Title :
Probabilistic Risk Assessment of Rotor Angle Instability Using Fuzzy Inference Systems
Author :
Preece, Robin ; Milanovic, Jovica V.
Author_Institution :
Sch. of Electr. & Electron. Eng., Univ. of Manchester, Manchester, UK
Abstract :
This paper proposes a new method for the probabilistic risk assessment of rotor angle instability in power systems using fuzzy inference systems (FISs). The novel two-step approach first models the stochastic uncertainties present within the power system to produced probability density functions (pdfs) for stability indicators. These stability indicators are established for both small and large disturbance rotor angle stability analysis. The pdfs produced are subsequently decomposed into regions based on user-specified threshold values. The outputs from this decomposition are analyzed using fuzzy techniques to complete the risk assessment of instability. The methodology is applied to a multi-area test network into which a VSC-MTDC grid has been embedded to support power transfer from a number of large wind farms. This new combination of probabilistic and fuzzy techniques is shown to provide an effective methodology for quantifying the influence of system uncertainties on the risks of rotor angle stability.
Keywords :
fuzzy reasoning; power system reliability; power system stability; probability; rotors; FIS; PDF; VSC-MTDC grid; disturbance rotor angle stability analysis; fuzzy inference systems; fuzzy techniques; multiarea test network; power systems; power transfer; probabilistic risk assessment; probabilistic techniques; probability density functions; rotor angle instability; stability indicators; stochastic uncertainties; wind farms; Numerical stability; Power system stability; Probabilistic logic; Rotors; Stability criteria; Uncertainty; Fuzzy set theory; VSC-MTDC; large disturbance; risk analysis; rotor angle stability; small disturbance; stochastic uncertainty;
Journal_Title :
Power Systems, IEEE Transactions on
DOI :
10.1109/TPWRS.2014.2352678