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Quantifying the thermal damping effect in underground vertical shafts using the nonlinear autoregressive with external input(NARX) algorithm 被引量:9
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作者 Pedram Roghanchi Karoly C.Kocsis 《International Journal of Mining Science and Technology》 SCIE EI CSCD 2019年第2期255-262,共8页
As air descends the intake shaft, its infrastructure, lining and the strata will emit heat during the night when the intake air is cool and, on the contrary, will absorb heat during the day when the temperature of the... As air descends the intake shaft, its infrastructure, lining and the strata will emit heat during the night when the intake air is cool and, on the contrary, will absorb heat during the day when the temperature of the air becomes greater than that of the strata. This cyclic phenomenon, also known as the "thermal damping effect" will continue throughout the year reducing the effect of surface air temperature variation. The objective of this paper is to quantify the thermal damping effect in vertical underground airways. A nonlinear autoregressive time series with external input(NARX) algorithm was used as a novel method to predict the dry-bulb temperature(Td) at the bottom of intake shafts as a function of surface air temperature. Analyses demonstrated that the artificial neural network(ANN) model could accurately predict the temperature at the bottom of a shaft. Furthermore, an attempt was made to quantify typical "damping coefficient" for both production and ventilation shafts through simple linear regression models. Comparisons between the collected climatic data and the regression-based predictions show that a simple linear regression model provides an acceptable accuracy when predicting the Tdat the bottom of intake shafts. 展开更多
关键词 UNDERGROUND mining Vertical openings THERMAL damping effect Artificial neural network nonlinear autoregressive with external input(NARX)
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Neural Network Based Adaptive Tracking Control for a Class of Pure Feedback Nonlinear Systems With Input Saturation 被引量:7
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作者 Nassira Zerari Mohamed Chemachema Najib Essounbouli 《IEEE/CAA Journal of Automatica Sinica》 EI CSCD 2019年第1期278-290,共13页
In this paper, an adaptive neural networks(NNs)tracking controller is proposed for a class of single-input/singleoutput(SISO) non-affine pure-feedback non-linear systems with input saturation. In the proposed approach... In this paper, an adaptive neural networks(NNs)tracking controller is proposed for a class of single-input/singleoutput(SISO) non-affine pure-feedback non-linear systems with input saturation. In the proposed approach, the original input saturated nonlinear system is augmented by a low pass filter.Then, new system states are introduced to implement states transformation of the augmented model. The resulting new model in affine Brunovsky form permits direct and simpler controller design by avoiding back-stepping technique and its complexity growing as done in existing methods in the literature.In controller design of the proposed approach, a state observer,based on the strictly positive real(SPR) theory, is introduced and designed to estimate the new system states, and only two neural networks are used to approximate the uncertain nonlinearities and compensate for the saturation nonlinearity of actuator. The proposed approach can not only provide a simple and effective way for construction of the controller in adaptive neural networks control of non-affine systems with input saturation, but also guarantee the tracking performance and the boundedness of all the signals in the closed-loop system. The stability of the control system is investigated by using the Lyapunov theory. Simulation examples are presented to show the effectiveness of the proposed controller. 展开更多
