摘要

An experimental platform with bracket structures, cables, parallel computer and imaging system is designed for defects detecting on steel rails. Meanwhile, an improved gradient descent algorithm based on a self-adaptive learning rate and a fixed momentum factor is developed to train back-propagation neural network for accurate and efficient defects classifications. Detection results of rolling scar defects show that such detection system can achieve accurate positioning to defects edges for its improved noise suppression. More precise characteristic parameters of defects can also be extracted. Furthermore, defects classification is adopted to remedy the limitations of low convergence rate and local minimum. It can also attain the optimal training precision of 0.00926 with the least 96 iterations. Finally, an enhanced identification rate of 95% has been confirmed for defects by using the detection system. It will also be positive in producing high-quality steel rails and guaranteeing the national transport safety.

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