Underwater Sensor Multi-Parameter Scheduling for Heterogenous Computing Nodes

Author:

Elhoseny Mohamed1,Lakhan Abdullah2,Rashid Ahmed3,Mohammed Mazin3,Abdulkareem Karrar4

Affiliation:

1. Faculty of Computers and Information, Mansoura University, Dakahlia Governorate 35516, Egypt Dakahlia Governorate and College of Computer Information Technology American University in the Emirates 503000, United Arab Emirates

2. College of Computer Science and Artificial Intelligence, Wenzhou University, Wenzhou 325035, China

3. College of Computer Science and Information Technology, University of Anbar Ramadi, 31001, Iraq

4. College of Agriculture, Al-Muthanna University Samawah 66001, Iraq

Abstract

Sensor-aware distributed workflow applications are becoming increasingly popular underwater. The apps are marine operations that generate data and process it based on its characteristics. Mobile-fog-cloud paradigms, as well as computing such as sensor nodes, have emerged. As previously stated, the nodes can be combined into a single system to achieve several goals. Many factors are considered, including network contents, workload fluctuation, variable execution durations, deadlines, and bandwidth. As a result, scheduling mobile workflow systems with multiple parameters might be challenging. The study suggests a novel content-efficient decision-aware task scheduling (CATSA) method for defining and adapting to complicated environmental changes. The CATSA consists of several components that work together to perform various benchmarks in the system, including a decision planner, sequencing, and scheduling. As evidenced by test findings during evaluation, the suggested architecture outperforms current studies regarding workflow execution quality of services and improved the makespan 30% and deadline meeting 40% in the study.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications

Reference38 articles.

1. Abdullah Lakhan, Dileep Kumar Sajnani, Muhammad Tahir, Muhammad Aamir, and Rakhshanda Lodhi. 2018. Delay sensitive workflow application partitioning and task scheduling in mobile edge cloud prototyping. In International Conference on 5G for Ubiquitous Connectivity. Springer, 59–80.

2. Review of Data Fusion Methods for Real-Time and Multi-Sensor Traffic Flow Analysis

3. Health Status Prediction with Local-Global Heterogeneous Behavior Graph

4. Mobility and fault aware adaptive task offloading in heterogeneous mobile cloud environments;Lakhan Abdullah;EAI Endors. Trans. Mobile Commun. Appl.,2019

5. Li Xiaoping et al. 2018. Dynamic partitioning and task scheduling for complex workflow healthcare application in mobile edge cloud architecture. In Proceedings of the IEEE 4th International Conference on Computer and Communications (ICCC’18). IEEE, 2532–2536.

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