计算机工程与应用
計算機工程與應用
계산궤공정여응용
COMPUTER ENGINEERING AND APPLICATIONS
2013年
18期
108-111
,共4页
煤炭消费量%最小二乘支持向量机%粒子群优化算法%鲶鱼效应
煤炭消費量%最小二乘支持嚮量機%粒子群優化算法%鯰魚效應
매탄소비량%최소이승지지향량궤%입자군우화산법%염어효응
coal consumption%Least Squares Support Vector Machine(LSSVM)%Particle Swarm Optimization(PSO)algorithm%catfish effect
针对煤炭消费量的时变性、非平稳性特点,为了提高煤炭消费量预测精度,提出了一种鲶鱼粒子群算法优化最小二乘支持向量机(LSSVM)的煤炭消费量预测模型(CEPSO-LSSVM)。将LSSVM参数编码成粒子位置串,并根据煤炭消费量训练集的交叉验证误差最小作为参数优化目标,通过粒子间信息交流找到最优LSSVM参数,并引入“鲶鱼效应”,保持粒子群的多样性,克服传统粒子群算法的局部最优,根据最优参数建立煤炭消费量预测模型,并采用实际煤炭消费量数据进行仿真测试。结果表明,相对于其他预测模型,CEPSO-LSSVM可以获得更优的LSSVM参数,提高了煤炭消费量预测精度,更加适用于复杂非线性的煤炭消费量预测。
針對煤炭消費量的時變性、非平穩性特點,為瞭提高煤炭消費量預測精度,提齣瞭一種鯰魚粒子群算法優化最小二乘支持嚮量機(LSSVM)的煤炭消費量預測模型(CEPSO-LSSVM)。將LSSVM參數編碼成粒子位置串,併根據煤炭消費量訓練集的交扠驗證誤差最小作為參數優化目標,通過粒子間信息交流找到最優LSSVM參數,併引入“鯰魚效應”,保持粒子群的多樣性,剋服傳統粒子群算法的跼部最優,根據最優參數建立煤炭消費量預測模型,併採用實際煤炭消費量數據進行倣真測試。結果錶明,相對于其他預測模型,CEPSO-LSSVM可以穫得更優的LSSVM參數,提高瞭煤炭消費量預測精度,更加適用于複雜非線性的煤炭消費量預測。
침대매탄소비량적시변성、비평은성특점,위료제고매탄소비량예측정도,제출료일충염어입자군산법우화최소이승지지향량궤(LSSVM)적매탄소비량예측모형(CEPSO-LSSVM)。장LSSVM삼수편마성입자위치천,병근거매탄소비량훈련집적교차험증오차최소작위삼수우화목표,통과입자간신식교류조도최우LSSVM삼수,병인입“염어효응”,보지입자군적다양성,극복전통입자군산법적국부최우,근거최우삼수건립매탄소비량예측모형,병채용실제매탄소비량수거진행방진측시。결과표명,상대우기타예측모형,CEPSO-LSSVM가이획득경우적LSSVM삼수,제고료매탄소비량예측정도,경가괄용우복잡비선성적매탄소비량예측。
The coal consumption has time-varying and nonlinear characteristics. In order to improve the prediction accuracy of coal consumption, a coal consumption prediction model based on Catfish Particle Swarm algorithm and Least Squares Support Vector Machine(CEPSO-LSSVM)is proposed. LSSVM parameter is encoded into the position of the particle, and minimum of the cross validation error of network training set is taken as optimal target, and then the parameters of LSSVM are obtained by the exchange information among particles, and“catfish effect”is introduced to keep the diversity of particle swarm to overcome the local optimum of the traditional particle swarm optimization algorithm, and coal consumption prediction model is built according to the optimum parameters, and the simulation test is carried out on actual coal consumption data. The results show that, compared with other prediction models, the proposed model can get better parameters, and coal consumption prediction accuracy can be improved. It is more suitable for complex coal consumption prediction.