河海大学学报(自然科学版)
河海大學學報(自然科學版)
하해대학학보(자연과학판)
JOURNAL OF HOHAI UNIVERSITY (NATURAL SCIENCES)
2013年
6期
542-547
,共6页
秦川%顾晓文%王超%鞠平%陈谦
秦川%顧曉文%王超%鞠平%陳謙
진천%고효문%왕초%국평%진겸
参数辨识%蚁群算法%梯度类算法%负荷建模
參數辨識%蟻群算法%梯度類算法%負荷建模
삼수변식%의군산법%제도류산법%부하건모
parameter identification%ant colony algorithm%gradient-based method%load modeling
模拟进化类算法具有全局寻优特性但计算时间过长,而梯度类算法具有很高的局部搜索效率但容易陷入局部最优点。基于模拟进化类算法和梯度类算法的优点提出一种混合优化算法,即以蚁群算法起步,经过一定次数的迭代后切换为梯度算法。提出目标值下降准则和区间收缩准则两种切换算法策略,并且进行对比。针对电力负荷参数辨识,通过仿真算例和实际应用进行测试。结果表明,在保证相同精度的前提下混合优化算法大大提高了计算效率。
模擬進化類算法具有全跼尋優特性但計算時間過長,而梯度類算法具有很高的跼部搜索效率但容易陷入跼部最優點。基于模擬進化類算法和梯度類算法的優點提齣一種混閤優化算法,即以蟻群算法起步,經過一定次數的迭代後切換為梯度算法。提齣目標值下降準則和區間收縮準則兩種切換算法策略,併且進行對比。針對電力負荷參數辨識,通過倣真算例和實際應用進行測試。結果錶明,在保證相同精度的前提下混閤優化算法大大提高瞭計算效率。
모의진화류산법구유전국심우특성단계산시간과장,이제도류산법구유흔고적국부수색효솔단용역함입국부최우점。기우모의진화류산법화제도류산법적우점제출일충혼합우화산법,즉이의군산법기보,경과일정차수적질대후절환위제도산법。제출목표치하강준칙화구간수축준칙량충절환산법책략,병차진행대비。침대전력부하삼수변식,통과방진산례화실제응용진행측시。결과표명,재보증상동정도적전제하혼합우화산법대대제고료계산효솔。
The simulated evolutionary algorithm ( SEA) has a global optimization capability, but it requires too much computing time. In contrast, the traditional gradient-based method ( GBM) is characterized by powerful local search efficiency, but it can be easily trapped in a local optima. In order to combine the advantages of both the SEA and GBM, a hybrid optimization algorithm is proposed in this paper. This method starts with the ant colony algorithm ( ACO);after a certain number of iterations, it switches to the GBM to accelerate the solution procedure. Two switching strategies for the hybrid method, the descent criterion and the interval contraction criterion, are also presented and compared. The hybrid method was applied to the parameter identification of electrical loads. The simulation and practical results show that, in comparison with the ACO, the computational efficiency of the hybrid method can be greatly improved for the same accuracy.