Representation of Wind and Load Correlation in Non-Sequential Monte Carlo Reliability Evaluation

Probabilistic reliability evaluation of power systems can be performed by two distinct representations of the system: state space and chronological simulation. In the state space representation, the system states are randomly sampled by non-sequential Monte Carlo simulation (MCS). In the chronological representation, the states are sequentially sampled to simulate system operation by sequential MCS.

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