Performance Optimization in Frequency Estimation of Noisy Signals: Ds-IpDTFT Estimator

Sensors (Basel). 2023 Aug 28;23(17):7461. doi: 10.3390/s23177461.

Abstract

This research presents a comprehensive study of the dichotomous search iterative parabolic discrete time Fourier transform (Ds-IpDTFT) estimator, a novel approach for fine frequency estimation in noisy exponential signals. The proposed estimator leverages a dichotomous search process before iterative interpolation estimation, which significantly reduces computational complexity while maintaining high estimation accuracy. An in-depth exploration of the relationship between the optimal parameter p and the unknown parameter δ forms the backbone of the methodology. Through extensive simulations and real-world experiments, the Ds-IpDTFT estimator exhibits superior performance relative to other established estimators, demonstrating robustness in noisy conditions and stability across varying frequencies. This efficient and accurate estimation method is a significant contribution to the field of signal processing and offers promising potential for practical applications.

Keywords: Ds-IpDTFT; computational complexity; fine frequency estimation; noisy exponential signals; signal processing.