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Modelling and Multi-Objective Optimal Control of Batch Processes Using Recurrent Neuro-fuzzy Networks 被引量:2
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作者 Jie Zhang 《International Journal of Automation and computing》 EI 2006年第1期1-7,共7页
In this paper, the modelling and multi-objective optimal control of batch processes, using a recurrent neuro-fuzzy network, are presented. The recurrent neuro-fuzzy network, forms a "global" nonlinear long-range pre... In this paper, the modelling and multi-objective optimal control of batch processes, using a recurrent neuro-fuzzy network, are presented. The recurrent neuro-fuzzy network, forms a "global" nonlinear long-range prediction model through the fuzzy conjunction of a number of "local" linear dynamic models. Network output is fed back to network input through one or more time delay units, which ensure that predictions from the recurrent neuro-fuzzy network are long-range. In building a recurrent neural network model, process knowledge is used initially to partition the processes non-linear characteristics into several local operating regions, and to aid in the initialisation of corresponding network weights. Process operational data is then used to train the network. Membership functions of the local regimes are identified, and local models are discovered via network training. Based on a recurrent neuro-fuzzy network model, a multi-objective optimal control policy can be obtained. The proposed technique is applied to a fed-batch reactor. 展开更多
关键词 optimal control batch processes neural networks multi-objective optimisation.
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Batch Process Modelling and Optimal Control Based on Neural Network Model 被引量:6
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作者 JieZhang 《自动化学报》 EI CSCD 北大核心 2005年第1期19-31,共13页
This paper presents several neural network based modelling, reliable optimal control, and iterative learning control methods for batch processes. In order to overcome the lack of robustness of a single neural network,... This paper presents several neural network based modelling, reliable optimal control, and iterative learning control methods for batch processes. In order to overcome the lack of robustness of a single neural network, bootstrap aggregated neural networks are used to build reliable data based empirical models. Apart from improving the model generalisation capability, a bootstrap aggregated neural network can also provide model prediction confidence bounds. A reliable optimal control method by incorporating model prediction confidence bounds into the optimisation objective function is presented. A neural network based iterative learning control strategy is presented to overcome the problem due to unknown disturbances and model-plant mismatches. The proposed methods are demonstrated on a simulated batch polymerisation process. 展开更多
关键词 批量处理 神经网络模型 聚合 重复学习控制 最佳控制
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基于多层递归模糊神经网络的间歇过程批次间优化控制
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作者 柳贺 黄道 《华东理工大学学报(自然科学版)》 EI CAS CSCD 北大核心 2008年第5期724-728,739,共6页
针对间歇过程,基于多层递归模糊神经网络和混沌搜索实现了终点产品质量的批次间迭代控制策略,并在此基础上提出了间歇过程温度控制的批次间迭代控制策略。多层递归模糊神经网络被用于间歇过程对象建模,混沌搜索用于过程建模和优化计算... 针对间歇过程,基于多层递归模糊神经网络和混沌搜索实现了终点产品质量的批次间迭代控制策略,并在此基础上提出了间歇过程温度控制的批次间迭代控制策略。多层递归模糊神经网络被用于间歇过程对象建模,混沌搜索用于过程建模和优化计算。由于存在模型误差和未知干扰,基于模型所计算出来的最优控制输入在实际运用到对象上后并不是最优的。利用间歇过程的重复特性,根据以前批次的模型预测误差来修正模型预测,并据此计算下一批次的最优控制输入。随着批次的进行,跟踪误差逐渐减小。仿真实验验证了该方法的有效性。 展开更多
关键词 间歇过程 批次间控制 递归模糊神经网络 混沌搜索 优化
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基于神经网络技术的间歇过程建模与优化控制方法
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作者 冯恩波 俞金寿 蒋慰孙 《华东化工学院学报》 CSCD 1992年第A00期113-118,共6页
将整个间歇生产过程表达成梯形的神经网络群,利用实际操作数据对整个网络群进行学习。同时研究了具有滚动运算特征的在线优化策略,该法完全避免了非线性系统实时辩识和建立优化模型的困难。对发酵生产过程的仿真结果,表明本文方法是有... 将整个间歇生产过程表达成梯形的神经网络群,利用实际操作数据对整个网络群进行学习。同时研究了具有滚动运算特征的在线优化策略,该法完全避免了非线性系统实时辩识和建立优化模型的困难。对发酵生产过程的仿真结果,表明本文方法是有效的。 展开更多
关键词 神经网络 发酵 间歇过程
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