The article studies and develops the methods for assessing the degree of participation of
power plants in the general primary frequency control in a unified energy system (UES) of Russia
based on time series analysis of frequency and power. To identify the processes under study, methods
of associative search are proposed. The methods are based on process knowledgebase development,
data mining, associative research, and inductive learning. Real-time identification models generated
using these algorithms can be used in automatic control and decision support systems. Evaluation
of the behavior of individual UES members enables timely prevention of abnormal and emergency
situations. Methods for predictive diagnostics of generating equipment in terms of their readiness to
participate in the primary frequency control are also proposed. In view of the non-stationarity of the
load in electrical networks, the algorithms have been developed using wavelet analysis. Case studies
are given showing the operating of the proposed methods.