Anomaly Detection Algorithm for Searching Selective Catalyst Differentiating Linear and Cyclic Alkanes in Oxidation

IF 5.5 1区 化学 Q2 CHEMISTRY, MULTIDISCIPLINARY
Jiaxing Liu, Pengkun Su, Bingling Dai, Da Zhou, Cheng Wang
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Abstract

Selective catalysis, particularly when differentiating substrates with similar reactivities in a mixture, is a significant challenge. In this study, anomaly detection algorithms—tools traditionally used for identifying outliers in data cleaning—are applied to catalyst screening. We focus on developing catalytic methods to selectively oxidize cyclic alkanes over linear alkanes in mixtures such as naphtha. By inserting cyclohexane oxidation data one by one into a database of n-hexane oxidization, we used several anomaly detection algorithms to evaluate whether the inserted cyclohexane oxidation data could be considered anomalous. Conditions identified as anomalies imply that they are likely not suitable for n-hexane oxidization. As these anomalies come from conditions for cyclohexane oxidation, they are promising conditions for selective oxidation of cyclohexane while leaving n-hexane unaltered. These anomalies were thus further investigated, leading to the discovery of a specific catalytic approach that selectively oxidizes cyclohexane. This application of anomaly detection offers a novel method to search for selective catalyst for chemical reactions involving mixed substrates.

氧化过程中判别线性烷烃和环烷烃选择性催化剂的异常检测算法
选择性催化,特别是当在混合物中区分具有相似反应活性的底物时,是一个重大的挑战。在本研究中,异常检测算法——传统上用于识别数据清洗中的异常值的工具——被应用于催化剂筛选。我们专注于开发催化方法,以选择性氧化环烷烃超过线性烷烃的混合物,如石脑油。通过将环己烷氧化数据逐一插入到正己烷氧化数据库中,使用几种异常检测算法来评估插入的环己烷氧化数据是否可以视为异常。被确定为异常的条件意味着它们可能不适合正己烷氧化。由于这些异常来自环己烷氧化条件,它们是环己烷选择性氧化而不改变正己烷的有希望的条件。因此,对这些异常现象进行了进一步的研究,发现了一种选择性氧化环己烷的特殊催化方法。这种异常检测的应用为寻找混合底物化学反应的选择性催化剂提供了一种新的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Chinese Journal of Chemistry
Chinese Journal of Chemistry 化学-化学综合
CiteScore
8.80
自引率
14.80%
发文量
422
审稿时长
1.7 months
期刊介绍: The Chinese Journal of Chemistry is an international forum for peer-reviewed original research results in all fields of chemistry. Founded in 1983 under the name Acta Chimica Sinica English Edition and renamed in 1990 as Chinese Journal of Chemistry, the journal publishes a stimulating mixture of Accounts, Full Papers, Notes and Communications in English.
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