基于稳定裕度补偿的大型光伏并网系统谐波谐振抑制策略研究

项目来源

国家自然科学基金(NSFC)

项目主持人

杨明

项目受资助机构

河南理工大学

项目编号

U1804143

立项年度

2018

立项时间

未公开

研究期限

未知 / 未知

项目级别

国家级

受资助金额

48.00万元

学科

联合基金领域-新材料与先进制造领域

学科代码

L-L04

基金类别

联合基金项目-培育项目-NSFC-河南联合基金

关键词

系统建模 ; 大型光伏电站 ; 稳定性分析 ; 稳定裕度补偿 ; 谐振机理 ; 系统建模 ; 大型光伏电站 ; 稳定性分析 ; 稳定裕度补偿 ; 谐振机理

参与者

杜少通;张国澎;陶海军;朱艺锋;荆鹏辉;高龙将;黄旭;李秋思

参与机构

河南理工大学

项目标书摘要:本项目以大型光伏电站为研究对象,以提高大型光伏电站的并网稳定性和电能质量为研究目标,探索大型光伏电站和电网之间的谐波谐振机理及应对策略。项目基于光伏发电、谐波谐振机理及稳定性分析、谐振抑制策略、算例分析及实验验证等理论和技术,在建立大型光伏并网系统阻抗网络模型基础上,探讨光伏电站装机容量、电网阻抗等因素对系统并网稳定性的影响,提出一种基于稳定裕度补偿的大型光伏并网系统谐振抑制策略。该项目旨在揭示电网阻抗引起的大型光伏电站谐波谐振机理,研究能有效抑制系统谐振的大型光伏电站并网逆变器电流控制方案,为大型光伏电站的规模化应用提供理论支撑和设计指导,具有重要的工程价值和科学意义。

Application Abstract: This project investigates the interaction mechanism between the large-scale photovoltaic(PV)plants and grid in order to improve the stability and power quality of the large-scale PV system.It’s based on the theory and technology of system modeling,resonance mechanism and stability analysis,resonance suppression strategy,simulation analysis and experimental verification to study the system stability considering the impact of PV plants capacity,grid impedance.In addition,inverter nonlinear factor is also considered.The objective of this project is to obtain a resonance suppression strategy of large-scale PV system based on stability margin compensation,and to reveal the resonance mechanism of the large-scale PV system and develops a perfect inverter control system which has a function of suppressing resonant.So that it can provide the theoretical foundation and guidance for the development and application of large-scale PV power plants.

项目受资助省

河南省

项目结题报告(全文)

本项目以大型光伏电站为研究对象,在建立大型光伏并网系统等效阻抗模型基础上,通过研究不同逆变器之间的交互影响和逆变器与电网之间的交互影响,给出了一种对逆变器参数一致和不一致均适用的大型光伏并网系统稳定性判据。然后,通过综合考虑电流控制环路、数字控制延时、电网电压前馈和锁相环与电网阻抗之间的耦合影响,分别从并网系统在几百赫兹到几千赫兹的中高频段和并网系统在几百赫兹的锁相环带宽频段两个方面深度揭示了系统的宽频带谐波谐振机理。对于中高频段谐波谐振问题,从不同角度考虑,提出了一种弱电网下抑制谐振频率偏移的并网逆变器谐波谐振控制策略,提出一种采用电容电压前馈的并网逆变器环路谐振频率偏移抑制策略,提出一种基于前馈复矢量滤波器的改进型加权平均电流控制策略等等。对于锁相环带宽频段稳定性问题,从锁相环补偿角度考虑,提出了一种在锁相环和电网电压前馈通道前串联新型一阶复矢量滤波器的补偿控制方法;从锁相环自身结构角度考虑,提出了一种基于二阶振荡环节的新型锁相环设计方案等等。所提出的一系列控制策略分别通过搭建仿真模型和实验平台对其有效性进行了验证,本项目的相关研究结果可为高渗透率下光伏并网系统的规模化应用提供一定的理论支撑和借鉴参考。

