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Probability Density Function Control for Stochastic Nonlinear Systems using Monte Carlo Simulation

机译:蒙特卡罗模拟随机非线性系统的概率密度函数控制

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This paper presents an implementable framework of output probability density function (PDF) control for a class of stochastic nonlinear systems which are subjected to non-Gaussian noises. The statistical properties of the system outputs can be adjusted by shaping the dynamic output probability density function to track the reference stochastic distribution. However, the dynamic probability density function evolution is very difficult to obtain analytically even if the system model and the stochastic distributions of the noises are known. Motivated by Monte Carlo simulation, the dynamic probability density function can be estimated by sampling data which forms the contribution of this paper. In particular, the sampling points are generated following the stochastic distribution of the noise for each instant. These points go through the system and generate the histogram for system outputs, then the dynamic model can be established based on the dynamic histogram which reflects the randomness and the nonlinear dynamics of the investigated system. Based on the established model, the output probability density function tracking can be achieved and the simulation results and discussions show the effectiveness and benefits of the presented framework.
机译:本文介绍了一类受到非高斯噪声的一类随机非线性系统的输出概率密度函数(PDF)控制框架。通过塑造动态输出概率密度函数来跟踪参考随机分布,可以调整系统输出的统计特性。然而,即使系统模型和噪声的随机分布是已知的,即使噪声的随机分布也是非常难以分析的动态概率密度函数演化。通过蒙特卡罗模拟的动力,可以通过采样数据来估算动态概率密度函数,这些数据构成了本文的贡献。特别地,在每个瞬间的噪声的随机分布之后产生采样点。这些点通过系统并生成系统输出的直方图,然后可以基于动态直方图建立动态模型,该动态直方图反映了所研究的系统的随机性和非线性动态。基于已建立的模型,可以实现输出概率密度函数跟踪,仿真结果和讨论表明了所呈现的框架的有效性和益处。

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