Short-time large deviation of constrained random acceleration process
Hanshuang Chen, Lulu Tian, Guofeng Li

TL;DR
This paper analyzes the short-time large deviation behavior of constrained random acceleration processes, deriving analytical solutions for optimal paths and probability distributions for different constraints and functional powers.
Contribution
It provides analytical solutions for the optimal paths and probability distributions of constrained random acceleration processes, including Gaussian and non-Gaussian behaviors, with numerical schemes for higher-order cases.
Findings
For n=1, P(A) is Gaussian with variance proportional to D t_f^5.
For n≥2, P(A) exhibits non-Gaussian features and an essential singularity at small A.
Optimal paths localize around initial states and sharply escape to final positions at late times.
Abstract
By optimal fluctuation method, we study short-time distribution of the functionals, , along constrained trajectories of random acceleration process for a given time duration , where is a positive integer. We consider two types of constraints: one is called the total constraint, where the initial position and velocity and the final position and velocity are both fixed, and the other is called the partial constraint, where the initial position and velocity, the final position are fixed, and letting the final velocity be free. Via the variation of constrained action functionals, the resulting Euler-Lagrange equations are analytically solved for and 2, and the optimal path, i.e., the most probable realization of the random acceleration process , conditioned on specified and , are correspondingly obtained.…
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Taxonomy
TopicsExperimental and Theoretical Physics Studies · Sports Dynamics and Biomechanics · Gaussian Processes and Bayesian Inference
