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Showing records 343 to 344 of 344. [First] Page: 1 11 12 13 14 15 Last
Data-Driven Multi-Objective Optimization of Energy, Environmental, and Economic Performances in Manufacturing with Physics-Consistent Deep Learning
Hyeonrok Choi, Lee Jaewook, Yang Won, Kim Seong-il
March 24, 2026 (v1)
Aluminium cold rolling is an energy-intensive process that has a substantial impact on CO₂ emis-sions and production cost, yet plant-level optimization remains challenging due to strong process nonlinearities and various operational constraints. This study develops a physics-consistent hy-brid model that combines a Stone–Hitchcock–Ludwik analytical rolling-energy formulation with a residual deep neural network to predict the daily electricity consumption of three single-stand cold rolling mills. Using plant raw data, the hybrid model achieves lower prediction errors than conventional data driven model and yields line-specific physical parameters that agree well with the observed behaviour of each mill. On this basis, an NSGA-II-based tri-objective optimization is carried out to minimise daily energy use, CO₂ emissions, and specific production cost (SPC) by adjusting pass-wise reduction and tension schedules and line-wise production allocation. Case studies on a representative operating... [more]
Dynamic optimization of glucose feed in cell cultivation for monoclonal antibody production process design balancing productivity and impurity generation
Kosuke Nemoto, Yuki Yoshiyama, Mizuki Morisasa, Junshin Iwabuchi, Yusuke Hayashi, Sara Badr, Hirokazu Sugiyama
March 13, 2026 (v1)
The attached table shows the raw experimental data used for Figure 2 in the conference paper.
Showing records 343 to 344 of 344. [First] Page: 1 11 12 13 14 15 Last
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