关键词 Adaptive control input SATURATION neural networks systems (NNs) nonlinear pure-feedback
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Dimensionality Reduction with Input Training Neural Network and Its Application in Chemical Process Modelling 被引量:8
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作者 朱群雄 李澄非 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2006年第5期597-603,共7页
Many applications of principal component analysis (PCA) can be found in dimensionality reduction. But linear PCA method is not well suitable for nonlinear chemical processes. A new PCA method based on im-proved input ... Many applications of principal component analysis (PCA) can be found in dimensionality reduction. But linear PCA method is not well suitable for nonlinear chemical processes. A new PCA method based on im-proved input training neural network (IT-NN) is proposed for the nonlinear system modelling in this paper. Mo-mentum factor and adaptive learning rate are introduced into learning algorithm to improve the training speed of IT-NN. Contrasting to the auto-associative neural network (ANN), IT-NN has less hidden layers and higher training speed. The effectiveness is illustrated through a comparison of IT-NN with linear PCA and ANN with experiments. Moreover, the IT-NN is combined with RBF neural network (RBF-NN) to model the yields of ethylene and propyl-ene in the naphtha pyrolysis system. From the illustrative example and practical application, IT-NN combined with RBF-NN is an effective method of nonlinear chemical process modelling. 展开更多
关键词 chemical process modelling input training neural network nonlinear principal component analysis naphtha pyrolysis
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Nonlinear Systems Identification via an Input-Output Model Based on a Feedforward Neural Network
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作者 O. L. Shuai South China University of Technology, Gungzhou, 510641, P.R. China S. C. Zhou S. K. Tso T. T. Wong T.P. Leung The Hong Kong Polytechnic University, HungHom, Kowloon, HK 《International Journal of Plant Engineering and Management》 1997年第4期45-50,共6页
This paper develops a feedforward neural network based input output model for a general unknown nonlinear dynamic system identification when only the inputs and outputs are accessible observations. In the developed m... This paper develops a feedforward neural network based input output model for a general unknown nonlinear dynamic system identification when only the inputs and outputs are accessible observations. In the developed model, the size of the input space is directly related to the system order. By monitoring the identification error characteristic curve, we are able to determine the system order and subsequently an appropriate network structure for systems identification. Simulation results are promising and show that generic nonlinear systems can be identified, different cases of the same system can also be discriminated by our model. 展开更多
关键词 nonlinear dynamic systems identification neural networks based input Output Model identification error characteristic curve
