平稳工况下电力系统负荷特性参数辨识的内生性问题与工具变量估计方法OA
Endogeneity Issues and Instrumental Variable Estimation Methods for Identifying Load Characteristic Parameters of Power Systems Under Steady-State Conditions
在电力系统平稳工况下,负荷电压指数与频率特性系数的准确辨识对系统稳定性评估与控制具有重要意义.然而,由于负荷内部扰动与系统电压、频率波动往往存在相关性,传统最小二乘法在此情形下易产生显著偏差.为此,引入工具变量(instrumental variable,IV)方法,在内部扰动呈短相关有色噪声特性的假设下,建立了适用于负荷特性参数辨识的统计估计框架,解决了负荷特性参数辨识中的内生性问题.首先剖析了闭环系统中内生性的形成机理及其导致的估计有偏性;其次,构建了基于IV的辨识流程,包括相关性分析、多端口信息引入后的工具变量构造以及基于两阶段最小二乘法的参数估计等步骤,系统分析了IV估计的无偏性与波动性特征,并提出滞后阶数L的选取准则;最后,通过仿真检验了不同IV参数设定对估计结果的影响,并从内生性强度和静动态负荷比例等维度对所提方法的无偏性、波动性进行了系统验证.结果表明,该方法能够在平稳工况和较强内部扰动环境下显著提升负荷特性参数辨识的准确性.
Accurate identification of load voltage exponent and frequency characteristic parameters under steady-state operating condi-tions is essential for the stability assessment and control of power systems.However,since internal load disturbances are often cor-related with system-side voltage and frequency fluctuations,the conventional ordinary least squares(OLS)method may yield significant bias in such scenarios.To address this issue,this paper introduces the instrumental variable(IV)method and under the as-sumption that internal disturbances follow short-range correlated colored noise,establishes a statistical estimation framework for load characteristic parameters identification to resolve the endogeneity problem.Firstly,the formation mechanism of endogeneity in closed-loop systems and the resulting estimation bias are analyzed.Secondly,an IV-based identification procedure is established,which consists of steps such as correlation analysis,instrumental variable construction with multi-port information,and parameter estimation using the two-stage least squares method.The unbiasedness and variability characteristics of IV estimation are systemati-cally analyzed,and criteria for selecting the lag order L are proposed.Finally,simulation studies are carried out to investigate the influence of different IV parameter settings on the estimation results,and the proposed method is validated from multiple perspectives,including endogeneity intensity and the proportion of static versus dynamic load components.The results demonstrate that the proposed method can markedly enhance the accuracy of load characteristic parameters identification under steady-state conditions with strong internal disturbances.
沈沉;周博英
清华大学电机工程与应用电子技术系,北京 100084清华大学电机工程与应用电子技术系,北京 100084
信息技术与安全科学
平稳工况负荷特性参数辨识相关性分析工具变量内生性
steady-state conditionsload characteristic parameters identificationcorrelation analysisinstrumental variablesendogeneity
《南方电网技术》 2026 (4)
4-15,12
国家自然科学基金资助项目(U23B6008). Supported by the National Natural Science Foundation of China(U23B6008).
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