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基于概率神经网络的集控式风电场风险评估
引用本文:李文田,焦应乐,杨子龙,程璐,莫丰源.基于概率神经网络的集控式风电场风险评估[J].电测与仪表,2019,56(17):76-81.
作者姓名:李文田  焦应乐  杨子龙  程璐  莫丰源
作者单位:大唐河南清洁能源有限责任公司,郑州,450018;武汉大学电气与自动化学院,武汉,430072
基金项目:国家自然科学基金青年基金项目(51007066)
摘    要:目前对风电机组的风险评估方法多以对某关键部件的风险评估情况来分析风电机组的整体运行情况,由于各关键部件具有较强的耦合作用,需要综合考虑各部件对风电机组的影响情况。为了更好地对风电机组进行维护检修,文中以风电机组的历史运行数据为基础,对其进行风险状态评估,通过风电场集控中心及其数据模型的建设,对风电机组的运行数据进行采集,提取出反映风电机组关键部件运行状态的特征量,使用发电机组理论风速功率曲线与实际输出功率的缺额来描述其运行状态。以关键部件的特征量为输入,风电机组的风险程度为输出,建立概率神经网络模型,通过实例仿真可以看到模型的预测分类效果较好,应用该方法对风电机组的风险状态能进行较好的评估,并为运维检修提供参考。

关 键 词:集中控制中心  风电机组  风险评估  概率神经网络
收稿时间:2019/5/11 0:00:00
修稿时间:2019/6/8 0:00:00

Risk Assessment of Centralized Control Wind Farm Sub Station Based on Probabilistic Neural Network
LI Wentian,JIAO Yingle,YANG Zilong,CHENG Lu and MO Fengyuan.Risk Assessment of Centralized Control Wind Farm Sub Station Based on Probabilistic Neural Network[J].Electrical Measurement & Instrumentation,2019,56(17):76-81.
Authors:LI Wentian  JIAO Yingle  YANG Zilong  CHENG Lu and MO Fengyuan
Affiliation:Datang Henan clean energy Co,Ltd,Datang Henan clean energy Co,Ltd,Datang Henan clean energy Co,Ltd,Datang Henan clean energy Co,Ltd,School of Electrical Engineering and Automation,Wuhan University
Abstract:Currently the risk assessment methods of wind turbines are mostly based on a key component to analyze the overall operation of the wind turbine. Due to the strong coupling effect of the key components, the influence of each component to the wind turbine must be considered. In order to maintain and repair the wind turbine better, this paper takes the historical data of the wind turbine as the basis, carries on the risk assessment, through the construction of the centralized control center of the wind farm, and establishes the data model to collect the operating data of the wind turbine, and extract the key parts of the wind turbine. The characteristic quantities of the state are described by using the theory of generator set, the wind speed power curve and the actual output power vacancy to describe its running state. With the input of the characteristic quantity of the key components, the risk degree of the wind turbine is the output, the probabilistic neural network model is set up. The prediction classification effect of the model can be seen through the example simulation. This method can be used to evaluate the risk state of the wind turbine well and provide reference for the maintenance and maintenance of the operation and maintenance.
Keywords:Centralized control center  Wind turbine  Risk assessment  Probabilistic neural network
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