Design of an Estimator Using the Artificial Neural Network Technique to Characterise the Braking of a Motor Vehicle

Sensors (Basel). 2022 Feb 19;22(4):1644. doi: 10.3390/s22041644.

Abstract

Automatic systems are increasingly being applied in the automotive industry to improve driving safety and passenger comfort, reduce traffic and increase energy efficiency. The objective of this work is focused on improving the automatic brake assistance systems of motor vehicles trying to imitate human behaviour but correcting possible human errors such as distractions, lack of visibility or time reaction. The proposed system can optimise the intensity of the braking according to the available distance to carry out the manoeuvre and the vehicle speed to be as less aggressive as possible, thus giving priority to the comfort of the driver. A series of tests are carried out in this work with a vehicle instrumented with sensors that provide real-time information about the braking system. The data obtained experimentally during the dynamic tests are used to design an estimator using the Artificial Neural Network (ANN) technique. This information makes it possible to characterise all braking situations based on the pressure of the brake circuit, the type of manoeuvre and the test speed. Thanks to this ANN, it is possible to estimate the requirements of the braking system in real driving situations and carry out the manoeuvres automatically. Experiments and simulations verified the proposed method for the estimation of braking pressure in real deceleration scenarios.

Keywords: artificial neural network; brake pressure estimation; pressure sensor; types of braking.

MeSH terms

  • Accidents, Traffic / prevention & control
  • Automobile Driving*
  • Deceleration*
  • Humans
  • Motor Vehicles
  • Neural Networks, Computer