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Adaptive Chebyshev Neural Network Control for Ventilator Model under the Complex Mine Environment

机译:复杂矿井环境下呼吸机模型的适应性Chebyshev神经网络控制

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Ventilator is important equipment for mines as it safeguards the lives under the shaft and ensures other equipment’s proper functioning by providing fresh air. Therefore, how to effectively control the ventilator system becomes more significant. In order to acquire the commonly used model and control strategy for ventilator systems, a new universal ventilator model is established based on the blast capacity differential pressure in the ventilating duct and the ventilator motor model. Then, an adaptive Chebyshev neural network (ACNN) controller is proposed to effectively control the ventilator system where the unknown load torque and the unknown disturbance caused by the complex environment under the shaft are approximated by the Chebyshev neural network (CNN). Afterwards, an appropriate Lyapunov function candidate is designed to guarantee the stability of the proposed controller and the closed-loop ventilator system. Finally, the ACNN controller has been demonstrated to be effective in terms of validity and precision for the new proposed ventilator model through the simulations.
机译:呼吸机是用于矿山的重要设备,因为它可以通过提供新鲜空气来确保其他设备的实用功能。因此,如何有效控制呼吸机系统变得更加重要。为了获得呼吸机系统的常用模型和控制策略,基于通风管道和呼吸机电动机模型的喷砂容量压差建立了一种新的通用呼吸机模型。然后,提出了一种自适应Chebyshev神经网络(ACNN)控制器,以有效地控制呼吸扭矩和由轴下的复杂环境引起的未知干扰的呼吸机系统由Chebyshev神经网络(CNN)近似。之后,旨在保证所提出的控制器和闭环呼吸机系统的稳定性的适当的Lyapunov功能候选。最后,已经证明了ACNN控制器在通过模拟中为新提出的呼吸机模型的有效性和精度有效。

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