A method for predicting the blasting pressure of balloons using the surface strain in low pressure

Author:

Shen Yong-Zheng1ORCID,Lin Guo-Chang1,Tan Hui-Feng1

Affiliation:

1. National Key Laboratory of Science and Technology for National Defence on Advanced Composites in Special Environments, Center for Composite Materials and Structures, Harbin Institute of Technology, Harbin, China

Abstract

Balloons made by cut fabric pieces are widely used in space research. To predict the blasting pressure of a balloon, we propose a novel method based on the non-contact test strain at a low internal pressure. The three-dimensional digital image correlation technique is introduced to measure the surface strain of the balloon. Representative regions of the balloon are selected as the test regions. A correction factor is proposed that accounts for the relationship between the internal pressure and the surface strain for the actual and the ideal balloon. By combining the maximum surface strain at a given internal pressure and the correction factor, we can predict the blasting pressure of the balloon. A blasting test is carried out to verify the feasibility of the predictive method. When the value of the ratio of the maximum test strain to the limiting strain reaches about a reference value, the absolute value of the deviation percentage between the predicted blasting pressure and the actual blasting pressure is less than 10%. The blasting pressure for balloon can be predicted accurately. This method does not require the balloon to be inflated to a high internal pressure, which improves the practicality of the prediction.

Funder

foundation for innovative research groups of the national natural science foundation of china

fundamental research funds for the central universities

Publisher

SAGE Publications

Subject

Mechanical Engineering

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