Inicio
Explorar
nav.journalClub
Tendencias
Más
synapse
⌘+K
Idioma
Español
Español
March 3, 2026
Hyper-heuristic enhanced teaching-learning-based optimization for energy-efficient hybrid flow shop scheduling with batch processing machines under time-of-use tariffs
JW
Jing Wang
JL
Jingsheng Lian
LC
Lixin Cheng
Ver todo
Puntos clave
Improved energy efficiency results from enhanced scheduling under time-of-use tariffs, optimizing resource use and minimizing costs.
The study demonstrates significant reductions in energy consumption, achieving up to 30% lower costs compared to conventional methods.
This approach utilizes hyper-heuristic methods for optimization, allowing for more effective scheduling of batch processing machines.
The findings may enable better energy management strategies in industrial settings, supporting sustainability and operational efficiency.
Mark Helpful
Me gusta
Save
Guardar
Relay
Compartir
Mark Helpful
Me gusta
Save
Guardar
Relay
Compartir
Hyper-heuristic enhanced teaching-learning-based optimization for energy-efficient hybrid flow shop scheduling with batch processing machines under time-of-use tariffs | Synapse
Cite This Study
Copy
Wang et al. (Wed,) studied this question.
synapsesocial.com/papers/69a75bd2c6e9836116a23d43
https://doi.org/https://doi.org/10.1016/j.asoc.2026.114725