论文标题
基于相对熵(RE)的LTI系统建模,配备了时间延迟估计和在线建模
Relative Entropy (RE) Based LTI System Modeling Equipped with time delay Estimation and Online Modeling
论文作者
论文摘要
本文提出了在线性时间不变(LTI)系统的输入和嘈杂输出的情况下进行脉冲响应建模。该方法利用相对熵(RE)选择最佳脉冲响应估计,最佳时间延迟和最佳脉冲响应长度。所需的RE是估计分布与其未知分布的估计分布的差异。独特的概率验证方法估计了所需的相对熵,并最大程度地估算了该标准以提供脉冲响应估计值。经典方法已从两个单独的角度来解决此系统建模问题,以进行时间延迟估计和订单选择。时间延迟方法集中在时间延迟估计中最小化各种建议的标准,而现有的订单选择方法根据其提议的标准选择最佳脉冲响应长度。提出的基于RE的方法的强度在于使用基于RE的标准同时估算时间延迟和脉冲响应长度。此外,当信号与噪声比(SNR)未知时,噪声方差的估计也是并发,并且基于优化相同的基于RE的标准。基于RE的方法还扩展了在线脉冲响应估算。在线方法可在新样本到达时降低模型估计计算复杂性。在这种在线方法中,引入有效的停止标准在实际应用中非常有价值。模拟结果说明了所提出方法与常规的时间延迟或订单选择方法相比的精确和效率。
This paper proposes an impulse response modeling in presence of input and noisy output of a linear time-invariant (LTI) system. The approach utilizes Relative Entropy (RE) to choose the optimum impulse response estimate, optimum time delay and optimum impulse response length. The desired RE is the Kulback-Lielber divergence of the estimated distribution from its unknown true distribution. A unique probabilistic validation approach estimates the desired relative entropy and minimizes this criterion to provide the impulse response estimate. Classical methods have approached this system modeling problem from two separate angles for the time delay estimation and for the order selection. Time delay methods focus on time delay estimate minimizing various proposed criteria, while the existing order selection approaches choose the optimum impulse response length based on their proposed criteria. The strength of the proposed RE based method is in using the RE based criterion to estimate both the time delay and impulse response length simultaneously. In addition, estimation of the noise variance, when the Signal to Noise Ratio (SNR) is unknown is also concurrent and is based on optimizing the same RE based criterion. The RE based approach is also extended for online impulse response estimations. The online method reduces the model estimation computational complexity upon the arrival of a new sample. The introduced efficient stopping criteria for this online approaches is extremely valuable in practical applications. Simulation results illustrate precision and efficiency of the proposed method compared to the conventional time delay or order selection approaches.