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Statistics / Statistical theory / Estimation theory / Bayesian statistics / Statistical inference / Unmanned ground vehicle / Prediction / Regression analysis / Prognostics / Confidence interval / Normal distribution / Recursive least squares filter
Date: 2016-08-04 12:43:38
Statistics
Statistical theory
Estimation theory
Bayesian statistics
Statistical inference
Unmanned ground vehicle
Prediction
Regression analysis
Prognostics
Confidence interval
Normal distribution
Recursive least squares filter

Mission Energy Prediction for Unmanned Ground Vehicles Using Realtime Measurements and Prior Knowledge

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Source URL: robotics.umich.edu

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File Size: 554,82 KB

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