Browse > Article
http://dx.doi.org/10.22937/IJCSNS.2022.22.4.38

Resource Management Strategies in Fog Computing Environment -A Comprehensive Review  

Alsadie, Deafallah (Department of Information Systems Umm Al-Qura University)
Publication Information
International Journal of Computer Science & Network Security / v.22, no.4, 2022 , pp. 310-328 More about this Journal
Abstract
Internet of things (IoT) has emerged as the most popular technique that facilitates enhancing humans' quality of life. However, most time sensitive IoT applications require quick response time. So, processing these IoT applications in cloud servers may not be effective. Therefore, fog computing has emerged as a promising solution that addresses the problem of managing large data bandwidth requirements of devices and quick response time. This technology has resulted in processing a large amount of data near the data source compared to the cloud. However, efficient management of computing resources involving balancing workload, allocating resources, provisioning resources, and scheduling tasks is one primary consideration for effective computing-based solutions, specifically for time-sensitive applications. This paper provides a comprehensive review of the source management strategies considering resource limitations, heterogeneity, unpredicted traffic in the fog computing environment. It presents recent developments in the resource management field of the fog computing environment. It also presents significant management issues such as resource allocation, resource provisioning, resource scheduling, task offloading, etc. Related studies are compared indifferent mentions to provide promising directions of future research by fellow researchers in the field.
Keywords
Fog computing; Resource management; Task scheduling; Resource provisioning;
Citations & Related Records
Times Cited By KSCI : 2  (Citation Analysis)
연도 인용수 순위
1 Liu, L., Z. Chang, and X. Guo, Socially-aware Dynamic Computation Offloading Scheme for Fog Computing System with Energy Harvesting Devices. IEEE Internet Things J.. p. 1-1 ( 2018 )
2 De Benedetti, M., et al.: JarvSis: a distributed scheduler for IoT applications. Clust. Comput. 20 ( 2 ), 1775-1790 ( 2017 )   DOI
3 Cardellini, V., et al. On QoS-aware scheduling of data stream applications over fog computing infrastructures. In Computers and Communication ( ISCC ), 2015 IEEE Symposium on. IEEE ( 2015 )
4 Zeng, D., Gu, L., Guo, S., Cheng, Z., Yu, S.: Joint optimization of task scheduling and image placement in fog computing supported software-defined embedded system. IEEE Trans. Comput. 65 ( 12 ), 3702-3712 ( 2016 )   DOI
5 Sun, Y., Zhang, N.: A resource-sharing model based on a repeated game in fog computing. Saudi journal of biolog ical sciences ( SJBS ). 24 ( 3 ), 687-694 ( 2017 )   DOI
6 Hoang, D. and T.D. Dang, FBRC: Optimization of task Scheduling in Fog-Based Region and Cloud. 2017: p. 1109-1114
7 Mukherjee, A., Deb, P., de, D., Buyya, R.: C2OF2N: a low power cooperative code offloading method for femtolet- based fog network. J. Super comput. 74 ( 6 ), 2412-2448 ( 2018 )   DOI
8 Beraldi, R., A. Mtibaa, and H. Alnuweiri. Cooperative load balancing scheme for edge computing resources. In Fog and Mobile Edge Computing ( FMEC ), 2017 Second International Conference on. IEEE ( 2017 )
9 Ningning, S., Chao, G., Xingshuo, A., Qiang, Z.: Fog computing dynamic load balancing mechanism based on graph repartitioning. China Communications ( Chinacom ). 13 ( 3 ), 156-164 ( 2016 )   DOI
10 Oueis, J., E.C. Strinati, and S. Barbarossa. The fog balancing: Load distribution for small cell cloud comput- ing. In Vehicular Technology Conference ( VTC Spring ), 2015 IEEE 81st. IEEE ( 2015 )
