ZHANG Yi, SUN Shouquan, LIAO Siyang, et al. A Mechanism-data Hybrid-driven Power Model for Short-process Steel Production[J]. 2025, 45(18): 7098-7109.
DOI:
ZHANG Yi, SUN Shouquan, LIAO Siyang, et al. A Mechanism-data Hybrid-driven Power Model for Short-process Steel Production[J]. 2025, 45(18): 7098-7109. DOI: 10.13334/j.0258-8013.pcsee.240422.
A Mechanism-data Hybrid-driven Power Model for Short-process Steel Production
The electricity load of iron and steel enterprises is greatly affected by the production conditions and physical process parameters. The existing research ignores the coupling effect of material flow and energy flow between processes
resulting in insufficient simulation accuracy. To solve the above problems
this paper presents a short-process power model of steel production driven by mechanism and data. Firstly
based on the coupling characteristics of material flow and energy flow in the transport process
the attenuation law of physical quantities such as mass and temperature value between the successive processes is derived. Secondly
a general expression of the power function is established according to the operation properties of the equipment
and a kernel extreme learning machine is used to fit the physical quantities and characteristic parameters of the power function. Finally
the power of different processes is superimposed in time domain
and the total power curve for the short-process iron and steel enterprise is obtained. The simulation results of a domestic steelmaking enterprise show that the proposed model can reflect power characteristics more accurately.