology. The book is intended for graduate students who are interested in combinatorial optimizations in manufacturing with uncertain input.