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Multimodal Control by Variable-Structure Neural Network Modeling for Coagulant Dosing in Water Purification Process

机译:凝固过程中凝结剂剂量的可变结构神经网络建模多峰控制

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Stochastic neural network has the characteristics of good global convergence and fast gradient-based learning ability. It can be applied to multidimensional nonlinear systems, but its generalization ability is poor. In this paper, combined with rule base, through the PCA method, an improved multimodal variable-structure random-vector neural network algorithm (MM-P-VSRVNN) is proposed for coagulant dosing, which is a key production process in water purification process. Ensuring for qualified water, how to control coagulation dosage effectively, obtain valid production cost, and increase more profits is a focus in the water treatment plan. Different with the normal neural network mode, PCA is used to optimize hidden-layer nodes and update the neural network structure at every computation. This method rectifies coagulant dosage effectively while keeping valid coagulation performance. By the way, the MM-P-VSRVNN algorithm can decrease computation time and avoid overfitting learning ability. Finally, the method is proved feasible through the experiment and analyzed by the simulation result.
机译:随机神经网络具有良好的全球收敛性和基于快速梯度的学习能力的特征。它可以应用于多维非线性系统,但其泛化能力差。在本文中,通过PCA方法结合规则基础,提出了一种改进的多模式可变结构随机向量神经网络算法(MM-P-VSRVNN),用于凝结剂量给药,这是水净化过程中的关键生产过程。确保合格的水,如何有效控制凝固剂量,获得有效的生产成本,增加更多利润是水处理计划的重点。与正常的神经网络模式不同,PCA用于优化隐藏层节点并在每种计算时更新神经网络结构。该方法有效地整流凝结剂剂量,同时保持有效的凝固性能。顺便说一下,MM-P-VSRVNN算法可以减少计算时间并避免过度接收学习能力。最后,通过实验证明了该方法并通过仿真结果分析。

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