基于时间序列分析的真实世界非自主系统关键转换检测

Klaus Lehnertz
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引用次数: 0

摘要

现实世界中的非自主系统是开放的、失去平衡的系统,在随时间变化的环境中发展,并受其驱动。这类系统可以表现出多种时间尺度和瞬态动态,并过渡到不同的动态状态,有时甚至是灾难性的动态状态。由于这种关键的转变会破坏系统的预期或期望功能,因此了解其潜在机制、识别这种转变的前兆并在适当的系统观测数据的时间序列中可靠地检测它们以进行预测至关重要。本综述严格评估了基于时间序列分析检测真实世界非自主系统中临界转换所涉及的各种调查步骤:从数据记录到评估离线和在线检测的可靠性。本文将强调利弊,以激励进一步的发展,这对促进理解和预测复杂系统中的临界转换等非线性行为是必要的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time-series-analysis-based detection of critical transitions in real-world non-autonomous systems
Real-world non-autonomous systems are open, out-of-equilibrium systems that evolve in and are driven by temporally varying environments. Such systems can show multiple timescale and transient dynamics together with transitions to very different and, at times, even disastrous dynamical regimes. Since such critical transitions disrupt the systems' intended or desired functionality, it is crucial to understand the underlying mechanisms, to identify precursors of such transitions and to reliably detect them in time series of suitable system observables to enable forecasts. This review critically assesses the various steps of investigation involved in time-series-analysis-based detection of critical transitions in real-world non-autonomous systems: from the data recording to evaluating the reliability of offline and online detections. It will highlight pros and cons to stimulate further developments, which would be necessary to advance understanding and forecasting nonlinear behavior such as critical transitions in complex systems.
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