1 research outputs found
A Deep Learning Hybrid Framework Combining an Efficient Evolutionary Algorithm for Complex Many-Objective Optimization of Sustainable Triple CO<sub>2</sub> Feed Methanol Production
Current mainstream technologies have exhibited limits
in integrating
global many-objective optimization methods with chemical production
systems, resulting in subpar outcomes in terms of energy efficiency
and environmental issues for methanol production systems. In this
study, a novel deep learning hybrid framework is proposed, which involves
the construction of a mechanism model with the ability to elucidate
the underlying principles and interrelationships of chemistry on a
macroscopic scale and a data-driven model to enhance the accuracy
and dependability of predictions from available data. The efficiency
and global search capability of the proposed framework are further
improved through the integration of an advanced evolutionary algorithm,
which incorporates many-criteria decision-making technology to provide
a comprehensive set of trade-offs for the optimal solution sets. The
results demonstrate that all four objective functions of carbon dioxide
emissions, methane conversion rate, methanol production, and energy
consumption in the triple CO2 feed methanol production
system are rapidly optimized, in which carbon dioxide emissions and
energy consumption are reduced by 18.50% and 3.15%, respectively.
Consequently, this considerably enhances the environment. This proposed
framework holds significant potential in facilitating the efficient
optimization and sustainable production of complex systems within
process engineering