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An Iterated Extended Risk-Sensitive Filters for Nonlinear Filtering Problems

机译:非线性滤波问题的迭代扩展风险敏感滤波器

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The problem for filtering certain classes of systems which incorporate nonlinear, uncertainty initial condition is addressed. An Extended Risk-Sensitive Filter (ERSF) is reexamined and, new iterated version of that ERSF called the Iterated Extended Risk sensitive filters (IERSF) is developed. An ERSF weakness specifically accumulation error in the computing of innovation steps due to approximating nonlinear functions at recently available prior estimate is presented. By using the IERSF with proper tuning of risk factor and local iteration, the filtering divergence may be overcome, and a stable, robust and unbiased estimation is obtained satisfactorily. The performance of IERSF is compared with the performance of ERSF through an application of nonlinear bimodal signal estimation problem. The IERSF results in reduced estimation error without increase in burden of the associated computational algorithm.
机译:解决了对包含非线性不确定性初始条件的某些类型的系统进行滤波的问题。重新检查了扩展风险敏感过滤器(ERSF),并开发了该ERSF的新迭代版本,称为迭代扩展风险敏感过滤器(IERSF)。提出了一个ERSF弱点,特别是在创新步骤的计算中,由于在最近可用的先前估计值处近似非线性函数,导致累积误差。通过使用具有适当风险因子调整和局部迭代的IERSF,可以克服滤波差异,并令人满意地获得稳定,鲁棒和无偏的估计。通过应用非线性双峰信号估计问题,将IERSF的性能与ERSF的性能进行了比较。 IERSF导致估计误差减少,而不会增加相关计算算法的负担。

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