Online identification of post-contingency transient stability is essential in power system control, as it facilitates the grid operator to decide and coordinate system failure correction control actions. Utilizing machine learning methods with synchrophasor measurements for transient stability assessment has received much attention recently with the gradual deployment of wide-area protection and control systems. In this paper, we develop a transient stability assessment system based on the long short-term memory network. By proposing a temporal self-adaptive scheme, our proposed system aims to balance the trade-off between assessment accuracy and response time, both of which may be crucial in real-world scenarios. Compared with previous wor...
Abstract In recent years, machine learning (ML) techniques have gained popularity in facilitating re...
In recent years, computational intelligence and machine learning techniques have gained popularity t...
Integration of large-scale renewable energy sources and increasing uncertainty has drastically chang...
Intelligent system (IS) using synchronous phasor measurements for transient stability assessment (TS...
Data-driven approaches using synchronous phasor measurements are playing an important role in transi...
Data-driven methods using synchrophasor measurements have a broad application prospect in Transient ...
Transient stability assessment is a critical tool for power system design and operation. With the em...
Abstract Due to the wide deployment of phasor measurement unit, the real‐time assessment of transien...
This work employs machine learning methods to develop and test a technique for dynamic stability ana...
In order to make full use of the dynamic information contained in the electrical quantity response t...
Transient stability (TS) and short-term voltage stability (STVS) assessment are of fundamental impor...
This research presents a new method based on a combined temporal convolutional neural network and lo...
As one of the most complex and largest dynamic industrial systems, a modern power grid envisages the...
Many repeated manual feature adjustments and much heuristic parameter tuning are required during the...
Abstract The recent development of phasor measurement technique opens the way for real-time post-dis...
Abstract In recent years, machine learning (ML) techniques have gained popularity in facilitating re...
In recent years, computational intelligence and machine learning techniques have gained popularity t...
Integration of large-scale renewable energy sources and increasing uncertainty has drastically chang...
Intelligent system (IS) using synchronous phasor measurements for transient stability assessment (TS...
Data-driven approaches using synchronous phasor measurements are playing an important role in transi...
Data-driven methods using synchrophasor measurements have a broad application prospect in Transient ...
Transient stability assessment is a critical tool for power system design and operation. With the em...
Abstract Due to the wide deployment of phasor measurement unit, the real‐time assessment of transien...
This work employs machine learning methods to develop and test a technique for dynamic stability ana...
In order to make full use of the dynamic information contained in the electrical quantity response t...
Transient stability (TS) and short-term voltage stability (STVS) assessment are of fundamental impor...
This research presents a new method based on a combined temporal convolutional neural network and lo...
As one of the most complex and largest dynamic industrial systems, a modern power grid envisages the...
Many repeated manual feature adjustments and much heuristic parameter tuning are required during the...
Abstract The recent development of phasor measurement technique opens the way for real-time post-dis...
Abstract In recent years, machine learning (ML) techniques have gained popularity in facilitating re...
In recent years, computational intelligence and machine learning techniques have gained popularity t...
Integration of large-scale renewable energy sources and increasing uncertainty has drastically chang...