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MARC Record
Bibliographic Data
Control Number
312686
Date and Time of Latest Transaction
20150706093825.AM
General Information
150706s |||||||||b ||00|||
Cataloging Source
STII-DOST
Local Call Number
Sciencedirect
Main Entry - Personal Name
Jin-Tang Peng
Chen-Fu Chien
Yun-Ju Chen
Title Statement
Manufacturing intelligence for semiconductor demand forecast based on technology diffusion and product life cycle by Chen-Fu Chien, Yun-Ju Chen and Jin-Tang Peng
Physical Description
pages 496-509 computer file; text; 606kb
Summary, Etc.
Semiconductor industry is capital intensive in which capacity utilization significantly affect the capital effectiveness and profitability of semiconductor manufacturing companies. Thus, demand forecasting provides critical input to support the decisions of capacity planning and the associated capital investments for capacity expansion that require long lead-time. However, the involved uncertainty in demand and the fluctuation of semiconductor supply chains make the present problem increasingly difficult due to diversifying product lines and shortening product life cycle in the consumer electronics era. Semiconductor companies must forecast future demand to provide the basis for supply chain strategic decisions including new fab construction, technology migration, capacity transformation and expansion, tool procurement, and outsourcing. Focused on realistic needs for manufacturing intelligence, this study aims to construct a multi-generation diffusion model for semiconductor product demand forecast, namely the SMPRT model, incorporating seasonal factor (S), market growth rate (M), price (P), repeat purchases (R), technology substitution (T), in which the nonlinear least square method is employed for parameter estimation. An empirical study was conducted in a leading semiconductor foundry in Hsinchu Science Park and the results validated the practical viability of the proposed model. This study concludes with discussions of the empirical findings and future research directions
Subject Added Entry - Topical Term
Social sciences
Manufacturing intelligence
Technology diffusion
Product life cycle
Location
DOST STII Sciencedirect NONPRINTS NP 14-16087 1 14-16087 Online/Download 2012-01-19
Physical Location
Department of Science and Technology
Science and Technology Information Institute
Sciencedirect
Digital Copy
Not Available
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