从自然到方法,再回到自然

Petar Durić
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引用次数: 1

摘要

当今复杂系统领域的一个基本挑战是设计和开发准确而稳健的信号处理方法。这些方法应该能够快速适应数据中的意外变化,并在最小的模型假设下运行。《自然》中的系统也会进行信号处理,而且往往是最优的。因此,理解大自然的行为,并试图模仿它,甚至做得更好,是很有意义的。作为回报,更好的信号处理方法的结果可能会导致科学技术的新进步和对自然的理解。在这个演讲中,信号处理的方法借用了自然界的概念和原理,包括蚂蚁优化、群体智能和遗传算法。然而,演讲的重点是基于蒙特卡罗的方法,特别是与粒子滤波、成本参考粒子滤波和种群蒙特卡罗相关的方法。在过去的十五年中,基于蒙特卡罗的方法在处理非线性和/或非高斯系统方面获得了相当大的普及。这三组方法的共同特点是,它们使用粒子和分配给粒子的权重(代价)来探索未知空间。在这些方法的大多数版本中,粒子独立地运动,并按照假定的状态模型的动力学进行运动。粒子之间的相互作用仅通过重新采样过程发生,而不是通过物理和生物系统中常见的局部相互作用。这样的交互可以提高方法的性能,并允许以更好的效率和准确性处理更具挑战性的问题。我们展示了如何将这些方法应用于工程学、经济学和生物学中的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From nature to methods and back to nature
A fundamental challenge in today's arena of complex systems is the design and development of accurate and robust signal processing methods. These methods should be capable to adapt quickly to unexpected changes in the data and operate under minimal model assumptions. Systems in Nature also do signal processing and often do it optimally. Therefore, it makes much sense to understand what Nature does and try to mimic it and do even better. In return, the results of better signal processing methods may lead to new advancements in science and technology and in understanding Nature. In this presentation methods for signal processing that borrow concepts and principles found in Nature are addressed including ant optimization, swarm intelligence and genetic algorithms. However, the emphasis of the presentation is on Monte Carlo-based methods, and in particular, methods related to particle filtering, cost-reference particle filtering, and population Monte Carlo. In the past decade and a half, Monte Carlo-based methods have gained considerable popularity in dealing with nonlinear and/or non-Gaussian systems. The three groups of methods share the feature that they explore spaces of unknowns using particles and weights (costs) assigned to the particles. In most versions of these methods, particles move independently and in accordance with the dynamics of the assumed model of the states. Interactions among particles only occur through the process of resampling rather than through local interactions as is common in physical and biological systems. Such interactions can improve the performance of the methods and can allow for coping with more challenging problems with better efficiency and accuracy. We show how we apply these methods to problems in engineering, economics, and biology.
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