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Adaptive Backstepping Sliding Mode Control for Nonlinear Systems with Input Saturation 被引量:5
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作者 ZHANG Hongmei ZHANG Guoshan 《Transactions of Tianjin University》 EI CAS 2012年第1期46-51,共6页
An adaptive backstepping sliding mode control is proposed for a class of uncertain nonlinear systems with input saturation.A command filtered approach is used to prevent input saturation from destroying the adaptive c... An adaptive backstepping sliding mode control is proposed for a class of uncertain nonlinear systems with input saturation.A command filtered approach is used to prevent input saturation from destroying the adaptive capabilities of neural networks (NNs).The control law and adaptive updating laws of NNs are derived in the sense of Lyapunov function,so the stability can be guaranteed even under the input saturation.The proposed control law is robust against the disturbance,and it can also eliminate the impact of input saturation.Simulation results indicate that the proposed controller has a good performance. 展开更多
关键词 nonlinear system input saturation adaptive backstepping control sliding mode control neural network
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Optimal Neuro-Control Strategy for Nonlinear Systems With Asymmetric Input Constraints 被引量:6
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作者 Xiong Yang Bo Zhao 《IEEE/CAA Journal of Automatica Sinica》 EI CSCD 2020年第2期575-583,共9页
In this paper,we present an optimal neuro-control scheme for continuous-time(CT)nonlinear systems with asymmetric input constraints.Initially,we introduce a discounted cost function for the CT nonlinear systems in ord... In this paper,we present an optimal neuro-control scheme for continuous-time(CT)nonlinear systems with asymmetric input constraints.Initially,we introduce a discounted cost function for the CT nonlinear systems in order to handle the asymmetric input constraints.Then,we develop a Hamilton-Jacobi-Bellman equation(HJBE),which arises in the discounted cost optimal control problem.To obtain the optimal neurocontroller,we utilize a critic neural network(CNN)to solve the HJBE under the framework of reinforcement learning.The CNN's weight vector is tuned via the gradient descent approach.Based on the Lyapunov method,we prove that uniform ultimate boundedness of the CNN's weight vector and the closed-loop system is guaranteed.Finally,we verify the effectiveness of the present optimal neuro-control strategy through performing simulations of two examples. 展开更多
关键词 Adaptive critic designs(ACDs) asymmetric input constraint critic neural network(CNN) nonlinear systems optimal control reinforcement learning(RL)
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Terminal Angular Constraint Integrated Guidance and Control for Flexible Hypersonic Vehicle with Dead-Zone Input Nonlinearity
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作者 Hewei Zhao 《Journal of Beijing Institute of Technology》 EI CAS 2020年第4期489-503,共15页
