Abstract
Because electric emergency rescue is affected by many factors, there are certain problems in the rescue process. In order to improve the power emergency rescue effect, based on data mining technology, this paper selects the neural network algorithm as the main analysis algorithm of the model, and uses the multi-layer forward neural network topology to perform modeling and correlation analysis. Moreover, this paper establishes the functional architecture of the power system emergency plan deduction system based on the analysis of the demand for the power system emergency plan deduction system. In addition, this paper combines the power emergency rescue system requirements to build the model function module, proposes a mobile model based on the emergency rescue scene, and analyzes its realization process. Finally, in order to study the system performance, this paper designs experiments to analyze the model performance, and combines mathematical statistics to draw charts and score the system model. The research results show that the power rescue influence factor analysis model constructed in this paper is effective.
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