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Autonomous Driving: Difference between revisions

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The main drivers for achieving  autonomous driving is the reduction of traffic accidents by eliminating human error, increasing road capacity and traffic flow by reducing distance between cars and making use of traffic management information, relieving the car occupants from driving and navigation activities and allowing them to engage in other activities or rest<ref>[[Wikipedia:Driverless car| Driverless car on Wikipedia]]</ref>.
The main drivers for achieving  autonomous driving is the reduction of traffic accidents by eliminating human error, increasing road capacity and traffic flow by reducing distance between cars and making use of traffic management information, relieving the car occupants from driving and navigation activities and allowing them to engage in other activities or rest<ref>[[Wikipedia:Driverless car|Driverless car on Wikipedia]]</ref>.


A driverless car will have be combinations of several techniques among which GNSS that will attain the objective of taking a land vehicle from point A to point B using public roads. In autonomous driving GNSS can be used for navigation being used to determine the vehicle location, vehicle velocity and current. This information will then be used to decide the vehicle route using digital maps. If the accuracy is good enough GNSS can be used also for lane determination and even for attitude determination. If the location information is shared among cars, GNSS could theoretically be used for short-range situation awareness although it is not expected that GNSS will be used in the future as sole means of information for short-range situation awareness.
A driverless car will have be combinations of several techniques among which GNSS that will be able to guide a land vehicle from one point to another autonomously using public roads. In autonomous driving, GNSS can be used for navigation being used to determine the vehicle location, vehicle velocity and current. This information will then be used to decide the vehicle route using digital maps. If the accuracy is good enough GNSS can be used also for lane determination and even for attitude determination. If the location information is shared among cars, GNSS could theoretically be used for short-range situation awareness although it is not expected that GNSS will be used in the future as sole means of information for short-range situation awareness.


== Application Architecture ==
== Application Architecture ==
[[File:Hands-free Driving.jpg|right|thumb|300px|Autonomous Vehicle Prototype]]
A autonomous vehicle would have a GNSS receptor and antenna installed that provided positioning the car's autopilot system. The autopilot system uses this information to decide the route to take using digital maps and eventually traffic information.


Normally autonomous car prototypes rely on short range sensor (cameras, ultrasound, radar, lidar, etc) for short-range situational awareness. Short-range situation awareness allows the car's autopilot to determine the lane where is traveling and to be aware of the surrounding environment including other cars and obstacles. GNSS can be used as additional source of information for short-range situational awareness but it is not likely that it is used as the sole means for lane determination and situation awareness. For the use of GNSS for short-range situation awareness the accuracy would have to be at decimeter level and the information of the position of the cars would have to be shared somehow. Even though this would cover for other obstacles that might be on the road.
The use of road infrastructure such as rails or electronic markers could make autonomous car's simpler in technical terms but would require and infrastructural cost that might be too high.


== Application Characterization ==
== Application Characterization ==
Autonomous Driving is still a research area and there aren't yet vehicles approved to be driven without human supervision. The existing vehicles are research prototypes that still cannot run autonomously 100% of the time.


A restricted form of Autonomous driving is Advanced Driving Assistance Systems (ADAS). ADAS combines vehicle capabilities to improve mobility and active safety. GNSS will provide important additional data to ADAS on the vehicle’s environment. ADAS then warns the driver of imminent danger or takes full or partial control over the vehicle. For instance, the speed could be reduced by ADAS under bad visibility conditions if the car approaches a tight turn too fast. This function will be possible with accurate position data of guaranteed integrity.  
A restricted form of Autonomous driving is Advanced Driving Assistance Systems (ADAS). ADAS combines vehicle capabilities to improve mobility and active safety. GNSS will provide important additional data to ADAS on the vehicle’s environment. ADAS then warns the driver of imminent danger or takes full or partial control over the vehicle. For instance, the speed could be reduced by ADAS under bad visibility conditions if the car approaches a tight turn too fast. This function will be possible with accurate position data of guaranteed integrity.  
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== Application Examples ==
== Application Examples ==