This paper presents an integrated guidance and control model for a flexible hypersonic vehicle with terminal angular constraints.The integrated guidance and control model is bounded and the dead-zone input nonlinearit... This paper presents an integrated guidance and control model for a flexible hypersonic vehicle with terminal angular constraints.The integrated guidance and control model is bounded and the dead-zone input nonlinearity is considered in the system dynamics.The line of sight angle,line of sight angle rate,attack angle and pitch rate are involved in the integrated guidance and control system.The controller is designed with a backstepping method,in which a first order filter is employed to avoid the differential explosion.The full tuned radial basis function(RBF)neural network(NN)is used to approximate the system dynamics with robust item coping with the reconstruction errors,the exactitude model requirement is reduced in the controller design.In the last step of backstepping method design,the adaptive control with Nussbaum function is used for the unknown dynamics with a time-varying control gain function.The uniform ultimate boundedness stability of the control system is proved.The simulation results validate the effectiveness of the controller design. 展开更多
关键词 hypersonic vehicle terminal angular constraint dead-zone input nonlinearity full tuned radial basis function(RBF)neural network(NN) integrated guidance and control
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Synthesization of high-capacity auto-associative memories using complex-valued neural networks 被引量:1
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作者 黄玉娇 汪晓妍 +1 位作者 龙海霞 杨旭华 《Chinese Physics B》 SCIE EI CAS CSCD 2016年第12期194-201,共8页
In this paper, a novel design procedure is proposed for synthesizing high-capacity auto-associative memories based on complex-valued neural networks with real-imaginary-type activation functions and constant delays. S... In this paper, a novel design procedure is proposed for synthesizing high-capacity auto-associative memories based on complex-valued neural networks with real-imaginary-type activation functions and constant delays. Stability criteria dependent on external inputs of neural networks are derived. The designed networks can retrieve the stored patterns by external inputs rather than initial conditions. The derivation can memorize the desired patterns with lower-dimensional neural networks than real-valued neural networks, and eliminate spurious equilibria of complex-valued neural networks. One numerical example is provided to show the effectiveness and superiority of the presented results. 展开更多
关键词 associative memory complex-valued neural network real-imaginary-type activation function external input
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输入饱和约束下自适应RBF神经网络非线性反馈船舶航向控制
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作者 苏文学 孟祥飞 张强 《上海海事大学学报》 北大核心 2024年第2期14-19,共6页
针对输入饱和约束下外界扰动和模型不确定情况下的船舶航向跟踪控制问题,提出一种自适应径向基函数(radial basis function,RBF)神经网络非线性反馈航向跟踪控制方法。利用自适应RBF神经网络对外界扰动和模型不确定项进行估计,并利用最... 针对输入饱和约束下外界扰动和模型不确定情况下的船舶航向跟踪控制问题,提出一种自适应径向基函数(radial basis function,RBF)神经网络非线性反馈航向跟踪控制方法。利用自适应RBF神经网络对外界扰动和模型不确定项进行估计,并利用最小学习参数法减少计算量;将一个具有误差增益反相关特征的非线性函数嵌入控制律中,设计一种非线性反馈控制方法;利用李雅普诺夫理论证明所有信号在考虑外界扰动和模型不确定的船舶航向跟踪控制系统中都是一致有界的。通过仿真和比较,验证了所设计控制方法的有效性。所做研究可为输入饱和约束下船舶航向跟踪控制提供参考,具有工程实际意义。 展开更多
关键词 船舶航向跟踪 径向基函数(RBF)神经网络 非线性反馈控制 输入饱和
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基于扰动观测器的双容液位系统RBF神经网络滑模控制
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作者 张克 于海生 +1 位作者 孟祥祥 颜克甲 《控制工程》 CSCD 北大核心 2024年第5期954-960,共7页
针对双容液位系统存在的外部扰动、模型参数不确定等问题,设计了一种基于非线性扰动观测器(nonlinear disturbance observer,NDOB)的径向基函数神经网络滑模控制(radial basis function neural network sliding mode control,RNNSMC)方... 针对双容液位系统存在的外部扰动、模型参数不确定等问题,设计了一种基于非线性扰动观测器(nonlinear disturbance observer,NDOB)的径向基函数神经网络滑模控制(radial basis function neural network sliding mode control,RNNSMC)方法。建立双容液位系统数学模型,采用积分型滑模面来提高系统的鲁棒性,在常规积分滑模控制的基础上,通过RBF神经网络(RBF neural network,RNN)对系统的非线性函数进行逼近,并设计非线性扰动观测器估计外部扰动,选用Lyapunov稳定性判据证明了控制策略的闭环稳定性。仿真结果表明,所提控制策略与积分滑模控制(integral sliding mode control,ISMC)方法相比,不需要精确的数学模型,且控制精度更高,抗干扰能力更强。 展开更多
