1999
DOI: 10.1021/ac990238+
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Improved Probabilistic Neural Network Algorithm for Chemical Sensor Array Pattern Recognition

Abstract: An improved probabilistic neural network (IPNN) algorithm for use in chemical sensor array pattern recognition applications is described. The IPNN is based on a modified probabilistic neural network (PNN) with three innovations designed to reduce the computational and memory requirements, to speed training, and to decrease the false alarm rate. The utility of this new approach is illustrated with the use of four data sets extracted from simulated and laboratory-collected surface acoustic wave sensor array data… Show more

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Cited by 37 publications
(22 citation statements)
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“…The selection of this value is crucial because it determines the shape of the Gaussian function. A large radius possesses a smooth shape and has the advantage of interpolation, and a small radius leads to a sharp shape and reduces the overlap between adjacent samples [21]. But too small a spread cannot generalize well, because unknown samples only lie in the region that Gaussian function enclosing can be generalized.…”
Section: Pnns Structure Optimizationmentioning
confidence: 99%
“…The selection of this value is crucial because it determines the shape of the Gaussian function. A large radius possesses a smooth shape and has the advantage of interpolation, and a small radius leads to a sharp shape and reduces the overlap between adjacent samples [21]. But too small a spread cannot generalize well, because unknown samples only lie in the region that Gaussian function enclosing can be generalized.…”
Section: Pnns Structure Optimizationmentioning
confidence: 99%
“…Naval Research Laboratory (NRL) have demonstrated significant improvements in the accuracy, sensitivity and response times in fire and smoke detection using multicriteria approaches that utilize probabilistic neural network algorithms to combine data from various fire sensors. 5,6 Other efforts at NRL have confirmed the viability of using a multisensor, multicriteria approach with data fusion for the detection of chemical agents 7,8 and unexploded ordinance. 9,10 Likewise, multisensor detection systems have shown a number of advantages over comparable single sensor systems for the detection of chemical weapons agents and toxic industrial chemicals (CWA/TIC), as evidenced by a number of successful, commercially available, multisensor-based detection systems for CWA/TIC applications.…”
Section: Introductionmentioning
confidence: 95%
“…The probabilistic neural network (PNN) is based upon Bayes' classification method [47], [49]- [51]. The basis of the classification method is given in the following equation, where and are the prior probabilities for class and and are the costs of misclassification, and and are the true probability density functions:…”
Section: Probabilistic Neural Network (Pnn)mentioning
confidence: 99%