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Bayesian Analysis of Stochastic System Dynamics

机译:随机系统动力学的贝叶斯分析

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The paper deals with the system dynamics modeling of a stochastic behavior. The starting point is replacing the traditional system dynamics model with a discrete-time stochastic dynamic model in which state variables are measured indirectly, through noisy and incomplete measurements. The state variables and possible unknown parameters in such a model can be systematically estimated from the available measurements using the Bayesian paradigm. Closed-form solutions exist only for a few special cases, such as a linear normal model with known parameters, otherwise numerical approximations are required. The paper suggests a particle filter algorithm as a particularly appealing approximation that preserves much of the intuitive workings of system dynamics. A practical example illustrates both the stochastic modeling process and the approximate Bayesian analysis.
机译:本文涉及随机行为的系统动力学建模。起始点正在用离散时间随机动态模型替换传统的系统动态模型,其中通过嘈杂和不完整的测量间接测量状态变量。可以从使用贝叶斯范式的可用测量系统地估计这种模型中的状态变量和可能的未知参数。封闭式解决方案仅存在于一些特殊情况下,例如具有已知参数的线性正常模型,否则需要数值近似。本文建议粒子过滤算法作为特别吸引人的近似,以保留大部分系统动态的直观工作。一个实际的例子说明了随机建模过程和近似贝叶斯分析。

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