Adaptive real-time optimization model of process parameters based on end-edge-cloud collaboration and MIRF_WPSO
In view of the problem that it is difficult to guarantee the real-time optimization of process parameters due to the mutual coupling between processes,the large amount of process data and high processing delay in the process industrial production process,an adaptive real-time optimization model of process parameters based on end-edge-cloud collaboration and MIRF_WPSO is proposed.Firstly,an end-edge-cloud collaborative real-time optimization architecture for process parameters of multi-source heterogeneous processes is built based on edge computing technology.Then,a process parameter optimization algorithm based on mutual information random forest and adaptive inertia weighted particle swarm(MIRF_WPSO)is constructed,which is deployed at the edge to realize real-time optimization of process parameters,while a self-aware update mechanism is deployed at the cloud to realize an efficient automated closed-loop network of algorithm training-updating-recall.Finally,an experimental platform is built,and the experimental results show that the"end-edge-cloud"collaborative mode effectively relieves the computational pressure on the cloud,and enables real-time and efficient self-optimized regulation of process parameters.The average standard deviation of quality index is reduced from 1.86%to 1.25%,and the optimization speed is increased by 11.4%,providing new ideas for the further development of intelligent production processes in process industries.