A tightly coupled GPS ( global positioning system )/SINS ( strap down inertial navigation system) based on a GMDH ( group method of data handling) neural network was presented to solve the problem of degraded ac...A tightly coupled GPS ( global positioning system )/SINS ( strap down inertial navigation system) based on a GMDH ( group method of data handling) neural network was presented to solve the problem of degraded accuracy for less than four visible GPS satellites with poor signal quality. Positions and velocities of the satellites were predicted by a GMDH neural network, and the pseudo ranges and pseudo range rates received by the GPS receiver were simulated to ensure the regular op eration of the GPS/SINS Kalman filter during outages. In the mathematical simulation a tightly cou pled navigation system with a proposed approach has better navigation accuracy during GPS outages, and the anti jamming ability is strengthened for the tightly coupled navigation system.展开更多
The hybrid method composed of clustering and predicting stages is proposed to predict the endpoint phos- phorus content of molten steel in BOF (Basic Oxygen Furnace). At the clustering stage, the weighted K-means is...The hybrid method composed of clustering and predicting stages is proposed to predict the endpoint phos- phorus content of molten steel in BOF (Basic Oxygen Furnace). At the clustering stage, the weighted K-means is performed to generate some clusters with homogeneous data. The weights of factors influencing the target are calcu- lated using EWM (Entropy Weight Method). At the predicting stage, one GMDH (Group Method of Data Handling) polynomial neural network is built for each cluster. And the predictive results from all the GMDH polynomial neural networks are integrated into a whole to be the result for the hybrid method. The hybrid method, GMDH polnomial neural network and BP neural network are employed for a comparison. The results show that the proposed hybrid method is effective in predicting the endpoint phosphorus content of molten steel in BOF. Furthermore, the hybrid method outperforms BP neural network and GMDH polynomial neural network.展开更多
A hybrid GMDH neural network model has been developed in order to predict the partition coefficients of invertase from Baker's yeast. ATPS experiments were carried out changing the molar average mass of PEG(1500–...A hybrid GMDH neural network model has been developed in order to predict the partition coefficients of invertase from Baker's yeast. ATPS experiments were carried out changing the molar average mass of PEG(1500–6000 Da), p H(4.0–7.0), percentage of PEG(10.0–20.0 w/w), percentage of MgSO_4(8.0–16.0 w/w), percentage of the cell homogenate(10.0–20.0 w/w) and the percentage of MnSO_4(0–5.0 w/w) added as cosolute. The network evaluation was carried out comparing the partition coefficients obtained from the hybrid GMDH neural network with the experimental data using different statistical metrics. The hybrid GMDH neural network model showed better fitting(AARD = 32.752%) as well as good generalization capacity of the partition coefficients of the ATPS than the original GMDH network approach and a BPANN model. Therefore hybrid GMDH neural network model appears as a powerful tool for predicting partition coefficients during downstream processing of biomolecules.展开更多
本文提出基于改进自组织方法的GMDH(Group Method of Data Handling)型神经网络并将它应用于混沌预测。一般的GMDH型神经网络的自组织功能是通过给定一个准则阈值来确定或直接给定数值来实现,但GMDH型神经网络的自组织准则的阈值难以合...本文提出基于改进自组织方法的GMDH(Group Method of Data Handling)型神经网络并将它应用于混沌预测。一般的GMDH型神经网络的自组织功能是通过给定一个准则阈值来确定或直接给定数值来实现,但GMDH型神经网络的自组织准则的阈值难以合适确定,由此提出了一种简单的自组织方法来实现真正意义上的自组织功能。这种用改进了的自组织方法所构成的GMDH型神经网络可以应用于混沌时间序列预测。通过仿真实验,证明其预测效果明显比基本的GMDH型神经网络好,即改进GMDH型神经网络优于基本的GMDH型神经网络。展开更多
采用数据分组处理(Group Method of Data Handing,GMDH)的神经网络分类方法,建立4190ZLC船用四冲程增压柴油机性能预测的数学模型.针对船用中速柴油机运行状况,考虑到其影响运行状态的因素,结合实验数据进行4190ZLC船用柴油机性能的预...采用数据分组处理(Group Method of Data Handing,GMDH)的神经网络分类方法,建立4190ZLC船用四冲程增压柴油机性能预测的数学模型.针对船用中速柴油机运行状况,考虑到其影响运行状态的因素,结合实验数据进行4190ZLC船用柴油机性能的预测及仿真分析.该模型解决了神经网络结构较大,计算耗时较长的问题.将该模型与BP(Back-Propagation,BP)前馈神经网络仿真结果进行比较,结果表明其仿真效果好于BP神经网络模型,并且该神经网络能较好地满足柴油机性能预测仿真的需求.展开更多
为预测出菇房内环境性能指标,采用CFD建立菇房模型并通过试验数据验证仿真结果准确性,对比可知温度的平均相对误差为4.9%,引入温度均匀性指标,设计正交试验进行CFD数值模拟,利用模拟数据训练GMDH(group method of data handling,数据处...为预测出菇房内环境性能指标,采用CFD建立菇房模型并通过试验数据验证仿真结果准确性,对比可知温度的平均相对误差为4.9%,引入温度均匀性指标,设计正交试验进行CFD数值模拟,利用模拟数据训练GMDH(group method of data handling,数据处理组合法)型神经网络,最后得出温度均匀性指标的预测模型。分析结果表明,预测值与CFD仿真值相关系数达到0.942 5,平均绝对误差仅为0.042,预测精度较高,为出菇房的进一步优化提供可靠依据。展开更多
文摘A tightly coupled GPS ( global positioning system )/SINS ( strap down inertial navigation system) based on a GMDH ( group method of data handling) neural network was presented to solve the problem of degraded accuracy for less than four visible GPS satellites with poor signal quality. Positions and velocities of the satellites were predicted by a GMDH neural network, and the pseudo ranges and pseudo range rates received by the GPS receiver were simulated to ensure the regular op eration of the GPS/SINS Kalman filter during outages. In the mathematical simulation a tightly cou pled navigation system with a proposed approach has better navigation accuracy during GPS outages, and the anti jamming ability is strengthened for the tightly coupled navigation system.
