The article presents a multiperiod dispatch optimization model for integrated transmission and distribution networks, including uncertainties from both renewable generations and flexibilities provided by active distribution networks (ADNs). The key highlights and insights are:
The authors propose a novel approximation method for handling multiple joint chance constraints (JCCs) in the dispatch problem. This method solves the over-conservativeness and potential infeasibility issues of the conventional CVaR approximation by using an alternating optimization approach.
The proposed JCC approximation method is further extended to handle multiple data-driven distributionally robust joint chance constraints (DRJCCs), which is more suitable for practical power system applications where the true distribution of uncertain variables is unknown.
The dispatch model considers uncertainties in both renewable generation and the flexibilities of ADNs, which are modeled as multiple DRJCCs with different risk levels assigned to different system components (generators, ADNs, transmission lines).
The asymmetrical modeling of participation factors and reserves is proposed, where ADNs only provide up-reserves to enable a more economically efficient dispatch result.
Numerical simulations on small examples and IEEE test cases demonstrate the superiority and practicality of the proposed uncertainty modeling and approximation method compared to the conventional CVaR approach.
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