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Parameter Identification Method Based on Mixed-Integer Quadratic Programming and Edge Computing in Power Internet of Things

机译:电力物联网中基于混合整数二次规划和边缘计算的参数辨识方法

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摘要

With the rapid development of power Internet of Things, its scale is becoming larger and larger. Many advanced applications depend on the accuracy of network model and state estimation, and the accuracy of network model and state estimation largely depends on network parameter error. Therefore, a parameter identification and estimation method based on mixed-integer quadratic programming (MIQP) and edge computing is proposed. Firstly, a "cloud-tube-edge-end" architecture of power Internet of Things is proposed, and the edge computing layer collects terminal data and conducts data analysis, which greatly reduces the computing pressure of cloud center. In this architecture, the local state estimation is used to limit the branch with error data in a specific range to prevent the measurement errors in other ranges from affecting the local estimation process. Then, the parameter identification model is transformed into MIQP model, and a penalty factor is introduced into the optimization model to identify the parameter error and measurement error in the process of minimizing the objective function. Finally, data encryption, identity authentication, and other methods are used in edge computing to achieve network security protection, so as to avoid network attacks and information leakage in the process of data transmission. The proposed method is tested and analyzed in IEEE 14-bus test system. The results show that the proposed method can accurately determine and identify the error data in a certain probability in the actual operation of the power grid, which is convenient for the controller to find out the wrong data in time and determine the source of the error data, so as to set a reasonable data value.
机译:随着电力物联网的快速发展,其规模越来越大。许多高级应用依赖于网络模型和状态估计的准确性,而网络模型和状态估计的准确性很大程度上取决于网络参数误差。因此,该文提出一种基于混合整数二次规划(MIQP)和边缘计算的参数辨识与估计方法。首先,提出电力物联网“云-管-边-端”架构,边缘计算层采集终端数据并进行数据分析,大大减轻了云中心的计算压力;在这种架构中,局部状态估计用于将分支的误差数据限制在特定范围内,以防止其他范围的测量误差影响局部估计过程。然后,将参数辨识模型转化为MIQP模型,在优化模型中引入惩罚因子,对目标函数最小化过程中的参数误差和测量误差进行辨识;最后,在边缘计算中采用数据加密、身份认证等方式,实现网络安全防护,避免数据传输过程中的网络攻击和信息泄露。在IEEE 14总线测试系统中对所提方法进行了测试和分析。结果表明,所提方法在电网实际运行中能够以一定概率准确判断和识别误差数据,便于控制器及时发现错误数据,确定误差数据来源,从而设置合理的数据值。

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