Distributed State Estimation of Multi-region Power System based on Consensus Theory

Effective state estimation is critical to the security operation of power systems. With the rapid expansion of interconnected power grids, there are limitations of conventional centralized state estimation methods in terms of heavy and unbalanced communication and computation burdens for the control center. To address these limitations, this paper presents a multi-area state estimation model and afterwards proposes a consensus theory based distributed state estimation solution method. Firstly, considering the nonlinearity of state estimation, the original power system is divided into several non-overlapped subsystems. Correspondingly, the Lagrange multiplier method is adopted to decouple the state estimation equations into a multi-area state estimation model. Secondly, a fully distributed state estimation method based on the consensus algorithm is designed to solve the proposed model. The solution method does not need a centralized coordination system operator, but only requires a simple communication network for exchanging the limited data of boundary state variables and consensus variables among adjacent regions, thus it is quite flexible in terms of communication and computation for state estimation. In the end, the proposed method is tested by the IEEE 14-bus system and the IEEE 118-bus system, and the simulation results verify that the proposed multi-area state estimation model and the distributed solution method are effective for the state estimation of multi-area interconnected power systems.

[1]  Xi Lu,et al.  An Autonomous Real-Time Charging Strategy for Plug-In Electric Vehicles to Regulate Frequency of Distribution System With Fluctuating Wind Generation , 2018, IEEE Transactions on Sustainable Energy.

[2]  H. Poor,et al.  Fully Distributed State Estimation for Wide-Area Monitoring Systems , 2012, IEEE Transactions on Smart Grid.

[3]  Li Li,et al.  Distributed State Estimation Using RSC Coded Smart Grid Communications , 2015, IEEE Access.

[4]  Jiang Wu,et al.  Impact of information security on PMU-based distributed state estimation , 2012, IEEE PES Innovative Smart Grid Technologies.

[5]  Mo-Yuen Chow,et al.  Convergence Analysis of the Incremental Cost Consensus Algorithm Under Different Communication Network Topologies in a Smart Grid , 2012, IEEE Transactions on Power Systems.

[6]  R. Baldick,et al.  State estimation distributed processing [for power systems] , 2000 .

[7]  A. G. Expósito,et al.  Power system state estimation : theory and implementation , 2004 .

[8]  Dae-Hyun Choi,et al.  Distributed multi-area WLS state estimation integrating measurements weight update , 2017 .

[9]  H. Vincent Poor,et al.  Distributed Hybrid Power State Estimation Under PMU Sampling Phase Errors , 2014, IEEE Transactions on Signal Processing.

[10]  Thomas A. Stuart,et al.  A Sensitivity Analysis of Weighted Least Squares State Estimation for Power Systems , 1973 .

[11]  M. Ribbens-Pavella,et al.  A Two-Level Static State Estimator for Electric Power Systems , 1981, IEEE Transactions on Power Apparatus and Systems.

[12]  Mariagrazia Dotoli,et al.  Using the distributed proximal alternating direction method of multipliers for smart grid monitoring , 2017, 2017 13th IEEE Conference on Automation Science and Engineering (CASE).

[13]  George N Korres,et al.  A Distributed Multiarea State Estimation , 2011, IEEE Transactions on Power Systems.

[14]  Changqing Liu,et al.  Minimum-Variance Unbiased Unknown Input and State Estimation for Multi-Agent Systems by Distributed Cooperative Filters , 2018, IEEE Access.

[15]  Na Li,et al.  A fully distributed state estimation using matrix splitting methods , 2015, 2015 American Control Conference (ACC).

[16]  Haibo Zhang,et al.  A Distributed Multi-Control-Center Dynamic Power Flow Algorithm Based on Asynchronous Iteration Scheme , 2018, IEEE Transactions on Power Systems.

[17]  Gabriela Hug,et al.  Distributed State Estimation and Energy Management in Smart Grids: A Consensus${+}$ Innovations Approach , 2014, IEEE Journal of Selected Topics in Signal Processing.

[18]  Steven W. Su,et al.  Modelling the Interconnected Synchronous Generators and its State Estimations , 2018, IEEE Access.

[19]  Hongbin Sun,et al.  A distributed state estimation method for power systems incorporating linear and nonlinear models , 2015 .

[20]  Tomasz Haupt,et al.  Distributed state estimation with PMU using grid computing , 2009, 2009 IEEE Power & Energy Society General Meeting.

[21]  Minyue Fu,et al.  Distributed weighted least-squares estimation with fast convergence for large-scale systems , 2015, 52nd IEEE Conference on Decision and Control.

[22]  Christoforos N. Hadjicostis,et al.  Distributed Stopping for Average Consensus in Digraphs , 2018, IEEE Transactions on Control of Network Systems.

[23]  Yinliang Xu,et al.  Distributed Optimal Resource Management Based on the Consensus Algorithm in a Microgrid , 2015, IEEE Transactions on Industrial Electronics.

[24]  Yu-Ping Tian,et al.  Distributed Kalman Filtering With Finite-Time Max-Consensus Protocol , 2018, IEEE Access.

[25]  Reza Olfati-Saber,et al.  Consensus and Cooperation in Networked Multi-Agent Systems , 2007, Proceedings of the IEEE.