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Relevance vector machines based modelling and optimisation for collaborative control parameter design: a case study

机译:基于相关矢量机的协同控制参数设计建模与优化:案例研究

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摘要

A new collaborative control parameter design strategy is proposed for economic plant control process. The relevance vector machines (RVMs) and genetic algorithms (GAs) are combined to generate the optimal control index table for controllers. More specifically, the probabilistic model based on RVMs is utilised to describe the non-linear behaviours according to the experimental dataset. The evolution-based optimisation model based on GAs is used for collaborative design of the optimum control parameter combinations. A variable-rate fertilising system is presented as an application case for collaborative generation of control index table with the combined accuracy, energy saving and fertilising-consistency optimisation objectives. The experimental results show the effectiveness of the proposed hybrid approach.
机译:针对经济工厂的控制过程,提出了一种新的协同控制参数设计策略。相关矢量机(RVM)和遗传算法(GA)结合在一起,生成控制器的最佳控制指标表。更具体地说,根据实验数据集,基于RVM的概率模型被用来描述非线性行为。基于遗传算法的基于进化的优化模型用于最优控制参数组合的协同设计。提出了一种可变速率施肥系统,作为联合生成精度,节能和施肥一致性优化目标的控制指标表的应用案例。实验结果表明了所提出的混合方法的有效性。

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