Frequency stability assessment is one critical aspect of power system security assessment. Traditional N-1 screening method is based on the simulations of a few typical daily and seasonal operation scenarios. However, the increasing integration of inverter-based renewables and the retirement of conventional synchronous generators result in decreasing system inertia and growing complexity of system operating conditions. Selecting a few typical operation scenarios cannot cover all operating conditions, and the time-domain simulation of all operation conditions requires tremendous time. This paper proposes a more efficient frequency stability assessment method based on deep learning. The affinity propagation clustering algorithm is used to div...
Modern power systems have been expanding significantly including the integration of high voltage dir...
Information representative of actual power system dynamics is usually buried in masses of phasor mea...
With the increasing integration of variational renewable energy and the more active demand side resp...
Abstract Weak inertia characteristics of power systems with high penetrations of renewables have bec...
This work employs machine learning methods to develop and test a technique for dynamic stability ana...
As a novel and promising learning technology, extreme learning machine (ELM) is featured by its much...
Power systems must maintain the frequency within acceptable limits when subjected to a disturbance. ...
Power system stability assessment has become an important area of research due to the increased pene...
With the increasing requirements for power system transient stability assessment, the research on po...
The quest for an intelligence compliance system to solve power stability problems in real-time with ...
The increase in renewable power generation on the electrical distribution grid is leading to new and...
Transient stability of grid-connected converters has become a critical threat to the power systems w...
In recent years, with the expansion of power system size, the increase of interconnection and the us...
The transition from power systems dominated by synchronous machines to systems based on converter-ba...
Stable operation of an electric power system requires strict operational limits for the grid frequen...
Modern power systems have been expanding significantly including the integration of high voltage dir...
Information representative of actual power system dynamics is usually buried in masses of phasor mea...
With the increasing integration of variational renewable energy and the more active demand side resp...
Abstract Weak inertia characteristics of power systems with high penetrations of renewables have bec...
This work employs machine learning methods to develop and test a technique for dynamic stability ana...
As a novel and promising learning technology, extreme learning machine (ELM) is featured by its much...
Power systems must maintain the frequency within acceptable limits when subjected to a disturbance. ...
Power system stability assessment has become an important area of research due to the increased pene...
With the increasing requirements for power system transient stability assessment, the research on po...
The quest for an intelligence compliance system to solve power stability problems in real-time with ...
The increase in renewable power generation on the electrical distribution grid is leading to new and...
Transient stability of grid-connected converters has become a critical threat to the power systems w...
In recent years, with the expansion of power system size, the increase of interconnection and the us...
The transition from power systems dominated by synchronous machines to systems based on converter-ba...
Stable operation of an electric power system requires strict operational limits for the grid frequen...
Modern power systems have been expanding significantly including the integration of high voltage dir...
Information representative of actual power system dynamics is usually buried in masses of phasor mea...
With the increasing integration of variational renewable energy and the more active demand side resp...