  • 排序方式:
  • 1
  • /
  • 1.Improved WAC Control Strategy for LCL Grid-Connected Inverters Considering Digital Control Delay

    • 关键词:
    • Digital control systems;Electric impedance;Equivalent circuits;Feedback;MATLAB;Power quality;Quality control;Statistical methods;System stability;Average currents;Digital control delays;Equivalent impedance;Equivalent impedance model;Grid-connected;Grid-connected inverte;Impedance modeling;Second-order generalized integrator1;Second-order generalized integrators;Weighted average current control ;Weighted averages
    • Yao, Guanyu;Wang, Xinhuan
    • 《18th Annual Conference of China Electrotechnical Society, ACCES 2023》
    • 2024年
    • September 15, 2023 - September 17, 2023
    • Nanchang, China
    • 会议

    The traditional Weighted Average Current (WAC) control method loses its loop-order reduction characteristic due to control delay, resulting in significant instability risk for the system in weak grid conditions. This paper, based on the equivalent impedance model, analyzed that the main cause of system instability is the introduction of a positive feedback loop associated with grid impedance through the voltage feedforward channel, resulting in phase lag. To address this issue, the paper proposes the introduction of a Second-Order Generalized Integrator (SOGI) in the voltage feedforward channel to attenuate the impact of the positive feedback loop on the system, improve the phase margin of the equivalent output impedance in the medium to low frequency range, and enhance the system's adaptability to a wide range of grid impedance variations. Furthermore, in order to eliminate control errors in the indirect control of WAC and enhance the system's background harmonics suppression capability, the quasi-Proportional Resonant (QPR) controller is combined to improve the quality of grid-connected current. Finally, the effectiveness and feasibility of this improved WAC control strategy are verified through simulation in MATLAB/Simulink. © Beijing Paike Culture Commu. Co., Ltd. 2024.

    ...
  • 2.Optimal Scheduling Strategy of Multiple Microgrids Based on Improved Grey Wolf Algorithm

    • 关键词:
    • Environmental technology;Particle swarm optimization (PSO);Smart power grids;Double layers;Double-layer scheduling mathematical model;Electric energies;Electric energy trading mechanism;Energy trading;Gray wolves;Improved gray wolf algorithm;Multi micro-grids;Optimal scheduling;Trading mechanism
    • Ren, Yulin;Zhang, Li;Tian, Guangqiang;Wang, Fuzhong;Li, Runyu
    • 《18th Chinese Intelligent Systems Conference, CISC 2022》
    • 2022年
    • October 15, 2022 - October 16, 2022
    • Beijing, China
    • 会议

    In order to alleviate the increasingly prominent energy problems and environmental problems, clean energy based microgrid technology has been widely studied and applied. Aiming at the coordination and optimization scheduling problem of multi-microgrid, the power transaction mechanism of multi-microgrid system is designed from the two aspects of multi-microgrid energy interaction and economic operation. Firstly, the two-layer scheduling mathematical model of multi-microgrid is established. Then, the improved Gray Wolf algorithm PSO-GWO is proposed and applied to the optimal scheduling problem of multiple micro networks. Finally, through simulation experiments, PSO-GWO, PSO and GWO are applied to solve the mathematical model of multi-microgrid optimal scheduling respectively, which proves that the established multi-micro-grid double-layer optimal scheduling model is feasible and effectively promotes the economic and stable operation of multi-micro-grid system.
    © 2022, The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd.

