Smart distribution network voltage estimation using PMU technology considering zero injection constraints

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Date

2024

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Public Library of Science

Abstract

To properly control the network of the power system and ensure its protection, Phasor measurement units (PMUs) must be used to monitor the network's operation. PMUs can provide synchronized real-time measurements. These measurements can be used for state estimation, fault detection and diagnosis, and other grid control applications. Conventional state estimation methods use weighting factors to balance the different types of measurements, and zero injection measurements can lead to large weighting factors that can introduce computational errors. The offered methods are designed to ensure that these zero injection criteria can be strictly satisfied while calculating the voltage profile and observability of the various distribution networks without sacrificing computing efficiency. The proposed method's viability is assessed using standard IEEE distribution networks. MATLAB coding is used to simulate the case analyses. Overall, the study provides a valuable contribution to the field of power distribution system monitoring and control by simplifying the process of determining the optimal locations for PMUs in a distribution network and assessing the impact of ZI buses on the voltage profile of the system. ©: © 2024 Tangi et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.

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Keywords

algorithm, Article, cognitive defect, computer analysis, cost benefit analysis, electric potential, human, injection, mathematical analysis, measurement accuracy, nerve cell network, network analysis, power analysis, power supply, simulation, smart distribution, technology, Computer Systems, Injections, Technology

Citation

PLOS ONE, 2024, 19, 46084, pp. 1-22

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