Back to Search Start Over

Towards Efficient Modularity in Industrial Drying: A Combinatorial Optimization Viewpoint

Authors :
Bayati, Alisina
Srivastava, Amber
Malvandi, Amir
Feng, Hao
Salapaka, Srinivasa
Publication Year :
2022

Abstract

The industrial drying process consumes approximately 12% of the total energy used in manufacturing, with the potential for a 40% reduction in energy usage through improved process controls and the development of new drying technologies. To achieve cost-efficient and high-performing drying, multiple drying technologies can be combined in a modular fashion with optimal sequencing and control parameters for each. This paper presents a mathematical formulation of this optimization problem and proposes a framework based on the Maximum Entropy Principle (MEP) to simultaneously solve for both optimal values of control parameters and optimal sequence. The proposed algorithm addresses the combinatorial optimization problem with a non-convex cost function riddled with multiple poor local minima. Simulation results on drying distillers dried grain (DDG) products show up to 12% improvement in energy consumption compared to the most efficient single-stage drying process. The proposed algorithm converges to local minima and is designed heuristically to reach the global minimum.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2210.01971
Document Type :
Working Paper