Flexible Capacity Planning Under Uncertain Demand
Abstract
This thesis is created to explore strategies for adaptable capacity planning uncertain demand
scenarios, driven by the inefficiencies of current methods during economic downturns.
Businesses have been shifting their trade-off in priority from mitigating risks to minimizing
costs of operation. Initially, the feasibility of employing fuzzy numbers for demand
forecasting was examined. However, due to data limitations and the absence of historical
records, particularly in the research of New Product Introduction (NPI), this approach was
found impractical. Through a case study of Intel Vietnam, a semiconductor assembly facility,
insights were gleaned into discerning trends and recurrent patterns in previous product
launches within similar product families. Subsequently, a linear regression model was
devised to minimize discrepancies between current forecasts and historical data, resulting in
an adjusted forecast that enhances precision compared to traditional methods. Essential
factors and methodologies crucial for production capacity planning, such as efficient
scheduling and procurement strategies, are studied. The implementation of the new approach
yields significant enhancements in the accuracy of production capacity planning by
streamlining extensive planning endeavors. Overall, the thesis aims to address challenges in
production capacity planning within Intel Vietnam's production department, emphasizing the
imperative of cross-departmental collaboration, particularly between forecasting and
engineering teams, to foster improved communication and effectiveness in tackling these
challenges.