Department of Mathematical Sciences, Montclair State University, Montclair, New Jersey 07043, USA.
Chaos. 2011 Mar;21(1):013116. doi: 10.1063/1.3539836.
We consider the problem of stochastic prediction and control in a time-dependent stochastic environment, such as the ocean, where escape from an almost invariant region occurs due to random fluctuations. We determine high-probability control-actuation sets by computing regions of uncertainty, almost invariant sets, and Lagrangian coherent structures. The combination of geometric and probabilistic methods allows us to design regions of control, which provide an increase in loitering time while minimizing the amount of control actuation. We show how the loitering time in almost invariant sets scales exponentially with respect to the control actuation, causing an exponential increase in loitering times with only small changes in actuation force. The result is that the control actuation makes almost invariant sets more invariant.
我们研究了在时变随机环境(如海洋)中的随机预测和控制问题,在这种环境中,由于随机波动,会发生从几乎不变区域的逃逸。我们通过计算不确定性区域、几乎不变区域和拉格朗日相干结构来确定高概率控制作用集。几何和概率方法的结合使我们能够设计控制区域,这些区域可以在最小化控制作用的同时增加逗留时间。我们展示了几乎不变区域中的逗留时间如何随控制作用呈指数增长,导致仅通过小的作用力变化就使逗留时间呈指数增长。结果是控制作用使几乎不变区域更加不变。