How many traffic accidents can autonomous driving reduce?
It should be certain that the development of autonomous driving technology can reduce the incidence of traffic accidents. But it should be certain that traffic accidents cannot be completely avoided.
Regardless of self-driving cars or manually driven vehicles, there are many causes of traffic accidents during driving, including people, vehicles, roads, and the environment. , weather and other factors.
Some of them are caused by the driver, such as:
- Insufficient observation of surrounding road conditions and traffic lights, misjudgment;
- Illegal driving, dangerous driving Driving, etc.;
- Improper emergency measures and slow response;
- Fatigue driving; Drunk driving, drug driving;
- Sudden discomfort of the driver, etc.
These accidents should be significantly reduced or even eliminated as technologies such as advanced assisted driving, autonomous driving, and vehicle-to-road collaboration V2X become more popular.
But there are still some accidents that may still occur, such as:
- Sudden failure of the vehicle itself
- Sudden situations of other vehicles, such as: items falling Falling, leaving, etc.
- Sudden situations caused by other people or things, such as: people (animals) suddenly running out
- Sudden situations of roads or weather, such as: road collapse, Floods, mudslides, landslides, and other
- other emergencies, etc.
So, autonomous driving will not be absolutely safe, but will only be relatively safer.
I hope everyone is traveling safely.
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