Search results for " Kalman"

showing 10 items of 61 documents

The Kalman Filter and Its Applications in GNSS and INS

2011

This chapter contains sections titled: Introduction Review of Kalman Filtering and Extended Kalman Filtering for Navigation EKF-Based PVT Computation in a Stand-Alone GNSS Receiver Inertial Navigation Fundamentals IMU Alignment General Architecture for the Loose Integration General Architecture for the Tight Integration General Architecture for the Ultra-Tight Integration Conclusions References Appendix A

Extended Kalman filterInertial measurement unitGNSS applicationsComputer scienceComputationReal-time computingSatellite navigationKalman filterAir navigationInertial navigation systemRemote sensing
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FastSLAM 2.0: Least-Squares Approach

2006

In this paper, we present a set of robust and efficient algorithms with O(N) cost for the following situations: object detection with a laser ranger; mobile robot pose estimation and a FastSLAM improved implementation. Objected detection is mainly based on a novel multiple line fitting method, related with walls at the environment. This method assumes that walls at the environment constitute a regular constrained angles. A line-based pose estimation method is also proposed, based on Least-Squares (LS). This method performs the matching of detected lines and estimated map lines and it can provide the global pose estimation under assumption of known Data-Association. FastSLAM 1.0 has been imp…

Extended Kalman filterLine fittingComputer sciencebusiness.industryLine (geometry)Mobile robotComputer visionArtificial intelligencebusiness3D pose estimationPoseLeast squaresObject detection2006 IEEE/RSJ International Conference on Intelligent Robots and Systems
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AUTOMATIC TAKE-OFF OR LANDING PATH FOLLOWING IN TURBULENT AIR FOR UAS - AN EKF BASED PROCEDURE

2015

By using the Extended Kalman Filter (EKF) an accurate take-off or landing flight path following in turbulent air is performed. The tuned up procedure employs simultaneously two different EKF: the first one estimates gust disturbances, the second one affords to determine the necessary controls displacements for rejecting those ones. In particular, the first filter, by using instrumental measurements gathered in turbulent air, estimates wind components. The second one obtains command laws able to follow the desired flight path. To perform this task aerodynamic coefficients have been modified by adding entirely new derivatives or synthetic increments to basic ones whose might the kind of chang…

FLIGHT PATH FOLLOWINGAUTOMATIC TAKE-OFF AND LANDINGSettore ING-IND/03 - Meccanica Del VoloEXTENDED KALMAN FILTER
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Optimal Flight Path Determination in Turbulent Air: A Modified EKF Approach

2017

By using the Extended Kalman Filter an accurate path following in turbulent air is performed. The procedure employs simultaneously two different EKFs: the first one estimates disturbances, the second one affords to determine the necessary controls displacements for rejecting those ones. To tune the EKFs an optimization algorithm has been designed to automatically determine Process Noise Covariance and Measurement Noise Covariance matrices. The first filter, by using instrumental measurements gathered in turbulent air, estimates wind components. The second one obtains command laws able to follow the desired flight path. To perform this task aerodynamic coefficients have been modified. Such a…

Filter (large eddy simulation)NoiseExtended Kalman filterControl theoryComputer scienceLongitudinal static stabilityPharmacology (medical)AerodynamicsCovarianceStability (probability)Stability derivativesAerotecnica Missili & Spazio
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An EKF Based Method for Path Following in Turbulent Air

2017

An innovative use of the Extended Kalman Filter (EKF) is proposed to perform both accurate path following and adequate disturbance rejection in turbulent air. The tuned up procedure employs simultaneously two different EKF: the first one estimates gust disturbances, the second one estimates modified aircraft parameters. The first filter, by using measurements gathered in turbulent air, estimates both aircraft states and wind components. The second one, by using the estimated disturbances, obtains command laws that are able to reject disturbances. The predictor of the second EKF uses the estimated wind components to solve motion equations in turbulent air. Besides a set of unknown stability …

Fluid Flow and Transfer Processes020301 aerospace & aeronautics0209 industrial biotechnologyEngineeringbusiness.industryTurbulenceSettore ING-IND/03 - Meccanica Del VoloAerospace EngineeringEquations of motion02 engineering and technologyAerodynamicsStability (probability)Stability derivativesSet (abstract data type)Extended Kalman filterFilter (large eddy simulation)020901 industrial engineering & automation0203 mechanical engineeringControl and Systems EngineeringControl theoryAdaptive control laws Extended Kalman Filter Trajectory trackingElectrical and Electronic EngineeringbusinessPhysics::Atmospheric and Oceanic PhysicsInternational Review of Aerospace Engineering (IREASE)
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Automatic EKF tuning for UAS path following in turbulent air

