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Machine Learning Techniques to Select a Reduced and Optimal Set of Sensors for the Design of Ad Hoc Sensory Systems

机译:机器学习技术选择用于临时感觉系统的设计的减少和最佳的传感器

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The first step of this research has been to discriminate, by means of a commercial electronic nose (e-nose), the maturity evolution of seven types of fruits stored in refrigerated cells, from the post-harvest period till the beginning of the marcescence. The final aim was to determine a procedure to select a reduced set of sensors that can be efficiently used to monitor the same class of fruits by a low cost system with few, suitable sensors without loss in accuracy and generalization. To define the best subset we have compared the use of a projection technique (the Principal Component Analysis, PCA) with the sequential feature selection technique (Sequential Forward Selection, SFS) and the Genetic Algorithm (GA) technique by using classification schemes like Linear Discriminant Analysis (LDA) and k-Nearest Neighbor (kNN) and applying two data pre-processing methods. We have determined a subset of only three sensors which gives a classification accuracy near 100%. This procedure can be generalized to other experimental situations to select a minimal and optimal set of sensors to be used in consumer applications for the design of ad hoc sensory systems.
机译:这项研究的第一步已经区分,由商业电子鼻(电子鼻),七类存放在冷藏细胞的水果的成熟演变的方式,从后收获期,直到marcescence的开始。最终的目的是确定一个程序来选择一组减少了可以有效地用于监测由低成本系统具有很少,合适的传感器相同的类水果的,而不在精度和泛化损失传感器。要通过分类方案像线性判别定义,我们比较了使用投影技术(主成分分析,PCA)与顺序特征选择技术(顺序前进,SFS)和遗传算法(GA)技术的最佳子集分析(LDA)和k最近邻(KNN)和施加两个数据预处理方法。我们已经确定只有三个传感器,这给近100%的分类准确度的一个子集。这个过程可以推广到其他的实验情况下,选择一个最小的和最佳的一组传感器在消费类应用被用于特设感觉系统的设计。

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