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Long-term prediction of hydraulic system dynamics via structured recurrent neural networks

机译:通过结构化递归神经网络对液压系统动力学进行长期预测

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This work presents a methodology for designing neural networks to predict the behavior of nonlinear dynamical systems with the guidance of a priori knowledge on the physical systems. The traditional neural network development techniques are known to have considerable disadvantages including tedious design process, long training periods, and most notably convergence/stability problems for most real world applications. The presented approach, which circumvents such bottlenecks, is especially useful in developing efficient neural network models when full-scale models are not available. This study illustrates the application of the method on a highly nonlinear hydraulic servo-system so to estimate accurately the chamber pressures of its hydraulic piston in extended time periods.
机译:这项工作提出了一种方法,用于设计神经网络,以在物理系统的先验知识的指导下预测非线性动力系统的行为。已知传统的神经网络开发技术具有相当多的缺点,包括繁琐的设计过程,训练周期长,以及对于大多数实际应用而言最显着的收敛性/稳定性问题。当无法使用全面模型时,所提出的方法可克服此类瓶颈,在开发有效的神经网络模型时特别有用。这项研究说明了该方法在高度非线性的液压伺服系统上的应用,从而可以准确地估算出长时间内其液压活塞的腔室压力。

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