A line loss reduction optimization for renewable energy‐based distribution networks using a probabilistic approach

Author:

Jiang Hongzhi1ORCID,Han Yang1ORCID,Li Wenhao1,Zalhaf Amr S.12ORCID,Zhou Siyu13,Feng Yingjun1,Yang Ping1

Affiliation:

1. School of Mechanical and Electrical Engineering University of Electronic Science and Technology of China Chengdu China

2. Electrical Power and Machines Engineering Department Faculty of Engineering Tanta University Tanta Egypt

3. Department of Electrical Engineering and Automation School of Electrical Engineering Aalto University Espoo Finland

Abstract

SummaryThe large integration of distributed generation (DG) and electric vehicles (EVs) facilitates daily life and reduces carbon emissions. However, it brings problems such as increased uncertainty and power electronic permeability to the distribution network. In this context, it is important to solve the line loss optimization problem as closely as possible to the real situation. Therefore, this paper solves the line loss optimization problem based on a probabilistic model of three‐phase unbalanced modern power electrical distribution network. Firstly, the paper proposes a frequency domain model of the distribution network and the optimization problem model. Then, to deal with the uncertainty of the system, the point estimation method (PEM) and Monte Carlo Simulation (MCS) are used. Finally, this paper proposes two optimization schemes considering the power quality when single and multiple DGs are integrated. The simulation results demonstrate that the PEM using the Gram–Charlier series expansion of the fourth‐order statistical moments to estimate the probability density function (PDF) is significantly less time consuming than the traditional MCS method while maintaining accuracy. The comparative analysis reveals that under the optimization scheme with single DG integration, the expected value of system line loss and expected line loss rate are reduced from 283.95 kW to 218.96 kW (22.89% reduction) and from 13.44% to 10.68%, respectively. Under the dual DG integrated optimization scheme, the expected value of line losses and expected line loss rate are reduced from 283.95 kW to 208.88 kW (26.4% reduction) and from 13.44% to 10.25%, respectively. However, after taking the uncertainty into account, the operational reliability of the system has been enhanced under different scenarios. In addition, it is found that the optimization approach incorporating multiple DG units can effectively mitigate the system line loss under diverse operational scenarios while enhancing the system's DG integration capability.

Funder

National Natural Science Foundation of China

Sichuan Province Science and Technology Support Program

Sichuan Provincial Postdoctoral Science Foundation

Publisher

Wiley

Subject

Applied Mathematics,Electrical and Electronic Engineering,Computer Science Applications,Electronic, Optical and Magnetic Materials

Reference56 articles.

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3. “Special Presidential Envoy for Climate John Kerry Announces U.S. Energy Compact at UN High‐Level Dialogue on Energy.”United States Department of State. Accessed June 15 2022.https://www.state.gov/special-presidential-envoy-for-climate-john-kerry-announces-u-s-energy-compact-at-un-high-level-dialogue-on-energy/

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