Proceedings of ESCAPE 35ISSN: 2818-4734
Volume: 4 (2025)
Table of Contents
LAPSE:2025.0550v1
Published Article
LAPSE:2025.0550v1
Predicting Final Properties in Ibuprofen Production with Variable Batch Durations
Kuan-Che Huang, David Shan-Hill Wong, Yuan Yao
June 27, 2025
Abstract
This study addresses the challenge of predicting final properties in batch processes with highly uneven durations, using the ibuprofen production process as a case study. Novel methodologies are proposed and compared against traditional regression algorithms, which rely on batch trajectory synchronization as a pre-processing step. The performance of each method is evaluated using established metrics. The data for this study were generated using Aspen Plus V12 simulation software, focused on batch reactors. To handle the unequal-length trajectories in batch processes, this research constructs a dual-transformer deep neural network with multi-head attention and layer normalization mechanism to extract shared information from the high-dimensional, uneven-length manipulated variable profiles into latent space, generating equal-dimensional latent codes. As an alternative strategy for representation learning, a dual-autoencoder framework is also employed to achieve equal-dimensional representations. The representation vectors are then used as inputs for downstream deep learning models to predict the target variables, achieving an accuracy with an R² score exceeding 0.9.
Keywords
Autoencoder, Batch Process, Representation learning, Transformer, Uneven durations
Suggested Citation
Huang KC, Wong DSH, Yao Y. Predicting Final Properties in Ibuprofen Production with Variable Batch Durations. Systems and Control Transactions 4:2480-2485 (2025) https://doi.org/10.69997/sct.146695
Author Affiliations
Huang KC: National Tsing Hua University, Department of Chemical Engineering, Hsinchu 300044, Taiwan
Wong DSH: National Tsing Hua University, Department of Chemical Engineering, Hsinchu 300044, Taiwan
Yao Y: National Tsing Hua University, Department of Chemical Engineering, Hsinchu 300044, Taiwan
Journal Name
Systems and Control Transactions
Volume
4
First Page
2480
Last Page
2485
Year
2025
Publication Date
2025-07-01
Version Comments
Original Submission
Other Meta
PII: 2480-2485-1117-SCT-4-2025, Publication Type: Journal Article
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LAPSE:2025.0550v1
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References Cited
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