299
Views
22
CrossRef citations to date
0
Altmetric
Original Articles

Scheduling with non-decreasing deterioration jobs and variable maintenance activities on a single machine

, &
Pages 84-97 | Received 30 Dec 2015, Accepted 06 Mar 2016, Published online: 02 May 2016

Keep up to date with the latest research on this topic with citation updates for this article.

Read on this site (11)

Yutong Ding, Tangbin Xia, Mengdie Huang, Yu Zheng, Rui Miao & Lifeng Xi. (2022) Predictive Maintenance and Upgrade Scheduling for Production Line under Multi-period Product-service Paradigm. Engineering Optimization 0:0, pages 1-19.
Read now
Ji-Bo Wang, Jing-Xiao Xu, Feng Guo & Mengqi Liu. (2022) Single-machine scheduling problems with job rejection, deterioration effects and past-sequence-dependent setup times. Engineering Optimization 54:3, pages 471-486.
Read now
Min Kong, Jun Pei, Jin Xu, Xinbao Liu, Xiaoyu Yu & Panos M. Pardalos. (2020) A robust optimization approach for integrated steel production and batch delivery scheduling with uncertain rolling times and deterioration effect. International Journal of Production Research 58:17, pages 5132-5154.
Read now
Xi-Xi Liang, Mengqi Liu, Yu-Bo Feng, Ji-Bo Wang & Li-Shu Wen. (2020) Solution algorithms for single-machine resource allocation scheduling with deteriorating jobs and group technology. Engineering Optimization 52:7, pages 1184-1197.
Read now
Tsuiping Chung, Jatinder N. D. Gupta & Meng Qiu. (2019) Single machine scheduling problem with batch setups involving positional deterioration effects and multiple rate-modifying activities. Engineering Optimization 51:10, pages 1743-1760.
Read now
Xin-Na Geng, Ji-Bo Wang & Danyu Bai. (2019) Common due date assignment scheduling for a no-wait flowshop with convex resource allocation and learning effect. Engineering Optimization 51:8, pages 1301-1323.
Read now
Feng Liu, Jing Yang & Yuan-Yuan Lu. (2019) Solution algorithms for single-machine group scheduling with ready times and deteriorating jobs. Engineering Optimization 51:5, pages 862-874.
Read now
Ji-Bo Wang & Xi-Xi Liang. (2019) Group scheduling with deteriorating jobs and allotted resource under limited resource availability constraint. Engineering Optimization 51:2, pages 231-246.
Read now
Wenzhu Liao, Xiufang Zhang & Min Jiang. (2017) Multi-objective group scheduling optimization integrated with preventive maintenance. Engineering Optimization 49:11, pages 1890-1904.
Read now
Xingong Zhang, Win-Chin Lin, Wen-Hsiang Wu & Chin-Chia Wu. (2017) Single-machine common/slack due window assignment problems with linear decreasing processing times. Engineering Optimization 49:8, pages 1388-1400.
Read now
Shi-Sheng Li & Ren-Xia Chen. (2017) Common due date assignment and cumulative deterioration scheduling on a single machine. Engineering Optimization 49:6, pages 976-989.
Read now

Articles from other publishers (11)

Xiaoyu Yu, Jingyi Qian, Yajing Zhang & Min Kong. (2023) Supply Chain Scheduling Method for the Coordination of Agile Production and Port Delivery Operation. Mathematics 11:15, pages 3276.
Crossref
Louise Penz, Stéphane Dauzère-Pérès & Margaux Nattaf. (2023) Minimizing the sum of completion times on a single machine with health index and flexible maintenance operations. Computers & Operations Research 151, pages 106092.
Crossref
Antonio Costa & Victor Fernandez-Viagas. (2022) A modified harmony search for the T-single machine scheduling problem with variable and flexible maintenance. Expert Systems with Applications 198, pages 116897.
Crossref
Haiyan Xu, Xiaoping Li, Ruben Ruiz & Haihong Zhu. (2021) Group Scheduling With Nonperiodical Maintenance and Deteriorating Effects. IEEE Transactions on Systems, Man, and Cybernetics: Systems 51:5, pages 2860-2872.
Crossref
Mehdi Abedi, Raymond Chiong, Nasimul Noman & Rui Zhang. (2020) A multi-population, multi-objective memetic algorithm for energy-efficient job-shop scheduling with deteriorating machines. Expert Systems with Applications 157, pages 113348.
Crossref
Min Kong, Xinbao Liu, Jun Pei, Zhiping Zhou & Panos M. Pardalos. (2019) Parallel-batching scheduling of deteriorating jobs with non-identical sizes and rejection on a single machine. Optimization Letters 14:4, pages 857-871.
Crossref
Wen-Chiung Lee & Jen-Ya Wang. (2020) A three-agent scheduling problem for minimizing the flow time on two machines. RAIRO - Operations Research 54:2, pages 307-323.
Crossref
Mir Saber Salehi Mir, Javad Rezaeian & Hossein Mohamadian. (2019) Scheduling parallel machine problem under general effects of deterioration and learning with past-sequence-dependent setup time: heuristic and meta-heuristic approaches. Soft Computing 24:2, pages 1335-1355.
Crossref
Shaojun Lu, Xinbao Liu, Jun Pei, My T. Thai & Panos M. Pardalos. (2018) A hybrid ABC-TS algorithm for the unrelated parallel-batching machines scheduling problem with deteriorating jobs and maintenance activity. Applied Soft Computing 66, pages 168-182.
Crossref
Xianyu Yu, Dar-Li Yang, Dequn Zhou & Peng Zhou. (2018) Multi-machine scheduling with interval constrained position-dependent processing times. Journal of Industrial & Management Optimization 14:2, pages 803-815.
Crossref
Mehdi Abedi, Raymond Chiong, Nasimul Noman & Rui Zhang. (2017) A hybrid particle swarm optimisation approach for energy-efficient single machine scheduling with cumulative deterioration and multiple maintenances. A hybrid particle swarm optimisation approach for energy-efficient single machine scheduling with cumulative deterioration and multiple maintenances.

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.