Optimal Micro-PMU Placement Using Mutual Information Theory in Distribution Networks
Abstract
:1. Introduction
- (1)
- The 2PEM is proposed to solve the stochastic state estimation considering the measurement errors of distribution network caused by DGs and pseudo injection measurements.
- (2)
- The differential entropy of mutual information is proposed to evaluate the uncertainty of network which can be used in the AC power flow mode in distribution level.
- (3)
- The improved IENS is proposed to obtain the optimal μPMU placement for both complete and incomplete observability under the improvement of initial IENS.
2. Mathematical Formulation of Optimal μPMU Placement
2.1. Differential Entropy for Assessing Uncertainty of Network
2.2. Stochastic State Estimation Using Two-Point Estimation Method
- (1)
- Determine the number of uncertain variables of pseudo measurements as n, and the number of certain measurements obtained from PMU and SCADA as .
- (2)
- Set and .
- (3)
- Set , and carry out the following steps until .
- (4)
- Calculate concentrations , locations of concentrations and its probabilities
- (1)
- Run the deterministic state estimation for by using .
- (2)
- Update and
2.3. Information Entropy Evaluation and Node Selection Strategy for μPMU Sets
2.3.1. Information Entropy Evaluation and Node Selection Strategy
- (1)
- Define the set of candidate buses from which to choose for the installation of new μPMU: . The location of new μPMU is selected from the buses in. It is assumed to contain all the buses in the network if there is no mandatory μPMU allocated beforehand. The bus to be installed with new μPMU will be discarded from after the selection of new μPMU.
- (2)
- Define the set of buses for the installation of μPMU as . The buses in would be installed with μPMUs. is null if there is no μPMU allocated beforehand. The bus to be installed with new μPMU will be added into after the selection of new μPMU.
- (3)
- Set the number of μPMUs to be installed in the network as.
- (1)
- Run the following part:
For : (a) Build a new set: where first columns are buses already installed with μPMUs and last column means the lth bus candidate for the location of μPMU. (b) Add μPMU measurements of into initial measurement configuration as new measurement configuration. Then run stochastic state estimation by using 2PEM under lth measurement configuration and calculate its differential entropy using Equation (17). End - (2)
- Find bus k which maximizes the improvement in information gain of differential entropy.Then , excludes bus k from , adds bus k into ,
2.3.2. Selection Rules to Be Noticed
2.3.3. Improved Information Entropy Evaluation and Node Selection Strategy
3. Case Studies
3.1. Optimal Placement for Full Observability by Improved IENS
3.2. Incomplete Observability Analysis
3.3. Effects of Two Rules
3.4. Limitations of the Improved IENS
4. Conclusions
Author Contributions
Funding
Conflicts of Interest
Nomenclature
Sets and Indices | |
The set of candidate buses where the installation of new micro-phasor measurement unit (μPMU) is selected from. | |
The set of buses for the installation of μPMU, the location of new μPMU will be added in this set. | |
The set of buses at th iteration. | |
The set of buses which contains the buses adjacent to bus k on two-bus branches. | |
The line connected between bus i and bus j. | |
The ith bus. | |
The bus k which maximizes the improvement in information gain of differential entropy. | |
The selected bus to be installed with new μPMU in current round. | |
Parameters | |
The standard deviation of variable x. | |
The mean of variable x. | |
Vector of measurements. | |
Error vector of measurements. | |
Variance of ith measurements. | |
The Jacobian matrix. | |
The number of measurements. | |
The covariance matrix of measurements. | |
The block diagonal matrix. | |
The number of iteration in weighted least square (WLS) state estimation. | |
The general rotation matrix. | |
