2023
DOI: 10.3390/polym15030499
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Multi-Objective Optimization of Liquid Silica Array Lenses Based on Latin Hypercube Sampling and Constrained Generative Inverse Design Networks

Abstract: Injection molding process parameters have a great impact on plastic production quality, manufacturing cost, and molding efficiency. This study proposes to apply the method of Latin hypercube sampling, and to combine the response surface model and “Constraint Generation Inverse Design Network (CGIDN)” to achieve multi-objective optimization of the injection process, shorten the time to find the optimal process parameters, and improve the production efficiency of plastic parts. Taking the LSR lens array of autom… Show more

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Cited by 9 publications
(5 citation statements)
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“…Te selected sample points should sufciently refect the characteristics of the entire experimental design space, making it a crucial aspect of constructing the response surface model. Commonly used methods for sample selection include central composite design (CCD) [31], Latin hypercube sampling design [32], orthogonal experimental design [33], and Box-Behnken experimental design [34]. Considering the complexity of the mapping relationship between design variables and output response values, the central composite design method is adopted in this paper to construct the sample space.…”
Section: Design and Simulationmentioning
confidence: 99%
“…Te selected sample points should sufciently refect the characteristics of the entire experimental design space, making it a crucial aspect of constructing the response surface model. Commonly used methods for sample selection include central composite design (CCD) [31], Latin hypercube sampling design [32], orthogonal experimental design [33], and Box-Behnken experimental design [34]. Considering the complexity of the mapping relationship between design variables and output response values, the central composite design method is adopted in this paper to construct the sample space.…”
Section: Design and Simulationmentioning
confidence: 99%
“…The reinforcement learning framework was then trained to perform inverse design, that is, to obtain the DLCA model parameters for a desired fractal dimension and elastic modulus. Similarly, Chang et al [268] in their investigation of high-performance liquid silica array lenses, employed a Latin hypercube sampling approach to achieve accurate direct predictions. They then accomplished inverse design by employing a constraint generation inverse design network, ultimately succeeding in the inverse design of liquid silica array lenses with the optimal residual stress value and volume shrinkage rate.…”
Section: Inverse Design For Given Properties or Structuresmentioning
confidence: 99%
“…(2) Initialization of the population To generate the initial population, the Latin Hypercube Sampling (LHS) method was used [12].…”
Section: Algorithm Descriptionmentioning
confidence: 99%