Using Heterogeneous Cloud Computing to Manage Resources in Sustainable Cyber-Physical Systems

A significant increase in heterogeneous distributed computing has allowed for significant advancements in cyber physical systems (CPS). An additional strategy for enhancing system sustainability is to combine CPS with heterogeneous cloud computing. However, there are still certain difficulties with resource management in cloud systems, such as work allocation in heterogeneous clouds and Web server capacity limitations. Service delays are frequently caused by the erratic demand for services, which is embarrassing for the businesses' ability to compete. This article tackles the NP-hard problem of job assignment in heterogeneous clouds, which has been shown. The suggested method is known as the Smart Cloud-based Optimizing Workload (SCOW) Model, which assigns jobs to heterogeneous clouds using forecast cloud capacity and sustainable parameters. We provide a few strategies, such as the Workload Resource Minimization (WRM), Smart Task Assignment (STA), and Task Mapping Algorithm, to achieve the optimization target (TMA). Our experimental analyses have looked at how well the suggested strategy performs.

[1]  C. Venkatesan,et al.  Mobile cloud computing for ECG telemonitoring and real-time coronary heart disease risk detection , 2018, Biomed. Signal Process. Control..

[2]  Keke Gai,et al.  Resource Management in Sustainable Cyber-Physical Systems Using Heterogeneous Cloud Computing , 2018, IEEE Transactions on Sustainable Computing.

[3]  Nikil D. Dutt,et al.  Self-Awareness in Cyber-Physical Systems , 2016, 2016 29th International Conference on VLSI Design and 2016 15th International Conference on Embedded Systems (VLSID).

[4]  Keke Gai,et al.  Efficiency-Aware Workload Optimizations of Heterogeneous Cloud Computing for Capacity Planning in Financial Industry , 2015, 2015 IEEE 2nd International Conference on Cyber Security and Cloud Computing.

[5]  Haitao Li,et al.  Understanding Video Sharing Propagation in Social Networks: Measurement and Analysis , 2014, TOMM.

[6]  Ivan Stojmenovic,et al.  Machine-to-Machine Communications With In-Network Data Aggregation, Processing, and Actuation for Large-Scale Cyber-Physical Systems , 2014, IEEE Internet of Things Journal.

[7]  Jason Bennett Thatcher,et al.  Understanding the social web: towards defining an interdisciplinary research agenda for information systems , 2014, DATB.

[8]  Zonghua Gu,et al.  HLC-PCP: A Resource Synchronization Protocol for Certifiable Mixed Criticality Scheduling , 2014, IEEE Embedded Systems Letters.

[9]  H. Jang,et al.  Adaptive resource management scheme for monitoring of CPS , 2013, Journal of Supercomputing.

[10]  Songsong Liu,et al.  Multiobjective optimisation of production, distribution and capacity planning of global supply chains in the process industry , 2013 .

[11]  Jiming Chen,et al.  An Online Optimization Approach for Control and Communication Codesign in Networked Cyber-Physical Systems , 2013, IEEE Transactions on Industrial Informatics.

[12]  Anand Sivasubramaniam,et al.  Carbon-Aware Energy Capacity Planning for Datacenters , 2012, 2012 IEEE 20th International Symposium on Modeling, Analysis and Simulation of Computer and Telecommunication Systems.

[13]  WiermanAdam,et al.  Renewable and cooling aware workload management for sustainable data centers , 2012 .

[14]  Chenyang Lu,et al.  Cyber-Physical Codesign of Distributed Structural Health Monitoring with Wireless Sensor Networks , 2010, IEEE Transactions on Parallel and Distributed Systems.

[15]  P. Kshirsagar,et al.  Supervise the data security and performance in cloud using artificial intelligence , 2022, RECENT TRENDS IN SCIENCE AND ENGINEERING.