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State Estimation for Stochastic Nonlinear Systems with Applications to Viral Infections

机译:随机非线性系统的状态估计及其在病毒感染中的应用

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State estimation of biological systems is a difficult task due to their complexity and stochasticity. In particular, bilinear and Michaelis-Menten terms are the base for many biological models such as in infectious diseases, cancer, diabetes, and many others. In this paper, mentioned non-linear terms are formulated into a polynomial form with state-dependent matrices driven by additive white Gaussian noises over linear observations. To show the effectiveness of the approach, two different models widely used for modeling viral infectious diseases are considered and compared with the extended Kalman filter (EKF) algorithm. Numerical results show the applicability of the polynomial approach.
机译:由于其复杂性和随机性,生物系统的状态估计是一项艰巨的任务。特别地,双线性和Michaelis-Menten术语是许多生物学模型(例如传染病,癌症,糖尿病等)的基础。在本文中,将所提到的非线性项公式化为多项式形式,其中状态相关矩阵由线性观测上的加性白高斯噪声驱动。为了显示该方法的有效性,考虑了两种广泛用于病毒感染疾病建模的不同模型,并将它们与扩展卡尔曼过滤器(EKF)算法进行了比较。数值结果表明了多项式方法的适用性。

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