11 Yu,Y., X. Li, and C. Qian. SDLB: A Scalable and Dynamic Software Load Balancer for Fog and Mobile Edge Computing. In Proceedings of the Workshop on Mobile Edge Communications. ACM ( 2017 )
12 Kapsalis, A., Kasnesis, P., Venieris, I.S., Kaklamani, D.I., Patrikakis, C.Z.: A cooperative fog approach for effective workload balancing. IEEE Cloud Computing. 4 ( 2 ), 36-45 ( 2017 )   DOI
13 Ni, L., Zhang, J., Jiang, C., Yan, C., Yu, K.: Resource allocation strategy in fog computing based on priced timed petri nets. IEEE Internet Things J. 4 ( 5 ), 1216-1228 ( 2017 )   DOI
14 Anglano, C.,M. Canonico, and M. Guazzone. Profit-aware resource management for edge computing systems. In Proceedings of the 1st International Workshop on Edge Systems, Analytics and Networking. ACM ( 2018 )
15 Wang, N., et al., ENORM: A Framework For Edge Node Resource Management. IEEE Transactions on Services Computing. Early access: p. 1-1 ( 2017 )
16 Tseng, F.-H., Tsai, M.S., Tseng, C.W., Yang, Y.T., Liu, C.C., Chou, L.D.: A lightweight auto-scaling mechanism for fog computing in industrial applications. IEEE Trans. Ind. Inf. 14 ( 10 ), 4529-4537 ( 2018   DOI
17 Dias de Assuncao, M., da Silva Veith, A., Buyya, R.: Distributed data stream processing and edge computing: A survey on resource elasticity and future directions. J. Netw. Comput. Appl. 103, 1-17 ( 2018 )   DOI
18 Aazam, M., et al., IoT resource estimation challenges and modeling in fog, in Fog Computing in the Internet of Things, Springer. p. 17-31 ( 2018 )
19 Manasrah, A.M., Gupta, B.: An optimized service broker routing policy based on differential evolution algorithm in fog/cloud environment. Clust. Comput. 22 ( Supplement 1 ), 1639-1653 ( 2017 )   DOI
20 Aazam, M., Zeadally, S., Harras, K.A.: Offloading in fog computing for IoT: review, enabling technologies, and research opportunities. Futur. Gener. Comput. Syst. 87, 278-289 ( 2018 )   DOI
21 Bendechache, M.; Svorobej, S.; Takako Endo, P.; Lynn, T. Simulating Resource Management across the Cloud-to-Thing Continuum: A Survey and Future Directions. Future Internet 2020, 12, 95   DOI
22 Dastjerdi, A.V., et al., Fog computing: Principles, architectures, and applications, in Internet of Things. Elsevier. p. 61-75 ( 2016 )
23 Chamola, V., C.-K. Tham, and G.S. Chalapathi. Latency aware mobile task assignment and load balancing for edge cloudlets. In Pervasive Computing and Communications Workshops ( PerCom Workshops ), 2017 IEEE International Conference on. IEEE ( 2017 )
24 Ye, D., et al., Scalable Fog Computing with Service Offloading in Bus Networks. p. 247-251 ( 2016 )
25 Liu, L., Chang, Z., Guo, X., Mao, S., Ristaniemi, T.: Multiobjective optimization for computation offloading in fog computing. IEEE Internet Things J. 5 ( 1 ), 283-294 ( 2018 )   DOI
26 Wang, X., Ning, Z., Wang, L.: Offloading in internet of vehicles: a fog-enabled real-time traffic management sys- tem. IEEE Trans. Ind. Inf. 14 ( 10 ), 4568-4578 ( 2018 )   DOI
27 Xu, J. and S. Ren. Online learning for offloading and auto scaling in renewable- powered mobile edge computing. In Global Communications Conference ( GLOBECOM ), 2016 IEEE. IEEE ( 2016 )
28 Zhao, X., L. Zhao, and K. Liang. An Energy Consumption Oriented Offloading Algorithm for Fog Computing. In International Conference on Heterogeneous Networking for Quality, Reliability, Security and Robustness. Springer ( 2016 )
29 Meng, X., Wang, W., Zhang, Z.: Delay-constrained hybrid computation offloading with cloud and fog computing. IEEE ( ACCESS ). 5, 21355-21367 ( 2017 )   DOI
