...
首页> 外文期刊>Fire Technology >Early Warning Fire Detection System Using a Probabilistic Neural Network
【24h】

Early Warning Fire Detection System Using a Probabilistic Neural Network

机译:基于概率神经网络的火灾预警系统

获取原文
获取原文并翻译 | 示例

摘要

The Navy program, Damage Control-Automation for Reduced Manning is focused on enhancing automation of ship functions and damage control systems. A key element to this objective is the improvement of current fire detection systems. As in many applications, it is desired to increase detection sensitivity and, more importantly, increase the reliability of the detection system through improved nuisance alarm immunity. Improved reliability is needed, such that fire detection systems can automatically control fire suppression systems. The use of multi-criteria based detection technology continues to offer the most promising means to achieve both improved sensitivity to real fires, and reduced susceptibility to nuisance alarm sources. A multi-criteria early warning fire detection system, has been developed to provide reliable warning of actual fire conditions, in less time, with fewer nuisance alarms, than can be achieved with commercially available smoke detection systems. In this study, a four-sensor array and a Probabilistic Neural Network have been used to produce an early warning fire detection system. A prototype early warning lire detector was built and tested in a shipboard environment. The current alarm algorithm resulted in better overall performance than the commercial smoke detectors, by providing both improved nuisance source immunity, with generally equivalent or faster response times.
机译:海军计划“减少人员配备的损害控制-自动化”的重点是增强船舶功能和损害控制系统的自动化。该目标的关键要素是改进现有的火灾探测系统。如在许多应用中一样,期望通过改进的有害警报抗扰度来提高检测灵敏度,并且更重要的是,提高检测系统的可靠性。需要改进的可靠性,使得火灾探测系统可以自动控制灭火系统。基于多标准的检测技术的使用继续提供了最有前途的手段,既可以提高对真实火灾的敏感性,又可以减少对滋扰警报源的敏感性。与市售烟雾探测系统相比,已经开发出了一种多标准预警火灾探测系统,可以在更短的时间内以较少的滋扰警报提供对实际火灾状况的可靠警告。在这项研究中,四传感器阵列和一个概率神经网络已被用于生产预警火灾探测系统。在舰载环境中建造并测试了原型原型预警雷达探测器。与传统的烟雾探测器相比,当前的警报算法通过提供改进的有害源抗扰性和通常等效或更快的响应时间,从而使整体性能优于商用烟雾探测器。

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