Sean J. Hart, Mark H. Hammond, Jennifer T. Wong, Mark T. Wright, Daniel T. Gottuk, Susan L. Rose-Pehrsson, Frederick W. Williams
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引用次数: 10
Abstract
The U.S. Navy program Damage Control-Automation for Reduced Manning is focused on enhancing automation of ship functions and damage control systems. A key element of this objective is the improvement of current fire-detection systems. An early warning fire-detection system is being developed by properly processing the output from sensors that measure different physical and chemical parameters of a developing fire or from analyzing multiple aspects of a given sensor output (e.g., rate of change as well as absolute value). The classification and speed of the probabilistic neural network (PNN), deployed in real-time, have been evaluated during a recent field test aboard the ex-USS SHADWELL, the Advanced Damage Control Fire Research Platform of the Naval Research Laboratory. The real-time performance is documented and as a result of optimization efforts, improvements in performance have been recognized. Early fire detection, while maintaining nuisance source immunity, has been demonstrated. A detailed examination of the PNN during fire testing has been undertaken. Using real and simulated data, a variety of scenarios (taken from recent field experiences) have been used or recreated for the purpose of understanding potential failure modes of the PNN in this application. © 2001 John Wiley & Sons, Inc. Field Analyt Chem Technol 5: 244–258, 2001
物理/化学传感器阵列和概率神经网络的实时分类性能和失效模式分析
美国海军减员损伤控制-自动化项目的重点是增强船舶功能和损伤控制系统的自动化。这一目标的一个关键要素是改进目前的火灾探测系统。目前正在通过适当处理测量正在发生的火灾的不同物理和化学参数的传感器的输出或通过分析给定传感器输出的多个方面(例如,变化率和绝对值)的输出来发展一种早期预警火灾探测系统。在最近的一次现场测试中,实时部署的概率神经网络(PNN)的分类和速度已经在海军研究实验室的先进损伤控制火力研究平台前uss SHADWELL上进行了评估。实时性能被记录下来,作为优化工作的结果,性能的改进得到了认可。早期火灾探测,同时保持滋扰源免疫,已被证明。在火灾试验期间对PNN进行了详细检查。使用真实和模拟数据,为了了解PNN在该应用中的潜在失效模式,已经使用或重新创建了各种场景(取自最近的现场经验)。©2001 John Wiley &儿子,Inc。化学工程学报(英文版),2001
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