Parallel-tandem mode identification method and its uses in machine scent

A technology of pattern recognition and machine smell, which is applied to instruments, biological neural network models, analytical materials, etc. It can solve the complex structure of multiple function approximation models, the insufficient approximation ability of multivariate polynomial models, and the insufficient accuracy of classification and intensity estimation. problem, to achieve the effect of fast learning speed, simple structure and high classification accuracy

Inactive Publication Date: 2008-01-09
EAST CHINA UNIV OF SCI & TECH
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Problems solved by technology

The classifier ensemble model and its combination strategy that appeared in the early 1990s opened up new ways to improve the generalization ability of classifiers. However, not only the rules such as maximum, minimum, average, product, sum, and majority voting cannot be directly applied to Combination of function approximation models, and the approximation ability of "weak" multivariate polynomial models such as linear and quadratic is not enough
Invention patent "A Method for Machine Olfactory Odor Recognition Based on Modular Combination Neural Network" (approval number: ZL03141537.7) transforms the concentration estimation problem into a classification problem, and does

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  • Parallel-tandem mode identification method and its uses in machine scent
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  • Parallel-tandem mode identification method and its uses in machine scent

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Embodiment Construction

[0065] The present invention will be described in further detail below in conjunction with the accompanying drawings.

[0066] The present invention is to the machine olfactory instrument structure that smell test is used as shown in accompanying drawing 1, and it is characterized in that, by test case 1, constant temperature cup 2, automatic sampling lifting mechanism 3, computer and display 4, oxygen or dry air bottle 5 altogether 5 major components. The present invention mainly solves the problem of pattern recognition in the virtual frame on the right side of Fig. 1 .

[0067] Please refer to accompanying drawing 1 and accompanying drawing 2, in order to carry out category judgment and intensity estimation to large-scale odor, a kind of machine olfactory instrument comprises the following steps to the test of odor:

[0068]a. When the instrument is turned on and the instrument is warmed up for 30 minutes, the computer records the response state of the gas sensor to the am...

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Abstract

A discriminating method of parallel series patter and its application in the machinery smell, the characteristics is that regarding the big scale smell sorts and intension confirm problem as assortment problem, and then regarding as approximation problem, giving settling respectively for the mode which is made up of classifier layer and function approximation mode layer. It includes the four implementation steps: (1) n pieces one output neural net of classifier layer takes charge of ensuring the types of n kinds of smell, one to one correspondence. The training subset of a network is made up of all representative smell samples and the part apposition smell samples. (2) n pieces one output neural net of function approximation mode layer takes charge of ensuring the intensity of n kinds of smell, one to one correspondence. The training subset of a network is made up of all representative smell samples. (3) The suppositional balance of imbalance training subset. (4) n+1 pieces one output neural net puts up decision. By using the invention, the machinery olfactometer can solve the simultaneous estimation problem of thousands upon thousands smell types and intensity.

Description

technical field [0001] The invention is a pattern recognition method for large-scale learning problems and its application in real-time determination of large-scale odor categories and strengths by machine olfactory instruments, involving task decomposition, virtual balance of unbalanced sample sets, and parallel-serial neural network models The structure and parameter optimization of , the simultaneous determination method of odor category and intensity based on machine olfaction and its application. Background technique [0002] Spices and flavors, alcohol, cigarettes, tea, rice, wheat, cooking oil and other items have aroma as a quality inspection index. The current inspection "instrument" is the human nose, and the quality of aroma is described by "normal" , "pure", "fair", "dense" and other extremely vague terms, it is difficult to be scientific, objective and fair. The invention uses a plurality of gas sensors with overlapping performances to form an array to imitate ...

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Application Information

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IPC IPC(8): G01N35/00G06N3/02
Inventor 高大启刘芳君孙建立
Owner EAST CHINA UNIV OF SCI & TECH
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