| Literature DB >> 32485971 |
Yuxiao Li1,2, Ciming Zhou1, Dian Fan1, Sijing Liang1, Li Qian3.
Abstract
This paper proposes a novel iteration Bayesian reweighed (IBR) algorithm to obtain accurate estimates of a measurement parameter that uses only a few noisy measurement data. The method is applied to optimize the frequency fluctuation in an optical carrier-based microwave interferometry (OCMI) system. The algorithm iteratively estimates the frequency of the S-parameter valley point by collecting training samples to rebalance the weights between prior samples, which reduces the impact of noise in the system. Simulation shows that the estimated result of this algorithm is closer to the true value than that of the maximum likelihood estimation (MLE) using the same amount of measured data. Under the influence of system noise, this algorithm optimizes the frequency fluctuation of the S-parameter and reduces the impact of individual measured data. In this study, we applied the algorithm in the strain sensing experiment and compared it with the MLE. When axial strain changes 240 με, the IBR algorithm yields a deviation of 36 με, which is a significant reduction from 138 με (using the MLE method). Moreover, the average error rate decreases from 25% to 3% (with the MLE method), suggesting that the linear fitting degree of the estimated results and accuracy of the system are improved. Moreover, the algorithm has a wide range of applicability, for it can handle different application models in the OCMI system and the systems with frequency fluctuation problems.Entities:
Keywords: bayesian estimation; fiber optics sensors; frequency fluctuation; microwave photonics; optical carrier-based microwave interferometer
Year: 2020 PMID: 32485971 PMCID: PMC7309073 DOI: 10.3390/s20113079
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Schematic of the optical carrier-based microwave interferometry (OCMI) system configuration for concept demonstration. VNA: vector network analyzer. ASE: amplified spontaneous emission light source. MZM: Mach-Zehnder modulator. RFA: radio frequency amplifier. MBC: MZM’s bias controller. EDFA: erbium-doped fiber amplifier. PD: high-speed photodetector.
Figure 2Iteration Bayesian reweighed (IBR) algorithm process.
Figure 3(a) The simulated S-parameters spectrum of signal frequency domain. (b) The simulated S-parameters of simulations with noise.
Figure 4Estimated frequency at the valley of simulation signals.
Figure 5(a) Spectrum interferogram of S-parameters of 437 sets of measured data. (b) Coordinates of S-parameter valley of 437 sets of measured data. (c) Probability density and Gaussian fitting of valley coordinate frequency.
Figure 6(a) The frequency shift of the microwave interference signal under strain changes. (b) Coordinates of S-parameter valley point of measured data.
Figure 7(a) 100 measured data of interference fringes for the S-parameter at 720 με strain. (b) Estimated frequency at the valley of measured data.
Figure 8(a) The error rate of estimated results in each strain. (b) The estimated results and linear fitting by different sets of data.