Load flow Jacobian matrix robust estimation method with consideration to sparsity for intelligent power distribution network

A smart distribution network and robust estimation technology, which is applied in the direction of AC networks, circuit devices, and AC network circuits with the same frequency from different sources, can solve the problem of unavailable estimation results, bad data in measurement data, and estimation results. Deviating from the true value and other issues to achieve the effects of avoiding adverse effects, improving robustness, and ensuring accuracy

Active Publication Date: 2018-08-28
TIANJIN UNIV +1
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Problems solved by technology

However, the least squares estimation is highly sensitive to bad data, if the measurement data contains bad data, it will cause the estimation results to seriously deviate from the true value
Although high-precision measurement data can be obtained through the synchro...

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  • Load flow Jacobian matrix robust estimation method with consideration to sparsity for intelligent power distribution network
  • Load flow Jacobian matrix robust estimation method with consideration to sparsity for intelligent power distribution network
  • Load flow Jacobian matrix robust estimation method with consideration to sparsity for intelligent power distribution network

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[0117] First enter the IEEE33 node example network topology connection relationship such as figure 2 As shown, node 0 is a balanced node, and other nodes 1 to 32 are PQ nodes. The reference capacity of the system is 1MVA, and the reference voltage is 12.66kV. The current power measurement of each PQ node is shown in Table 1. The conservative estimate of the maximum degree of the input network is 4, the standard deviation of the analog measurement power change and the error random number are set to 0.01 and 0.025%, and the number of measurement groups is set to 30, 35, 40, 45, 50, 55 , 60. Use the following formula to calculate the error of the Jacobian matrix and the voltage power sensitivity matrix.

[0118]

[0119] Where Respectively represent the estimated value of the Jacobian matrix elements, J i,j Is the theoretical value of the Jacobian matrix element.

[0120] Use the following formula to calculate the estimation error of the ith row of the Jacobian matrix. When the e...

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Abstract

The invention discloses a load flow Jacobian matrix robust estimation method with the consideration to sparsity for an intelligent power distribution network, and the method comprises the following steps: 1) acquiring the number of nodes of the distribution network and numbering the nodes; 2) obtaining the measurement data of a synchronous phasor measurement device; 3) constructing a sensing matrix, and setting the line number of the load flow Jacobian matrix as m=1; 4) solving a least squares solution as an estimated solution; 5) switching to step 8) if an iteration termination condition is established, or else switching to step 6); 6) solving a minimized correlation entropy model as an estimated solution; 7) switching to step 8) if the iteration termination condition is established, or else updating the column number index set of the sensing matrix, and returning to step 6); 8) determining whether to complete the estimation of all rows of the Jacobian matrix or not: outputting an estimation result if the estimation of all rows of the Jacobian matrix is completed or else supposing m=m+1, and returning to step 4). The method effectively avoids the adverse impact on an estimation result from bad data in measurement while employing the sparsity of the load flow Jacobian matrix, and still can guarantee the estimation precision when the measurement data contains bad data.

Description

Technical field [0001] The invention relates to a method for estimating power flow Jacobian matrix of distribution network. In particular, it relates to a robust estimation method of the Jacobian matrix power flow of smart distribution network considering sparsity. Background technique [0002] Large-scale renewable energy is connected to the distribution network, and the randomness and volatility of its output put forward higher requirements for the operation monitoring and control of the distribution network. In order to improve the level of new energy consumption in the distribution network, the traditional distribution network has gradually developed into an intelligent distribution network. The power flow Jacobian matrix is ​​an important parameter for analyzing the operation status of the distribution network and optimizing the control of the distribution network. The accurate acquisition of the tidal current Jacobian matrix is ​​an important prerequisite and basis for the...

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Application Information

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IPC IPC(8): H02J3/06
CPCH02J3/06H02J2203/20
Inventor 李鹏宿洪智王成山孔祥玉郭晓斌于力马溪原徐全白浩
Owner TIANJIN UNIV
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