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Published byAldous Armstrong Modified over 8 years ago
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AN OPTIMIZATION DESIGN OF ARTIFICIAL HIP STEM BY GENETIC ALGORITHM AND PATTERN CLASSIFICATION
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ARTIFICIAL HIP STEM
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HISTORY First elaborated in 1961 More than 1,000,000 operations each year worldwide Performance depend on: Stress Displacement Amount of wear Fatigue
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ARTIFICIAL HIP STEM
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PROBLEMS IN CURRENT DESIGN Design from Boolean operation of basic geometric primitives Design based on experience Can not fit individual needs
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DESIGN METHOD Geometry modeling Finite element model Genetic Algorithm Patten classification
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GEOMETRY MODELING freeform model represented by B-splines Geometric Models are stored parametrically randomly generate
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GEOMETRY MODELING
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FEA Finite element model Static analysis Distribution of stresses Displacements SolidWorks Simulation
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FEA
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DONE BY SOLIDWORKS API (C#)
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GENETIC ALGORITHM Components of a Genetic Algorithm Representation of gene Selection Criteria Reproduction Rules
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GENETIC ALGORITHM
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Step 1: Set up an initial population P(0)—an initial set of solution Evaluate the initial solution for fitness Generation index t=0 Step 2: Use genetic operators to generate the set of children (crossover, mutation) Add a new set of randomly generated population Reevaluate the population—fitness Perform competitive selection—which members will be part of next generation Select population P(t+1)—same number of members If not converged t←t+1 Go To Step 2
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PATTEN CLASSIFICATION FEA is very time consuming Eliminate useless data Predict result
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IMPLEMENTATION METHOD Solidworks Simulation Matlab Solidworks API C# Integration
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