Abstract

The close interaction between the electricity market and the end-users can assist the demand response (DR) aggregator in handling and managing various uncertain parameters simultaneously to reduce their effect on the aggregator's operation. As the DR aggregator's main responsibility is to aggregate the obtained DR from individual consumers and trade it into the wholesale market. Another responsibility of the aggregator is proposing the DR programs (DRPs) to the end-users. This article proposes a model to handle these uncertainties through the development of a novel hybrid stochastic-robust optimization approach that incorporates the uncertainties around wholesale market prices and the participation rate of consumers. The behavior of the consumers engaging in DRPs is addressed through stochastic programming. Additionally, the volatility of the electricity market prices is modeled through a robust optimization method. Two DRPs are considered in this model to include both time-based and incentive-based DRPs, i.e., time-of-use and incentive-based DR program to study three sectors of consumers, namely industrial, commercial, and residential consumers. An energy storage system is also assumed to be operated by the aggregator to maximize its profit. The proposed mixed-integer linear hybrid stochastic-robust model improves the evaluation of DR aggregator's scheduling for the probable worst-case scenario. Finally, to demonstrate the effectiveness of the proposed approach, the model is thoroughly simulated in a real case study.

Highlights

  • The data and the test system assumptions are introduced and explained in detail. This problem is formulated as a MILP model and the CPLEX solver in the general algebraic modeling system (GAMS) programming environment was used to obtain the optimal solution

  • When Γ = 0, it means that the robust impact is not considered and the results shown in this case are the same as when only stochastic programming is taken into account

  • A hybrid stochastic-robust model is proposed in this article to provide a better analysis for the demand response (DR) aggregator in the evaluation of adverse scenarios during the scheduling of DR programs (DRPs) for the enduser

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Summary

Background and Motivation

T HE power system has become increasingly dependent on the active participation by consumers as a result of the sharp increase in the use of distributed energy resources. The two main categories of DRPs are price-based and incentive-based DRPs. Since offering several DRPs encourages consumers to participate more actively and this leads to acquiring more DR potential for the aggregator to maximize the total profit through trading in the wholesale energy market. Two main sources of uncertainties exist, the behavior of the consumers in participation in DRPs and the electricity market prices. Another responsibility of the aggregator is proposing the DRPs to the end-users. The aggregator usually seeks to maximize its profit or minimize its costs from trading the obtained DR in the wholesale market [4] Addressing these challenges is the main motivations in this article

Literature Review
DR Trading Framework
Mathematical Problem Formulation
Data Preparation
Data Assumptions
Simulation and Result Discussion
CONCLUSION
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