Paper
16 May 2017 Automated information-analytical system for thunderstorm monitoring and early warning alarms using modern physical sensors and information technologies with elements of artificial intelligence
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Abstract
Methods of artificial intelligence are a good solution for weather phenomena forecasting. They allow to process a large amount of diverse data. Recirculation Neural Networks is implemented in the paper for the system of thunderstorm events prediction. Large amounts of experimental data from lightning sensors and electric field mills networks are received and analyzed. The average recognition accuracy of sensor signals is calculated. It is shown that Recirculation Neural Networks is a promising solution in the forecasting of thunderstorms and weather phenomena, characterized by the high efficiency of the recognition elements of the sensor signals, allows to compress images and highlight their characteristic features for subsequent recognition.
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Anton S. Boldyreff, Dmitry A. Bespalov, and Anatoly Kh. Adzhiev "Automated information-analytical system for thunderstorm monitoring and early warning alarms using modern physical sensors and information technologies with elements of artificial intelligence", Proc. SPIE 10218, Autonomous Air and Ground Sensing Systems for Agricultural Optimization and Phenotyping II, 102180P (16 May 2017); https://doi.org/10.1117/12.2279848
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CITATIONS
Cited by 2 scholarly publications.
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KEYWORDS
Neural networks

Sensors

Chemical elements

Artificial intelligence

Neurons

Information technology

Signal processing

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