ISSN: 1003-6326
CN: 43-1239/TG
CODEN: TNMCEW

Vol. 31    No. 4    April 2021

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Artificial intelligence model for studying unconfined compressive performance of fiber-reinforced cemented paste backfill
Zhi YU, Xiu-zhi SHI, Xin CHEN, Jian ZHOU, Chong-chong QI, Qiu-song CHEN, Di-jun RAO
(School of Resources and Safety Engineering, Central South University, Changsha 410083, China)
Abstract: To reduce the difficulty of obtaining the unconfined compressive strength (UCS) value of fiber-reinforced cemented paste backfill (CPB) and analyze the comprehensive impact of conventional and fiber variables on the compressive property, a new artificial intelligence model was proposed by combining a newly invented meta-heuristics algorithm (salp swarm algorithm, SSA) and extreme learning machine (ELM) technology. Aiming to test the reliability of that model, 720 UCS tests with different cement-to-tailing mass ratio, solid mass concentration, fiber content, fiber length, and curing time were carried out, and a strength evaluation database was collected. The obtained results show that the optimized SSA-ELM model can accurately predict the uniaxial compressive strength of the fiber-reinforced CPB, and the model performance of SSA-ELM model is better than ANN, SVR and ELM models. Variable sensitivity analysis indicates that fiber content and fiber length have a significant effect on the UCS of fiber-reinforced CPB.
Key words: fiber-reinforced cemented paste backfill; unconfined compressive strength; prediction; extreme learning machine; salp swarm algorithm
Superintended by The China Association for Science and Technology (CAST)
Sponsored by The Nonferrous Metals Society of China (NFSOC)
Managed by Central South University (CSU) 湘ICP备09001153号-9