Abstract

The impact of multimedia in day-to-day life and its applications will be increased greatly with the proposed model (MSVPC)–5G Multicast SDN network eminence video transmission obtained using PSO and cross layer progress in wireless nodes. The drone inspection and analysis in a solar farm requires a very high number of transmissions of various videos, data, animations, along with all sets of audio, text and visuals. Thus, it is necessary to regulate the transmissions of various videos due to a huge amount of bandwidth requirement for videos. A software-defined network (SDN) enables forwarder selection through particle swarm optimization (PSO) mode for streaming video packets through multicast routing transmissions. Transmission delay and packet errors are the main factors in selecting a forwarder. The nodes that transfer the videos with the shortest delay and the lowest errors have been calculated and sent to the destination through the forwarder. This method involves streaming to be increased with the highest throughput and less delay. Here, the achieved throughput is shown as 0.0699412 bits per second for 160 s of simulation time. Also, the achieved packet delivery ratio is 81.9005 percentage for 150 nodes on the network. All these metrics can be changed according to the network design and can have new results. Thus, the application of MSVPC- 5G Multicast SDN Network Eminence Video Transmission in drone thermal imaging helps in monitoring solar farms more effectively, and may lead to the development of certain algorithms in prescriptive analytics which recommends the best practices for solar farm development.

Highlights

  • Packet delivery ratio (PDR) is the percentage of packets arriving at the destination from the source

  • Because of the swarm optimization-based video transmission and multicast routing this performance enhancement is achieved

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Summary

Introduction

The quality assurance of a solar farm includes millions of solar panels, cables, DC combiner boxes and invertors [1,2]. Considering the performance assessment methods like I-V measurements or the other field techniques, real-time thermal imaging of the PV panels and the electrical components are more effective [2]. Through this process, the thermal profiles of each panel in a large module is visible and it paves the way for analyzing the properties and identifying the faults such as micro and macro cracks due to the thermal stress.

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