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Rapid measurement of fatty acid content during flour storage using a color-sensitive gas sensor array: Comparing the effects of swarm intelligence optimization algorithms on sensor features

机译:使用色敏气体传感器阵列在面粉储存过程中快速测量脂肪酸含量:比较群智能优化算法对传感器特征的影响

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摘要

The fatty acid content of flour is an important indicator for determining the deterioration of flour. We propose a novel rapid measurement method for fatty acid content during flour storage based on a self-designed color-sensitive gas sensor array. First, a color-sensitive gas sensor array was prepared to capture the odor changes during flour storage. The sensor features were then optimized using genetic algorithm (GA), ant colony optimization (ACO) and particle swarm optimization (PSO). Finally, back propagation neural network (BPNN) models were established to measure the fatty acid content during flour storage. Experimental results showed that the optimization effects of the three algorithms improved in the following order: GA ACO PSO, for the sensor features optimization. In the validation set, the determination coefficient of the best PSO-BPNN model was 0.9837. The overall results demonstrate that the models established on the optimized features can realize rapid measurements of fatty acid content during flour storage.
机译:面粉的脂肪酸含量是确定面粉劣化的重要指标。基于自行设计色敏气体传感器阵列,我们提出了一种用于面粉储存期间脂肪酸含量的新型快速测量方法。首先,制备色敏气体传感器阵列以捕获面粉储存期间的气味变化。然后使用遗传算法(GA),蚁群优化(ACO)和粒子群优化(PSO)进行传感器特征。最后,建立了回到传播神经网络(BPNN)模型以测量面粉储存期间的脂肪酸含量。实验结果表明,三种算法的优化效果按以下顺序改进:GA

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