基金Sponsored by National Key Technology Research and Development in 11th Five Years Plan of China(2006BAE03A07)Fundamental Research Funds for Central University of China(FRF-AS-09-006B)
文摘The hybrid method composed of clustering and predicting stages is proposed to predict the endpoint phos- phorus content of molten steel in BOF (Basic Oxygen Furnace). At the clustering stage, the weighted K-means is performed to generate some clusters with homogeneous data. The weights of factors influencing the target are calcu- lated using EWM (Entropy Weight Method). At the predicting stage, one GMDH (Group Method of Data Handling) polynomial neural network is built for each cluster. And the predictive results from all the GMDH polynomial neural networks are integrated into a whole to be the result for the hybrid method. The hybrid method, GMDH polnomial neural network and BP neural network are employed for a comparison. The results show that the proposed hybrid method is effective in predicting the endpoint phosphorus content of molten steel in BOF. Furthermore, the hybrid method outperforms BP neural network and GMDH polynomial neural network.
基金CAPES and Brazilian National Council of Research (CNPq) (Grant 407684/2013-1) for the financial support
文摘A hybrid GMDH neural network model has been developed in order to predict the partition coefficients of invertase from Baker's yeast. ATPS experiments were carried out changing the molar average mass of PEG(1500–6000 Da), p H(4.0–7.0), percentage of PEG(10.0–20.0 w/w), percentage of MgSO_4(8.0–16.0 w/w), percentage of the cell homogenate(10.0–20.0 w/w) and the percentage of MnSO_4(0–5.0 w/w) added as cosolute. The network evaluation was carried out comparing the partition coefficients obtained from the hybrid GMDH neural network with the experimental data using different statistical metrics. The hybrid GMDH neural network model showed better fitting(AARD = 32.752%) as well as good generalization capacity of the partition coefficients of the ATPS than the original GMDH network approach and a BPANN model. Therefore hybrid GMDH neural network model appears as a powerful tool for predicting partition coefficients during downstream processing of biomolecules.
文摘本文提出基于改进自组织方法的GMDH(Group Method of Data Handling)型神经网络并将它应用于混沌预测。一般的GMDH型神经网络的自组织功能是通过给定一个准则阈值来确定或直接给定数值来实现,但GMDH型神经网络的自组织准则的阈值难以合适确定,由此提出了一种简单的自组织方法来实现真正意义上的自组织功能。这种用改进了的自组织方法所构成的GMDH型神经网络可以应用于混沌时间序列预测。通过仿真实验,证明其预测效果明显比基本的GMDH型神经网络好,即改进GMDH型神经网络优于基本的GMDH型神经网络。
文摘采用数据分组处理(Group Method of Data Handing,GMDH)的神经网络分类方法,建立4190ZLC船用四冲程增压柴油机性能预测的数学模型.针对船用中速柴油机运行状况,考虑到其影响运行状态的因素,结合实验数据进行4190ZLC船用柴油机性能的预测及仿真分析.该模型解决了神经网络结构较大,计算耗时较长的问题.将该模型与BP(Back-Propagation,BP)前馈神经网络仿真结果进行比较,结果表明其仿真效果好于BP神经网络模型,并且该神经网络能较好地满足柴油机性能预测仿真的需求.
文摘为预测出菇房内环境性能指标,采用CFD建立菇房模型并通过试验数据验证仿真结果准确性,对比可知温度的平均相对误差为4.9%,引入温度均匀性指标,设计正交试验进行CFD数值模拟,利用模拟数据训练GMDH(group method of data handling,数据处理组合法)型神经网络,最后得出温度均匀性指标的预测模型。分析结果表明,预测值与CFD仿真值相关系数达到0.942 5,平均绝对误差仅为0.042,预测精度较高,为出菇房的进一步优化提供可靠依据。