State Estimation for Electric Power System with Load Uncertainty and False Data Using Cuckoo Search Algorithm

Main Article Content

K. Rajendra
S. Subramanian
N. Karthik
K. Naveenkumar
S. Ganesan

Abstract

State estimate serves a crucial purpose in the control centre of a modern power system. Voltage phasor of buses in such configurations is referred to as state variables that should be determined during operation. A precise estimation is needed to define the optimal operation of all components. So many mathematical and heuristic techniques can be used to achieve the aforementioned objective. An enhanced power system state estimator built on the cuckoo search algorithm is described in this work. Several scenarios, including the influence of load uncertainty and the likelihood of false data injection as significant challenges in electrical energy networks, are proposed to analyses the operation of estimators. The ability to identify and correct false data is also assessed in this regard. Additionally, the performance of the presented estimator is compared to that of the weighted least squares and Cuckoo Search algorithm. The findings demonstrate that the Cuckoo search algorithm overcomes the primary shortcomings of the conventional approaches, including accuracy and complexity, and is also better able to identify and rectify incorrect data. On IEEE 14-bus and 30-bus test systems, simulations are run to show how well the method works.

Article Details

How to Cite
Rajendra, K. ., Subramanian, S. ., Karthik, N. ., Naveenkumar, K. ., & Ganesan, S. . (2023). State Estimation for Electric Power System with Load Uncertainty and False Data Using Cuckoo Search Algorithm. International Journal on Recent and Innovation Trends in Computing and Communication, 11(4s), 209–214. https://doi.org/10.17762/ijritcc.v11i4s.6530
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Articles

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