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CVaR-based retail electricity pricing in day-ahead scheduling of microgrids

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  • Ghasemi, Ahmad
  • Jamshidi Monfared, Houman
  • Loni, Abdolah
  • Marzband, Mousa

Abstract

One of the most important methods for implementing the demand response (DR) schemes is to allocate the time-varying prices to the power demand by consumers. Indeed, the effective implementation of DR programs passes from a successful pricing way of retail electricity. However, the massive influence of renewable energy sources with unpredictable generation in today’s power systems such as Micro-grids has made any planning encounter serious challenges. Therefore, in this paper, a new retail electricity pricing method has been proposed to reduce the effects of risk resulting from the uncertain generation of renewable energy sources and the wholesale electricity market’s hourly estimated prices. To this end, a CVaR (Conditional Value at Risk) optimization framework is used to determine the next day’s energy management planning of Micro-grid and retail electricity prices. Simulation results demonstrate that the use of risk-averse conditions, in comparison with non-risk conditions, results in lessening the standard deviation of optimal retail prices and the expected cost. In more detail, the standard deviation of optimal retail prices and the expected cost is decreased by 29.94% and 24.63%, respectively. Moreover, the results show a 5.92% reduction in the peak value of demand.

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  • Ghasemi, Ahmad & Jamshidi Monfared, Houman & Loni, Abdolah & Marzband, Mousa, 2021. "CVaR-based retail electricity pricing in day-ahead scheduling of microgrids," Energy, Elsevier, vol. 227(C).
  • Handle: RePEc:eee:energy:v:227:y:2021:i:c:s0360544221007787
    DOI: 10.1016/j.energy.2021.120529
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