Examples of autonomous vehicle projects are:
* '''Google driverless car''' - Project by Google that involves developing technology for driverless cars<ref>[[Wikipedia:Google driverless car|Google driverless car on Wikipedia]]</ref>.
* '''EUREKA Prometheus Project''' - The PROgraMme for a European Traffic of Highest Efficiency and Unprecedented Safety was the largest R&D project ever in the field of driverless cars and was funded by the European Commission<ref>[[Wikipedia:EUREKA Prometheus Project|EUREKA Prometheus Project on Wikipedia]]</ref>.
* '''BRAiVE''' - Prototype autonomous vehicle developed by VisLAb of the University of Parma <ref>[http://www.braive.vislab.it/index.php BRAiVE site]</ref>.


== Notes ==
== Notes ==

Revision as of 16:45, 12 September 2011


ApplicationsApplications
Title Autonomous Driving
Author(s) GMV.
Level Medium
Year of Publication 2011
Logo GMV.png


The main drivers for achieving autonomous driving is the reduction of traffic accidents by eliminating human error, increasing road capacity and traffic flow by reducing distance between cars and making use of traffic management information, relieving the car occupants from driving and navigation activities and allowing them to engage in other activities or rest[1].

A driverless car will have be combinations of several techniques among which GNSS that will be able to guide a land vehicle from one point to another autonomously using public roads. In autonomous driving, GNSS can be used for navigation being used to determine the vehicle location, vehicle velocity and current. This information will then be used to decide the vehicle route using digital maps. If the accuracy is good enough GNSS can be used also for lane determination and even for attitude determination. If the location information is shared among cars, GNSS could theoretically be used for short-range situation awareness although it is not expected that GNSS will be used in the future as sole means of information for short-range situation awareness.

Application Architecture

Autonomous Vehicle Prototype

A autonomous vehicle would have a GNSS receptor and antenna installed that provided positioning the car's autopilot system. The autopilot system uses this information to decide the route to take using digital maps and eventually traffic information.

Normally autonomous car prototypes rely on short range sensor (cameras, ultrasound, radar, lidar, etc) for short-range situational awareness. Short-range situation awareness allows the car's autopilot to determine the lane where is traveling and to be aware of the surrounding environment including other cars and obstacles. GNSS can be used as additional source of information for short-range situational awareness but it is not likely that it is used as the sole means for lane determination and situation awareness. For the use of GNSS for short-range situation awareness the accuracy would have to be at decimeter level and the information of the position of the cars would have to be shared somehow. Even though this would cover for other obstacles that might be on the road.

The use of road infrastructure such as rails or electronic markers could make autonomous car's simpler in technical terms but would require and infrastructural cost that might be too high.

Application Characterization

Autonomous Driving is still a research area and there aren't yet vehicles approved to be driven without human supervision. The existing vehicles are research prototypes that still cannot run autonomously 100% of the time.

A restricted form of Autonomous driving is Advanced Driving Assistance Systems (ADAS). ADAS combines vehicle capabilities to improve mobility and active safety. GNSS will provide important additional data to ADAS on the vehicle’s environment. ADAS then warns the driver of imminent danger or takes full or partial control over the vehicle. For instance, the speed could be reduced by ADAS under bad visibility conditions if the car approaches a tight turn too fast. This function will be possible with accurate position data of guaranteed integrity.

Application Examples

Examples of autonomous vehicle projects are:

  • Google driverless car - Project by Google that involves developing technology for driverless cars[2].
  • EUREKA Prometheus Project - The PROgraMme for a European Traffic of Highest Efficiency and Unprecedented Safety was the largest R&D project ever in the field of driverless cars and was funded by the European Commission[3].
  • BRAiVE - Prototype autonomous vehicle developed by VisLAb of the University of Parma [4].

Notes


References