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Solving optimal power flow problem with stochastic wind-solar-small hydro power using barnacles mating optimizer

机译:使用菱形配合优化器用随机风力 - 太阳小型水力电力解决最优电流问题

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摘要

Optimal Power Flow (OPF) is a complex and challenging problem in power system that includes non-convex and non-linear constrained optimization problems. Due to these features, solving the OPF problem is becoming a well-known area to be solved by researchers for the past decades especially involving with the proper optimizing of the control variables. This issue is vital to be solved in achieving the objectives while maintaining of the stability of the system. In this paper, recent metaheuristic algorithm namely Bamacles Mating Optimizer (BMO) will be used to solve three objective functions of OPF problem viz. (1) cost minimization of the power generation that consists of thermal and stochastic wind-solar-small hydro power generations, (2) power loss minimization, and (3) combined cost and emission minimization of mentioned power generations. To assess the performance of BMO into OPF problem, modified IEEE 30-bus and IEEE 57-bus systems that incorporate the stochastic wind-solar-small hydro power generators will be employed. Statistical studies are performed to show the feasible and effectiveness of BMO compared with other selected metaheuristic algorithms. Based on the obtained results, the BMO has shown the best results for all cases of simulation study. For example, the cost of power generations obtained by BMO for IEEE 30-bus and IEEE 57-bus systems are 789.1248 $/h and 5300.457 $/hr, respectively which 1.45% and 2.2% cost saving per hour compared to the worst results obtained from compared algorithms. The results suggest that BMO performs better compared to the rest of algorithms and demonstrate as effective alternative for the OPF problem solution.
机译:最佳功率流(OPF)是电力系统中的复杂且挑战性的问题,包括非凸和非线性约束优化问题。由于这些功能,解决了OPF问题正在成为过去几十年的研究人员解决的众所周知的区域,特别是涉及正确优化控制变量。在保持系统的稳定性的同时,解决目标是至关重要的。在本文中,最近的成群质算法即沼地交配优化器(BMO)将用于解决OPF问题viz的三个目标函数。 (1)由热和随机风力 - 太阳能小型水力发电组成的发电的成本最小化,(2)功率损耗最小化和(3)提到的发电代理的成本和发射最小化。为了评估BMO进入OPF问题的性能,将采用改进的IEEE 30总线和IEEE 57总线系统,其包含随机风力 - 太阳能小型水力发电机的改造。与其他选定的成群质算法相比,进行统计研究以显示BMO的可行性和有效性。基于所获得的结果,BMO对所有模拟研究的案例显示了最佳结果。例如,由BMO用于IEEE 30-SCAR和IEEE 57-BUS系统获得的电力代的成本分别为789.1248 $ / h和5300.457美元/小时,其分别与所获得的最严重的结果相比每小时1.45%和2.2%的成本节省来自比较算法。结果表明,与其余算法相比,BMO更好地表现为OPF问题解决方案的有效替代方案。

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