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A Novel Approach for the Optimal Design of a Biosensor

机译:一种新的生物传感器最佳设计的新方法

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摘要

A novel design optimization strategy is proposed to enhance the analytical performance of a biosensor by taking into consideration the constructional and experimental parameters as design variables. A detailed study on multiple nonlinear neuro-regression analysis has been performed methodically in order to overcome the insufficient approaches on modeling-design-optimization of a biosensor. For this aim, the data were selected from a literature study. A hybrid method is used to test the accuracy of the predictions of 12 candidate functional structures that were proposed for modeling the data. The boundedness of the candidate models is checked after the calculation of R_(training)~2 and R_(testing)~2 values to reveal whether the model is realistic or not. Then appropriate models were optimized by using the four different optimization algorithms in terms of three different optimization scenarios. The results show that all the models express the process well regarding R_(training)~2. However, only four models are appropriate based on R_(testing)~2, and two of them were selected as the objective function depending on to be a realistic value. This novel optimization approach is also feasible for another modeling-designoptimization problem in analytical applications.
机译:提出了一种新颖的设计优化策略,通过考虑到设计变量的结构和实验参数来增强生物传感器的分析性能。有条不紊地进行了关于多元非线性回归分析的详细研究,以克服生物传感器的建模设计优化的不充分方法。为此目的,数据选自文献研究。混合方法用于测试提出用于建模数据的12个候选功能结构的预测的准确性。在计算R_(训练)〜2和R_(测试)〜2的计算后检查候选模型的有界性,以显示模型是否逼真。然后通过在三种不同的优化方案方面使用四种不同的优化算法来优化适当的模型。结果表明,所有模型都表达了对R_(训练)〜2的过程。然而,基于R_(测试)〜2只有四种型号,其中两种被选择为目标函数,具体取决于成为现实价值。这种新颖的优化方法对于分析应用中的另一个建模 - 设计优化问题也是可行的。

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