Multi-objective Q-learning-based hyper-heuristic with Bi-criteria selection for energy-aware mixed shop scheduling
Published 2021 View Full Article
- Home
- Publications
- Publication Search
- Publication Details
Title
Multi-objective Q-learning-based hyper-heuristic with Bi-criteria selection for energy-aware mixed shop scheduling
Authors
Keywords
Mixed shop, Energy-aware scheduling, Bi-criteria selection, Hyper-heuristic, Q-learning
Journal
Swarm and Evolutionary Computation
Volume -, Issue -, Pages 100985
Publisher
Elsevier BV
Online
2021-09-16
DOI
10.1016/j.swevo.2021.100985
References
Ask authors/readers for more resources
Related references
Note: Only part of the references are listed.- A novel reinforcement learning based grey wolf optimizer algorithm for unmanned aerial vehicles (UAVs) path planning
- (2020) Chengzhi Qu et al. APPLIED SOFT COMPUTING
- Multi-objective evolutionary algorithm for solving energy-aware fuzzy job shop problems
- (2020) Inés González-Rodríguez et al. SOFT COMPUTING
- Energy-efficient distributed permutation flow shop scheduling problem using a multi-objective whale swarm algorithm
- (2020) Guangchen Wang et al. Swarm and Evolutionary Computation
- An improved artificial bee colony algorithm for solving multi-objective low-carbon flexible job shop scheduling problem
- (2020) Yibing Li et al. APPLIED SOFT COMPUTING
- A bi-objective flexible flow shop scheduling problem with machine-dependent processing stages: Trade-off between production costs and energy consumption
- (2020) Ali Hasani et al. APPLIED MATHEMATICS AND COMPUTATION
- Approximation algorithms for the three-machine proportionate mixed shop scheduling
- (2019) Longcheng Liu et al. THEORETICAL COMPUTER SCIENCE
- Recent Advances in Selection Hyper-heuristics
- (2019) John H. Drake et al. EUROPEAN JOURNAL OF OPERATIONAL RESEARCH
- An R2 indicator and weight vector-based evolutionary algorithm for multi-objective optimization
- (2019) Yuanchao Liu et al. SOFT COMPUTING
- What is the right production strategy for horizontally differentiated product: Standardization or mass customization?
- (2019) Xiao-Feng Shao INTERNATIONAL JOURNAL OF PRODUCTION ECONOMICS
- Energy-efficient scheduling for multi-objective flexible job shops with variable processing speeds by grey wolf optimization
- (2019) Shu Luo et al. JOURNAL OF CLEANER PRODUCTION
- Multi-objective optimization for energy-efficient flexible job shop scheduling problem with transportation constraints
- (2019) Min Dai et al. ROBOTICS AND COMPUTER-INTEGRATED MANUFACTURING
- An improved particle swarm optimization algorithm to solve hybrid flowshop scheduling problems with the effect of human factors – A case study
- (2019) M.K. Marichelvam et al. COMPUTERS & OPERATIONS RESEARCH
- Energy efficient multi-objective scheduling of tasks with interval type-2 fuzzy timing constraints in an Industry 4.0 ecosystem
- (2019) Amit K. Shukla et al. ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE
- AdaBoost-inspired multi-operator ensemble strategy for multi-objective evolutionary algorithms
- (2019) Chao Wang et al. NEUROCOMPUTING
- Manifold Learning-Inspired Mating Restriction for Evolutionary Multiobjective Optimization With Complicated Pareto Sets
- (2019) Linqiang Pan et al. IEEE Transactions on Cybernetics
- A two-stage R2 indicator based evolutionary algorithm for many-objective optimization
- (2018) Fei Li et al. APPLIED SOFT COMPUTING
- Efficient multi-objective optimization algorithm for hybrid flow shop scheduling problems with setup energy consumptions
- (2018) Jun-qing Li et al. JOURNAL OF CLEANER PRODUCTION
- A memetic differential evolution algorithm for energy-efficient parallel machine scheduling
- (2018) Xueqi Wu et al. OMEGA-INTERNATIONAL JOURNAL OF MANAGEMENT SCIENCE
- Adaptive population extremal optimization-based PID neural network for multivariable nonlinear control systems
- (2018) Guo-Qiang Zeng et al. Swarm and Evolutionary Computation
- Backtracking search based hyper-heuristic for the flexible job-shop scheduling problem with fuzzy processing time
- (2018) Jian Lin ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE
- MILP models for energy-aware flexible job shop scheduling problem
- (2018) Leilei Meng et al. JOURNAL OF CLEANER PRODUCTION
- Pareto or Non-Pareto: Bi-Criterion Evolution in Multiobjective Optimization
- (2016) Miqing Li et al. IEEE TRANSACTIONS ON EVOLUTIONARY COMPUTATION
- Solving the energy-efficient job shop scheduling problem: a multi-objective genetic algorithm with enhanced local search for minimizing the total weighted tardiness and total energy consumption
- (2016) Rui Zhang et al. JOURNAL OF CLEANER PRODUCTION
- A novel real-coded population-based extremal optimization algorithm with polynomial mutation: A non-parametric statistical study on continuous optimization problems
- (2016) Li-Min Li et al. NEUROCOMPUTING
- Two_Arch2: An Improved Two-Archive Algorithm for Many-Objective Optimization
- (2015) Handing Wang et al. IEEE TRANSACTIONS ON EVOLUTIONARY COMPUTATION
- An External Archive Guided Multiobjective Evolutionary Algorithm Based on Decomposition for Combinatorial Optimization
- (2015) Xinye Cai et al. IEEE TRANSACTIONS ON EVOLUTIONARY COMPUTATION
- A polynomial-time algorithm for the preemptive mixed-shop problem with two unit operations per job
- (2015) Aldar Dugarzhapov et al. JOURNAL OF SCHEDULING
- A Simple and Fast Hypervolume Indicator-Based Multiobjective Evolutionary Algorithm
- (2015) Siwei Jiang et al. IEEE Transactions on Cybernetics
- Production planning in virtual cell of reconfiguration manufacturing system using genetic algorithm
- (2014) Jingsheng Li et al. INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY
- Hyper-heuristics: a survey of the state of the art
- (2013) Edmund K Burke et al. JOURNAL OF THE OPERATIONAL RESEARCH SOCIETY
- A practical tutorial on the use of nonparametric statistical tests as a methodology for comparing evolutionary and swarm intelligence algorithms
- (2011) Joaquín Derrac et al. Swarm and Evolutionary Computation
Publish scientific posters with Peeref
Peeref publishes scientific posters from all research disciplines. Our Diamond Open Access policy means free access to content and no publication fees for authors.
Learn MoreAdd your recorded webinar
Do you already have a recorded webinar? Grow your audience and get more views by easily listing your recording on Peeref.
Upload Now