    ...
  • 3.Optimal Scheduling Strategy ofMultiple Microgrids Based onImproved Grey Wolf Algorithm

    • 关键词:
    • Environmental technology;Particle swarm optimization (PSO);Smart power grids;Double layers;Double-layer scheduling mathematical model;Electric energies;Electric energy trading mechanism;Energy trading;Gray wolves;Improved gray wolf algorithm;Multi micro-grids;Optimal scheduling;Trading mechanism
    • Ren, Yulin;Zhang, Li;Tian, Guangqiang;Wang, Fuzhong;Li, Runyu
    • 《18th Chinese Intelligent Systems Conference, CISC 2022》
    • 2022年
    • October 15, 2022 - October 16, 2022
    • Beijing, China
    • 会议

    In order to alleviate the increasingly prominent energy problems and environmental problems, clean energy based microgrid technology has been widely studied and applied. Aiming at the coordination and optimization scheduling problem of multi-microgrid, the power transaction mechanism of multi-microgrid system is designed from the two aspects of multi-microgrid energy interaction and economic operation. Firstly, the two-layer scheduling mathematical model of multi-microgrid is established. Then, the improved Gray Wolf algorithm PSO-GWO is proposed and applied to the optimal scheduling problem of multiple micro networks. Finally, through simulation experiments, PSO-GWO, PSO and GWO are applied to solve the mathematical model of multi-microgrid optimal scheduling respectively, which proves that the established multi-micro-grid double-layer optimal scheduling model is feasible and effectively promotes the economic and stable operation of multi-micro-grid system. © 2022, The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd.

    ...
  • 4.Capacitance Fault Prediction ofBidirectional DC-DC Converter Based onLSTM-SVR

    • 关键词:
    • Boost converter;Brain;Buck-Boost converter;Capacitance;Electric inverters;Failure (mechanical);Failure analysis;Forecasting;Long short-term memory;Regression analysis ;Structural optimization;Supercapacitor;Support vector machines;Bidirectional buck-boost converter;Bidirectional DC/DC;Bidirectional DC/DC converters;Capacitor degradation;Fault characteristics;Fault prediction;Long short-term memory network;Memory network;Ripple voltage;Support vector regressions
    • Tian, Guangqiang;Ren, Yulin;Zhang, Li;Wang, Fuzhong
    • 《18th Chinese Intelligent Systems Conference, CISC 2022》
    • 2022年
    • October 15, 2022 - October 16, 2022
    • Beijing, China
    • 会议

    Bidirectional DC-DC is widely used in energy storage systems and other fields, and its reliability is closely related to the stable operation of equipment. Electrolytic capacitor is considered as the component with the highest failure rate in the bidirectional DC-DC converter circuit, and its performance greatly affects the efficiency of the whole circuit. In this paper, a capacitance fault prediction model of bidirectional DC-DC converter is proposed based on support vector machine regression algorithm and LSTM-SVR algorithm. Firstly, the failure mechanism of electrolytic capacitor of the bidirectional Buck/Boost converter is analyzed, and the parameters reflecting its degradation law are determined. The capacitor degradation is simulated, and ripple voltage is selected as the fault characteristic parameter. Then, Support Vector Regression and Grid Search are used to optimize the long and short term memory network to determine its optimal network structure. Finally, through simulation experiments, compared with LSTM and SVR models, the prediction accuracy of LSTM-SVR reaches more than 97%, the accuracy of the model was verified. © 2022, The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd.

    ...
  • 5.Capacitance Fault Prediction of Bidirectional DC-DC Converter Based on LSTM-SVR

    • 关键词:
    • Boost converter;Brain;Buck-Boost converter;Capacitance;Electric inverters;Failure (mechanical);Failure analysis;Forecasting;Long short-term memory;Regression analysis ;Structural optimization;Supercapacitor;Support vector machines;Bidirectional buck-boost converter;Bidirectional DC/DC;Bidirectional DC/DC converters;Capacitor degradation;Fault characteristics;Fault prediction;Long short-term memory network;Memory network;Ripple voltage;Support vector regressions
    • Tian, Guangqiang;Ren, Yulin;Zhang, Li;Wang, Fuzhong
    • 《18th Chinese Intelligent Systems Conference, CISC 2022》
    • 2022年
    • October 15, 2022 - October 16, 2022
    • Beijing, China
    • 会议

