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Method for Optimizing Coating Properties Based on an Evolutionary Algorithm Approach

机译:进化算法的涂层性能优化方法

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In industry as well as many areas of scientific research, data collected often contain a number of responses of interest for a chosen set of exploratory variables. Optimization of such multivariable multiresponse systems is a challenge well suited to genetic algorithms as global optimization tools. One such example is the optimization of coating surfaces with the required absolute and relative sensitivity for detecting analytes using devices such as sensor arrays. High-throughput synthesis and screening methods can be used to accelerate materials discovery and optimization; however, an important practical consideration for successful optimization of materials for arrays and other applications is the ability to generate adequate information from a minimum number of experiments. Here we present a case study to evaluate the efficiency of a novel evolutionary model-based multiresponse approach (EMMA) that enables the optimization of a coating while minimizing the number of experiments. EMMA plans the experiments and simultaneously models the material properties. We illustrate this novel procedure for materials optimization by testing the algorithm on a sol-gel synthetic route for production and optimization of a well studied amino-methyl-silane coating. The response variables of the coating have been optimized based on application criteria for micro- and macro-array surfaces. Spotting performance has been monitored using a fluorescent dye molecule for demonstration purposes and measured using a laser scanner. Optimization is achieved by exploring less than 2percent of the possible experiments, resulting in identification of the most influential compositional variables. Use of EMMA to optimize control factors of a product or process is illustrated, and the proposed approach is shown to be a promising tool for simultaneously optimizing and modeling multivariable multiresponse systems.
机译:在工业以及科学研究的许多领域中,收集的数据通常包含针对一组探索性变量的许多感兴趣的响应。这种多变量多响应系统的优化是非常适合作为全局优化工具的遗传算法的挑战。一个这样的例子是使用所需的绝对和相对灵敏度优化涂层表面,以使用诸如传感器阵列的设备检测分析物。高通量合成和筛选方法可用于加速材料发现和优化;但是,成功优化阵列和其他应用程序的材料的重要实践考虑因素是能够从最少的实验中生成足够的信息。在这里,我们介绍了一个案例研究,以评估一种新颖的基于进化模型的多响应方法(EMMA)的效率,该方法能够优化涂层,同时最大程度地减少实验次数。 EMMA计划实验并同时对材料特性进行建模。我们通过对溶胶-凝胶合成路线上的算法进行测试以说明这种新的材料优化程序,该算法用于生产和研究透彻的氨基-甲基-硅烷涂料优化。涂层的响应变量已根据微阵列和宏观阵列表面的应用标准进行了优化。为了演示目的,已经使用荧光染料分子监测了点样性能,并使用激光扫描仪对其进行了测量。通过探索少于2%的可能实验来实现优化,从而识别出最具影响力的成分变量。说明了使用EMMA优化产品或过程的控制因素,并且该方法被证明是同时优化和建模多变量多响应系统的有前途的工具。

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