结合聚类分析和主成分分析降低排气净化数据复杂性

B. Ebeling, C. Vargas, S. Hubo
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引用次数: 6

摘要

人为的和人口的过程造成了世界范围的空气问题,引起了人们对废气净化的关注,以抵消这些影响。由于排气中存在大量物质,并且需要各种操作参数,因此必须分析大量通常是高维的数据。最终目标是最终降低反映物质特征的信息方面的数据复杂性。对30种废气化合物的结构特征和理化指标进行聚类分析,得到7个聚类。主成分分析(PCA)确定了6个主成分(pc),因此与最初使用的11个指标相比,减少了维度。仅在6个pc上重新收集原始数据集的总信息后,重新聚类表明我们能够根据11个索引恢复与原始CA相同的集群结构。该过程首次证明了通过我们提出的联合CA-PCA方法在降维数据后成功重新聚类的原理,因此朝着可能开发吸附方法的方向迈出了一步,该方法可以选择性地从废气中去除恶臭/有毒成分。
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Combined Cluster Analysis and Principal Component Analysis to Reduce Data Complexity for Exhaust Air Purification
Anthropogenic and demographic processes cause worldwide air problems, giving rise to focus on exhaust air purification to counteract these effects. Due to the large number of substances found in exhaust air and the various operational parameters needed, a huge amount of often high dimensional data has to be analyzed. The ultimate goal is to finally reduce data complexity in terms of information reflecting the substancescharacteristics. The Cluster Analysis (CA) of data from 30 exhaust air compounds with 11 indices representing both structural characteristics and physicochemical data resulted in 7 clusters. The Principal Component Analysis (PCA) led to the identification of 6 Principal Components (PCs) and therefore to a dimensional reduction compared to the originally used 11 indices. After re-gathering the total information of the original data-set upon the 6 PCs only, a re-clustering showed that we were able to restore the same cluster structure as in the original CA based on the 11 indices. This process is a first proof of principle in successful re-clustering after dimensional data reduction by our proposed combined CA-PCA method and hence a step towards a possible development of an adsorption method to selectively remove malodorous/toxic components from the exhaust air.
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