Acquisition and Processing of Data in CPS for Remote Monitoring of the Human functional State

2021;
: сс. 14 - 20
1
Національний університет «Львівська політехніка»
2
Національний університет «Львівська політехніка», кафедра електронних обчислювальних машин

Data acquisition and processing in cyber-physical system for remote monitoring of the human functional state have been considered in the paper. The data processing steps, strategies for multi-step forecasting evaluation metrics and machine learning algorithms to be implemented have been analysed and described. What is important, this way it will be possible to track the condition of the sick and response to the health changes in advance.

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