1. bookTom 26 (2022): Zeszyt 1 (January 2022)
Informacje o czasopiśmie
Pierwsze wydanie
26 Mar 2010
Częstotliwość wydawania
2 razy w roku
access type Otwarty dostęp

Optimal Energy Management in a Smart Micro Grid with Demand Side Participation

Data publikacji: 12 May 2022
Tom & Zeszyt: Tom 26 (2022) - Zeszyt 1 (January 2022)
Zakres stron: 228 - 239
Informacje o czasopiśmie
Pierwsze wydanie
26 Mar 2010
Częstotliwość wydawania
2 razy w roku

The energy management in energy systems is the main solution for energy companies in order to provide minimization of the energy generation costs and emission polluting. In this work, a multi-criteria optimization model is implemented for minimizing the generation cost and emission in a smart micro grid (SMG) at day-ahead planning. In this modelling, the demand side participates in optimal energy management through two strategies such as demand shifting and onsite generation by the energy storage system (ESS). The optimal participation of demand side is modelled based on energy price in energy market. Implementation of the proposed approach in GAMS software is done, and weight sum method (WSM) is employed for solving multi-criteria optimization. The desired optimal solution of multi-criteria objectives is found via the max-min fuzzy procedure. Finally, confirmation of the proposed approach is analysed by numerical simulation in two case studies.


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