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A Novel Genetic Algorithm-Based Optimization Framework for the Improvement of Near-Infrared Quantitative Calibration Models

机译:一种新型基于遗传算法的改进近红外定量校准模型的优化框架

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The global fishmeal production is used for animal feed, and protein is the main component that provides nutrition to animals. In order to monitor and control the nutrition supply to animal husbandry, near-infrared (NIR) technology was utilized for rapid detection of protein contents in fishmeal samples. The aim of the NIR quantitative calibration is to enhance the model prediction ability, where the study of chemometric algorithms is inevitably on demand. In this work, a novel optimization framework of GSMW-LPC-GA was constructed for NIR calibration. In the framework, some informative NIR wavebands were selected by grid search moving window (GSMW) strategy, and then the variables/wavelengths in the waveband were transformed to latent principal components (LPCs) as the inputs for genetic algorithm (GA) optimization. GA operates in iterations as implementation for the secondary optimization of NIR wavebands. In steps of the variable’s population evolution, the parametric scaling mode was investigated for the optimal determination of the crossover probability and the mutation operator. With the GSMW-LPC-GA framework, the NIR prediction effect on fishmeal protein was experimentally better than the effect by simply adopting the moving window calibration model. The results demonstrate that the proposed framework is suitable for NIR quantitative determination of fishmeal protein. GA was eventually regarded as an implementable method providing an efficient strategy for improving the performance of NIR calibration models. The framework is expected to provide an efficient strategy for analyzing some unknown changes and influence of various fertilizers.
机译:全球鱼粉生产用于动物饲料,蛋白质是为动物提供营养的主要组成部分。为了监测和控制畜牧业的营养供应,利用近红外(NIR)技术来快速检测鱼粉样品中蛋白质含量。 NIR定量校准的目的是提高模型预测能力,其中化学计量算法的研究不可避免地满足需求。在这项工作中,为NIR校准构建了GSMW-LPC-GA的新颖优化框架。在该框架中,通过网格搜索移动窗口(GSMW)策略选择一些信息NIR波段,然后将波带中的变量/波长转换为潜在主组件(LPC)作为遗传算法(GA)优化的输入。 GA在迭代中运行作为NIR波段的二次优化的实现。在变量的人口演化的步骤中,研究了参数缩放模式以获得交叉概率和突变算子的最佳确定。通过GSMW-LPC-GA框架,通过简单地采用移动窗校准模型,对鱼粉蛋白的NIR预测效应优于效果。结果表明,所提出的框架适用于鱼蛋白蛋白的NIR定量测定。 GA最终被视为可实现的方法,提供了提高NIR校准模型的性能的有效策略。该框架预计提供了一种有效的策略,用于分析各种肥料的一些未知变化和影响。

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