An Enhanced Estimation of Distribution Algorithm for Energy-Efficient Job-Shop Scheduling Problems with Transportation Constraints
Published 2019 View Full Article
- Home
- Publications
- Publication Search
- Publication Details
Title
An Enhanced Estimation of Distribution Algorithm for Energy-Efficient Job-Shop Scheduling Problems with Transportation Constraints
Authors
Keywords
-
Journal
Sustainability
Volume 11, Issue 11, Pages 3085
Publisher
MDPI AG
Online
2019-05-31
DOI
10.3390/su11113085
References
Ask authors/readers for more resources
Related references
Note: Only part of the references are listed.- An Optimization Approach for the Coordinated Low-Carbon Design of Product Family and Remanufactured Products
- (2019) Qi Wang et al. Sustainability
- Stochastic multi-objective modelling and optimization of an energy-conscious distributed permutation flow shop scheduling problem with the total tardiness constraint
- (2019) Yaping Fu et al. JOURNAL OF CLEANER PRODUCTION
- A multi-objective iterated local search algorithm for comprehensive energy-aware hybrid flow shop scheduling
- (2019) Sven Schulz et al. JOURNAL OF CLEANER PRODUCTION
- Job-shop scheduling problem with energy consideration
- (2019) Oussama Masmoudi et al. INTERNATIONAL JOURNAL OF PRODUCTION ECONOMICS
- Multi-objective optimization for energy-efficient flexible job shop scheduling problem with transportation constraints
- (2019) Min Dai et al. ROBOTICS AND COMPUTER-INTEGRATED MANUFACTURING
- A green scheduling algorithm for flexible job shop with energy-saving measures
- (2018) Xiuli Wu et al. JOURNAL OF CLEANER PRODUCTION
- 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
- Scheduling for sustainable manufacturing: A review
- (2018) Muhammad Akbar et al. JOURNAL OF CLEANER PRODUCTION
- An energy-aware multiobjective ant colony algorithm to minimize total completion time and energy cost on a single-machine preemptive scheduling
- (2018) Saeed Rubaiee et al. COMPUTERS & INDUSTRIAL ENGINEERING
- Enhancing Sustainability and Energy Efficiency in Smart Factories: A Review
- (2018) Yuquan Meng et al. Sustainability
- MILP models for energy-aware flexible job shop scheduling problem
- (2018) Leilei Meng et al. JOURNAL OF CLEANER PRODUCTION
- Integrated green scheduling optimization of flexible job shop and crane transportation considering comprehensive energy consumption
- (2018) Zhengchao Liu et al. JOURNAL OF CLEANER PRODUCTION
- A dynamic control approach for energy-efficient production scheduling on a single machine under time-varying electricity pricing
- (2017) Seokgi Lee et al. JOURNAL OF CLEANER PRODUCTION
- Energy-efficient permutation flow shop scheduling problem using a hybrid multi-objective backtracking search algorithm
- (2017) Chao Lu et al. JOURNAL OF CLEANER PRODUCTION
- A bi-level evolutionary optimization approach for integrated production and transportation scheduling
- (2016) Zhaoxia Guo et al. APPLIED SOFT COMPUTING
- Energy-efficient scheduling in manufacturing companies: A review and research framework
- (2016) Christian Gahm et al. EUROPEAN JOURNAL OF OPERATIONAL RESEARCH
- A multi-objective genetic algorithm for optimisation of energy consumption and shop floor production performance
- (2016) Ying Liu et al. INTERNATIONAL JOURNAL OF PRODUCTION ECONOMICS
- 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
- Energy-efficient approach to minimizing the energy consumption in an extended job-shop scheduling problem
- (2015) Dunbing Tang et al. Chinese Journal of Mechanical Engineering
- An Ant Colony Algorithm (ACA) for solving the new integrated model of job shop scheduling and conflict-free routing of AGVs
- (2015) Mohammad Saidi-Mehrabad et al. COMPUTERS & INDUSTRIAL ENGINEERING
- A genetic algorithm for energy-efficiency in job-shop scheduling
- (2015) Miguel A. Salido et al. INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY
- A hybrid differential evolution and estimation of distribution algorithm based on neighbourhood search for job shop scheduling problems
- (2015) Fuqing Zhao et al. INTERNATIONAL JOURNAL OF PRODUCTION RESEARCH
- Multi-objective genetic algorithm for energy-efficient job shop scheduling
- (2015) Gökan May et al. INTERNATIONAL JOURNAL OF PRODUCTION RESEARCH
- A method for predicting the energy consumption of the main driving system of a machine tool in a machining process
- (2015) Fei Liu et al. JOURNAL OF CLEANER PRODUCTION
- Sustainability in manufacturing operations scheduling: A state of the art review
- (2015) Adriana Giret et al. JOURNAL OF MANUFACTURING SYSTEMS
- An investigation into minimising total energy consumption and total weighted tardiness in job shops
- (2013) Ying Liu et al. JOURNAL OF CLEANER PRODUCTION
- Energy-efficient scheduling for a flexible flow shop using an improved genetic-simulated annealing algorithm
- (2013) Min Dai et al. ROBOTICS AND COMPUTER-INTEGRATED MANUFACTURING
- A bi-population based estimation of distribution algorithm for the flexible job-shop scheduling problem
- (2011) Ling Wang et al. COMPUTERS & INDUSTRIAL ENGINEERING
- An introduction and survey of estimation of distribution algorithms
- (2011) Mark Hauschild et al. Swarm and Evolutionary Computation
- Job-shop based framework for simultaneous scheduling of machines and automated guided vehicles
- (2010) Philippe Lacomme et al. INTERNATIONAL JOURNAL OF PRODUCTION ECONOMICS
- An estimation of distribution algorithm for minimizing the total flowtime in permutation flowshop scheduling problems
- (2008) Bassem Jarboui et al. COMPUTERS & OPERATIONS RESEARCH
Find the ideal target journal for your manuscript
Explore over 38,000 international journals covering a vast array of academic fields.
SearchAsk a Question. Answer a Question.
Quickly pose questions to the entire community. Debate answers and get clarity on the most important issues facing researchers.
Get Started