关键词 RBF神经网络 滑模控制 双容液位系统 非线性扰动观测器 外部扰动
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Adaptive Tracking Control for Output-Constrained Switched MIMO Pure-Feedback Nonlinear Systems with Input Saturation 被引量:4
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作者 ZHANG Haoyan ZHAO Xudong +2 位作者 WANG Huanqing NIU Ben XU Ning 《Journal of Systems Science & Complexity》 SCIE EI CSCD 2023年第3期960-984,共25页
In this paper,an adaptive neural tracking control scheme for a class of uncertain switched multi-input multi-output(MIMO)pure-feedback nonlinear systems is proposed.The considered MIMO pure-feedback nonlinear system c... In this paper,an adaptive neural tracking control scheme for a class of uncertain switched multi-input multi-output(MIMO)pure-feedback nonlinear systems is proposed.The considered MIMO pure-feedback nonlinear system contains input and output constraints,completely unknown nonlinear functions and time-varying external disturbances.The unknown nonlinear functions representing system uncertainties are identified via radial basis function neural networks(RBFNNs).Then,the Nussbaum function is utilized to deal with the nonlinearity issue caused by the input saturation.To prevent system outputs from violating prescribed constraints,the barrier Lyapunov functions(BLFs)are introduced.Also,a switched disturbance observer is designed to make the time-varying external disturbances estimable.Based on the backstepping recursive design technique and the Lyapunov stability theory,the developed control method is verified applicable to ensure the boundedness of all signals in the closed-loop system and make the system output track given reference signals well.Finally,a numerical simulation is given to demonstrate the effectiveness of the proposed control method. 展开更多
关键词 Adaptive control input saturation neural networks output constraints switched MIMO pure-feedback nonlinear systems
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Comparative analysis of time series neural network methods for three-way catalyst modeling
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作者 Zhuoxiao Yao Tao Chen +2 位作者 Weipeng Lin Yifang Feng Zengchun Wei 《Energy and AI》 EI 2024年第3期220-232,共13页
Relative Oxygen Level of the Three-Way Catalyst is an important parameter that affects the conversion efficiency of pollutants. ROL is a time-varying hidden state variable that is difficult to directly observe in prac... Relative Oxygen Level of the Three-Way Catalyst is an important parameter that affects the conversion efficiency of pollutants. ROL is a time-varying hidden state variable that is difficult to directly observe in practice. Therefore, it is common to use a method of clearing oxygen storage to simplify control in vehicles. However, this method negates the positive effects of ROL on pollutant treatment. ROL can be indirectly observed through modeling methods. Chemical modeling methods involve extensive computational requirements that cannot meet the demands of practical control. In contrast, time-series neural networks offer computational speed advantages when dealing with similar problems. Therefore, the ROL observation models using both NARX and LSTM neural networks are developed and compared in this study. The results indicate that the NARX neural network exhibits higher precision with a smaller number of neurons and time steps. The LSTM neural network demonstrates greater stability when dealing with data error fluctuations. In practical applications, the ROL model can monitor the TWC operating status and assist in the development of intelligent pollutant aftertreatment control strategies. 展开更多
