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States and parameters estimation for biomass substrate hypothetical system

机译:生物质底物假想系统的状态和参数估计

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To overcome the problem of uncertainty in the environmental models, we are focused on the difficulty of, the cost related with, getting the measurements, of dual state and/or parameter estimates. This paper, presents an Iterated Square-Root Central Difference Kalman Particle Filter (ISRCDKF-PF) extension which is suggested for the estimation of the joint state and parameters in environmental systems. Amongst the different Byesian techniques, are compared and calculated for the estimation performance, called the conventional of the Square-Root Central Difference Kalman Filter (SRCDKF), the Iterated Square-Root Central Difference Kalman Filter (ISRCDKF), the Particle Filter (PF), the Square-Root Central Difference Kalman Particle Filter (SRCDK-PF) and the Iterated Square-Root Central Difference Kalman Particle Filter (ISRCDKF-PF). The proposed approach consists of a PF based on ISRCDKF to exceed the standard Particle Filter by delivering more accuracy state and parameter estimations. The proposal distribution incorporates the latest observation in system state transition density, so it may well match the a posteriori density. The estimation performance of the proposed Bayesian methods, namely the Square-Root Central Difference Kalman Filter (SRCDKF), the Iterated Square-Root Central Difference Kalman Filter (ISRCDKF), the Particle Filter (PF), the Square-Root Central Difference Kalman Particle Filter (SRCDKF-PF) and the Iterated Square-Root Central Difference Kalman Particle Filter (ISRCDKF-PF) are compared by measuring the Root Mean Square Error (RMSE) and respect to the noise-free data. The results reveal that the ISRCDKF-PF extension provides a significant improvement and a better estimation accuracy than the SRCDKF, ISRCDKF, PF and SRCDKF-PF techniques.
机译:为了克服环境模型中的不确定性问题,我们集中在与双重状态和/或参数估计有关的困难,与获得测量相关的成本。本文提出了一种迭代平方根中央差分卡尔曼粒子滤波器(ISRCDKF-PF)扩展,建议将其用于估计环境系统中的联合状态和参数。比较并计算了不同的Byesian技术的估计性能,这些性能称为平方根中央差分卡尔曼滤波器(SRCDKF)的常规,迭代平方根中央差分卡尔曼滤波器(ISRCDKF),粒子滤波器(PF) ,平方根中央差分卡尔曼粒子滤波器(SRCDK-PF)和迭代平方根中央差分卡尔曼粒子滤波器(ISRCDKF-PF)。所提出的方法由基于ISRCDKF的PF组成,通过提供更准确的状态和参数估计来超过标准的粒子过滤器。建议分布结合了系统状态转换密度的最新观察结果,因此很可能与后验密度匹配。提出的贝叶斯方法的估计性能,即平方根中央差分卡尔曼滤波器(SRCDKF),迭代平方根中央差分卡尔曼滤波器(ISRCDKF),粒子滤波器(PF),平方根中央差分卡尔曼粒子通过测量均方根误差(RMSE)和无噪声数据,比较了滤波器(SRCDKF-PF)和平方根中心差分卡尔曼粒子滤波器(ISRCDKF-PF)。结果表明,与SRCDKF,ISRCDKF,PF和SRCDKF-PF技术相比,ISRCDKF-PF扩展提供了显着的改进和更好的估计精度。

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