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Kevin and Kyra Moon EE 670 December 1, 2011
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Background ◦ Motivation ◦ Problem Theoretical model for backscatter Simulations Estimators ◦ ML ◦ MAP Example of estimators Results Conclusion
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In the highest part of Greenland, the snow never melts ◦ Called the dry snow zone ◦ Used frequently for calibration purposes However, some annual variation in the backscatter has been detected which is consistent from year to year
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We decided to test if received backscatter values could predict changes in permittivity The answer to this would provide insight into possible causes for the annual variation ◦ If backscatter cannot predict changes in permittivity, then it is likely there are other factors affecting the annual variation
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We created a model relating permittivity to backscatter (at least for snow) Because knowing the temperature helps us predict the permittivity more accurately, we found a relationship between temperature and permittivity ◦ This model required an intermediate step relating temperature to snow density and snow density to permittivity
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We then ran a simulation to see if backscatter could predict permittivity. We assumed that the underlying temperature data was weighted based on real data
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Randomly generated temperatures using the histogram ◦ Normalized the histogram ◦ Calculated the cumulative distribution function ◦ Generated uniformly distributed random numbers between 0 and 1 ◦ Assigned each random number the temperature value corresponding to the same index as the closest value of the cdf that was still less than the random number
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For a given temperature, the snow density, permittivity, and corresponding backscatter were calculated using the earlier equations The backscatter was then corrupted with additive white Gaussian noise ◦ This simulated real noise between the ground and the satellite receiver, including atmospheric and instrumental noise
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(or equivalently, permittivity or backscatter) True value Received value What ML would estimate (minimize distance from received) What MAP would estimate (this value is a lot more likely, even if the distance from received is further)
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MAP has superior performance to ML because there is more information available However, neither estimator is a good predictor of permittivity based on received backscatter values It is likely that the annual variation noticed in Greenland is caused by more than just changes in permittivity
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