Computer Science ›› 2026, Vol. 53 ›› Issue (2): 196-206.doi: 10.11896/jsjkx.241200199
• Database & Big Data & Data Science • Previous Articles Next Articles
LIN Bing1,3, JIANG Haiou2, TAN Xiao1, CHEN Xing3,4 , ZHENG Yuheng3,4
CLC Number:
| [1]LI J,LIN B,CHEN X.Reliability Constraint-oriented Workflow Scheduling Strategy in Cloud Environment[J].Computer Science,2023,50(10):291-298. [2]FRANKLIN M,HALEVY A,MAIER D.From databases todataspaces:a new abstraction for information management[J].ACM Sigmod Record,2005,34(4):27-33. [3]LI J,LI B.Erasure coding for cloud storage systems:A survey[J].Tsinghua Science and Technology,2013,18(3):259-272. [4]XIAO G,CALVANESE D,KONTCHAKOV R,et al.Ontology-based data access:A survey[C]//International Joint Confe-rences on Artificial Intelligence.2018:5511-5519. [5]LI P,CHENG K,JIANG P,et al.Investigation on industrialdataspace for advanced machining workshops:enabling machining operations control with domain knowledge and application case studies[J].Journal of Intelligent Manufacturing,2022,33:103-119. [6]WANG Y,CHENG Y,ZHU Y,et al.Exploration on industrial system-aware dataspace towards smart manufacturing[C]//2022 IEEE 18th International Conference on Automation Science and Engineering(CASE).IEEE,2022:1883-1889. [7]LI X J,WU Y,LIU X,et al.Datacenter-Oriented Data Placement Strategy of Workflows in Hybrid Cloud[J].Journal of Software,2015,27(7):1861-1875. [8]CUI L,ZHANG J,YUE L,et al.A genetic algorithm based data replica placement strategy for scientific applications in clouds[J].IEEE Transactions on Services Computing,2015,11(4):727-739. [9]LIN B,ZHU F,ZHANG J,et al.A time-driven data placement strategy for a scientific workflow combining edge computing and cloud computing[J].IEEE Transactions on Industrial Informa-tics,2019,15(7):4254-4265. [10]LI X,ZHANG L,WU Y,et al.A novel workflow-level dataplacement strategy for data-sharing scientific cloud workflows[J].IEEE Transactions on Services Computing,2016,12(3):370-383. [11]DU X,TANG S,LU Z,et al.A novel data placement strategy for data-sharing scientific workflows in heterogeneous edge-cloud computing environments[C]//2020 IEEE International Conference on Web Services.IEEE,2020:498-507. [12]DENG K,REN K,ZHU M,et al.A data and task co-scheduling algorithm for scientific cloud workflows[J].IEEE Transactions on Cloud Computing,2015,8(2):349-362. [13]ZHENG P,CUI L Z,WANG H Y,et al.A Data Placement Strategy for Data-Intensive Applications in Cloud[J].Chinese Journal of Computers,2010,33(8):1472-1480. [14]SHANG L,LIU X.Scientific Workflow Dataset Layout Basedon Task Assignment and Dataset Replicas[J].Computer Engineering,2020,46(5):122-130. [15]CHENG H,LI X,WU Y,et al.A multi-objective optimization-based data placement strategy for scientific workflows in cloud environment[J].Computer Applications and Software,2017,34(3):1-6. [16]WEI X,WANG Y.Popularity-based data placement with load balancing in edge computing[J].IEEE Transactions on Cloud Computing,2021,11(1):397-411. [17]DENG K,REN K,SONG J,et al.A Clustering based Coschedu-ling Strategy for Efficient Scientific Workflow Execution in Cloud Computing[J].Concurrency and Computation:Practice and Experience,2013,25(18):2523-2539. [18]WANG X,VEERAVALLI B,SONG J,et al.On the Design and Evaluation of an Optimal Security-and-Time Cognizant Data Placement for Dynamic Fog Environments[J].IEEE Transactions on Parallel and Distributed Systems,2022,34(2):489-500. [19]HUANG Z Q,LIN B,LU Y,et al.Site Selection and Capacity Determination Method for Charging Stations Oriented to Multi-objective Optimization[J].Journal of Fujian Normal University(Natural Science