Contribution: The contribution of this paper is a recursive generalized total least-squares (RGTLS) estimator that offers exponential forgetting and treats data with unequally sized and correlated noise. Application: RGTLS is used for estimation of vehicle driving resistance parameters. A vehicle longitudinal dynamics model and available control area network (CAN) signals form appropriate estimator inputs and outputs. Results: We present parameter estimates for the vehicle mass, two coefficients of rolling resistance, and drag coefficient of one test run on public road. Moreover, we compare the results of the proposed RGTLS estimator with two kinds of recursive least-squares (RLS) estimators. Discussion: While RGTLS outpe...
Published version of an article in the journal: Mathematical Problems in Engineering. Also available...
Road resistance is commonly divided into three different components; rolling resistance, wind resist...
This work provides novel robust and regularized algorithms for parameter estimation with application...
We introduce a recursive generalized total least-squares (RGTLS) algorithm with exponential forgetti...
We introduce an incremental total least-squares vehicle mass estimation algorithm, based on a vehicl...
Abstract: Good estimates of vehicle mass and road grade are important in automation of heavy duty ve...
This Master’s thesis describes a method for real-time estimation of a vehicle’s mass for automobiles...
We propose a recursive generalized total least-squares (RGTLS) estimator that is used in parallel wi...
An accurate estimate of the mass of a passenger vehicle is important for several safety systems and ...
Energy consumption prediction is increasingly important for eco-driving, energy management, and char...
Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction...
The gross vehicle mass (GVM) and the road grade are two factors that both have a substantial influen...
In this paper, a parameter estimation method of the model-based design approach is applied to estima...
A recursive least square (RLS) algorithm for estimation of vehicle sideslip angle and road friction ...
This thesis describes development of a real-time-implementable algorithm for simultaneous estimation...
Published version of an article in the journal: Mathematical Problems in Engineering. Also available...
Road resistance is commonly divided into three different components; rolling resistance, wind resist...
This work provides novel robust and regularized algorithms for parameter estimation with application...
We introduce a recursive generalized total least-squares (RGTLS) algorithm with exponential forgetti...
We introduce an incremental total least-squares vehicle mass estimation algorithm, based on a vehicl...
Abstract: Good estimates of vehicle mass and road grade are important in automation of heavy duty ve...
This Master’s thesis describes a method for real-time estimation of a vehicle’s mass for automobiles...
We propose a recursive generalized total least-squares (RGTLS) estimator that is used in parallel wi...
An accurate estimate of the mass of a passenger vehicle is important for several safety systems and ...
Energy consumption prediction is increasingly important for eco-driving, energy management, and char...
Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction...
The gross vehicle mass (GVM) and the road grade are two factors that both have a substantial influen...
In this paper, a parameter estimation method of the model-based design approach is applied to estima...
A recursive least square (RLS) algorithm for estimation of vehicle sideslip angle and road friction ...
This thesis describes development of a real-time-implementable algorithm for simultaneous estimation...
Published version of an article in the journal: Mathematical Problems in Engineering. Also available...
Road resistance is commonly divided into three different components; rolling resistance, wind resist...
This work provides novel robust and regularized algorithms for parameter estimation with application...