State Estimation Fusion for Linear Microgrids over an Unreliable Network
Publisher:
MDPI AG
Issued date:
2022-03-21
Citation:
Soleymannejad, M., Sadrian Zadeh, D., Moshiri, B., Sadjadi, E. N., Herrero, J. G., & López, J. M. M. (2022). State Estimation Fusion for Linear Microgrids over an Unreliable Network. In Energies, 15(6), 2288-2312
ISSN:
1996-1073
xmlui.dri2xhtml.METS-1.0.item-contributor-funder:
Comunidad de Madrid
Ministerio de Ciencia, Innovación y Universidades (España)
Universidad Carlos III de Madrid
Sponsor:
This research was partially funded by public research projects of Spanish Ministry of
Science and Innovation, references PID2020-118249RB-C22 and PDC2021-121567-C22 - AEI/10.13039/
501100011033, and by the Madrid Government (Comunidad de Madrid-Spain) under the Multiannual
Agreement with UC3M in the line of Excellence of University Professors, reference EPUC3M17.
Project:
Gobierno de España. PID2020-118249RB-C22
Gobierno de España. PDC2021-121567-C22 - AEI/10.13039/ 501100011033
Universidad Carlos III de Madrid. EPUC3M17
Keywords:
Cyberattack
,
Data fusion
,
Estimation fusion
,
Internet of things
,
Kalman filter
,
Machine
,
Learning
,
Packet loss
,
Smart microgrid
,
State estimation
Rights:
© 2022 by the authors.
Licensee MDPI, Basel, Switzerland.
Atribución 3.0 España
Abstract:
Microgrids should be continuously monitored in order to maintain suitable voltages over
time. Microgrids are mainly monitored remotely, and their measurement data transmitted through
lossy communication networks are vulnerable to cyberattacks and packet loss
Microgrids should be continuously monitored in order to maintain suitable voltages over
time. Microgrids are mainly monitored remotely, and their measurement data transmitted through
lossy communication networks are vulnerable to cyberattacks and packet loss. The current study
leverages the idea of data fusion to address this problem. Hence, this paper investigates the effects of
estimation fusion using various machine-learning (ML) regression methods as data fusion methods
by aggregating the distributed Kalman filter (KF)-based state estimates of a linear smart microgrid
in order to achieve more accurate and reliable state estimates. This unreliability in measurements
is because they are received through a lossy communication network that incorporates packet loss
and cyberattacks. In addition to ML regression methods, multi-layer perceptron (MLP) and dependent
ordered weighted averaging (DOWA) operators are also employed for further comparisons.
The results of simulation on the IEEE 4-bus model validate the effectiveness of the employed ML
regression methods through the RMSE, MAE and R-squared indices under the condition of missing
and manipulated measurements. In general, the results obtained by the Random Forest regression
method were more accurate than those of other methods.
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