Abstract:
Can we solve the filtering problem from the only knowledge of few moments of the noise terms? In this technical note, by exploiting set of distributions based filtering, ...Show MoreMetadata
Abstract:
Can we solve the filtering problem from the only knowledge of few moments of the noise terms? In this technical note, by exploiting set of distributions based filtering, we solve this problem without introducing additional assumptions on the distributions of the noises (e.g., Gaussianity) or on the final form of the estimator (e.g., linear estimator). Given the moments (e.g., mean and variance) of random variable X, it is possible to define the set of all distributions that are compatible with the moments information. This set can be equivalently characterized by its extreme distributions: a family of mixtures of Dirac's deltas. The lower and upper expectation of any function g of X are obtained in correspondence of these extremes and can be computed by solving a linear programming problem. The filtering problem can then be solved by running iteratively this linear programming problem. In this technical note, we discuss theoretical properties of this filter, we show the connection with set-membership estimation and its practical applications.
Published in: IEEE Transactions on Automatic Control ( Volume: 58, Issue: 10, October 2013)
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- IEEE Keywords
- Index Terms
- Linear Programming ,
- Linear Approximation ,
- Linear Problem ,
- Low Expectations ,
- Dirac Delta ,
- Set Of Distributions ,
- Technical Note ,
- Expectation Of Function ,
- Filtering Problem ,
- Optimization Problem ,
- Upper Bound ,
- Measurement Noise ,
- Credible Interval ,
- Bayesian Estimation ,
- Second Moment ,
- Maximum Entropy ,
- Process Noise ,
- Extreme Points ,
- Real-valued Function ,
- Function Of Interest ,
- Set Of Probabilities ,
- Maximum Entropy Distribution ,
- Chebyshev’s Inequality ,
- Bayesian Filtering ,
- Space Of Possibilities ,
- Moment Vector ,
- Kalman Filter For Estimation ,
- Posterior Expectation ,
- Imprecise Information ,
- Confidence Region
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Linear Programming ,
- Linear Approximation ,
- Linear Problem ,
- Low Expectations ,
- Dirac Delta ,
- Set Of Distributions ,
- Technical Note ,
- Expectation Of Function ,
- Filtering Problem ,
- Optimization Problem ,
- Upper Bound ,
- Measurement Noise ,
- Credible Interval ,
- Bayesian Estimation ,
- Second Moment ,
- Maximum Entropy ,
- Process Noise ,
- Extreme Points ,
- Real-valued Function ,
- Function Of Interest ,
- Set Of Probabilities ,
- Maximum Entropy Distribution ,
- Chebyshev’s Inequality ,
- Bayesian Filtering ,
- Space Of Possibilities ,
- Moment Vector ,
- Kalman Filter For Estimation ,
- Posterior Expectation ,
- Imprecise Information ,
- Confidence Region
- Author Keywords