Abstract
The problem of optimal siting and sizing of distribution static compensators (STATCOMs) is addressed in this research from the point of view of exact mathematical optimization. The exact mixed-integer nonlinear programming model (MINLP) is decoupled into two convex optimization sub-problems, named the location problem and the sizing problem. The location problem is addressed by relaxing the exact MINLP model, assuming that all the voltages are equal to 1∠0∘, which allows obtaining a mixed-integer quadratic programming model as a function of the active and reactive power flows. The solution of this model provides the best set of nodes to locate all the STATCOMs. When all the nodes are selected, it solves the optimal reactive power problem through a second-order cone programming relaxation of the exact optimal power flow problem; the solution of the SOCP model provides the optimal sizes of the STATCOMs. Finally, it refines the exact objective function value due to the intrinsic non-convexities associated with the costs of the STATCOMs that were relaxed through the application of Taylor’s series expansion in the location and sizing stages. The numerical results in the IEEE 33- and 69-bus systems demonstrate the effectiveness and robustness of the proposed optimization problem when compared with large-scale MINLP solvers in GAMS and the discrete-continuous version of the vortex search algorithm (DCVSA) recently reported in the current literature. With respect to the benchmark cases of the test feeders, the proposed approach reaches the best reductions with 14.17% and 15.79% in the annual operative costs, which improves the solutions of the DCVSA, which are 13.71% and 15.30%, respectively.
Highlights
Electrical distribution networks represent the largest portion of power systems, which are entrusted with providing electrical energy from a transmission/sub-transmission substation to all end-users at medium- and low-voltage levels [1,2]
Unlike aforementioned works regarding the optimal siting and dimensioning of STATCOMs in distribution networks, in this research, we propose a new optimization methodology based on mixed-integer convex optimization that decouples the location problem from the sizing problem
In the problem of optimal sizing, we propose a mixed-integer quadratic that decides the best set of nodes for locating STATCOMs, and the sizing problem is solved in the mixed-integer nonlinear programming (MINLP) model (1)–(13) by reducing it to an NLP equivalent
Summary
Electrical distribution networks represent the largest portion of power systems, which are entrusted with providing electrical energy from a transmission/sub-transmission substation to all end-users at medium- and low-voltage levels [1,2]. In the case of batteries, these devices help with the total energy losses reduction Their investment costs are bigger when compared with shunt reactive power compensation; the main application of the batteries is to extend the usability of the renewables in periods of time with high demand and low generation [18]. STATCOMs are excellent devices to reduce the amount of grid energy losses costs, with the main advantage that these can inject variable reactive power as a function of the grid load behavior, even if these are more expensive that the capacitor banks; these allow important improvements in the total annual grid operation costs These devices present useful life times of about 25 years, with minimum maintenance costs, which make these appropriate devices for improving the grid performance regarding energy losses and voltage profiles [19]
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