saeid qaeini

@nicico.com

national iranian copper industries co.



              

https://researchid.co/saeid.q

RESEARCH, TEACHING, or OTHER INTERESTS

Electrical and Electronic Engineering

3

Scopus Publications

Scopus Publications

  • Optimal Planning of CHP-based Microgrids Considering DERs and Demand Response Programs
    Saeid Qaeini, Mehrdad S. Nazar, Miadreza Shafie-khah, Gerardo J. Osorio, and Joao P. S. Catalao

    IEEE
    This work addresses a stochastic framework for optimal operation and long-term expansion planning of combined heat and power based microgrid as a part of an active distributing system. The microgrid utilizes renewable energy sources, electricity and heat generation units, energy storage systems, and demand response programs. The proposed model determines the optimal location and capacity of the electrical and thermal facilities, and it considers the impact of renewable energy sources and demand response on the expansion-planning problem. A stochastic mixed-integer linear programming formulation is utilized to minimize the investment and operation costs of system for five years. To evaluate the effectiveness of the proposed model, the algorithm is assessed for the 9-bus system and the 33-bus IEEE test systems. The results demonstrate that the utilization of the proposed algorithm reduces the operational cost and increases system revenues.

  • Combined heat and power units and network expansion planning considering distributed energy resources and demand response programs
    Saeed Qaeini, Mehrdad Setayesh Nazar, Farid Varasteh, Miadreza Shafie-khah, and João P.S. Catalão

    Elsevier BV

  • Optimal expansion planning of active distribution system considering coordinated bidding of downward active microgrids and demand response providers
    Saeed Qaeini, Mehrdad Setayesh Nazar, Morteza Yousefian, Alireza Heidari, Miadreza Shafie‐khah, and João P.S. Catalão

    Institution of Engineering and Technology (IET)
    This paper addresses a framework for expansion planning of an active distribution network (ADS) that supplies its downward active microgrids (AMGs) and it participates in the upward wholesale market to sell its surplus electricity. The proposed novel model considers the impact of coordinated and uncoordinated bidding of AMGs and demand response providers (DRPs) on the optimal expansion planning. The problem has six sources of uncertainty: upward electricity market prices, AMGs location and time of installation, AMGs power generation/consumption, ADS intermittent power generations, DRP biddings, and the ADS system contingencies. The model uses the conditional value at risk (CVaR) criterion in order to handle the trading risks of ADS with the wholesale market. The proposed formulation integrates the deterministic and stochastic parameters of the risk-based expansion planning of ADS that is rare in the literature on this field. The introduced method uses a four-stage optimisation algorithm that uses genetic algorithm, CPLEX and DICOPT solvers. The proposed method is applied to the 18-bus and 33-bus test systems to assess the proposed algorithm. The proposed method reduces the aggregated expansion planning costs for the 18-bus and 33-bus system about 44.04% and 11.82% with respect to the uncoordinated bidding of AMGs/DRPs costs, respectively.