30 Alam, M.G.R., Y.K. Tun, and C.S. Hong. Multi-agent and reinforcement learning based code offloading in mobile fog. In Information Networking ( ICOIN ), 2016 International Conference on. IEEE ( 2016 )
31 Masip-Bruin, X., Marin-Tordera, E., Jukan, A., Ren, G.J.: Managing resources continuity from the edge to the cloud: architecture and performance. Futur. Gener. Comput. Syst. 79, 777-785 ( 2018 )   DOI
32 Bitam, S., Zeadally, S., Mellouk, A.: Fog computing job scheduling optimization based on bees swarm. Enterprise Information Systems ( EIS ). 12 ( 4 ), 373-397 ( 2017 )   DOI
33 Arkian, H.R., Diyanat, A., Pourkhalili, A.: MIST: fog- based data analytics scheme with cost-efficient resource provisioning for IoT crowdsensing applications. J. Netw. Comput. Appl. 82, 152-165 ( 2017 )   DOI
34 Vinueza Naranjo, P.G., E. Baccarelli, and M. Scarpiniti, Design and energy-efficient resource management of virtualized networked Fog architectures for the real-time support of IoT applications. J. Super comput., 2018. 74 ( 6 ): p. 2470-2507   DOI
35 Zanni, A., et al. Elastic Provisioning of Internet of Things Services Using Fog Computing: An Experience Report. In 2018 6th IEEE International Conference on Mobile Cloud Computing, Services, and Engineering ( MobileCloud ). IEEE ( 2018 )
36 Skarlat, O., et al. Resource provisioning for IoTservices in the fog. In Service-Oriented Computing and Applications ( SOCA ), 2016 IEEE 9th International Conference on. IEEE ( 2016 )
37 Deng, R., et al.: Optimal workload allocation in fog-cloud computing towards balanced delay and power consumption. IEEE Internet Things J. 3 ( 6 ), 1171-1181 ( 2016 )   DOI
38 Bozorgchenani, A., D. Tarchi, and G.E. Corazza. An Energy-Aware Offloading Clustering Approach ( EAOCA ) in fog computing. In Wireless Communication Systems ( ISWCS ), 2017 International Symposium on. IEEE ( 2017 )
39 Zhu, Q., Si, B., Yang, F., Ma, Y.: Task offloading decision in fog computing system. China Communications ( Chinacom ). 14 ( 11 ), 59-68 ( 2017 )   DOI
40 Chen, X., Jiao, L., Li, W., Fu, X.: Efficient multi-user computation offloading for Mobile-edge cloud computing. IEEE/ACM Trans. Networking. 24 ( 5 ), 2795-2808 ( 2016 )   DOI
41 Yousefpour, A., et al., QoS-aware Dynamic Fog Service Provisioning. arXiv preprint arXiv:1802.00800 ( 2018 )
42 Selimi, M., Cerda-Alabern, L., Freitag, F., Veiga, L., Sathiaseelan, A., Crowcroft, J.: A lightweight service placement approach for community network micro-clouds. Journal of Grid Computing ( GRID ). 17 ( 1 ), 169-189 ( 2019 )   DOI
43 Yao, H., Bai, C., Xiong, M., Zeng, D., Fu, Z.: Heterogeneous cloudlet deployment and user-cloudlet association toward cost effective fog computing. Concurrency and Computation: Practice and Experience ( CCPE ). 29 ( 16 ), e3975 ( 2017 )   DOI
44 Tocze, K., Nadjm-Tehrani, S.: A taxonomy for management and optimization of multiple resources in edge computing. Wirel. Commun. Mob. Comput. 2018, 1-23 ( 2018 )   DOI
45 Ghobaei-Arani, M., Shamsi, M., Rahmanian, A.A.: An efficient approach for improving virtual machine placement in cloud computing environment. J. Exp. Theor. Artif. Intell. 29 ( 6 ), 1149-1171 ( 2017 )   DOI
46 Venticinque, S., Amato, A.: A methodology for deployment of IoT application in fog . J . Ambient. Intell. Humaniz. Comput. 10 ( 5 ), 1955-1976 ( 2019 )   DOI
47 Manasrah, A.M., A.a. Aldomi, and B.B. Gupta, An opti- mized service broker routing policy based on differential evolution algorithm in fog/cloud environment. Cluster Computing, ( 2017 )
48 Do, C.T., et al. A proximal algorithm for joint re- source allocation and minimizing carbon footprint in geo-distributed fog computing. In Information Networking ( ICOIN ), 2015 International Conference on. IEEE ( 2015 )
