【24h】

A smart airbag system

机译:智能安全气囊系统

获取原文

摘要

Pattern recognition techniques, such as neural networks, have been applied to identify objects within the passenger compartment of the vehicle, such as a rear facing child seat or an out-of-position occupant, and to suppress the airbag when anoccupant is more likely to be injured by the airbag than by the accident. Neural networks have also been applied to sense automobile crashes. The use of neural networks is extended here to tailoring the airbag inflation to the severity of the crash, thesize, position and relative velocity of the occupant and other factors such as seatbelt usage, seat and seat back positions, vehicle velocity, and any other relevant information.It is well known that a neural network based crash sensor can forecast, based on the first part of the crash pulse, that the crash will be of a severity which requires that an airbag be deployed. This is extended here to enhance the capabilities of thissensor to forecast the velocity change of the crash over the entire crash period. Then a pattern recognition occupant position and velocity determination sensor is added. Finally, an occupant weight sensor is included to permit a measure of the occupant's momentum or kinetic energy. The combination of these systems in various forms will be used to optimize inflation and/or deflation of the airbag to create a "smart airbag" systemCrash sensors can predict that a crash is of a severity which requires the deployment of an airbag for the majority of real world crashes. A more difficult problem is to predict the crash velocity versus time function and then to adjust the airbaginflation/deflation over time so that just the proper amount of gas is in the airbag at all times even without considering the influence of the occupant. To also simultaneously consider the occupant size, weight, position and velocity renders this problem unsolvable by conventional methods.
机译:已经应用了模式识别技术,例如神经网络,以识别车辆的乘客舱内的物体,例如后部的儿童座椅或距离乘员,并且当麻醉剂更有可能时抑制安全气囊由安全气囊受伤而不是事故。神经网络也已应用于感知汽车崩溃。这里使用神经网络的使用,以使安全气囊通胀定制到船长的严重程度,占用者的严重程度,而乘坐的船只和其他因素,例如安全带使用,座椅和座椅靠背位置,车辆速度以及任何其他相关的其他因素信息。众所周知,基于神经网络的崩溃传感器可以基于碰撞脉冲的第一部分预测,崩溃将具有严重性,这需要部署安全气囊。这在此处扩展以增强Thisensor的能力,以预测整个崩溃期间碰撞的速度变化。然后添加模式识别乘员位置和速度确定传感器。最后,包括乘员权重传感器,以允许衡量乘员的动量或动能。这些系统以各种形式的组合将用于优化气囊的通胀和/或放气,以创建“智能气囊”SystemCrash传感器可以预测崩溃的严重性,这需要为大多数部署安全气囊的严重程度现实世界崩溃了。一个更困难的问题是预测碰撞速度与时间函数,然后随时间调节安全气囊/通缩,使得即使在不考虑乘员的影响,也可以随时在安全气囊中始终处于安全气囊中。还要同时考虑乘员尺寸,重量,位置和速度使传统方法无法解决的这种问题。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号