Identification of anomaly data is very important for power system state estimation. In this paper, a method of power system anomaly data identification based on neural network and affine propagation is proposed. In this first step, a 3-layer neural network is trained as a predictor using normal data. In the second step, data to be detected is preprocessed using the trained neural network, and predicted residuals are obtained. In the third step, these predicted residuals are clustered using the affine propagation clustering algorithm, and in the final step, anomaly data is identified based on the clustering results. As the neural network training process is easy to fall into local minimum, which reduces the prediction accuracy of the neural ...
Power system has been incorporating increasing amount of unconventional generations and loads such a...
As the volume of data recorded from systems increases, there is a need to effectively analyse this d...
Anomaly detection is an important issue heavily investigated within different research areas and app...
Operational and planning modules of energy systems heavily depend on the information of the underlyi...
Abstract. The aim of this work is to propose an approach to monitor and protect Electric Power Syste...
Power generation plants play a crucial role in modern societies, but they are vulnerable to differen...
The power system complexity and associated stability problems are greatly linked to the increasing p...
The quality of data is an important aspect when performing data scientific tasks.Having a clean grou...
A hybrid method comprising a chaos synchronization (CS)-based detection scheme and an Extension Neur...
Modern cyber-physical systems have become more autonomous and distributed with the inclusion of adva...
An unplanned outage can be costly for a utility, and gas turbines are expensive pieces of equipment ...
To detect false data injection attacks (FDIAs) in power grid reconstruction and solve the problem of...
Due to the diversity and complexity of power network system platforms, some traditional network traf...
This paper tries to solve anomaly detection, a very important issue in ensuring the safe and stable ...
The availability of constant electricity supply is a crucial factor to the performance of any indust...
Power system has been incorporating increasing amount of unconventional generations and loads such a...
As the volume of data recorded from systems increases, there is a need to effectively analyse this d...
Anomaly detection is an important issue heavily investigated within different research areas and app...
Operational and planning modules of energy systems heavily depend on the information of the underlyi...
Abstract. The aim of this work is to propose an approach to monitor and protect Electric Power Syste...
Power generation plants play a crucial role in modern societies, but they are vulnerable to differen...
The power system complexity and associated stability problems are greatly linked to the increasing p...
The quality of data is an important aspect when performing data scientific tasks.Having a clean grou...
A hybrid method comprising a chaos synchronization (CS)-based detection scheme and an Extension Neur...
Modern cyber-physical systems have become more autonomous and distributed with the inclusion of adva...
An unplanned outage can be costly for a utility, and gas turbines are expensive pieces of equipment ...
To detect false data injection attacks (FDIAs) in power grid reconstruction and solve the problem of...
Due to the diversity and complexity of power network system platforms, some traditional network traf...
This paper tries to solve anomaly detection, a very important issue in ensuring the safe and stable ...
The availability of constant electricity supply is a crucial factor to the performance of any indust...
Power system has been incorporating increasing amount of unconventional generations and loads such a...
As the volume of data recorded from systems increases, there is a need to effectively analyse this d...
Anomaly detection is an important issue heavily investigated within different research areas and app...