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Neural Network Data Fusion and Uncertainty Analysis for Wind Speed Measurement using Ultrasonic Transducer. Juan M. Mauricio Villanueva jmauricio12@gmail.com. January, 2011. Introduction.
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Neural Network Data Fusion and Uncertainty Analysis for Wind Speed Measurement using Ultrasonic Transducer Juan M. Mauricio Villanueva jmauricio12@gmail.com January, 2011
Introduction • There is the need for the determination of the wind power density (WPD), which is used in eolic energy as requirements on wind turbine localization. • where: • is the air density and • is the wind speed
Introduction • The objective of the measurement procedure is to defined a criteria to ensure that the data: • Sufficient quantity To determine the power • and quality performance characteristic • of the wind turbine accurately
Introduction • The wind speed measurement should be supplemented with an estimate of the uncertainty of the measurement • The uncertainty estimate is based on the ISO guide: • “Guide to the expression of uncertainty in measurement”
Objetives • The purpose of this paper are: • Provide a procedure that will ensure consistency, accuracy and reproducibility into the wind speed measurement • A data fusion procedure based on neural network algorithm to determine the fusion ToF • Assessment the fusion uncertainty of a conventional ultrasonic transducer configuration
Measurement Model and Data Fusion Procedures • The model is linear in the sense that the model output is a linear combination of its inputs.
Measurement and Uncertainty of ToF • Analysis and assessment of uncertainty for ToF measurement through the TH and PD techniques are carried out. • The ToF measurement by TH techniques and m=10 ToF measurement by PD techniques
Measurement and Uncertainty of ToF • Uncertainty in measurement is a parameter associated with the result of a measurement. • Following the ISO Guide, the uncertainties are expressed as standard deviations and are denoted standard uncertainties: • where: uTh and uPD are the standard deviation values of the TH and PD techniques and uFusion is the standard deviation value of fusion
Results and Simulations • We apply the data fusion procedure for the estimation of the ToF, combining independent information of the ToF obtained by the methods of TH and PD • From these results, we can determine the measurements and their associated uncertainties
Results and Simulations • The model is simulated in Simulink (MATLAB) • Wind speed from 5 to 30 m/s • One ToF estimation measurement by TH • m=10 ToF estimation measurement by PD • Transducers operating frequency: f = 40 kHz; • Maximum voltage level: vm = 1 volt; • Attenuation medium: Att = 10 % of vm; • Additive uncertainty: uA equal to 0.01 volt; • Frequency clock: fs = 50 MHz. • uTH = 0.5 µs • uPD = 0.1 µs
Results and Simulations • ToF simulation values and uncertainties (in us)
Results and Simulations • From this results, we can make a Gaussian Distribution of ToF measurement fusion. • For example, to the wind speed measurement 10 m/s:
Results and Simulations • Gaussian Distribution of ToF measurement fusion.
Conclusions • This paper presents a method to wind speed measurement based on neural network for multisensor fusion. • Quantitatively, the fusion procedures increase the accuracy of inference, i.e. reduce the uncertainties in the ToF estimation. • Qualitatively, the neural network fusion procedure take the advantages of the TH and PD techniques when used individually. • The fusion algorithm produces a ToF results with less uncertainty, reducing ambiguity and increasing the reliability of measurement and, consequently, improving the operational performance of the measurement model.