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1 An Information-Driven FEA Model Generation Approach for Chip Package Applications Sai Zeng 1, Russell Peak 2*, Ryuichi Matsuki 3, Angran Xiao 4, Miyako Wilson 2, Robert E. Fulton 1 1 Engineering Information Systems Lab 2 Manufacturing Research Center 4 Systems Realization Lab Georgia Institute of Technology, Atlanta, GA 30332-0405, USA 3 Advanced Product Design & Development Division, Shinko Electric Industries Co., Ltd., Nagano, Japan 23rd Computers and Information in Engineering Conference September 2–6, 2003, Chicago, Illinois
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2 Example Chip Package Products Source: www.shinko.co.jp Plastic Ball Grid Array (PBGA) Packages Quad Flat Packs (QFPs) Wafer Level Package (WLP) System-in-Package (SIP)Glass-to-Metal Seals
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3 1 2 3 1 2 3 1 2 4 1a 2 3a 1b 1c 3b3c 3a3b 2 1a1b1c 1d1e 3 1a1b 1c 1d 2 3 4a4b4c Idealized Analytical BodiesDecomposed FEA Geometry Models original topology change (no body change) body change (includes topology change) Variable Topology Multi-Body (VTMB) FEA Meshing Challenges Labor-intensive “chopping” Meshing & Solving Design Model
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4 Traditional Approach FEA Model Planning Sketches in Traditional Approach Small topology changes force mesh model rebuilding from scratch Mesh models are barely reusable using traditional approach
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5 Motivation Competition in Chip Package Industry Needs for new technologies and approaches facilitating seamless design and analysis integration Difficulty in analysis model generation – Hundreds of components – Variable materials – Complex geometric shapes – Changeable connectivity configurations Modifications resulting in tedious and time consuming FEA modeling process – package design – analysis discipline – idealization
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6 Objective Integrate chip package design using Finite Element Analysis Automate the FEA modeling process to save the modeling time and reduce the human errors Increase reusability of the mesh models during chip package modification and redesign
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7 Frame of Reference – Multi-Representation Architecture (MRA) for CAD-CAE Interoperability Composed of four representations (information models) Provides flexible, modular mapping between design & analysis models Creates automated, product-specific analysis modules (CBAMs) Represents design-analysis associativity explicitly
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8 Information-Driven FEA Modeling Approach Mapping process ABB Ψ RMM transforms the ABB model into a ready- to-mesh model (RMM) by geometry decomposition. Mapping process RMM Ψ SMM transforms the RMM into the solvable FEA-based SMM in an automated manner. ABB captures analytical concepts FEA based SMM = object wrapper – Integrates pre-processor, solver and post processor information – Includes vendor-specific script file format body 3 2 1 4 T 0 3 2 1 4 T 0 ABB ModelRMM ModelSMM Model ABB Ψ RMM Ψ SMM Information-Driven FEA Modeling Approach
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9 Analysis Building Block Models (ABBs) An ABB model represents engineering analytical concepts as a set of computable information entities Independent from specific solution techniques Analysis knowledge is captured by employing object-orient information representation technology Information Content for Example ABB Concepts
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10 Analysis Building Block Models (ABBs) A diving board example is presented to illustrate an ABB system A Graphical View of an ABB System and its Analytical Bodies and Connectivity
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11 Ready-to-Mesh Models (RMMs) A RMM is obtained by geometric decomposition from a corresponding ABB The geometry of a RMM model is composed of geometry pieces that are convex-shaped and meshable using efficient and cheap meshing techniques. Building blocks of an ABB can be reused to construct a RMM Associativity of building blocks is changed before and after decomposition A Graphical View of an RMM System and its Decomposed Bodies and Connectivity
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12 Decomposition Architecture Decomposition is implemented to obtain conformal mesh along the interfaces of connected bodies Decomposition deals with geometry exclusively Decomposed model consists of decomposed bodies connected along equivalent faces Decomposition Process
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13 Decomposition Associativity Mechanism An mechanism is required to keep track of the information associativity during the geometry decomposition Compositional Relations for Boundary Condition Building Blocks and Continuum Building Blocks after Decomposition
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14 Solution Method Model (SMM) It is an information entity that wraps solution tool inputs and outputs into a single logical package SMM includes the SMM information objects and the SMM tool agent
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15 ABB - SMM- Solution Tool Interaction ABB systems generate SMMs based on solution method considerations – Via RMMs in these problem types Solution tool capabilities are also usually considered RMM Model
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16 A Chip Package Thermomechanical Analysis Case – An ABB system Four linear elastic thermomechanical continua Continua are glued together One rigid pin support Uniform temperature drop as thermal load
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17 A Chip Package Thermomechanical Analysis Case – An RMM A RMM is obtained after automatic decomposition of a ABB system With composition mechanism, information associated with geometry can be assigned on the corresponding decomposed geometry This model can be directly input into the SMM to generate a conformal FEA meshed model
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18 A Chip Package Thermomechanical Analysis Case – An SMM The tool agent translates the model information into the tool- specific computable formats, e.g. a PATRAN command language ASCII file Modeling time is counted as information instance object creation time Modeling time is dramatically reduced comparing to traditional FEA modeling approach
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19 Complex Chip Package Thermomechanical Analysis Case ABB Model consisting 182 Input bodies RMM consisting 9056 Decomposed bodies FEA SMM Decomposition
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20 Closure Presentation of information-driven FEA modeling approach Demonstration representing product-independent analysis concepts as knowledge-based objects: – semantically rich – reusable – modular and tool-independent Reduction of FEA modeling time (variable topology multi-body application) - reduced from days/hours to hours/minutes Enhancement of knowledge capture and automation level vs. traditional direct FEA modeling approaches
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21 Acknowledgements We are particularly grateful for the support of the following people: – Kuniyuki Tanaka, Yukiharu Takeuchi, and Shinichi Wakabayashi of Shinko Electric Ltd. – Greg Bettencourt of Shinko Electric America, Inc. – Rod Dreisbach of The Boeing Company – Mike Dickerson of the NASA Jet Propulsion Lab (JPL) – Manas Bajaj, Greg M. Mocko, Edward J. Kim, Injoong Kim at the Engineering Information Systems Lab, Georgia Tech
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22 Question?
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