2017
DOI: 10.1016/j.jesit.2016.10.012
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GA-based multi-objective optimization for distributed generations planning with DLMs in distribution power systems

Abstract: Please cite this article in press as: Singh, B., et al., GA-based multi-objective optimization for distributed generations planning with DLMs in distribution power systems. J. Electr. Syst. Inform. Technol. (2016), http://dx. AbstractIn the present scenario of all over world, the planning of distributed generations (DGs) in distribution power systems are very important issues from power system performances viewpoints. The broad categories of different types of DGs on the basis of their power delivering charact… Show more

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Cited by 17 publications
(7 citation statements)
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“…In this article, the IHPSO algorithm and the PSO algorithm are tested by the test functions f 1 (x)~f 4 (x). (2).33 (5).38 (10).21 (4).50 (10).66 (10) (2).38 (10).21 (2).50 (9).66 (9) (12).10(15).11 (15).12 (10).13 (11).14 (15).23 (8).24 (12).25 (11).26 (11).27 (14).28 (15).29 ( (15).9 (15). 10(15).11 (12).12 (7).13 (13).14 (15).23 (8).24 (12).25 (1).27 (7).28 (12 (14).9 (14).…”
Section: Performance Comparison Of Algorithmsmentioning
confidence: 99%
See 1 more Smart Citation
“…In this article, the IHPSO algorithm and the PSO algorithm are tested by the test functions f 1 (x)~f 4 (x). (2).33 (5).38 (10).21 (4).50 (10).66 (10) (2).38 (10).21 (2).50 (9).66 (9) (12).10(15).11 (15).12 (10).13 (11).14 (15).23 (8).24 (12).25 (11).26 (11).27 (14).28 (15).29 ( (15).9 (15). 10(15).11 (12).12 (7).13 (13).14 (15).23 (8).24 (12).25 (1).27 (7).28 (12 (14).9 (14).…”
Section: Performance Comparison Of Algorithmsmentioning
confidence: 99%
“…The work by Kayalvizhi and Vinod 4 builds a multiobjective optimisation model that simultaneously consider power loss minimisation, voltage shift minimisation and cost minimisation, and the validity of the programming model is verified by three examples. The work by Singh et al 5 builds an optimal allocation model for DG with constraints for reactive power optimisation and network reconfiguration. The intelligent heuristic algorithm is used to obtain optimal solution.…”
Section: Introductionmentioning
confidence: 99%
“…summer day load model (SDM) and winter day load model (WDM) loads are adopted in. The real and complex power of the load is considered as constant power in the classical load flow problems, despite, the load may be nonlinear such as industrial load residential and commercial which discussed by models in [25]. The nonlinear dependent voltage load model is represented by exponential function as the following form:…”
Section: Load Modelsmentioning
confidence: 99%
“…In the classical power flow solution, the load is suggested to be fixed power, where α = β = 0. For nonlinear loads representing commercial and residential, the real and complex power components are given in Table 2 [25]. The produced energy of FC is described as follows [26]:…”
Section: Load Modelsmentioning
confidence: 99%
“…They are frequently utilized as a part of physical and numerical issues and are most valuable when it is troublesome or difficult to utilize different methodologies. Monte Carlo strategies are essentially utilized as a part of three particular issue classes: optimization, numerical integration and getting a draws from probability distribution [25].…”
Section: Introductionmentioning
confidence: 99%