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Simulation and Feedback control in Atomic Force Microscope
Michal Hrouzek, Alina Voda, Martin Stark, Joël Chevrier Laboratoire d’Automatique de Grenoble, INP/UJF Grenoble The European Synchrotron Radiation
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Outlines of the presentation
AFM description Feedback control in AFM Sources of noise in AFM Cantilever model Driving loop with controller Interaction forces Thermal noise in AFM Conclusion
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Schema of Dynamic Force Microscopy
(excitation) Head of the AFM Driving loop Head positioning loop Stage with a sample x axis positioning loop y axis positioning loop (set-value of Dw)
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Detection techniques in dynamic AFM
Amplitude Modulation (AM) Original operation technique, Developed by Y. Matin – J. Appl. Phys. 61 (10) Driver is exciting the cantilever with constant driving signal. Interaction forces affect the cantilever and lower the vibration amplitude. Change in amplitude depends directly on interaction force. Frequency Modulation (FM) Newer technique, Developed by T.R. Albrecht – J. Appl. Phys. 69 (2) Driver with controller is exciting the cantilever to constant vibration amplitude. Interaction forces affect the cantilever and change the resonant frequency. Frequency shift depends directly on interaction force. Dw Df More sensitive compare to AM-technique Further would be treated only FM technique.
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Outlines of the presentation
AFM description Feedback control in AFM Sources of noise in AFM Cantilever model Driving loop with controller Interaction forces Thermal noise in AFM Conclusion
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Feedback control in AFM
Loop controlling position of AFM head in z axis Maintaining constant set-value of frequency shift Low frequency response (1 – 30 kHz) Cantilever driving loop (cantilever excitation) Exciting the cantilever and ensuring that contact with surface is not lost High frequency response (1kHz – 1 MHz) Nonlinear behavior of the driver (due coupling with surface) Directly maintaining cantilever vibration amplitude Could be used for possible attenuation of thermal noise perturbation and influence of another noises.
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Position of the head and lever excitation
rzd(t), rzp(t) – desired excitation and set-value of frequency shift mz(t) – measured deflection of the cantilever ezd(t), ezp(t) – regulation errors of the bimorph and head zdri(t), zpos(t) – driving signal and head positioning signal z(t) – real deflection of the cantilever
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Feedback control in AFM
Loops controlling position of AFM stage in x-y axes Scanning Positioning of the stage with sample Simple movement in straight lines under the cantilever with tip Manipulation Particles manipulation at the surface Complex movement with many possible shapes Control of the applied force onto the particle is crucial Scanning Manipulation
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Loops controlling stage position
rx,y(t) – desired position piezo-electric stack mx,y(t) – measured (estimated) position of the stage ex,y(t) – regulation error ux,y(t) – driving signal yx,y(t) – real position of the stage
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Loops controlling stage position
Accuracy problems with piezo-electric actuators Positioning nonlinearities (getting bigger with increasing speed) Usually are used piezo stacks with hysteresis 10% - 15% of max. displacement (Harder stacks have smaller hysteresis but smaller displacement range) Drift due to creep (Could be reduced to curtain level by careful design of the stage) Measurement problems of stage position High level of noise of LVDT detectors get relevant at nano-meter resolution Observer based regulator can achieve better positioning resolution
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Outlines of the presentation
AFM description Feedback control in AFM Sources of noise in AFM Cantilever model Driving loop with controller Interaction forces Thermal noise in AFM Conclusion
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Sources of noise in AFM Electronic parts Mechanical parts
Photo detector Optical path noise Thermal gradient Laser intensity noise Shot noise Laser mode noise Laser phase noise Electronic circuits Electrostatic noises Noise of amplifiers Mechanical parts Cantilever and tip Thermally induced cantilever noise Mechanical vibration Relaxation Air turbulences and acoustic waves Magnetic noises Electrostatic noises Chemical noises Bimorph Thermally induced noise
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Thermal noise Thermal noise is limiting AFM sensitivity
Some noises could be lower by appropriate design and construction of AFM. The minimum detectable interaction force. (dynamic mode) k Spring constant, stiffness T Temperature kB Boltzmann constant b Measurement bandwidth A0 Vibration amplitude w0 Resonance frequency Q Quality factor
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Outlines of the presentation
AFM description Feedback control in AFM Sources of noise in AFM Cantilever model Driving loop with controller Interaction forces Thermal noise in AFM Conclusion
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Cantilever model Second order differential equation model
Q liquid environment air environment vacuum environment L mm length w 10-50mm width t 0.1-5mm thick E GPa for silicon cantilevers k N/m stiffness
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Cantilever model Multimode model of the cantilever
E Modulus of elasticity I Area moment of inertia m Mass per unit length L Cantilever length
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Cantilever model Multimode model of the cantilever
E Modulus of elasticity I Area moment of inertia m Mass per unit length L Cantilever length
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Computer Simulation The cantilever properties used for multimode model
Computed properties of separated harmonic modes
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Computer Simulation Spectral analysis schema of the multi mode cantilever model
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Computer Simulation - results
Thermal noise was the only excitation of the Cantilever. (displayed spectra is an average over 100 FFT)
