Multi-objective energy-efficient hybrid flow shop scheduling using Q-learning and GVNS driven NSGA-II
| Year of publication: |
2023
|
|---|---|
| Authors: | Li, Peize ; Xue, Qiang ; Zhang, Ziteng ; Chen, Jian ; Zhou, Dequn |
| Published in: |
Computers & operations research : and their applications to problems of world concern ; an international journal. - Oxford [u.a.] : Elsevier, ISSN 0305-0548, ZDB-ID 194012-0. - Vol. 159.2023, p. 1-23
|
| Subject: | Energy-efficient scheduling | Hybrid flow shop | Multi-objective optimization | Q-learning | Time-of-use tariffs | Scheduling-Verfahren | Scheduling problem | Energieeinsparung | Energy conservation | Evolutionärer Algorithmus | Evolutionary algorithm | Durchlaufzeit | Lead time | Multikriterielle Entscheidungsanalyse | Multi-criteria analysis |
-
Schulz, Sven, (2020)
-
Lei, Deming, (2018)
-
A systematic review of multi-objective hybrid flow shop scheduling
Neufeld, Janis S., (2023)
- More ...
-
Will peer effects exist on renewable energy development across China's provinces?
Zhou, Dequn, (2025)
-
Without subsidy, will Chinese renewable energy power generation have a bright future?
Chong, Zhaotian, (2021)
-
Integrated airline productivity performance evaluation with CO2 emissions and flight delays
Huang, Fei, (2020)
- More ...