@article{MAKHILLIJSSCEA201811128764, title = {Modeling of Temporal Stability to Critical States for Predicting Operational Safety of Turbogenerators}, journal = {International Journal of System Signal Control and Engineering Application}, volume = {11}, number = {1}, pages = {13-19}, year = {2018}, issn = {1997-5422}, doi = {ijssceapp.2018.13.19}, url = {https://makhillpublications.co/view-article.php?issn=1997-5422&doi=ijssceapp.2018.13.19}, author = {Dmitry Aleksandrovich,Aleksandr Sergeyevich,Andrey Vladimirovich,Sergey Aleksandrovich and}, keywords = {Forecasting,adaptive reaction,safety of industrial objects,critical condition,reaction modeling,temporal stability}, abstract = {The study is devoted to the creation of a method for predicting the temporal stability under conditions of dynamic and static effects during process of operation of a turbogenerator. The method is based on the restoration modeling the operating mode of the turbogenerator under critical conditions; the model assumes an adaptive response at the initial stage of the critical state recognition. The deep neural network teaching technique whilst the classification of spectrogram anomalies is provided.} }