4 research outputs found
Evaluation of estimation approaches on the quality and robustness of collision warning system
Vehicle safety is one of the most challenging aspect of future-generation
autonomous and semi-autonomous vehicles. Collision warning systems (CCWs), as a
proposed solution framework, can be relied as the main structure to address the
issues in this area. In this framework, information plays a very important
role. Each vehicle has access to its own information immediately. However,
another vehicle information is available through a wireless communication. Data
loss is very common issue for such communication approach. As a consequence,
CCW would suffer from providing late or false detection awareness. Robust
estimation of lost data is of this paper interest which its goal is to
reconstruct or estimate lost network data from previous available or estimated
data as close to actual values as possible under different rate of lost. In
this paper, we will investigate and evaluate three different algorithms
including constant velocity, constant acceleration and Kalman estimator for
this purpose. We make a comparison between their performance which reveals the
ability of them in term of accuracy and robustness for estimation and
prediction based on previous samples which at the end affects the quality of
CCW in awareness generation