scholarly journals Serverless Management of Sensing Systems for Fog Computing Framework

2020 ◽  
Vol 20 (3) ◽  
pp. 1564-1572 ◽  
Author(s):  
Suvajit Sarkar ◽  
Rajeev Wankar ◽  
Satish Narayana Srirama ◽  
Nagender Kumar Suryadevara
2021 ◽  
Vol 111 ◽  
pp. 102336
Author(s):  
Md Razon Hossain ◽  
Md Whaiduzzaman ◽  
Alistair Barros ◽  
Shelia Rahman Tuly ◽  
Md. Julkar Nayeen Mahi ◽  
...  

Author(s):  
А.Н. ВОЛКОВ

Одним из направлений развития сетей связи 5G и сетей связи 2030 является интегрирование в сеть распределенных вычислительных структур, таких как системы пограничных и туманных вычислений (Fog), которые призваны выполнить децентрализацию вычислительной части сетей. В связи с этим необходимо исследовать и определить принципы предоставления услуг на основе распределенной вычислительной инфраструктуры, в том числе в условиях ограниченности ресурсов отдельно взятых составных частей (Fog-устройства). Предлагается новый фреймворк распределенной динамической вычислительной системы туманных вычислений на основе микросервисного архитектурного подхода к реализации, развертыванию и миграции программного обеспечения предоставляемых услуг. Исследуется типовая архитектура микросервисного подхода и ее имплементация в туманные вычисления, а также рассматриваются два алгоритма: алгоритм K-средних для нахождения центра пользовательской нагрузки и алгоритм роевой оптимизации для определения устройства тумана с необходимыми характеристиками для последующей миграции микросервиса. One of the directions of 5G and 2030 communications networks development is the network-integrated distributed structures, such as edge computing (MEC) and Fog computing, which are designed to decentralize the computing part of networks. In this regard, it is necessary to investigate and determine the principles of providing services based on a distributed computing infrastructure, including in conditions of limited resources of individual components (Fog devices). This article proposes a new framework for a distributed dynamic computing system of fog computing based on a microservice architectural approach to the implementation, deployment, and software migration of the services. The article examines the typical architecture of the microservice approach and its implementation in fog computing, and also investigates two algorithms: K-means for finding the center of user load, swarm optimization (PSO) to determine the fog device with the necessary characteristics for the subsequent migration of the microservice.


2019 ◽  
Vol 100 ◽  
pp. 569-578 ◽  
Author(s):  
Naveed Islam ◽  
Yasir Faheem ◽  
Ikram Ud Din ◽  
Muhammad Talha ◽  
Mohsen Guizani ◽  
...  

Author(s):  
Chen Xu ◽  
Yahui Wang ◽  
Zhenyu Zhou ◽  
Bo Gu ◽  
Valerio Frascolla ◽  
...  

Author(s):  
Ioan-Mădălin Neagu

Abstract In the present paper, a fog computing framework for smart urban transport is developed. The proposed framework is adapted to the smart city concept. It uses a collaborative multitude of end-user clients to carry out a substantial amount of communication and computation. It can be adapted for specific situations of smart cities in Romania, such as: Cluj-Napoca, Timișoara, Iași or Bucharest. Economic and social implications as well as available European funding sources are presented.


2018 ◽  
Vol 2018 ◽  
pp. 1-18 ◽  
Author(s):  
Chuanbin Li ◽  
Xiaosen Zheng ◽  
Zikun Yang ◽  
Li Kuang

With the rapid development of IoT, the disadvantages of Cloud framework have been exposed, such as high latency, network congestion, and low reliability. Therefore, the Fog Computing framework has emerged, with an extended Fog Layer between the Cloud and terminals. In order to address the real-time prediction on electricity demand, we propose an approach based on XGBoost and ARMA in Fog Computing environment. By taking the advantages of Fog Computing framework, we first propose a prototype-based clustering algorithm to divide enterprise users into several categories based on their total electricity consumption; we then propose a model selection approach by analyzing users’ historical records of electricity consumption and identifying the most important features. Generally speaking, if the historical records pass the test of stationarity and white noise, ARMA is used to model the user’s electricity consumption in time sequence; otherwise, if the historical records do not pass the test, and some discrete features are the most important, such as weather and whether it is weekend, XGBoost will be used. The experiment results show that our proposed approach by combining the advantage of ARMA and XGBoost is more accurate than the classical models.


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