Workflow-based Fast Data-driven Predictive Control with Disturbance Observer in Cloud-edge Collaborative Architecture
Runze Gao, Qiwen Li, Li Dai, Yufeng Zhan, Yuanqing Xia

TL;DR
This paper introduces a distributed cloud-edge workflow-based data-driven predictive control system with disturbance observer, significantly reducing computation delays and improving control accuracy in cloud computing environments.
Contribution
It proposes a novel distributed workflow and disturbance observer integration for cloud-edge predictive control, enhancing efficiency and robustness over centralized methods.
Findings
Reduced computation times by up to 85.10% in real control examples.
Implemented a practical containerized cloud control system.
Proved UUB stability of the disturbance observer.
Abstract
Data-driven predictive control (DPC) has been studied and used in various scenarios, since it could generate the predicted control sequence only relying on the historical input and output data. Recently, based on cloud computing, data-driven predictive cloud control system (DPCCS) has been proposed with the advantage of sufficient computational resources. However, the existing computation mode of DPCCS is centralized. This computation mode could not utilize fully the computing power of cloud computing, of which the structure is distributed. Thus, the computation delay could not been reduced and still affects the control quality. In this paper, a novel cloud-edge collaborative containerised workflow-based DPC system with disturbance observer (DOB) is proposed, to improve the computation efficiency and guarantee the control accuracy. First, a construction method for the DPC workflow is…
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Taxonomy
TopicsAdvanced Control Systems Optimization · Fault Detection and Control Systems
