In recent years, voltage stability issues have become a serious concern with regard to the safety of electrical systems, these issues are more evident and have wider consequences in vertical networks with an insufficient reactive power reserve. Pakistan is currently suffering from the worst energy crisis in its history. Owing to an increase in energy demand, the current transmission system is becoming increasingly inadequate. It has thus become necessary to reduce losses and enhance the system voltage profile for more efficient energy utilization. In this study, the main emphasis is on assessing the feasibility of using flexible AC transmission system devices and distributed generation to compensate power failures on the power lines of the Pakistani power transmission system. The load flow and contingency analyses are performed on a 132 kV transmission system that feeds power to the Quetta electric supply company. The region of Baluchistan is studied to evaluate the effectiveness of the proposed method. The system is simulated using NEPLAN, which accurately models the details of all system elements and the optimal power flow. The simulation results indicate that the proposed method helps reduce system losses, voltage deviation, and power flow congestion, with all system constraints within permissible limits.
Transient stability assessment (TSA) plays a critical role in ensuring
the reliable operation of power systems. However, existing approaches
for TSA often encounter challenges such as data imbalances, limited
sample sizes, and the need for adaptability in the face of system
changes, necessitating the exploration of more advanced techniques. This
paper proposes a novel deep transfer learning (DTL) framework to address
these limitations that incorporates CNN-LSTM and stacked denoising
auto-encoder (SDAE) techniques, aiming to significantly improve the
speed and accuracy of power system TSA, especially in online
applications and adaptability to system changes. First, the utilization
of SDAE enables effective feature extraction, while the implementation
of class weight balancing and cross-entropy loss function techniques
effectively addresses data imbalances. Second, a CNN-LSTM classifier is
constructed using transfer progressive learning. This approach allows
for the effective analysis of spatial and temporal dynamic measurements
by leveraging unsupervised pre-training (auto-encoder) and additional
CNN-LSTM layers. Third, we propose the DTL, which leverages knowledge
transfer from the CNN-LSTM model and incorporates fine-tuning
techniques. This innovative approach ensures adaptability under in four
scenarios, which is a prevalent challenge in power systems for
continuous prediction. As compared with other techniques, the results
demonstrate that our proposed approach achieves TSA accuracy of up to
99.68% on the IEEE 39-bus system and 99.80% on the South Carolina
500-bus system. Furthermore, to compare the performance of continuous
prediction with other methods, our proposed method exhibits a
significant improvement of 2% even with a limited sample size.
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