Reducing Detrimental Communication Failure Impacts in Microgrids by Using Deep Learning Techniques

Sensors (Basel). 2022 Aug 11;22(16):6006. doi: 10.3390/s22166006.

Abstract

A Microgrid (MG), like any other smart and interoperable power system, requires device-to-device (D2D) communication structures in order to function effectively. This communication system, however, is not immune to intentional or unintentional failures. This paper discusses the effects of communication link failures on MG control and management and proposes solutions based on enhancing message content to mitigate their detritus impact. In order to achieve this goal, generation and consumption forecasting using deep learning (DL) methods at the next time steps is used. The architecture of an energy management system (EMS) and an energy storage system (ESS) that are able to operate in coordination is introduced and evaluated by simulation tests, which show promising results and illustrate the efficacy of the proposed methods. It is important to mention that, in this paper, three dissimilar topics namely MG control/management, DL-based forecasting, and D2D communication architectures are employed and this combination is proven to be capable of achieving the aforesaid objective.

Keywords: artificial neural networks; deep learning; machine-to-machine communication; microgrid; time series forecasting.

MeSH terms

  • Communication
  • Computer Simulation
  • Deep Learning*
  • Forecasting