Time-series clustering approach for training data selection of a data-driven predictive model: Application to an industrial bio 2,3-butanediol distillation process

•The training data selection method using time-series clustering is proposed.•The proposed method is applied to commercial 2,3-BDO distillation process.•The number and ratio of training data are optimized by mathematical model. In this study, we propose a time-series clustering approach that selects...

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Veröffentlicht in:Computers & chemical engineering 2022-05, Vol.161, p.107758, Article 107758
Hauptverfasser: Choi, Yeongryeol, An, Nahyeon, Hong, Seokyoung, Cho, Hyungtae, Lim, Jongkoo, Han, In-Su, Moon, Il, Kim, Junghwan
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Sprache:eng
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Zusammenfassung:•The training data selection method using time-series clustering is proposed.•The proposed method is applied to commercial 2,3-BDO distillation process.•The number and ratio of training data are optimized by mathematical model. In this study, we propose a time-series clustering approach that selects optimal training data for the development of predictive models. The optimal number of clusters was set based on the variation of within-cluster sums of squares. A predictive model was developed with the selection ratio of training data from each of those clusters. Based on the results, a regression model was developed to predict the performance of the model. The search space was applied to the regression model, and the optimal training data ratio were selected satisfying the objective function and constraints. The effectiveness of the method is demonstrated by addressing a commercial bio 2,3-butanediol distillation process. As a result, the number of data for model training was reduced by 49.20% compared to the base case without clustering. The coefficient of determination (R2) showed the same level of performance, and the root-mean-square error was improved up to 14.07%.
ISSN:0098-1354
1873-4375
DOI:10.1016/j.compchemeng.2022.107758