2018

By using two simultaneously working Extended Kalman Filters, a procedure is implemented in order to perform in a fully autonomous way the path following in turbulent air. To guarantee the robustness of the proposed algorithm, an automatic tuning procedure is proposed to determine optimal values of Process and Measurement Noise statistics. Such a procedure is based on both the characteristics of the disturbances and the desired flight path; in particular, a specific performance index is applied to tune filters. In this way control laws are adapted to the flight condition and these lead to an optimal path-following. This research represents an upload of previous papers. It allows eliminating …

Fluid Flow and Transfer ProcessesAutomatic tuningTurbulenceComputer sciencePath followingAerospace EngineeringExtended Kalman FilterSettore ING-IND/03 - Meccanica Del VoloKalman filterTrajectory TrackingTrial and errorExtended Kalman filterUploadControl and Systems EngineeringRobustness (computer science)Control theoryControl OptimizationAdaptive Control LawElectrical and Electronic Engineering
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Extended complex Kalman filter for sensorless control of an induction motor

2014

Abstract This paper deals with the design of an extended complex Kalman filter (ECKF) for estimating the state of an induction motor (IM) model, and for sensorless control of systems employing this type of motor as an actuator. A complex-valued model is adopted that simultaneously allows a simpler observability analysis of the system and a more effective state estimation. The observability analysis of this model is first performed by assuming that a third order ECKF has to be designed, by neglecting the mechanical equation of the IM model, which is a valid hypothesis when the motor is operated at constant rotor speed. It is shown that this analysis is more effective and easier than the one …

Induction motor Observability Kalman filtering Complex-valued modelEngineeringStatorbusiness.industryApplied MathematicsComputationControl engineeringKalman filterComputer Science Applicationslaw.inventionMatrix (mathematics)Settore ING-INF/04 - AutomaticaControl and Systems EngineeringlawControl theoryObservabilityElectrical and Electronic EngineeringbusinessMATLABActuatorcomputerInduction motorcomputer.programming_languageControl Engineering Practice
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Advanced techniques for solving groundwater and surface water problems in the context of inverse methods and climate change.

2021

[ES] El tema de la investigación se centra en técnicas avanzadas para manejar problemas de aguas subterráneas y superficiales relacionados con métodos inversos y cambio climático. Los filtros de Kalman, con especial atención en Ensemble Smoother with Multiple Data Assimilation (ES-MDA), se analizan y mejoran para la solución de diferentes tipos de problemas inversos. En particular, la principal novedad es la aplicación de estos métodos para la identificación de series temporales. La primera parte de la tesis, luego de la descripción del método, presenta el desarrollo de un software escrito en Python para la aplicación de la metodología propuesta. El software cuenta con un flujo de trabajo f…

Inverse problemsMathematical optimizationINGENIERIA HIDRAULICAComputer scienceIterative methodsContext (language use)HydrographSurface waterAguas superficialesCovarianceInverse problemStochastic analysisFiltro de KalmanSurrogate modelCambio climáticoClimate changeEnsemble Kalman filterClimate modelAnálisis estocásticoAguas subterráneasKalman filterMetodos iterativosGroundwaterFlow routing
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Localization in Structured Environments with UWB Devices without Acceleration Measurements, and Velocity Estimation Using a Kalman–Bucy Filter

2022

In this work, a novel scheme for velocity and position estimation in a UWB range-based localization system is proposed. The suggested estimation strategy allows to overcome two main problems typically encountered in the localization systems. The first one is that it can be suitable for use in environments where the GPS signal is not present or where it might fail. The second one is that no accelerometer measurements are needed for the localization task. Moreover, to deal with the velocity estimation problem, a suitable Kalman–Bucy filter is designed and it is compared, experimentally, with a particle filter by showing the features of the two algorithms in order to be used in a localization …

Kalman–Bucy filterrange-based localization without accelerometers; UWB; localization; velocity estimation; Kalman–Bucy filterUWBElectrical and Electronic Engineeringvelocity estimationBiochemistryInstrumentationRange-based localization without accelerometerAtomic and Molecular Physics and OpticslocalizationAnalytical Chemistry
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Jón Kalman Stefánsson: Kaloilla ei ole jalkoja

2019

Kirja-arvostelu teoksesta Jón Kalman Stefánsson: Kaloilla ei ole jalkoja (Fiskarnir hafa enga fætur). Suom. Tapio Koivukari. Aviador Kustannus 2019. 297 sivua nonPeerReviewed

Kaloilla ei ole jalkojakirja-arvostelutperhesuhteetkalastajatStefánsson Jón Kalmanmuistaminen
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