Fuzzy-based real-coded genetic algorithm for optimizing non-convex environmental economic loss dispatch

IF 0.6 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC
S. Parihar, Nitin Malik
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引用次数: 0

Abstract

A non-convex Environmental Economic Loss Dispatch (NCEELD) is a constrained multi-objective optimization problem that has been solved for assigning generation cost to all the generators of the power network with equality and inequality constraints. The objectives considered for simultaneous optimization are emission, economic load and network loss dispatch. The valve-point loading, prohibiting operating zones and ramp rate limit issues have also been taken into consideration in the generator fuel cost. The tri-objective problem is transformed into a single objective function via the price penalty factor. The NCEELD problem is simultaneously optimized using a fuzzy based real-coded genetic algorithm (GA). The proposed technique determines the best solution from a Pareto optimal solution set based on the highest rank. The efficacy of the projected method has been demonstrated on the IEEE 30-bus network with three and six generating units. The attained results are compared to existing results and found superior in terms of finding the best-compromise solution over other existing methods such as GA, particle swarm optimization, flower pollination algorithm, biogeography-based optimization and differential evolution. The statistical analysis has also been carried out for convex multi-objective problem.
基于模糊的实编码遗传算法优化非凸环境经济损失调度
非凸环境经济损失调度(NCEELD)是在相等约束和不相等约束下,为电网中所有发电机组分配发电成本的约束多目标优化问题。同时优化考虑的目标是排放、经济负荷和网损调度。在发电机燃料成本中,还考虑了阀点负荷、禁止操作区域和斜坡速率限制等问题。通过引入价格惩罚因子,将三目标问题转化为单目标函数。同时利用基于模糊的实数编码遗传算法(GA)对NCEELD问题进行优化。该方法从基于最高秩的Pareto最优解集中确定最优解。投影方法的有效性已在IEEE 30总线网络中得到验证,该网络有3台和6台发电机组。将所得结果与已有结果进行比较,发现在寻找最佳折衷解方面优于其他现有方法,如遗传算法、粒子群优化、花授粉算法、基于生物地理的优化和差分进化。对凸多目标问题进行了统计分析。
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来源期刊
Facta Universitatis-Series Electronics and Energetics
Facta Universitatis-Series Electronics and Energetics ENGINEERING, ELECTRICAL & ELECTRONIC-
自引率
16.70%
发文量
10
审稿时长
20 weeks
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