Practical control problems are subject to dealing with instrumentation noise and inaccurate models. These can be modelled as measurement and state noise, respectively. Nonlinear state estimators, for example a particle filter, can be used to mitigate these effects. However, they are usually computationally expensive which makes them impractical for industrial use. This text investigates using General Purpose Graphics Processing Units (GPGPU) to improve the performance particle and Gaussian sum filters by parallelizing their prediction, update and resampling steps. GPGPU accelerated filters are found to outperform non-accelerated filters as the number of particle increases. GPGPU acceleration also allows particle filters with 2^19.5 particle...
This paper deals with advanced state estimation algorithms for estimation of biomass concentration a...
Abstract Particle filter (PF) is an emerging signal processing methodology, which can effectively de...
A particle filter is a Montecarlo-based method suitable for predicting future states o...
State estimation plays an important role in cyber-physical systems. An accurate state of the physica...
In this paper, a graphics processor unit (GPU) accelerated particle filtering algorithm is presented...
The particle filter (PF) has during the last decade been proposed for a wide range of localization a...
The particle filter is a Bayesian estimation technique based on Monte Carlo simulations. The non-par...
Modern graphics cards for computers, and especially their graphics processing units (GPUs), are de-s...
Abstract: Particle filters have been widely used for the solution of optimal estimation problems in ...
Modern graphics cards for computers, and especially their graphics processing units (GPUs), are desi...
Abstract — We present the design, analysis, and real-time implementation of a distributed computatio...
Modern graphics cards for computers, and especially their graphics processing units (GPUs), are desi...
This thesis work analyses the obstacles faced when adapting the particle filtering algorithm to run ...
Modern graphics cards for computers, and especially their graphics processing units (GPUs), are desi...
We consider deployment of the particle filter on modern massively parallel hardware architectures, s...
This paper deals with advanced state estimation algorithms for estimation of biomass concentration a...
Abstract Particle filter (PF) is an emerging signal processing methodology, which can effectively de...
A particle filter is a Montecarlo-based method suitable for predicting future states o...
State estimation plays an important role in cyber-physical systems. An accurate state of the physica...
In this paper, a graphics processor unit (GPU) accelerated particle filtering algorithm is presented...
The particle filter (PF) has during the last decade been proposed for a wide range of localization a...
The particle filter is a Bayesian estimation technique based on Monte Carlo simulations. The non-par...
Modern graphics cards for computers, and especially their graphics processing units (GPUs), are de-s...
Abstract: Particle filters have been widely used for the solution of optimal estimation problems in ...
Modern graphics cards for computers, and especially their graphics processing units (GPUs), are desi...
Abstract — We present the design, analysis, and real-time implementation of a distributed computatio...
Modern graphics cards for computers, and especially their graphics processing units (GPUs), are desi...
This thesis work analyses the obstacles faced when adapting the particle filtering algorithm to run ...
Modern graphics cards for computers, and especially their graphics processing units (GPUs), are desi...
We consider deployment of the particle filter on modern massively parallel hardware architectures, s...
This paper deals with advanced state estimation algorithms for estimation of biomass concentration a...
Abstract Particle filter (PF) is an emerging signal processing methodology, which can effectively de...
A particle filter is a Montecarlo-based method suitable for predicting future states o...