The paper presents the concept of on-line estimating the state of the Mission Control
Center resources and algorithms for forecasting of contingencies. Resource state prediction
methods based on the development of a machine learning techniques called association rules
are presented. Using this method, the detection of such parameters and their values, the
appearance of which, at some point in time, affects the probability of a certain state of the
system at another moment in time, and in particular, the occurrence of an emergency. The
results of real case studies and specialist interface fragments are presented. System
development options are discussed.