机械工程学报
機械工程學報
궤계공정학보
CHINESE JOURNAL OF MECHANICAL ENGINEERING
2015年
1期
176-181
,共6页
约束主导%混合粒子群%模拟退火%低风速%不可行度
約束主導%混閤粒子群%模擬退火%低風速%不可行度
약속주도%혼합입자군%모의퇴화%저풍속%불가행도
dominanted-constraint%hybrid particle swarm%simulated annealing%low wind velocity%infeasibility degree*
为提高叶片在额定风况和低速风况下的功率系数,研究叶片各叶素处的气动外形参数分布。针对风力机通常运行在低风速风况下,而叶片的优化模型很少考虑该因素的影响,建立基于叶素动量理论和 Wilson 理论的带低风速功率系数的非线性约束优化模型。由于在处理约束条件的惩罚函数法中罚因子难以确定,而导致算法过早陷入局部解的早熟现象,提出一种结合可行性约束主导处理方法的混合粒子群算法。该算法基于粒子群优化和模拟退火理论,采用可行性约束主导在退火概率突跳下对不可行约束解进行随机生存选择,使种群保持多样性,从而朝更优方向进化,解决了非线性约束条件难以处理和种群易陷入局部解的问题。以1.5 MW风力机叶片为研究对象,建立非线性约束优化模型,对该算法进行了验证。研究成果表明该方法可以有效地处理优化模型的非线性约束,避免优化过程陷入早熟,提高了叶片在额定风速和低风速区域的功率系数。为非线性约束处理方法的研究提供了一种很好的理论分析途径。
為提高葉片在額定風況和低速風況下的功率繫數,研究葉片各葉素處的氣動外形參數分佈。針對風力機通常運行在低風速風況下,而葉片的優化模型很少攷慮該因素的影響,建立基于葉素動量理論和 Wilson 理論的帶低風速功率繫數的非線性約束優化模型。由于在處理約束條件的懲罰函數法中罰因子難以確定,而導緻算法過早陷入跼部解的早熟現象,提齣一種結閤可行性約束主導處理方法的混閤粒子群算法。該算法基于粒子群優化和模擬退火理論,採用可行性約束主導在退火概率突跳下對不可行約束解進行隨機生存選擇,使種群保持多樣性,從而朝更優方嚮進化,解決瞭非線性約束條件難以處理和種群易陷入跼部解的問題。以1.5 MW風力機葉片為研究對象,建立非線性約束優化模型,對該算法進行瞭驗證。研究成果錶明該方法可以有效地處理優化模型的非線性約束,避免優化過程陷入早熟,提高瞭葉片在額定風速和低風速區域的功率繫數。為非線性約束處理方法的研究提供瞭一種很好的理論分析途徑。
위제고협편재액정풍황화저속풍황하적공솔계수,연구협편각협소처적기동외형삼수분포。침대풍력궤통상운행재저풍속풍황하,이협편적우화모형흔소고필해인소적영향,건립기우협소동량이론화 Wilson 이론적대저풍속공솔계수적비선성약속우화모형。유우재처리약속조건적징벌함수법중벌인자난이학정,이도치산법과조함입국부해적조숙현상,제출일충결합가행성약속주도처리방법적혼합입자군산법。해산법기우입자군우화화모의퇴화이론,채용가행성약속주도재퇴화개솔돌도하대불가행약속해진행수궤생존선택,사충군보지다양성,종이조경우방향진화,해결료비선성약속조건난이처리화충군역함입국부해적문제。이1.5 MW풍력궤협편위연구대상,건립비선성약속우화모형,대해산법진행료험증。연구성과표명해방법가이유효지처리우화모형적비선성약속,피면우화과정함입조숙,제고료협편재액정풍속화저풍속구역적공솔계수。위비선성약속처리방법적연구제공료일충흔호적이론분석도경。
To increase the power coefficient of blade at both rated and low wind conditions, the distribution of aerodynamic shape parameter at each blade element is studied. The wind turbine is typically operated under low wind conditions, however the influence has rarely been considered in blade optimization model. Hence, a nonlinear constrained optimization model with power coefficient under low wind conditions is introduced based on the blade element momentum theory and Wilson theory. Since the penalty factor is difficult to be determined in penalty function method when dealing with constraints, which may lead to prematurity phenomenon that the algorithm falls into local solution, a hybrid particle swarm algorithm combined with feasible dominated-constraint method is brought up. Based on particle swarm optimization theory and simulated annealing theory, the algorithm applies feasible dominated-constraint method to perform random survival selection under drifting annealing probability, which keeps the population diverse and can be evolving in more optimized direction, thus solves the problem that nonlinear constraint is difficult to handle and the population’s tendency to fall into local solution. So as to verify the algorithm, a nonlinear constrained optimization model for the 1.5MW wind turbine blade is established. The results indicate that the method can effectively handle nonlinear constraints, avoid prematurity of the process and increase the power coefficient of blade under rated and low wind conditions. It provides an excellent way of theoretical analysis to handle nonlinear constraints.