Digital Twin for Modern Distribution Networks by Improved State Estimation with Consideration of Bad Date Identification

Author:

Zhi Huiqiang1,Mao Rui1,Hao Longfei1,Chang Xiao1,Guo Xiangyu1,Ji Liang2

Affiliation:

1. Electric Power Research Institute, State Grid Shanxi Electric Power Company, Taiyuan 730087, China

2. College of Electrical Engineering, Shanghai University of Electric Power, Shanghai 200090, China

Abstract

With the rapid development of modern power systems, the structure and operation of distribution networks are becoming increasingly complex, demanding higher levels of intelligence and digitization. Digital twin, as a virtual cutting-edge technique, can effectively reflect the operational status of distribution networks, offering new possibilities for real-time monitoring, optimization and other functions for distribution networks. Building efficient and accurate models is the foundation of enabling a digital twin of distribution networks. This paper proposes a digital twin operating system for distribution networks with renewable energy based on robust state estimation and deep learning-based renewable energy prediction. Furthermore, the identification and correction of possible bad or missing data based on deep learning are also included to purify the input data for the digital twin system. A digital twin test platform is also proposed in the paper. A case study and evaluations based on a real-time digital simulator are carried out to verify the accuracy and real-time performance of the established digital twin system. In general, the proposed method can provide the basis and foundation for distribution network management and operation, as well as intelligent power system operation.

Funder

State Grid Shanxi Electric Power Company Science and Technology Project Research

Publisher

MDPI AG

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