Abstract

Pervasive collaborative computing within the Internet of Things (IoT) has progressed rapidly over the last decade. Nevertheless, emerging architectural models and their applications still suffer from limited capacity in areas like power, efficient computing, memory, connectivity, latency and bandwidth. Technological development is still in progress in the fields of hardware, software and wireless communications. Their communication is usually done via the Internet and wireless via base stations. However, these models are sometimes subject to connectivity failures and limited coverage. The models that incorporate devices with peer-to-peer (P2P) communication technologies are of great importance, especially in harsh environments. Nevertheless, their power-limited devices are randomly distributed on the periphery where their availability can be limited and arbitrary. Despite these limitations, their capabilities and efficiency are constantly increasing. Accelerating development in these areas can be achieved by improving architectures and technologies of pervasive collaborative computing, which refers to the collaboration of mobile and embedded computing devices. To enhance mobile collaborative computing, especially in the models acting at the network’s periphery, we are interested in modernizing and strengthening connectivity using wireless technologies and P2P communication. Therefore, the main goal of this paper is to enhance and maintain connectivity and improve the performance of these pervasive systems while performing the required and expected services in a challenging environment. This is especially important in catastrophic situations and harsh environments, where connectivity is used to facilitate and enhance rescue operations. Thus, we have established a resilient mobile collaborative architectural model comprising a peripheral autonomous network of pervasive devices that considers the constraints of these resources. By maintaining the connectivity of its devices, this model can operate independently of wireless base stations by taking advantage of emerging P2P connection technologies such as Wi-Fi Direct and those enabled by LoPy4 from Pycom such as LoRa, BLE, Sigfox, Wi-Fi, Radio Wi-Fi and Bluetooth. Likewise, we have designed four algorithms to construct a group of devices, calculate their scores, select a group manager, and exchange inter- and intra-group messages. The experimental study we conducted shows that this model continues to perform efficiently, even in circumstances like the breakdown of wireless connectivity due to an extreme event or congestion from connecting a huge number of devices.

Highlights

  • Continuous and rapid technological innovation, especially in the areas of telecommunications and information technology, has led to a radical expansion of the Internet throughout the world

  • The main problem of our research occurs from the emerging architecture field of distributed systems, especially pervasive collaborative computing at the periphery of a network

  • These architectures can be classified into three categories: (i) main centralized as cloud, (ii) peripherally centralized including fog, edge computing and mobile edge com

Read more

Summary

Introduction

Continuous and rapid technological innovation, especially in the areas of telecommunications and information technology, has led to a radical expansion of the Internet throughout the world. Advances in technology like device miniaturization and both P2P and wireless communication have enabled the integration of pervasive devices into distributed systems These enhance and expand collaborative mobile computing by using small low-cost devices (wearable/portable) present in the physical environments of users, including homes, offices, and even natural environments. Increase the resilience and reliability of sharing data, information and computations between these devices (objects) To achieve these goals, we have designed a pervasive mobile network based on a collaborative layered architectural model [18] that allows users to communicate in various situations. We have designed a pervasive mobile network based on a collaborative layered architectural model [18] that allows users to communicate in various situations For this purpose, we have taken into account the capacity limitations of their devices in terms of data storage, computing, and expected battery life.

Pervasive Architectural Models
Issues of Pervasive Architectural Models at the Periphery of a Network
Collaborative Architectural Model of Mobile Pervasive Computing
Specific Objectives
Structure of the Connectivity Model
Communication
Operating Mechanism and Security Controls
Experimental Study
Category A
Category B
Conclusions
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.