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Three neural network based, sensor systems for environmental monitoring

机译:基于三个神经网络的环境监测传感器系统

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Compact, portable systems capable of quickly identifying contaminants in the field are of great importance when monitoring the environment. One of the missions of the Pacific Northwest Laboratory is to examine and develop new technologies for environmental restoration and waste management at the Hanford Site (a former Plutonium production facility). In this paper, three prototype sensing systems are discussed. These prototypes are composed of sensing elements, data acquisition system, computer, and neural network implemented in software and are capable of automatically identifying contaminants. The first system employs an array of tin-oxide gas sensors and is used to identify chemical vapors. The second system employs an array of optical sensors and is used to identify the composition of chemical dyes in liquids. The third system contains a portable gamma-ray spectrometer and is used to identify radioactive isotopes. In these systems, the neural network is used to identify the composition of the sensed contaminant. With a neural network, the intense computation takes place during the training process. Once the network is trained, operation consists of propagating the data through the network. Since the computation involved during operation consists of vector-matrix multiplication and application of look-up tables (activation function), unknown samples can be rapidly identified in the field.
机译:在监视环境时,能够快速识别现场污染物的紧凑,便携式系统非常重要。太平洋西北实验室的任务之一是在汉福德基地(以前的a生产基地)研究和开发用于环境修复和废物管理的新技术。在本文中,讨论了三种原型感测系统。这些原型由传感元件,数据采集系统,计算机和以软件实现的神经网络组成,能够自动识别污染物。第一个系统采用一系列氧化锡气体传感器,并用于识别化学蒸气。第二个系统采用光学传感器阵列,用于识别液体中化学染料的成分。第三个系统包含便携式伽马射线光谱仪,用于识别放射性同位素。在这些系统中,神经网络用于识别感测到的污染物的成分。使用神经网络,可以在训练过程中进行大量计算。训练好网络后,操作包括通过网络传播数据。由于运算过程中涉及的计算包括向量矩阵乘法和查找表(激活函数)的应用,因此可以在现场快速识别未知样本。

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