MNRG | GridEye application on optimal multi-energy system management and optimal grid reconfiguration as flexibility tools

Summary
To achieve deep emission reductions in the European energy sector and in the heating sector in particular, stronger cross-sectoral linkages among the different energy carriers are needed. The main objective of proposed MNRG is improving operational flexibility by presenting a comprehensive digitalized, distributed and real-time monitoring of heat, mobility and electricity energy sectors which is required to deal with the uncertainty and variability of growing renewable resources and mobility. The main novelties of this project are: 1) MNRG provides an easy deployment and paired with unprecedented modularity for interconnected multi-energy systems by using GridEye's edge computing capabilities. 2) MNRG introduces a more practical way to manage and respond to the complex needs of the multi-energy systems in the presence of numerous energy components and devices. 3) The impact of DERs and EVs on the quality of energy sectors will be monitored in real-time and the flexibility in the operation of CHPs, use of reactive power controlling devices such as SVR and storage capacity of heat network will be considered as alternatives for technical challenges. 4) Real-time preventive and corrective actions based on dynamic feeder reconfiguration against over-voltage and congestion in the grid will be addressed. To determine network topologies optimally, methods based on machine learning or mathematical techniques will be implemented. 5) By MNRG, the behavior of feeders and transformers that are utilized by DERs and EVs will be predicted for DSO’s usage. In this regard, MNRG feeding by updated forecasts based on mathematical methods, like, ARIMA and deep learning methods, such as DRL and LSTM, will provide corrective and preventive actions. 6) MNRG can provide robust strategies for DSOs by using uncertainty modelling techniques such as robust optimization to tackle the volatility of uncertain parameters.
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More information & hyperlinks
Web resources: https://cordis.europa.eu/project/id/101026259
Start date: 01-06-2021
End date: 31-05-2023
Total budget - Public funding: 203 149,44 Euro - 203 149,00 Euro
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Original description

To achieve deep emission reductions in the European energy sector and in the heating sector in particular, stronger cross-sectoral linkages among the different energy carriers are needed. The main objective of proposed MNRG is improving operational flexibility by presenting a comprehensive digitalized, distributed and real-time monitoring of heat, mobility and electricity energy sectors which is required to deal with the uncertainty and variability of growing renewable resources and mobility. The main novelties of this project are: 1) MNRG provides an easy deployment and paired with unprecedented modularity for interconnected multi-energy systems by using GridEye's edge computing capabilities. 2) MNRG introduces a more practical way to manage and respond to the complex needs of the multi-energy systems in the presence of numerous energy components and devices. 3) The impact of DERs and EVs on the quality of energy sectors will be monitored in real-time and the flexibility in the operation of CHPs, use of reactive power controlling devices such as SVR and storage capacity of heat network will be considered as alternatives for technical challenges. 4) Real-time preventive and corrective actions based on dynamic feeder reconfiguration against over-voltage and congestion in the grid will be addressed. To determine network topologies optimally, methods based on machine learning or mathematical techniques will be implemented. 5) By MNRG, the behavior of feeders and transformers that are utilized by DERs and EVs will be predicted for DSO’s usage. In this regard, MNRG feeding by updated forecasts based on mathematical methods, like, ARIMA and deep learning methods, such as DRL and LSTM, will provide corrective and preventive actions. 6) MNRG can provide robust strategies for DSOs by using uncertainty modelling techniques such as robust optimization to tackle the volatility of uncertain parameters.

Status

TERMINATED

Call topic

MSCA-IF-2020

Update Date

28-04-2024
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Horizon 2020
H2020-EU.1. EXCELLENT SCIENCE
H2020-EU.1.3. EXCELLENT SCIENCE - Marie Skłodowska-Curie Actions (MSCA)
H2020-EU.1.3.2. Nurturing excellence by means of cross-border and cross-sector mobility
H2020-MSCA-IF-2020
MSCA-IF-2020 Individual Fellowships