49 Neto, E.C.P., G. Callou, and F. Aires. An algorithm to optimise the load distribution of fog environments. In Systems, Man, and Cybernetics ( SMC ), 2017 IEEE International Conference on. . IEEE ( 2017 )
50 Xu, X.; Fu, S.; Cai, Q.; Tian, W.; Liu, W.; Dou, W.; Sun, X.; Liu, A.X. Dynamic resource allocation for load balancing in fog environment. Wirel. Commun. Mob. Comput. 2018, 2018
51 Yigitoglu, E., et al. Foggy: A Framework for Continuous Automated IoT Application Deployment in Fog Computing. In AI & Mobile Services ( AIMS ), 2017 IEEE International Conference on. IEEE ( 2017 )
52 Brogi, A., Forti, S.: QoS-aware deployment of IoT applications through the fog. IEEE Internet Things J. 4 ( 5 ), 1185-1192 ( 2017 )   DOI
53 Taneja, M.; Davy, A. Resource aware placement of IoT application modules in Fog-Cloud Computing Paradigm. In Proceedings of the 2017 IFIP/IEEE Symposium on Integrated Network and Service Management ( IM ), Lisbon, Portugal, 8-12 May 2017; pp. 1222-1228
54 Mijuskovic, A., Chiumento, A., Bemthuis, R., Aldea, A., & Havinga, P. ( 2021 ). Resource management techniques for cloud/fog and edge computing: An evaluation framework and classification. Sensors, 21 ( 5 ), 1832.   DOI
55 Javaid, S.; Javaid, N.; Saba, T.; Wadud, Z.; Rehman, A.; Haseeb, A. Intelligent resource allocation in residential buildings using consumer to fog to cloud based framework. Energies 2019, 12, 815   DOI
56 Nan, Y., Li, W., Bao, W., Delicato, F.C., Pires, P.F., Zomaya, A.Y.: A dynamic tradeoff data processing frame- work for delay-sensitive applications in cloud of things systems. J. Parallel Distrib. Comput. 112, 53-66 ( 2018 )   DOI
57 Khan, J.A., C. Westphal, and Y. Ghamri-Doudane. Offloading Content with Self-organizing Mobile Fogs. In Teletraffic Congress ( ITC 29 ), 2017 29th International. IEEE ( 2017 )
58 Ahn,S.,M. Gorlatova, and M. Chiang. Leveraging fog and cloud computing for efficient computational offloading. In Undergraduate Research Technology Conference ( URTC ), 2017 IEEE MIT. IEEE ( 2017 )
59 Zhang, H., Zhang, Y., Gu, Y., Niyato, D., Han, Z.: A hierarchical game framework for resource management in fog computing. IEEE Commun. Mag. 55 ( 8 ), 52-57 ( 2017 )   DOI
60 Li, C., Zhuang, H., Wang, Q., Zhou, X.: SSLB: self- similarity- based load balancing for large- scale fog computing. Arab. J. Sci. Eng. 43 ( 12 ), 7487-7498 ( 2018 )   DOI
61 Ghobaei-Arani, M., Rahmanian, A.A., Aslanpour, M.S., Dashti, S.E.: CSA-WSC: cuckoo search algorithm for web service composition in cloud environments. Soft. Comput. 22 ( 24 ), 8353-8378 ( 2018 )   DOI
62 Ghobaei-Arani, M., Rahmanian, A.A., Shamsi, M., Rasouli-Kenari, A.: A learning-based approach for virtual machine placement in cloud data centers. Int. J. Commun. Syst. 31 ( 8 ), e3537 ( 2018 )   DOI
63 Hong, C.-H. and B. Varghese, Resource Management in Fog/Edge Computing: A Survey. arXiv preprint arXiv: 1810.00305, ( 2018 )   DOI
64 He, X., Ren, Z., Shi, C., Fang, J.: A novel load balancing strategy of software-defined cloud/fog networking in the internet of vehicles. China Communications ( Chinacom ). 13 ( 2 ), 140-149 ( 2016 )   DOI
65 Rahbari, D. and M. Nickray. Scheduling of Fog Networks with Optimized Knapsack by Symbiotic Organisms Search. In 2017 21st Conference of Open Innovations Association ( FRUCT ). Finland: IEEE ( 2017 )
66 Mahmud, R., Ramamohanarao, K., Buyya, R.: Latency aware application module Management for fog Computing Environments. ACM Trans. Internet Technol. 19 ( 1 ), 1-21 ( 2018 )
67 Velasquez, K., et al.: Service placement for latency reduction in the internet of things. Ann. Telecommun. 72 ( 1-2 ), 105-115 ( 2016 )   DOI
