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Oliver Rose Dresden University of Technology Department of Computer Science Chair for Modeling and Simulation Benefits and Drawbacks of Simple Models for Complex Production Systems
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2 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Dresden University of Technology Dresden located in the state Saxony, often called “Silicon Saxony” (factories from Infineon, Qimonda, AMD, and ZMD; lots of suppliers) Largest German University of Technology Focus on Computer Science, Electrical Engineering, and Mechanical Engineering About 35,000 students, 3,000+ students in Computer Science, 700+ beginners in winter semester 2005/2006 Faculty of Computer Science consists of 30 chairs Institute of Applied Computer Science has 5 chairs, dealing with different aspects of factory planning, control, and automation
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3 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Research Overview Complex Production System Model Simulation Dispatching Simulation- based Scheduling Measurement & Analysis Automation of Data Transfer High-level Production Control
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4 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Cooperations Industry Infineon Technologies AG, Munich and Dresden AMD Saxony LLC & Co. KG, Dresden KBA Planeta, Radebeul (Offset Printing Machines) Airbus Deutschland GmbH, Hamburg Academia Arizona State University, Tempe, AZ, USA Singapore Institute of Manufacturing Technology Georgia Institute of Technolgy, Atlanta, GA, USA FernUni Hagen, Germany Fraunhofer IPA, Stuttgart, Germany
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5 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Introduction Goal of the study: Estimate the transient behavior of a wafer fab after recovery from a catastrophic failure in order to improve the flow of material Motivation: Infineon engineers reported that large amounts of WIP are present in the fab even weeks after end of repair Goals of improvement: reduction of WIP reduction of cycle times on-time delivery (reduction of variability of cycle times)
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6 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Semiconductor Manufacturing Back End Front End Wafer Fab TestAssembly Probe
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7 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Flow of material Fotos: Fullman-Kinetics, Varian, Sematech International
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8 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Characteristics of wafer fabrication facilities Large number of processing steps, typically several hundreds Large number of tools of different types: photo equipment, ovens, etching equipment, ion implanters, … Wafer are build up in layers: reentrant flow of material, jobshop type way of production Machine breakdowns (typical availability: 70-90%) Auxiliary resources, e.g., reticles (photo masks) Batch tools with complex batching criteria Sequence dependent setups
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9 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Important performance measures Cycle time: low Output: high Machine utilization: high Inventory (work in process, WIP): low Yield (percentage of good dies on a wafer): high Cost per die: low Conflicting goals!
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10 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Controllable factors Factory load (wafer starts per week) Product mix Number of machines and operators Preventive maintenance policies Production planning & control policies: scheduling vs. dispatching lot release vs. shop-floor control …
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11 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Fab Model fixed number of cycles bottleneck workcenter delay unit (rest of the fab) finished? yes no lot release
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12 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Modeling Details Dispatching strategies: FIFO Critical Ratio Slack Time Delay time distributions of the delay unit Lot release policy Partial bottleneck breakdowns
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13 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Modeling the Rest of the Fab ?
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14 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Delay Time Distributions Constant amount of time for sum of processing times Distributions of different variability for sum of non- processing times (waiting times, transport times, etc.): Constant (coefficient of variation: 0.0) Erlang-5(coefficient of variation: 0.447) Exponential(coefficient of variation: 1.0) Independence of consecutive and parallel delays assumed
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15 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Constant Delay FIFO Critical Ratio Slack Time time WIP
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16 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Shifted Exponential Delay FIFO Critical Ratio Slack Time time WIP
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17 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Shifted Erlang Delay FIFO Critical Ratio Slack Time time WIP
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18 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Delay Distribution from Real Data
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19 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Partial Bottleneck Workcenter Breakdowns ?
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20 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Modeling of Partial Breakdowns number of broken machines 4 2 1 duration of breakdowns 50100 200
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21 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models One Broken Machine for 200 Time Units time WIP FIFO Critical Ratio Slack Time
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22 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models All machines broken for 50 time units FIFO Critical Ratio Slack Time time WIP
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23 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Combination of two dispatch strategies ? Critical Ratio -> FIFO Slack Time -> FIFO
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24 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Combination of Critical Ratio and FIFO FIFO Critical Ratio t =2500 FIFO time WIP
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25 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Stop Lot Release During Breakdown Period
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26 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Lot Releases Stopped FIFO (stopped) Critical Ratio (stopped) Slack Time (stopped) FIFO Critical Ratio Slack Time time WIP
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27 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Estimation of Cycle Time Distributions Hours Full Simple Hours FIFO Full Simple Hours CR
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28 Dresden University of Technology Department of Computer Science Oliver Rose Simple Models Conclusions Simple models useful for understanding complex production systems Simple models useful for the design of simple and robust scheduling heuristics Not a tool for beginners Pitfall of oversimplification Simplification must not be the goal but only the method to reach the goal Keep the model as simple as possible but not simpler!
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