The measurements vector in state estimation. | |
The ith measurement in state estimation. | |
The number of uncertain variables of pseudo measurements. | |
The number of certain measurements obtained from phasor measurement unit (PMU) and supervisory control and data acquisition (SCADA) system. | |
The expectation of state variables vector. | |
The expectation of square of state variables vector. | |
The concentration of measurement at step t. | |
The location of concentration of measurement at step t. | |
The probability of concentration of measurement at step t. | |
The concentration of measurement at step t. | |
The measurements vector at step t. | |
The mean value of , obtained from measurement information. | |
The standard deviation of , obtained from measurement information. | |
The mean value of state variables . | |
The standard deviation of state variables | |
The initial differential entropy of the network. | |
The differential entropy of the network. | |
The number of all buses in the network. | |
The standard deviation of voltage amplitude at bus i. | |
The standard deviation of voltage phase angle at bus i. | |
The number of candidate buses which can be the location for new μPMU. | |
The number of round in the information entropy evaluation and node selection strategy (IENS). | |
The differential entropy of the network at th iteration. | |
The number of μPMUs decided to be installed in the network according to the budget. | |
The number of optimal placement calculated by topological method for network full observability. | |
Variables | |
State variables of network, including magnitude and phasor angle of voltage. | |
The state variables vector in state estimation. | |
Nonlinear function of state variables. | |
I(x) | Differential entropy for the continuous variable x. |
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With FTU Measurements | Without FTU Measurements | |
---|---|---|
Topological method | 45 | 47 |
Improved IENS | 45 | 47 |
Genetic method | 46 | 48 |
Number of μPMUs | 90% Pseudo Measurement Configurations | 80% Pseudo Measurement Configurations | ||
---|---|---|---|---|
Topological Method (Mean) | Improved IENS | Topological Method (Mean) | Improved IENS | |
40 | 90.08% | 97.00% | 65.66% | 88.40% |
35 | 78.93% | 82.50% | 38.26% | 42.40% |
30 | 66.55% | 73.20% | 18.79% | 26.70% |
Method | Optimal μPMU Placement | Tested by Numerical Method |
---|---|---|
Topological method | 2, 4, 6, 9, 15, 16, 20, 22, 24, 28, 29, 31, 32, 37, 39, 41, 43, 46, 48, 52, 54, 56, 59, 61, 64, 66, 68, 71, 75, 79, 83, 85, 88, 90, 92, 94, 96, 98, 101, 104, 107, 109, 111, 114, 122 | observable |
IENS | 2, 14, 68, 53, 61, 77, 106, 41, 27, 90, 9, 55, 15, 79, 24, 111, 48, 122, 82, 94, 65, 37, 16, 99, 70, 46, 75, 96, 20, 30, 101, 103, 51, 59, 114, 6, 124, 121, 19, 58, 123, 109, 88, 5, 28 | unobservable |
Improved IENS | 2, 9, 20, 61, 22, 68, 56, 79, 107, 109, 41, 88, 32, 24, 28, 59, 71, 92, 48, 75, 15, 101, 111, 43, 54, 106, 83, 85, 46, 94, 37, 64, 66, 4, 104, 31, 90, 52, 114, 16, 6, 96, 39, 99, 29 | observable |
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Wu, Z.; Du, X.; Gu, W.; Ling, P.; Liu, J.; Fang, C. Optimal Micro-PMU Placement Using Mutual Information Theory in Distribution Networks. Energies 2018, 11, 1917. https://doi.org/10.3390/en11071917
Wu Z, Du X, Gu W, Ling P, Liu J, Fang C. Optimal Micro-PMU Placement Using Mutual Information Theory in Distribution Networks. Energies. 2018; 11(7):1917. https://doi.org/10.3390/en11071917
Chicago/Turabian StyleWu, Zhi, Xiao Du, Wei Gu, Ping Ling, Jinsong Liu, and Chen Fang. 2018. "Optimal Micro-PMU Placement Using Mutual Information Theory in Distribution Networks" Energies 11, no. 7: 1917. https://doi.org/10.3390/en11071917
APA StyleWu, Z., Du, X., Gu, W., Ling, P., Liu, J., & Fang, C. (2018). Optimal Micro-PMU Placement Using Mutual Information Theory in Distribution Networks. Energies, 11(7), 1917. https://doi.org/10.3390/en11071917