68 Sun, Y., Lin, F., Xu, H.: Multi-objective optimization of resource scheduling in fog computing using an improved NSGA-II. Wirel. Pers. Commun. 102 ( 2 ), 1369-1385 ( 2018 )   DOI
69 Mouradian, C., et al.: A comprehensive survey on fog computing: state-of-the-art and research challenges. IEEE Commun. Surv. Tutorials. ( 2017 )
70 Hong, C.-H. and B. Varghese, Resource Management in Fog/Edge Computing: A Survey. arXiv preprint arXiv: 1810.00305, ( 2018 )   DOI
71 Naha, R.K.; Garg, S.; Georgakopoulos, D.; Jayaraman, P.P.; Gao, L.; Xiang, Y.; Ranjan, R. Fog Computing: Survey of Trends, Architectures, Requirements, and Research Directions. IEEE Access 2018, 6, 47980-48009   DOI
72 Yangui, S., et al. A platform as-a-service for hybrid cloud / fog environments. In Local and Metropolitan Area Networks ( LANMAN ), 2016 IEEE International Symposium on. IEEE ( 2016 )
73 Minh, Q.T., et al. Toward service placement on fog computing landscape. In Information and Computer Science, 2017 4th NAFOSTED Conference on. IEEE ( 2017 )
74 Saurez, E., et al., Incremental deployment and migration of geo distributed situation awareness applications in the fog. p. 258-269 ( 2016 )
75 Naranjo, P.G.V., et al., FOCAN: A Fog-supported Smart City Network Architecture for Management of Applications in the Internet of Everything Environments. arXiv preprint arXiv:1710.01801, ( 2017 )
76 Mahmud, R., Srirama, S.N., Ramamohanarao, K., Buyya, R.: Quality of experience ( QoE )-aware placement of applications in fog computing environments. J. Parallel Distrib. Comput. 132, 190-203 ( 2019 )   DOI
77 Souri, A., Asghari, P., Rezaei, R.: Software as a service based CRM providers in the cloud computing: challenges and technical issues. J. Serv. Sci. Res. 9 ( 2 ), 219-237 ( 2017 )   DOI
78 Skarlat, O., Nardelli, M., Schulte, S., Borkowski, M., Leitner, P.: Optimized IoT service placement in the fog. SOCA. 11 ( 4 ), 427-443 ( 2017 )   DOI
79 Agarwal, S.; Yadav, S.; Yadav, A.K. An efficient architecture and algorithm for resource provisioning in fog computing. Int. J. Inf. Eng. Electronic Bus. ( IJIEEB ) 2016, 8, 48-61   DOI
80 Ghobaei-Arani, M., Souri, A., & Rahmanian, A. A. ( 2020 ). Resource management approaches in fog computing: a comprehensive review. Journal of Grid Computing, 18 ( 1 ), 1-42.   DOI
81 Zhang, Y., et al., Resource Allocation in Software Defined Fog Vehicular Networks. 2017: p. 71-76
82 Kattepur, A., et al. Resource constrained offloading in fog computing. In Proceedings of the 1st Workshop on Middleware for Edge Clouds & Cloudlets. ACM ( 2016 )
83 Bozorgchenani, A., D. Tarchi, and G.E. Corazza. An Energy and Delay-Efficient Partial Offloading Technique for Fog Computing Architectures. In GLOBECOM 2017- 2017 IEEE Global Communications Conference. IEEE ( 2017 )
84 Xiong, Z., et al.: Cloud/fog computing resource manage- ment and pricing for blockchain networks. IEEE Internet Things J. 6 ( 3 ), 4585-4600 ( 2018 )   DOI
85 Chang, Z., et al. Energy Efficient Optimization for Computation Offloading in Fog Computing System. In GLOBECOM 2017-2017 IEEE Global Communications Conference. IEEE ( 2017 )
86 Shi, C., Z. Ren, and X. He, Research on Load Balancing for Software Defined Cloud-Fog Network in Real-Time Mobile Face Recognition. 210: p. 121-131 ( 2018 )
87 Gu, L., Zeng, D., Guo, S., Barnawi, A., Xiang, Y.: Cost efficient resource management in fog computing supported medical cyberphysical system. IEEE Trans. Emerg. Top. Comput. 5 ( 1 ), 108-119 ( 2017 )   DOI
88 Verma, S., et al. An efficient data replication and load balancing technique for fog computing environment. In Computing for Sustainable Global Development ( INDIACom ), 2016 3rd International Conference on. IEEE ( 2016 )
