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Adaptive Evaluation of Complex Dynamical Systems Using Low-Dimensional Neural Architectures

机译:利用低维神经架构的复杂动力系统的自适应评估

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New methodology of adaptive monitoring and evaluation of complicated dynamic data is introduced. The major objectives are monitoring and evaluation of both instantaneous and long-term attributes of complex dynamic behavior, such as of chaotic systems and real-world dynamical systems. In the sense of monitoring, the methodology introduces a novel approach to quantification and visualization of cognitively observed system behavior in a real time without further processing of these observations. In the sense of evaluation, the methodology opens new possibilities for consequent qualitative and quantitative processing of cognitively monitored system behavior. Techniques and enhancements are introduced to improve the stability of low-dimensional neural architectures and to improve their capability in approximating nonlinear dynamical systems that behave complex in high-dimensional state space. Low-dimensional dynamic quadratic neural units enhanced as forced dynamic oscillators are introduced to improve the approximation quality of higher dimensional systems. However, the introduced methodology can be universally used for adaptive evaluation of dynamic behavior variability also with other neural architectures and adaptive models, and it can be used for theoretical chaotic systems as well as for real-word dynamical systems. Simulation results on applications to deterministic, however, highly chaotic time series are shown to explain the new methodology and to demonstrate its capability in sensitive and instantaneous detections of changing behavior, and these detections serve for monitoring and evaluating the level of determinism (predictability) in complex signals. Results of this new methodology are shown also for real-world data, and its limitations are discussed.
机译:引入了复杂动态数据的自适应监测和评估的新方法。主要目标是监测和评估复杂动态行为的瞬时和长期属性,例如混沌系统和现实世界动态系统。在监测的意义上,该方法介绍了一种新颖的定量和可视化在实时观察系统行为的定量和可视化,而无需进一步处理这些观察结果。在评估的意义上,该方法开启了新的可能性,以实现认知监测系统行为的性质和定量处理。引入技术和增强以提高低维神经架构的稳定性,并提高其在近似非线性动力系统中的能力,该能力在高维状态空间中表现复杂。引入低维动态二次神经单元,以强制动态振荡器引入,以提高高维系统的近似质量。然而,引入的方法可以普遍用于对动态行为变异性的自适应评估,也与其他神经架构和自适应模型一起,它可以用于理论混沌系统以及实际动态系统。然而,仿真结果对确定性的应用,高度混乱的时间序列被证明是解释新方法,并证明其在变化行为的敏感和瞬时检测中的能力,这些检测用于监测和评估确定性(可预测性)的水平复杂信号。这种新方法的结果也显示为真实世界数据,并讨论其限制。

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