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Measured spectra non-contact silicon cantilever NSC12/50 (cantilever F) (displayed spectra is an average over 1000 FFT)
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Computer Simulation - results
Time response of thermally driven cantilever -Time sequence 0 to 2ms Time sequence 0 to 0.2ms (Zoom) Zoom Model initialization Modeled thermal excitation (blue) (normal distribution) Position of the cantilever (red)
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Computer Simulation - results
Time response of artificially driven cantilever at resonance blue curve – exciting displacement zdriv(t)=Z0sin(w0t) red curve – displacement of the cantilever at its free end - Time sequence 0 to 10ms - Time sequence 0 to 0.4ms (zoom) Zoom
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Outlines of the presentation
AFM description Feedback control in AFM Sources of noise in AFM Cantilever model Driving loop with controller Interaction forces Thermal noise in AFM Conclusion
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Computer Simulation with controller
Driving with the PID regulator
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Computer Simulation with controller
Driver with phase shift Band pass filter – selects the frequencies of our interest (10kHz-100kHz) Amplitude detector – gives numerical value of vibration amplitude A(t) Controller – select the gain(t) that is multiplied by filtered cantilever position Low pass filter – eliminates high frequency noise Gain – amplification of the signal Phase shift – optimal value is p/2
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Computer Simulation with controller - results
Gain of the PID controller gain(t)
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Computer Simulation with controller - results
Displacement of the driving bimorph zbimorph(t) = kbimorph zdrive(t)
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Computer Simulation with controller - results
Displacement of the cantilever (red curve) Displacement of the driving bimorph (blue curve)
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Outlines of the presentation
AFM description Feedback control in AFM Sources of noise in AFM Cantilever model Driving loop with controller Interaction forces Thermal noise in AFM Conclusion
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Interaction forces Properties Interaction forces They are non-linear
Can be long-range or short-range, and attractive or repulsive. Forces are very sensitive to environmental conditions such as temperature, humidity, surface chemistry, and mechanical and electrical noises. Depend on the material, geometry and size of nano entities. Curtain forces are getting dominant in specific environments and some diminish. Interaction forces van der Waals (analogous to the gravity at the nano-scale) Casimir Thermal motion: Exist for any material and depends only on temperature Capillary, Hydrogen and Covalent bonding, Steric, Hydropobolic, Double layer, …
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Interaction forces Intensity of the van der Waals and repulsive forces.
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Interaction forces Approach curve of the cantilever. 1) Non-contact
2) “Snap on” point, spring constant is smaller than attractive force. zero) Equilibrium point, lever isn’t deflected in any direction. 3) Repulsive interaction is dominant. 4) Maximum positive deflection. 5) Capillarity holds the tip onto the surface 6) “snap off” point, spring constant overcomes the capillarity
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Interaction forces model
Mathematical equations describing interaction forces between the tip and surface Intensity of the interaction forces as a function of the separation distance. a0 – intermolecular distance AH – Hamaker constant RS – Sphere radius (end of the tip) E* – Effective stiffness Numerical values used from reference: S. I. Lee, Physical Review B, 66(115409), 2002.
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Interaction forces model - results
Approach curve is simulated without any excitation, chip with the cantilever is slowly approaching the surface Approach curve with the cantilever, Q=1 Approach curve with the cantilever, Q=100 This behavior has been observed at the experiment. (Martin Stark, Frederico Martins)
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Interaction forces model - results
Cantilever has been excited with constant driving signal zbimorph(t) = Adrivesin(w0t) Harmonic outputs of separated modes has been recorded. Amplitude of first harmonic mode is decreasing with smaller separation distance. Vibration amplitude Separation distance
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Interaction forces model - results
Amplitude of higher harmonic modes are increasing with smaller separation distance. Time sequences of one period are shown (second mode – red curve, third mode – green curve, fourth mode – blue curve )
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Outlines of the presentation
AFM description Feedback control in AFM Sources of noise in AFM Cantilever model Driving loop with controller Interaction forces Thermal noise in AFM Conclusion
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Outlines of the presentation
AFM description Feedback control in AFM Sources of noise in AFM Cantilever model Driving loop with controller (model of PLL) Interaction forces Thermal noise in AFM Conclusion
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Conclusion Multimode cantilever model has been developed. Simulations have shown that the model is correct approximation of the dynamic system. Model of the interaction forces have been implemented into Matlab Simulink environment. Dynamic interaction between both models has been simulated and compared with measurements. Driving controller has been employed to control the excitation of the cantilever interacting with the surface.
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Acknowledgements Frederico Martins Mario Rodrigues Raphaelle Dianoux
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Future work Development of microscope stage controllers that are responsible for the sample positioning under the head with cantilever. This controller has to fulfill new requirements for speed and accuracy due to application of the AFM as a nano-manipulator. Thermal noise is second field of further work. Driving controller has to be redesigned to lower the nose signal ration to achieve better results in weak forces measurements.
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