The invention discloses a TBM tunneling optimization method based on rock
slag physical characteristics. The method comprises the steps that firstly,
image acquisition and sensor equipment of a
system is installed, and TBM field tunneling parameter data and parameter data of geometric characteristics and physical characteristics of rock
slag are acquired to serve as a sample set of a model; secondly, a gradient lifting
regression tree model optimized by a
particle swarm algorithm is established for
parameter learning and training feedback, and a TBM tunneling parameter suggestion interval is controlled; thirdly, the TBM net tunneling rate is output, an optimal prediction model is obtained, the working performance of the optimal prediction model is evaluated according to a
test set in samples, and optimal tunneling
control parameters are provided; and finally, after the optimal tunneling
control parameters are compared with related specification requirements, feedback is conducted to a TBM console in time, and TBM tunneling parameters are adjusted. Optimization provided by the invention can be applied to TBM construction, rock
slag information is predicted in advance, the tunneling parameters are dynamically adjusted, intelligent prediction of the TBM
rock breaking efficiency is achieved, and the method has important significance in safe and efficient construction of tunnels.