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Robust adaptive neurofilters with or without online weight adjustment

机译:具有或不具有在线体重调节功能的强大自适应神经过滤器

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This paper proposes the use of risk-sensitive criteria for synthesizing a neurofilter that is adaptive to adaptation-worthy environmental parameters and robust to adaptation-unworthy ones. Two types of robust adaptive neurofilter are presented, one requires online weight adjustment and the other does not. A robust adaptive neurofilter without online weight adjustment is a time lagged recurrent network (TLRN) synthesized from realizations of the signal and measurement processes at typical values of the adaptation-worthy environmental parameters in a priori off-line training with respect to a risk-sensitive training criterion. A robust adaptive neurofilter with online weight adjustment consists of a signal estimator, a measurement predictor and a weight transformer, the former two being TLRNs and the latter a feedforward ANN. The nonlinear and linear weights of the signal estimator and measurement predictor are used as their long and short-term memories respectively. The linear weights of the measurement predictor are adjusted online by risk-sensitive or H/sup /spl infin// algorithms, and then transformed into the linear weights of the signal estimator by the weight transformer.
机译:本文提出了使用风险敏感的准则来合成神经过滤器,该神经过滤器适应于具有适应性的环境参数,并且对不具有适应性的环境参数具有鲁棒性。提出了两种类型的鲁棒自适应神经过滤器,一种需要在线调整体重,而另一种则不需要。无需在线权重调整的强大自适应神经过滤器是一种时滞递归网络(TLRN),它是根据信号和测量过程的实现而合成的,该信号和测量过程是针对风险敏感的先验离线训练中具有适应性的环境参数的典型值训练准则。具有在线权重调整功能的强大自适应神经滤波器由信号估计器,测量预测器和权重转换器组成,前两个是TLRN,后者是前馈ANN。信号估计器和测量预测器的非线性权重和线性权重分别用作它们的长期和短期记忆。可通过风险敏感型或H / sup / spl infin //算法在线调整测量预测器的线性权重,然后通过权重转换器将其转换为信号估计器的线性权重。

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