Abstract

Storage reliability is an important index of ammunition product quality. It is the core guarantee for the safe use of ammunition and the completion of tasks. In this paper, we develop a prediction model of ammunition storage reliability in the natural storage state where the main affecting factors of ammunition reliability include temperature, humidity, and storage period. A new improved algorithm based on three-stage ant colony optimization (IACO) and BP neural network algorithm is proposed to predict ammunition failure numbers. The reliability of ammunition storage is obtained indirectly by failure numbers. The improved three-stage pheromone updating strategies solve two problems of ant colony algorithm: local minimum and slow convergence. Aiming at the incompleteness of field data, “zero failure” data pretreatment, “inverted hanging” data pretreatment, normalization of data, and small sample data augmentation are carried out. A homogenization sampling method is proposed to extract training and testing samples. Experimental results show that IACO-BP algorithm has better accuracy and stability in ammunition storage reliability prediction than BP network, PSO-BP, and ACO-BP algorithm.

Highlights

  • Reliability is the primary quality index of military products

  • We develop a prediction model of ammunition storage reliability in the natural storage state where the main affecting factors of ammunition reliability include temperature, humidity, and storage period

  • Each stability index of IACO-BP is the minimum value of corresponding index in the four algorithms

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Summary

Introduction

Reliability is the primary quality index of military products. On the battlefield, the unreliable ammunition products will lead to the failure of military tasks or endanger the lives of our soldiers. On the reliability of ammunition storage, the traditional methods are based on natural storage condition data and accelerated testing data, respectively. Based on natural storage condition data, a Poisson reliability mathematical model is established in [7] to predict ammunition storage life. In [13], an EBayes statistical model is proposed to predict storage life by using the initial failure number. The ammunition storage reliability is predicted in [15] based on ammunition failure mechanism and accelerated life model. A new three-stage ACO and BP neural network is created in the model This prediction model excavates the mathematical relationship between the storage temperature, humidity, and period of ammunition under natural conditions and the number of ammunition failure.

Basic Theory of Ammunition Storage Reliability
IACO and BP Neural Network
Data Collection and Pretreatment
The Simulation Experiments
Conclusion
Full Text
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