关键词 Relative Oxygen Level neural network modeling Long short-term memory nonlinear auto-regressive network with eXogenous inputs
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基于非线性自回归神经网络模型对生活垃圾产生量的预测
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作者 朱远超 王晓燕 田光 《四川环境》 2024年第3期149-153,共5页
旨在建立生活垃圾产生量预测模型,更好的预测生活垃圾产生量,以便有序筹划生活垃圾处置设施和构建灵活的收运调配体系。方法采用非线性自回归神经网络(NAR),通过调整延迟阶数和隐含层神经元个数等模型参数,建立基于生活垃圾产生量的历... 旨在建立生活垃圾产生量预测模型,更好的预测生活垃圾产生量,以便有序筹划生活垃圾处置设施和构建灵活的收运调配体系。方法采用非线性自回归神经网络(NAR),通过调整延迟阶数和隐含层神经元个数等模型参数,建立基于生活垃圾产生量的历史时间序列预测模型。实验结果显示,NAR神经网络时间序列模型对于北京市生活垃圾产生量有较好的预测能力,当延迟阶数为5,隐含神经元个数为10时,预测模型测试集的r值为0.9717,平均绝对百分比误差为3.385%,均方根误差为5051.831 t/w,预测模型通过了残差序列非自相关检验,预测效果较好。结论表明针对生活垃圾产生量数据可以开展NAR神经网络模型非线性自回归预测,且可不用考虑其它相关影响因素数据的可获得性,具有一定的便利和实际应用意义。 展开更多
关键词 生活垃圾 预测模型 非线性自回归 神经网络
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基于PSO-NARX网络的司机驾驶行为分析方法
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作者 王心仪 程剑锋 易海旺 《铁道学报》 EI CAS CSCD 北大核心 2024年第9期94-101,共8页
舒适性、准时性、节能性等是衡量高速铁路自动驾驶水平的重要指标,通过不断学习优秀司机的驾驶行为,可以优化列车自动驾驶性能,促进高速铁路自动驾驶技术的发展。基于现场列车运行数据,提出一种带有外部输入的非线性自回归(NARX)网络的... 舒适性、准时性、节能性等是衡量高速铁路自动驾驶水平的重要指标,通过不断学习优秀司机的驾驶行为,可以优化列车自动驾驶性能,促进高速铁路自动驾驶技术的发展。基于现场列车运行数据,提出一种带有外部输入的非线性自回归(NARX)网络的列车司机驾驶行为分析方法。该方法构建了具有时序特征的NARX网络模型,并选取多项影响司机决策的参数作为输入,利用粒子群优化算法(PSO)确定网络的权重和阈值,对下一时刻列车运行情况进行预测。仿真结果表明:本文提出的PSO-NARX网络分析模型的预测效果优于前馈型神经网络(BP)、PSO-BP、NARX,相比于BP算法,迭代步数降低了373步,误差降低了8382%,相关系数达到了90117%。通过此预测,可以优化列车的自动驾驶设备性能指标,保障列车准时的同时,提高了乘客乘坐的舒适性。 展开更多
关键词 高速铁路 非线性自回归神经网络 粒子群优化算法 驾驶行为 辨识
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基于潮汐可变车道技术的智慧停车管理平台建设研究
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作者 钟文宾 《科技资讯》 2024年第9期19-21,共3页
传统的停车管理方式不仅效率低下,而且容易造成数据不准确,无法为决策者提供准确的停车信息。为此研究为提高停车管理智能化水平,基于潮汐可变车道技术并引入非线性自相关神经网络模型对其进行改进,最终设计出一款智慧停车管理平台。经... 传统的停车管理方式不仅效率低下,而且容易造成数据不准确,无法为决策者提供准确的停车信息。为此研究为提高停车管理智能化水平,基于潮汐可变车道技术并引入非线性自相关神经网络模型对其进行改进,最终设计出一款智慧停车管理平台。经实验验证,改进后的潮汐可变道技术其交通车流量预测的平均误差为3.8%,在交通高峰期间可以准确预测交通流量。智慧停车管理平台投入使用后,解决了实际使用车位数与可用停车位数之间的失衡现象,比使用智慧停车管理平台前增加了20%以上。综上可知,此次研究的智慧管理平台可以准确地分析停车数据并进行准确的预测。 展开更多
关键词 潮汐流 可变车道 智慧停车 城市交通 非线性自回归神经网络
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具有量化输入机械臂系统的预设性能自适应神经网络控制
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作者 楚东港 刘烨 《电子科技》 2024年第12期32-36,共5页
针对具有量化输入的单连杆机械臂系统,文中提出了基于Funnel控制的预设性能自适应神经网络控制方法。不同于传统Funnel控制方案,该方法通过构建新型性能函数可保证系统在预定时间达到预设的性能指标,并且使用径向基神经网络和动态面控... 针对具有量化输入的单连杆机械臂系统,文中提出了基于Funnel控制的预设性能自适应神经网络控制方法。不同于传统Funnel控制方案,该方法通过构建新型性能函数可保证系统在预定时间达到预设的性能指标,并且使用径向基神经网络和动态面控制技术解决了系统中的未知非线性项与传统反步控制方法中的微分爆炸问题。理论分析证明,所提控制方案不仅消除了量化输入引起的负面影响,而且保证了系统的稳定性。通过调节MTLAB仿真实验中的设计参数,实现了跟踪误差的预定时间收敛,验证了所提控制方法的有效性。 展开更多
关键词 自适应控制 动态面控制 Funnel控制 径向基神经网络 预设性能 输入量化 机械臂系统 外部扰动
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A neuro-observer-based optimal control for nonaffine nonlinear systems with control input saturations
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作者 Behzad Farzanegan Mohsen Zamani +1 位作者 Amir Abolfazl Suratgar Mohammad Bagher Menhaj 《Control Theory and Technology》 EI CSCD 2021年第2期283-294,共12页
