loading page

Anomaly Detection Algorithm for Searching Selective Catalyst Differentiating Linear and Cyclic Alkanes in Oxidation
  • +2
  • 稼兴 刘,
  • Pengkun Su,
  • Bingling Dai,
  • Da Zhou,
  • Cheng Wang
稼兴 刘
Xiamen University Department of Artificial Intelligence
Author Profile
Pengkun Su
Xiamen University State Laboratory for the Physical Chemistry of Solid Surface
Author Profile
Bingling Dai
Xiamen University State Laboratory for the Physical Chemistry of Solid Surface
Author Profile
Da Zhou
Xiamen University National Institute for Data Science in Health and Medicine
Author Profile
Cheng Wang
Xiamen University State Laboratory for the Physical Chemistry of Solid Surface

Corresponding Author:wangchengxmu@xmu.edu.cn

Author Profile

Abstract

Selective catalysis, particularly when differentiating substrates with similar reactivities in 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. However, these anomalies come from conditions for cyclohexane oxidation. As a result, 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.
08 Jan 2025Submitted to Chinese Journal of Chemistry
09 Jan 2025Submission Checks Completed
09 Jan 2025Assigned to Editor
09 Jan 2025Review(s) Completed, Editorial Evaluation Pending
14 Jan 2025Reviewer(s) Assigned