TY - JOUR
T1 - Extended mixed integer quadratic programming for simultaneous distributed generation location and network reconfiguration
AU - Tami, Youcef
AU - Sebaa, Karim
AU - Lahdeb, Mohamed
AU - Usta, Omer
AU - Nouri, Hassan
N1 - Publisher Copyright:
© Y. Tami, K. Sebaa, M. Lahdeb, O. Usta, H. Nouri.
PY - 2023
Y1 - 2023
N2 - Introduction. To minimise power loss, maintain the voltage within the acceptable range, and improve power quality in power distribution networks, reconfiguration and optimal distributed generation placement are presented. Power flow analysis and advanced optimization techniques that can handle significant combinatorial problems must be used in distribution network reconfiguration investigations. The optimization approach to be used depends on the size of the distribution network. Our methodology simultaneously addresses two nonlinear discrete optimization problems to construct an intelligent algorithm to identify the best solution. The proposed work is novel in that it the Extended Mixed-Integer Quadratic Programming (EMIQP) technique, a deterministic approach for determining the topology that will effectively minimize power losses in the distribution system by strategically sizing and positioning Distributed Generation (DG) while taking network reconfiguration into account. Using an efficient Quadratic Mixed Integer Programming (QMIP) solver (IBM ®), the resulting optimization problem has a quadratic form. To ascertain the range and impact of various variables, our methodology outperforms cutting-edge algorithms described in the literature in terms of the obtained power loss reduction, according to extensive numerical validation carried out on typical IEEE 33-and 69-bus systems at three different load factors. Practical value. Examining the effectiveness of concurrent reconfiguration and DG allocation versus sole reconfiguration is done using test cases. According to the findings, network reconfiguration along with the installation of a distributed generator in the proper location, at the proper size, with the proper loss level, and with a higher profile, is effective. References 24, table 4, figures 14.
AB - Introduction. To minimise power loss, maintain the voltage within the acceptable range, and improve power quality in power distribution networks, reconfiguration and optimal distributed generation placement are presented. Power flow analysis and advanced optimization techniques that can handle significant combinatorial problems must be used in distribution network reconfiguration investigations. The optimization approach to be used depends on the size of the distribution network. Our methodology simultaneously addresses two nonlinear discrete optimization problems to construct an intelligent algorithm to identify the best solution. The proposed work is novel in that it the Extended Mixed-Integer Quadratic Programming (EMIQP) technique, a deterministic approach for determining the topology that will effectively minimize power losses in the distribution system by strategically sizing and positioning Distributed Generation (DG) while taking network reconfiguration into account. Using an efficient Quadratic Mixed Integer Programming (QMIP) solver (IBM ®), the resulting optimization problem has a quadratic form. To ascertain the range and impact of various variables, our methodology outperforms cutting-edge algorithms described in the literature in terms of the obtained power loss reduction, according to extensive numerical validation carried out on typical IEEE 33-and 69-bus systems at three different load factors. Practical value. Examining the effectiveness of concurrent reconfiguration and DG allocation versus sole reconfiguration is done using test cases. According to the findings, network reconfiguration along with the installation of a distributed generator in the proper location, at the proper size, with the proper loss level, and with a higher profile, is effective. References 24, table 4, figures 14.
KW - active distribution networks
KW - distributed generation
KW - distribution system reconfiguration
KW - mixed-integer quadratic programming
KW - power loss
UR - http://www.scopus.com/inward/record.url?scp=85152086903&partnerID=8YFLogxK
U2 - 10.20998/2074-272X.2023.2.14
DO - 10.20998/2074-272X.2023.2.14
M3 - Article
AN - SCOPUS:85152086903
SN - 2074-272X
VL - 2023
SP - 93
EP - 100
JO - Electrical Engineering and Electromechanics
JF - Electrical Engineering and Electromechanics
IS - 2
ER -