计算机工程与应用
計算機工程與應用
계산궤공정여응용
COMPUTER ENGINEERING AND APPLICATIONS
2014年
3期
242-246
,共5页
王楷%薛月菊%陈汉鸣%黄晓琳%孔德运%陈瑶
王楷%薛月菊%陳漢鳴%黃曉琳%孔德運%陳瑤
왕해%설월국%진한명%황효림%공덕운%진요
碳通量%预测%自适应%脊波网络%稀疏%超平面奇异特性
碳通量%預測%自適應%脊波網絡%稀疏%超平麵奇異特性
탄통량%예측%자괄응%척파망락%희소%초평면기이특성
carbon flux%prediction%adaptive%ridgelet network%sparse%hyperplane singularity
碳通量同生态因素之间具有复杂的非线性关系,可以通过生态因素预测碳通量。为提高网络的训练速度和预测精度,针对碳通量数据高维、多样本、非线性、超平面奇异的特点,提出了一种改进的自适应脊波网络预测模型,采用高斯牛顿法调整激励函数的参数,运用矩阵分块法和伪逆矩阵计算脊波网络的权值和阈值。通过实验,比较了改进自适应脊波网络、自适应脊波网络和小波网络的训练收敛速度、隐含层节点个数和预测精度。实验结果表明,提出的预测模型预测精度更高,网络结构更稀疏,训练收敛速度更快。
碳通量同生態因素之間具有複雜的非線性關繫,可以通過生態因素預測碳通量。為提高網絡的訓練速度和預測精度,針對碳通量數據高維、多樣本、非線性、超平麵奇異的特點,提齣瞭一種改進的自適應脊波網絡預測模型,採用高斯牛頓法調整激勵函數的參數,運用矩陣分塊法和偽逆矩陣計算脊波網絡的權值和閾值。通過實驗,比較瞭改進自適應脊波網絡、自適應脊波網絡和小波網絡的訓練收斂速度、隱含層節點箇數和預測精度。實驗結果錶明,提齣的預測模型預測精度更高,網絡結構更稀疏,訓練收斂速度更快。
탄통량동생태인소지간구유복잡적비선성관계,가이통과생태인소예측탄통량。위제고망락적훈련속도화예측정도,침대탄통량수거고유、다양본、비선성、초평면기이적특점,제출료일충개진적자괄응척파망락예측모형,채용고사우돈법조정격려함수적삼수,운용구진분괴법화위역구진계산척파망락적권치화역치。통과실험,비교료개진자괄응척파망락、자괄응척파망락화소파망락적훈련수렴속도、은함층절점개수화예측정도。실험결과표명,제출적예측모형예측정도경고,망락결구경희소,훈련수렴속도경쾌。
Carbon flux can be predicted by various ecological factors, because there is a complex and non-linear relationship between them. To increase network training rate and prediction accuracy and according to high dimension, many samples, non-linear, hyperplane singularity characteristics of carbon flux data, a new prediction model based on modified adaptive ridgelet network is proposed. Parameters in activation function are adjusted by Gauss Newton method, and weights and threshold are calculated by matrix partitioned method and pseudo-inverse matrix. Indexes such as convergence rate, number of hidden layer nodes and prediction accuracy of modified adaptive ridgelet network, adaptive ridgelet network and wavelet network are compared. The experimental results show that prediction model proposed in this paper has higher prediction accuracy, sparser network structure and faster training convergence rate.