The evaluation of transient voltage stability of power system is one of the foundations to support the safe
stable and efficient operation of the system. In the case of a high proportion of renewable energy access
the randomness and complexity of the power grid have increased significantly
the existing model-driven and data-driven transient voltage discrimination methods are difficult to model and lack mechanism support
and all the shortcomings above become increasingly prominent. In view of the shortcomings of the above methods
this paper proposes a transient voltage stability evaluation method based on the maximum Lyapunov expendent index (MLE) of the network inactive quantity
which realizes the fusion of model-driven and data-driven advantages. Firstly
the network energy function based on response information is constructed by integrating the response trajectory of the system. Then
the correlation coefficient between voltage and network functional quantity and network non-functional quantity is defined
and then the network non-functional quantity is extracted as the voltage dominant term. Furthermore
according to the intrinsic relationship between the transient voltage stability and the amplitude change rate of the network inactive quantity and the difference between the network inactive quantity and the phase space reconstruction theory
the transient voltage stability problem is transformed into the MLE curve analysis problem of the network reactive energy difference of the key branch where the voltage disturbed node is located to realize the transient voltage stability discrimination of the system. Finally
the accuracy and effectiveness of the proposed method are verified by the simulation analysis of the modified New England 10-machine 39-node case and the electromechanical transient standard case CSEE-VS.