DEVELOPMENT OF A HIGH-SPEED ALGORITM OF NEUROLOGICAL CONCLUSION

Siddikov I, D. Yadgarova
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引用次数: 0

Abstract

One of the ways to increase the efficiency of the process of managing continuous dynamic objects is to develop new or improve existing control systems based on modern methods involving the achievements of information technology. The article deals with the creation of highly efficient control algorithms for technological objects, operating in conditions of uncertainty, designed to manage real-life objects. An algorithm is proposed for the structural-parametric adaptation of the PID parameters (proportional-integral-differential) -regulator, which allows to reduce the number of iterations in the learning process of the fuzzy-logical inference algorithm by reducing empty solutions. To determine the empty solutions, hybrid algorithms are used, which include modernized genetic and immune algorithms, which in turn allow you to configure the adaptation parameters of artificial neural network models. A block diagram of an automated control system for executive mechanisms is proposed, which includes a block for adapting the correction of not only parameters, but also the structure of the control system, which allows to reduce the error in the results of training a neuro-fuzzy network from 8 to 1%. The proposed algorithm is simple to implement on microcontrollers, which allows it to be implemented in the tasks of process control in the conditions of information uncertainty in real conditions at the operation stage.
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神经学结论的高速算法开发
提高连续动态对象管理过程效率的方法之一是基于涉及信息技术成果的现代方法开发新的或改进现有的控制系统。本文讨论了在不确定条件下操作的技术对象的高效控制算法的创建,旨在管理现实对象。提出了一种PID参数(比例-积分-微分)调节器的结构参数自适应算法,通过减少空解来减少模糊逻辑推理算法学习过程中的迭代次数。为了确定空解,使用混合算法,其中包括现代化的遗传算法和免疫算法,从而允许您配置人工神经网络模型的自适应参数。提出了一种执行机构自动控制系统的框图,其中包括一个适应参数校正的模块,以及控制系统的结构,它允许将神经模糊网络训练结果的误差从8%减少到1%。该算法在微控制器上实现简单,可以在实际条件下信息不确定条件下的过程控制任务中实现。
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