    Bidirectional DC-DC is widely used in energy storage systems and other fields, and its reliability is closely related to the stable operation of equipment. Electrolytic capacitor is considered as the component with the highest failure rate in the bidirectional DC-DC converter circuit, and its performance greatly affects the efficiency of the whole circuit. In this paper, a capacitance fault prediction model of bidirectional DC-DC converter is proposed based on support vector machine regression algorithm and LSTM-SVR algorithm. Firstly, the failure mechanism of electrolytic capacitor of the bidirectional Buck/Boost converter is analyzed, and the parameters reflecting its degradation law are determined. The capacitor degradation is simulated, and ripple voltage is selected as the fault characteristic parameter. Then, Support Vector Regression and Grid Search are used to optimize the long and short term memory network to determine its optimal network structure. Finally, through simulation experiments, compared with LSTM and SVR models, the prediction accuracy of LSTM-SVR reaches more than 97%, the accuracy of the model was verified.
    © 2022, The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd.

    ...
  • 6.A new combination algorithm based on higher-order Newton and simplified Newton method

    • 关键词:
    • Computational efficiency;Electric load flow;Combination algorithm;Convergence characteristics;High-order;Higher-order;Improved newton method;Low order;Newton's methods;Power flow algorithm;Power flow calculations;Power flows
    • Wei, Yanfang;Li, Qiankun;Wang, Peng;Yang, Ming;Zeng, Zhihui;Wang, Xiaowei
    • 《16th IET International Conference on AC and DC Power Transmission, ACDC 2020》
    • 2020年
    • July 2, 2020 - July 3, 2020
    • Virtual, Online
    • 会议

    Computational efficiency is an important aspect of power flow algorithms. A new combination algorithm based on higher-order Newton and simplified Newton method is proposed. Firstly, the solution principles of the high-order Newton method and the classical Newton method are compared and analyzed; Furthermore, the high-order Newton method and the simplified Newton method are combined, and the detailed solving steps of the combination algorithm are given. Through the reasonable collocation of the high and low order Newton method, the calculation time is reduced and the efficiency of power flow calculation is effectively improved. At last, based on the IEEE AC system examples, the validity and correctness of the proposed method for solving power flow calculation are verified by comparing the results of basic case test, algorithm efficiency and system heavy load, etc. © 2020 The Institution of Engineering and Technology

    ...
  • 7.Short-term prediction of photovoltaic power generation based on deep belief network with momentum factor

    • 关键词:
    • Electric load dispatching;Solar energy;Momentum;Accurate prediction;Deep belief networks;Non-linear relationships;Photovoltaic power generation;Prediction accuracy;Short term prediction;Stable operation;Training sample
    • Lei, Lai;Guo, Jiangzhen;Wang, Fuzhong;Zhang, Li
    • 《Chinese Intelligent Systems Conference, CISC 2020》
    • 2021年
    • October 24, 2020 - October 25, 2020
    • Shenzhen, China
    • 会议

    Accurate prediction of short-term photovoltaic power generation will help the grid dispatching department to make reasonable arrangements to ensure the safe and stable operation of the power system, thereby increasing the proportion of new energy in the power system. In order to improve the accuracy of photovoltaic power generation prediction, a short-term photovoltaic power generation prediction model based on deep belief network with momentum factor is proposed. It focuses on the selection of training samples for short-term prediction models of photovoltaic power generation, short-term prediction models of photovoltaic power generation based on deep belief networks, and optimization of the model by adding dynamically adjusted momentum factors. The actual measured data of the Australian Desert Solar Research Center were used to verify the short-term prediction model of photovoltaic power generation. The simulation experiment results show that the short-term prediction model of photovoltaic power generation established in this paper can effectively characterize the various factors that affect photovoltaic power generation and the measured the complex nonlinear relationship between powers has high prediction accuracy.
    © The Editor(s) (if applicable) and The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd. 2021.

    ...
  • 排序方式:
  • 1
  • /