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带有神经网的文字识别系统 被引量:4
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作者 罗四维 《计算机学报》 EI CSCD 北大核心 1991年第1期79-80,F003,共3页
1.引言 神经计算学(Neurocomputing)是近年被神经学工作者、计算机、数学工作者极为重视的一门新兴科学,它将根据当前为止人们所了解到的生物神经的基本原理、结合电子技术和其它物理方法以及数学知识,企图解决现代计算机较难解决的一... 1.引言 神经计算学(Neurocomputing)是近年被神经学工作者、计算机、数学工作者极为重视的一门新兴科学,它将根据当前为止人们所了解到的生物神经的基本原理、结合电子技术和其它物理方法以及数学知识,企图解决现代计算机较难解决的一些信息处理、模式识别等问题。另外也企图通过对实际问题的模拟,反过来认识和发展神经学,解剖学。 在神经计算学中所描述的神经网包括大量的处理单元和联接这些单元的链。 展开更多
关键词 神经 文字识别系统 神经计算学
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Semi-empirical modeling of volumetric efficiency in engines equipped with variable valve timing system 被引量:1
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作者 Mostafa Ghajar Amir Hasan Ka Kaee Behrooz Mashadi 《Journal of Central South University》 SCIE EI CAS CSCD 2016年第12期3132-3142,共11页
Volumetric efficiency and air charge estimation is one of the most demanding tasks in control of today's internal combustion engines.Specifically,using three-way catalytic converter involves strict control of the ... Volumetric efficiency and air charge estimation is one of the most demanding tasks in control of today's internal combustion engines.Specifically,using three-way catalytic converter involves strict control of the air/fuel ratio around the stoichiometric point and hence requires an accurate model for air charge estimation.However,high degrees of complexity and nonlinearity of the gas flow in the internal combustion engine make air charge estimation a challenging task.This is more obvious in engines with variable valve timing systems in which gas flow is more complex and depends on more functional variables.This results in models that are either quite empirical(such as look-up tables),not having interpretability and extrapolation capability,or physically based models which are not appropriate for onboard applications.Solving these problems,a novel semi-empirical model was proposed in this work which only needed engine speed,load,and valves timings for volumetric efficiency prediction.The accuracy and generalizability of the model is shown by its test on numerical and experimental data from three distinct engines.Normalized test errors are 0.0316,0.0152 and 0.24 for the three engines,respectively.Also the performance and complexity of the model were compared with neural networks as typical black box models.While the complexity of the model is less than half of the complexity of neural networks,and its computational cost is approximately 0.12 of that of neural networks and its prediction capability in the considered case studies is usually more.These results show the superiority of the proposed model over conventional black box models such as neural networks in terms of accuracy,generalizability and computational cost. 展开更多
关键词 engine modeling modeling and simulation spark ignition engine volumetric efficiency variable valve timing
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