Information and Diagnostics Systems
Diagnostic Algorithm Quality of the State of Underground Metal Structures the Using Neural Networks
Keywords
underground metal structures, neural network, technical condition, optimization algorithm quality, method Elman
Abstract
The underground metal structures function in specific conditions of the soil environment and cyclic mechanical loads. It is necessary to conduct a detailed analysis of underground metal structures and monitor their technical condition, since damage and destruction of structural elements during operation can lead to dangerous and/or catastrophic consequences. Intelligent monitoring systems are able to control the life cycle of underground pipelines based on a comprehensive analysis of their current state, operating loads and the results of interaction with the environment.
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