2023 IEEE International Conference on Applied Superconductivity and Electromagnetic Devices (ASEMD), Tianjin, China, 27 - 29 October 2023, pp.1-2
Day-ahead trading of electricity has been applied to
ensure the balance between the amount of electricity sold and
bought. Even so, due to the intermittent distributed energy
resources (DERs), the actual condition can be varied
significantly, and forecasting can be costly in order to provide
high accuracy to minimize losses. Hence, this paper proposes a
novel model-based day-ahead peer-to-peer (P2P) energy trading
with regionalized trading prices, which are determined through
time-series clustering. To improve the determination of price
regions, the data parameter is derived from the day-ahead
condition, which is forecasted from network condition, trading
capacity, and trading price of the P2P energy trading. The
performance of the proposed model of day-ahead P2P energy
trading is evaluated with respect to the market operation stability
and optimality.