In this study,an adaptive neuro-observer-based optimal control(ANOPC)policy is introduced for unknown nonaffine nonlinear systems with control input constraints.Hamilton–Jacobi–Bellman(HJB)framework is employed to m... In this study,an adaptive neuro-observer-based optimal control(ANOPC)policy is introduced for unknown nonaffine nonlinear systems with control input constraints.Hamilton–Jacobi–Bellman(HJB)framework is employed to minimize a non-quadratic cost function corresponding to the constrained control input.ANOPC consists of both analytical and algebraic parts.In the analytical part,first,an observer-based neural network(NN)approximates uncertain system dynamics,and then another NN structure solves the HJB equation.In the algebraic part,the optimal control input that does not exceed the saturation bounds is generated.The weights of two NNs associated with observer and controller are simultaneously updated in an online manner.The ultimately uniformly boundedness(UUB)of all signals of the whole closed-loop system is ensured through Lyapunov’s direct method.Finally,two numerical examples are provided to confirm the effectiveness of the proposed control strategy. 展开更多
关键词 input constraints Optimal control neural networks Nonaffine nonlinear systems Reinforcement learning Unknown dynamics
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基于数据分解与NARX优化的滇池COD_(Mn)时间序列预测
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作者 王永顺 崔东文 《人民珠江》 2024年第7期92-100,共9页
高锰酸盐指数(COD_(Mn))是衡量水体受还原性物质污染程度的重要指标之一。为提高COD_(Mn)预测精度,结合小波包变换(WPT)、成功历史智能优化(SHIO)算法和非线性自回归神经网络(NARX),提出WPT-SHIO-NARX COD_(Mn)时间序列预测模型。首先利... 高锰酸盐指数(COD_(Mn))是衡量水体受还原性物质污染程度的重要指标之一。为提高COD_(Mn)预测精度,结合小波包变换(WPT)、成功历史智能优化(SHIO)算法和非线性自回归神经网络(NARX),提出WPT-SHIO-NARX COD_(Mn)时间序列预测模型。首先利用WPT将COD_(Mn)时间序列分解为1个周期项分量和3个波动项分量;然后简要介绍SHIO原理,利用SHIO对NARX输入延时阶数等超参数进行调优;最后基于调优获得的超参数建立WPT-SHIO-NARX模型对COD_(Mn)周期项及波动项分量进行预测,重构后得到最终预测结果,并构建WPT-粒子群优化算法(PSO)-NARX、WPT-遗传算法(GA)-NARX、WPT-NARX、SHIO-NARX、WPT-SHIO-极限学习机(ELM)、WPT-SHIO-BP神经网络模型作对比分析,并以滇池西苑隧道断面、观音山断面2004—2015年逐周COD_(Mn)监测数据对各模型进行验证。结果表明:WPT-SHIO-NARX模型具有较好的预测性能,西苑隧道、观音山在未来1周、未来2周(半月)COD_(Mn)预测的平均绝对百分比误差MAPE分别为0.108%和0.045%、0.151%和0.165%,对未来4周(1月)COD_(Mn)预测的MAPE分别为1.383%、0.809%,对未来8周(2月)COD_(Mn)预测的MAPE分别为6.180%、4.573%,预测精度优于其他对比模型;WPT能将COD_(Mn)时序数据分解为更具规律的子序列分量,提高模型预测精度;SHIO能有效优化NARX超参数,显著提升NARX性能,优化效果优于GA、PSO;NARX网络具有延时和反馈机制,更适用于时间序列预测,其预测效果优于ELM、BP网络。 展开更多
关键词 COD_(Mn)预测 非线性自回归神经网络 成功历史智能优化算法 小波包变换 滇池
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动态驱动神经网络辨识永磁直线同步电动机模型 被引量:7
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作者 吕刚 范瑜 李国国 《控制理论与应用》 EI CAS CSCD 北大核心 2007年第1期99-102,108,共5页
永磁直线同步电动机(PMLSM)模型的建立对研究其稳态特性、动态特性和控制策略都是非常重要的.本文利用动态驱动神经网络对其进行建模,并在代价函数一致的基础上加入残差分析法来辨识模型的阶次,使得神经网络具有自动识别阶次的能力.... 永磁直线同步电动机(PMLSM)模型的建立对研究其稳态特性、动态特性和控制策略都是非常重要的.本文利用动态驱动神经网络对其进行建模,并在代价函数一致的基础上加入残差分析法来辨识模型的阶次,使得神经网络具有自动识别阶次的能力.为了克服神经网络结构依靠人工试凑的不足,使用基于Hession矩阵的修剪法来优化其结构.考虑到改进BP算法(学习速率自适应、动量项的方法)的一些固有缺点,使用NDEKF(基于节点的解耦扩展Kalman滤波器算法)来训练网络.实验证明,混合网络能够准确辨识出试验样机的阶次并且输出结果与实际结果十分接近;同时将NDEKF与改进BP算法进行对比,NDEKF算法具有收敛较快、泛化能力强等特点. 展开更多
关键词 神经网络 永磁直线同步电动机 辨识 混合神经网络 NDEKF
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基于改进小波神经网络的光伏发电系统非线性模型辨识 被引量:12
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作者 郑凌蔚 刘士荣 谢小高 《电网技术》 EI CSCD 北大核心 2011年第10期159-164,共6页
将光伏发电系统看成基于气象参数的非线性黑箱模型,用非线性自回归外推模型对不同天气条件下的光伏发电系统进行辨识。采用了对系统维数不敏感的基于方差分析展开的改进小波神经网络对系统进行非线性自回归外推模型辨识,辨识数据和验证... 将光伏发电系统看成基于气象参数的非线性黑箱模型,用非线性自回归外推模型对不同天气条件下的光伏发电系统进行辨识。采用了对系统维数不敏感的基于方差分析展开的改进小波神经网络对系统进行非线性自回归外推模型辨识,辨识数据和验证数据均取自实际光伏发电系统。实例研究结果表明:与Sigmoid网络函数法、树分割法及基本小波神经网络法相比,基于改进小波神经网络的非线性自回归外推模型能更好地反应各种不同天气条件下光伏发电系统的动态行为;天气波动的剧烈程度对辨识效果影响较大。 展开更多
关键词 光伏发电系统 非线性自回归外推 模型辨识 进小波神经网络 方差分析
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