基于自适应网格法的非线性问题风险敏感估计

S. Bhaumik, M. Srinivasan, S. Sadhu, T. Ghoshal
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引用次数: 7

摘要

针对非线性非高斯问题中风险敏感状态估计的计算,提出了一种基于点质量近似的自适应网格方法。风险敏感估计器被认为比风险中性估计器具有更高的鲁棒性,但仅对非常有限的一类模型(包括线性高斯模型)承认封闭形式表达式。使用类似ekf方法的扩展风险敏感滤波器(ERSF)不能处理非高斯问题或严重的非线性问题。最近,人们提出了一种基于粒子过滤器的方法来扩展风险敏感技术的应用范围。为了验证基于粒子滤波的风险敏感滤波器的有效性,作者开发了自适应网格风险敏感滤波器(AGRSF),并使用一组启发式方法自适应选择网格点以提高数值效率。对于产生多模态后验分布的相当严重的非线性问题,agsf已经针对线性高斯情况的封闭形式解和风险敏感粒子滤波器(RSPF)进行了交叉验证。比较了两种算法的均方根误差和计算量。
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A Risk Sensitive Estimator for Nonlinear Problems using the Adaptive Grid Method
An Adaptive Grid Method based on the well-known point-mass approximation has been developed for computation of risk-sensitive state estimates in non-linear non-Gaussian problems. Risk-sensitive estimators, believed to have increased robustness compared to their risk neutral counterparts, admit closed form expressions only for a very limited class of models including linear Gaussian models. The Extended Risk-Sensitive Filter (ERSF) which uses an EKF-like approach fails to take care of non-Gaussian problems or severe non-linearities. Recently, a particle-filter based approach has been proposed for extending the range of applications of risk-sensitive techniques. The present authors have developed the adaptive grid risk-sensitive filter (AGRSF), which was partially motivated by the need to validate the particle filter based risk-sensitive filter and uses a set of heuristics for the adaptive choice of grid points to improve the numerical efficiency. The AGRSF has been cross-validated against closed-form solutions for the linear Gaussian case and against the risk-sensitive particle filter (RSPF) for fairly severe non-linear problems which create a multi-modal posterior distribution. Root mean square error and computational cost of the AGRSF and the RSPF have been compared.
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