Stochastic distribution system operation considering voltage regulation risks in the presence of PV generation
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Institute of Electrical and Electronics Engineers Inc.
Abstract
Variable over voltage, excessive tap counts, and voltage regulator (VR) runaway condition are major operational challenges in distribution network while accommodating generation from photovoltaics (PVs). The conventional approach to achieve voltage control based on offline simulation for voltage set point calculation does not consider forecast errors. In this work, a stochastic optimal voltage control strategy is proposed while considering load and irradiance forecast errors. Stochastic operational risks such as overvoltage and VR runaway are defined through a chance constrained optimization (CCO) problem. This classical formulation to mitigate runaway is further improved by introducing a stochastic index called the Tap Tail Expectation. Operational objectives such as power losses and excessive tap count minimization are considered in the formulation. A sampling approach is proposed to solve the CCO. Along with other voltage control devices, the PV inverter voltage support features are coordinated. The simulation study is performed using a realistic distribution system model and practically measured irradiance to demonstrate the effectiveness of the proposed technique. The proposed approach is a useful operational procedure for distribution system operators. The approach can minimize feeder power losses, avoid voltage violations, and alleviate VR runaway. © 2010-2012 IEEE.
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Keywords
Distribution voltage control, Photovoltaic (pv) forecast errors, Voltage regulator (vr) runaway, Constrained optimization, Forecasting, Photovoltaic cells, Voltage control, Voltage regulators, Chance-constrained optimizations, Conventional approach, Distribution system modeling, Distribution systems, Off-line simulations, Operational challenges, Operational procedures, Stochastic distribution systems, Stochastic systems