Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

A Novel Approach for IoT Tasks Offloading in Edge-Cloud Environments

View through CrossRef
Abstract Recently, the number of Internet of Things (IoT) devices connected to the Internet has increased dramatically as well as the data produced by these devices. This would require offloading IoT task to release heavy computation and storage to the resource-rich nodes such as Edge Computing and Cloud Computing. Although Edge Computing is a promising enabler for latency-sensitive related issues, its deployment produces new challenges. Besides, different service architectures and offloading strategies have a different impact on the service time performance of IoT applications. Therefore, this paper presents a novel approach for task offloading in an Edge-Cloud system in order to minimize the overall service time for latency-sensitive applications. This approach adopts the fuzzy logic algorithms, considering application characteristics (e.g., CPU demand, network demand and delay sensitivity) as well as resource utilization and resource heterogeneity. A number of simulation experiments are conducted to evaluate the proposed approach with other related approaches, where it was found to improve the overall service time for latency-sensitive applications and utilize the edge-cloud resources effectively. Also, the results show that different offloading decisions within the Edge-Cloud system can lead to various service time due to the computational resources and communications types.
Springer Science and Business Media LLC
Title: A Novel Approach for IoT Tasks Offloading in Edge-Cloud Environments
Description:
Abstract Recently, the number of Internet of Things (IoT) devices connected to the Internet has increased dramatically as well as the data produced by these devices.
This would require offloading IoT task to release heavy computation and storage to the resource-rich nodes such as Edge Computing and Cloud Computing.
Although Edge Computing is a promising enabler for latency-sensitive related issues, its deployment produces new challenges.
Besides, different service architectures and offloading strategies have a different impact on the service time performance of IoT applications.
Therefore, this paper presents a novel approach for task offloading in an Edge-Cloud system in order to minimize the overall service time for latency-sensitive applications.
This approach adopts the fuzzy logic algorithms, considering application characteristics (e.
g.
, CPU demand, network demand and delay sensitivity) as well as resource utilization and resource heterogeneity.
A number of simulation experiments are conducted to evaluate the proposed approach with other related approaches, where it was found to improve the overall service time for latency-sensitive applications and utilize the edge-cloud resources effectively.
Also, the results show that different offloading decisions within the Edge-Cloud system can lead to various service time due to the computational resources and communications types.

Related Results

Confidence Guides Spontaneous Cognitive Offloading
Confidence Guides Spontaneous Cognitive Offloading
Background: Cognitive offloading is the use of physical action to reduce the cognitive demands of a task. Everyday memory relies heavily on this practice, for example when we write...
SRA-E-ABCO: Terminal Task Offloading for Cloud-Edge-End Environments
SRA-E-ABCO: Terminal Task Offloading for Cloud-Edge-End Environments
Abstract With the rapid development of Internet technology, the cloud-edge-end computing model has gradually become an essential new computing model. Under this model, term...
A Survey on IoT Task Offloading Decisions in Multi-access Edge Computing: A Decision Content Perspective
A Survey on IoT Task Offloading Decisions in Multi-access Edge Computing: A Decision Content Perspective
The rapid development of Internet of Things (IoT) technologies has led to increasingly complex software systems on Terminal Devices (TDs). This increases the computational load and...
Dependency-Aware Task Offloading for Vehicular Edge Computing with End-Edge-Cloud Collaborative Computing
Dependency-Aware Task Offloading for Vehicular Edge Computing with End-Edge-Cloud Collaborative Computing
Abstract Vehicular edge computing (VEC) is emerging as a new computing paradigm to improve the quality of vehicular services and enhance the capabilities of vehicles. It ai...
A Novel SDN-Based Architecture of Task Offloading in Mobile Ad-Hoc Cloud
A Novel SDN-Based Architecture of Task Offloading in Mobile Ad-Hoc Cloud
As the core function of mobile Ad-hoc cloud, task offloading has always been a research hotspot of mobile cloud computing, and the construction, offloading decision, task division ...
Priority-Based Offloading and Caching in Mobile Edge Cloud
Priority-Based Offloading and Caching in Mobile Edge Cloud
Mobile Edge Computing (MEC) is relatively a novel concept in the parlance of Computational Offloading. MEC signifies the offloading of intensive computational tasks to the cloud wh...
A Study of Moving from Cloud Computing to Fog Computing
A Study of Moving from Cloud Computing to Fog Computing
The exponential growth of the Internet of Things (IoT) technology poses various challenges to the classic centralized cloud computing paradigm, including high latency, limited capa...
Secured Computation Offloading in Multi-Access Mobile Edge Computing Networks through Deep Reinforcement Learning
Secured Computation Offloading in Multi-Access Mobile Edge Computing Networks through Deep Reinforcement Learning
Mobile edge computing (MEC) has emerged as a pivotal technology to address the computational demands of resource-constrained mobile devices by offloading tasks to nearby edge serve...

Back to Top