2020
DOI: 10.3390/s20092703
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Gradient Estimator-Based Amplitude Estimation for Dynamic Mode Atomic Force Microscopy: Small-Signal Modeling and Tuning

Abstract: Atomic force microscopy (AFM) plays an important role in nanoscale imaging application. AFM works by oscillating a microcantilever on the surface of the sample being scanned. In this process, estimating the amplitude of the cantilever deflection signal plays an important role in characterizing the topography of the surface. Existing approaches on this topic either have slow dynamic response e.g., lock-in-amplifier or high computational complexity e.g., Kalman filter. In this context, gradient estimator can be … Show more

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Cited by 6 publications
(3 citation statements)
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“…As such, the FLL gain can be tuned as a function of the desired settling time, for a which the formula is available in the literature [26].…”
Section: B Frequency-locked Loopmentioning
confidence: 99%
“…As such, the FLL gain can be tuned as a function of the desired settling time, for a which the formula is available in the literature [26].…”
Section: B Frequency-locked Loopmentioning
confidence: 99%
“…To tune the proposed PLL, small‐signal modelling can be used. In [45], it has been found that the Lyapunov estimator tuning gain ζ can be tuned as: ζ=8/tss$\zeta =8/t_{ss}$, where tss$t_{ss}$ is the desired settling time. Then, applying the small‐signal PLL model given in [46] to the developed PLL in this work, the frequency estimation gain γ can be tuned as a function of the phase margin and/or settling time.…”
Section: Proposed Control Strategymentioning
confidence: 99%
“…Many engineering applications require fast, accurate, and online parameter estimation of a biased harmonic signal. These parameters are required to ensure maximum power transfer through gridconnected converters (GCCs) [1], [2], reject harmonic disturbance in a DC motor [3], enhance ride comfort through semi-active suspension system [4], monitor the status of a power grid [5], reconstruct the material surface topology by atomic force microscopy [6], estimate the rotational speed of turbocharger [7], measure the wheel speed through a vibration signal [8], to name a few. These applications require fast convergent algorithms that are not computationally demanding, easy to implement, and robust to measurement noise and disturbances.…”
Section: Introductionmentioning
confidence: 99%