Аннотации:
This article explores the use of machine 
learning algorithms to identify anomalies in the solar 
heating system. A solar heating system that has been 
developed consists of several parts to simplify the 
description and modeling process. The authors propose a 
new architecture for neural networks based on ordinary 
differential equations. The idea is to apply the new 
architecture for practical problems of accident 
prediction (the problem of extrapolation of time series) 
and classification (classification of accidents based on 
historical data). The developed machine learning 
algorithms, artificial intelligence techniques, the theory 
of differential equations - these directions allow us to 
build a model for predicting the system's accident rate. 
The theory of database management (non-relational 
databases) - these systems allow you to establish the 
optimal storage of large time series.