基于教学的优化解决经济和排放调度问题

S. Rani, Subhajit Roy, Kuntal Bhattacharjee, A. Bhattacharya
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引用次数: 7

摘要

本文提出了一种基于教学学习算法(TLBO)的现代技术来解决多目标经济和排放负荷调度问题。考虑了氮氧化物等污染物的排放、电力需求均衡约束和运行极限约束。本文提出了一种基于种群的进化算法TLBO来寻找最优解。TLBO有两个不同的阶段:教师阶段和学习者阶段。TLBO使用总体的平均值来更新解决方案。由于没有需要调优的参数,与其他优化技术相比,TLBO的操作更简单。为此,本文在IEEE 30-bus 6发电机系统和10发电机系统上对基于教学的优化(TLBO)进行了高效的测试,以期在计算鲁棒性上获得高质量的解。仿真结果表明,该方法的性能优于现有的几种优化技术。
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Teaching learning based optimization to solve economic and emission scheduling problems
This paper presents a modern technique called teaching learning based algorithm (TLBO) to solve a multi objective of the economic and emission load dispatch (EELD) problem. The emission of pollutants such as NOx, power demand equality constraint and operating limit constraint are considered here. A recently developed population based evolutionary algorithm TLBO has been implemented to search for the optimum solution. TLBO uses two different phases `Teacher Phase' and `Learner Phase'. TLBO uses the mean value of the population to update the solution. The operation of TLBO is simpler compared to other optimization techniques due to absence of parameters to be tuned. Therefore, in the present paper Teaching-Learning-Based Optimization (TLBO) is tested on IEEE 30-bus 6 generator system and 10 generator system efficiently and effectively in order to achieve superior quality solution in computationally robust way. Simulation results show that the performance of proposed approach is superior compared to several already existing optimization techniques.
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