89 Zhang, H., Xiao, Y., Bu, S., Niyato, D., Yu, F.R., Han, Z.: Computing resource allocation in three-tier IoT fog net- works: a joint optimization approach combining Stackelberg game and matching. IEEE Internet Things J. 4 ( 5 ), 1204-1215 ( 2017 )   DOI
90 Dos Santos, X., et al. Resource provisioning for IoT appli- cation services in Smart Cities. in CNSM2017, the 13e International Conference on Network and Service Management. ( 2017 )
91 Tran, D.H., Tran, N.H., Pham, C., Kazmi, S.M.A., Huh, E.N., Hong, C.S.: OaaS: offload as a service in fog net- works. Computing. 99 ( 11 ), 1081-1104 ( 2017 )   DOI
92 Pham, X.-Q. and E.-N. Huh. Towards task scheduling in a cloud-fog computing system. In Network Operations and Management Symposium ( APNOMS ), 2016 18th Asia-Pacific. IEEE ( 2016 )
93 Fan, J., et al. Deadline-Aware Task Scheduling in a Tiered IoT Infrastructure. in GLOBECOM 2017-2017 IEEE Global Communications Conference. Singapore: IEEE ( 2017 )
94 Chen, X., Wang, L.: Exploring fog computing-based adaptive vehicular data scheduling policies through a compositional formal method-PEPA. IEEE Commun. Lett. 21 ( 4 ), 745-748 ( 2017 )   DOI
95 Ostberg, P.-O., et al. Reliable capacity provisioning for distributed cloud/edge/fog computing applications. In Networks and Communications ( EuCNC ), 2017 European Conference on. IEEE ( 2017 )
96 Alsaffar,A.A.,Pham,H.P.,Hong,C.S.,Huh,E.N.,Aazam, M.: An architecture of IoTservice delegation and resource allocation based on collaboration between fog and cloud computing. Mob. Inf. Syst. 2016, 1-15 ( 2016 )
97 Sood, S.K., Singh, K.D.: SNA based resource optimization in optical network using fog and cloud computing. Opt. Switch. Netw. 33 ( July ), 114-121 ( 2017 )   DOI
98 Naranjo, P.G., et al.: Fog over virtualized IoT: new oppor- tunity for context-aware networked applications and a case study. Appl. Sci. 7 ( 12 ), 1325 ( 2017 )   DOI
99 Jiao,Y.,etal.:Auction mechanisms in cloud / fog computing resource allocation for public Block chain networks. IEEE Trans. Parallel Distrib. Syst. 30 ( 9 ), 1975-1989 ( 2018 )   DOI
100 El Kafhali, S., Salah, K.: Efficient and dynamic scaling of fog nodes for IoT devices. J. Super comput. 73 ( 12 ), 5261-5284 ( 2017 )   DOI
101 Russo Russo, G., Nardelli, M., Cardellini, V., Lo Presti, F.: Multi-level elasticity for wide-area data streaming systems: a reinforcement learning approach. Algorithms. 11 ( 9 ), 134 ( 2018 )   DOI
102 Aslanpour, M.S.; Gill, S.S.; Toosi, A.N. Performance evaluation metrics for cloud, fog, and edge computing: A review, taxonomy, benchmarks and standards for future research. Internet Things 2020, 12, 100273   DOI
103 Mahmoud, M.M.E., Rodrigues, J.J.P.C., Saleem, K., al Muhtadi, J., Kumar, N., Korotaev, V.: Towards energy aware fog-enabled cloud of things for healthcare. Comput. Electr. Eng. 67, 58-69 ( 2018 )   DOI
104 Salaht, F.A.; Desprez, F.; Lebre, A. An Overview of Service Placement Problem in Fog and Edge Computing. ACM Comput. Surv. 2020, 53, 1-35   DOI
105 Souri, A., Norouzi, M.: A state-of-the-art survey on formal verification of the internet of things applications. J. Serv. Sci. Res. 11 ( 1 ), 47-67 ( 2019 )   DOI
106 Ghobaei-Arani, M., et al.: A moth-flame optimization algorithm for web service composition in cloud computing: simulation and verification. Software: Practice and Experience ( SPE ). 48 ( 10 ), 1865-1892 ( 2018 )   DOI
107 Xu, X., Fu, S., Cai, Q., Tian, W., Liu, W., Dou, W., Sun, X., Liu, A.X.: Dynamic resource allocation for load balancing in fog environment. Wirel. Commun. Mob. Comput. 2018, 1-15 ( 2018 )