IJPE 2018
DOI: 10.23940/ijpe.18.06.p8.11711180
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Monitoring and Warning Methods of Tailings Reservoir using BP Neural Network

Abstract: The tailings reservoir is a major hazard source with high potential energy, which may cause artificial debris flow. The stability of the tailings reservoir is extremely important to the normal operation of the mining enterprises and the safety of people's lives and property. In order to reduce the risk of a tailings accident, a multivariate linear regression model, a BP neural network and a regression analysis model optimized by genetic algorithm are established in this article to discuss the monitoring and wa… Show more

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“…Data of composition and properties of heavy rail steels were obtained by thermodynamic calculation, as shown in Appendix A. A three-layer BP neural network can easily meet the mapping requirements of general functions and approximate to any number of variable functions through any precision requirements [19]. Thus, several three-layer BP neural networks are utilized to generate the prediction models to investigate the effect of (Cr, P, S, V) elements on the mechanical performance.…”
Section: B Bp Neural Network Trainingmentioning
confidence: 99%
“…Data of composition and properties of heavy rail steels were obtained by thermodynamic calculation, as shown in Appendix A. A three-layer BP neural network can easily meet the mapping requirements of general functions and approximate to any number of variable functions through any precision requirements [19]. Thus, several three-layer BP neural networks are utilized to generate the prediction models to investigate the effect of (Cr, P, S, V) elements on the mechanical performance.…”
Section: B Bp Neural Network Trainingmentioning
confidence: 99%
“…Self-cluster prediction based on multi-source eigenvalues predicted by the Elman neural network can be understood as a nonlinear system, and the BP neural network is a kind of nonlinear optimization. It adjusts the weights and thresholds of the network according to the error back propagation so that the sum of the system errors is the smallest [12][13]. Kolmogorov's theorem states that the three layers of the BP neural network are sufficient to approximate complex nonlinear systems with arbitrary precision [14][15][16].…”
Section: Bp Neural Networkmentioning
confidence: 99%