We introduce an incremental total least-squares vehicle mass estimation algorithm, based on a vehicle longitudinal dynamics model. Available control area network signals are used as model inputs and output. In contrast to common vehicle mass estimation schemes, where noise is only considered at the model output, our algorithm uses an errors-in-variables formulation and considers noise at the model inputs as well. A robust outlier treatment is realized as batch total least-squares routine and hence, the proposed algorithm works in a superior way on a broad range of vehicle acceleration. The results of six test runs on various vehicle masses show highly accurate mass estimation results on high and low dynamics of vehicular operation
The effect of vehicle active safety systems is subject to the accurate knowledge of vehicle states. ...
This work provides novel robust and regularized algorithms for parameter estimation with application...
This paper addresses the parameter estimation issue on mobile robots. A comparison between the state...
Contribution: The contribution of this paper is a recursive generalized total least-squares (RGTLS) ...
This thesis describes development of a real-time-implementable algorithm for simultaneous estimation...
This Master’s thesis describes a method for real-time estimation of a vehicle’s mass for automobiles...
An accurate estimate of the mass of a passenger vehicle is important for several safety systems and ...
The gross vehicle mass (GVM) and the road grade are two factors that both have a substantial influen...
As active chassis controllers are becoming increasingly complex and sophisticated, the performance o...
To solve the vehicle mass estimation problems, two vehicle mass estimation methods based on both com...
Abstract: Good estimates of vehicle mass and road grade are important in automation of heavy duty ve...
This dissertation uses polynomial chaos theory to address recursive parameter estimation in state sp...
In this paper, vehicle mass estimation problem was researched by the Kalman Filtering process to in...
A method for estimating the vehicle mass in real time is presented. Traditional mass estimation meth...
An algorithm for estimation of the vehicle mass with standard mounted sensors in a heavy duty Scania...
The effect of vehicle active safety systems is subject to the accurate knowledge of vehicle states. ...
This work provides novel robust and regularized algorithms for parameter estimation with application...
This paper addresses the parameter estimation issue on mobile robots. A comparison between the state...
Contribution: The contribution of this paper is a recursive generalized total least-squares (RGTLS) ...
This thesis describes development of a real-time-implementable algorithm for simultaneous estimation...
This Master’s thesis describes a method for real-time estimation of a vehicle’s mass for automobiles...
An accurate estimate of the mass of a passenger vehicle is important for several safety systems and ...
The gross vehicle mass (GVM) and the road grade are two factors that both have a substantial influen...
As active chassis controllers are becoming increasingly complex and sophisticated, the performance o...
To solve the vehicle mass estimation problems, two vehicle mass estimation methods based on both com...
Abstract: Good estimates of vehicle mass and road grade are important in automation of heavy duty ve...
This dissertation uses polynomial chaos theory to address recursive parameter estimation in state sp...
In this paper, vehicle mass estimation problem was researched by the Kalman Filtering process to in...
A method for estimating the vehicle mass in real time is presented. Traditional mass estimation meth...
An algorithm for estimation of the vehicle mass with standard mounted sensors in a heavy duty Scania...
The effect of vehicle active safety systems is subject to the accurate knowledge of vehicle states. ...
This work provides novel robust and regularized algorithms for parameter estimation with application...
This paper addresses the parameter estimation issue on mobile robots. A comparison between the state...