Edition),2024,40(2):23-35. [20]BHARATHI S,CHERVENAK A,DEELMAN E,et al.Characterization of scientific workflows[C]//2008 Third Workshop on Workflows in Support of Large-scale Science.IEEE,2008:1-10. [21]SCHOTT J R.Fault tolerant design using single and multicriteria genetic algorithm optimization[D].Massachusetts:Massachusetts Institute of Technology,1995. [22]ZITZLER E,THIELE L.Multiobjective evolutionary algo-rithms:a comparative case study and the strength Pareto approach[J].IEEE transactions on Evolutionary Computation,1999,3(4):257-271. [23]ZHANG M,REN H,XIA C.A dynamic placement policy of virtual machine based on MOGA in cloud environment[C]//2017 IEEE International Symposium on Parallel and Distributed Processing with Applications and 2017 IEEE International Confe-rence on Ubiquitous Computing and Communications.IEEE,2017:885-891. |
| [1] | WEN Jia, WU Shuxia, YU Zhengxin, MIAO Wang, CHEN Zheyi. Multi-objective Optimization for Virtual Machine Placement in Large-scale Hadoop Cluster [J]. Computer Science, 2026, 53(2): 387-395. |
| [2] | HU Kangqi, MA Wubin, DAI Chaofan, WU Yahui, ZHOU Haohao. Federated Learning Evolutionary Multi-objective Optimization Algorithm Based on Improved NSGA-III [J]. Computer Science, 2025, 52(3): 152-160. |
| [3] | SUN Jing, NIU Hongting, LIANG Songtao. Study on Erasure Code Algorithm for Three Data Centers [J]. Computer Science, 2025, 52(2): 48-57. |
| [4] | SUN Liangxu, LI Linlin, LIU Guoli. Sub-problem Effectiveness Guided Multi-objective Evolution Algorithm [J]. Computer Science, 2025, 52(10): 296-307. |
| [5] | ZHAO Chenyang, LIU Lei, JIANG He. Feature Construction for Effort-aware Just-In-Time Software Defect Prediction Based on Multi-objective Optimization [J]. Computer Science, 2025, 52(1): 232-241. |
| [6] | ZHOU Yu, YANG Junling, DANG Kelin. Change Detection in SAR Images Based on Evolutionary Multi-objective Clustering [J]. Computer Science, 2024, 51(9): 140-146. |
| [7] | HAN Lijun, WANG Peng, LI Ruixu, LIU Zhongyao. Dual Direction Vectors-based Large-scale Multi-objective Evolutionary Algorithm [J]. Computer Science, 2024, 51(6A): 230700155-11. |
| [8] | XIE Genlin, CHENG Guozhen, LIANG Hao, WANG Qingfeng. Software Diversity Composition Based on Multi-objective Optimization Algorithm NSGA-II [J]. Computer Science, 2024, 51(6): 85-94. |
| [9] | ZHU Wei, YANG Shibo, TENG Fan, HE Defeng. Study on Unmanned Vehicle Trajectory Planning in Unstructured Scenarios [J]. Computer Science, 2024, 51(4): 334-343. |
| [10] | WANG Zhihong, WANG Gaocai, ZHAO Qifei. Multi-objective Optimization of D2D Collaborative MEC Based on Improved NSGA-III [J]. Computer Science, 2024, 51(3): 280-288. |
| [11] | JIANG Yibo, ZHOU Zebao, LI Qiang, ZHOU Ke. Optimization of Low-carbon Oriented Logistics Center Distribution Based on Genetic Algorithm [J]. Computer Science, 2024, 51(11A): 231200035-6. |
| [12] | LI Sanyi, LIU Shuang. Dynamic Multi-Objective Optimization Algorithm with Irregularly Varying Number of Objectives [J]. Computer Science, 2024, 51(11A): 231000079-11. |
| [13] | LI Wenwang, ZHOU Haohao, DENG Su, MA Wubin, WU Yahui. Joint Optimization of Delay and Energy Consumption of Tasks Offloading for Vehicular EdgeComputing [J]. Computer Science, 2024, 51(11A): 231000080-7. |
| [14] | QIU Mingxin, LEI Shuai, LIU Xianhui, ZHANG Yingyao. Online and Offline Multi-source Heterogeneous Data Fusion System for Recycling Information [J]. Computer Science, 2024, 51(11A): 240100095-7. |
| [15] | GENG Huantong, SONG Feifei, ZHOU Zhengli, XU Xiaohan. Improved NSGA-III Based on Kriging Model for Expensive Many-objective Optimization Problems [J]. Computer Science, 2023, 50(7): 194-206. |
|
||