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首页> 外文期刊>Control Engineering Practice >Efficient low-order system identification from low-quality step response data with rank-constrained optimization
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Efficient low-order system identification from low-quality step response data with rank-constrained optimization

机译:高效的低阶系统识别来自低质量阶跃响应数据,具有秩约束优化

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摘要

In the presence of low-quality industrial process data, generic step response identification methods typically show unsatisfactory performance and heavily rely on manual intervention of technical personnel. This erects obvious obstacles for the advancement of intelligent manufacturing in process industries. To address these challenges, we propose a novel rank-constrained optimization approach to low-order system identification from step response data, which yields much more accurate and robust estimates than existing modeling methods.By exploiting the inherent low-rank structure of the Hankel matrix of ideal step response, parameters of a low-order process can be accurately recovered by solving a rank-constrained program, which effectively bypasses the two-step procedure in some state-of-the-art algorithms involving significant error accumulation. The alternating direction method of multipliers is adopted to effectively solve the nonconvex error minimization problem and circumvent poor local optima. Case studies on both numerical examples and industrial datasets demonstrate that, the proposed method not only gives much better modeling accuracy, but also secures reliable and robust estimates even for raw low-quality industrial data. This is particularly helpful for automated execution of the identification routine without human intervention, with success percentage over 99% that is remarkably higher than the state-of-the-art.
机译:在低质量的工业过程数据的存在下,通用步骤响应识别方法通常展示不令人满意的性能和严重依赖于技术人员的手动干预。这完美明显的障碍在工艺产业中智能制造的进步。为了解决这些挑战,我们提出了一种新颖的秩约为级别的优化方法,从阶跃响应数据中提出低阶系统识别,这会产生比现有的建模方法更准确和稳健的估计。由利用Hankel矩阵的固有低级结构。在理想的步骤响应中,通过求解秩约束的程序,可以精确地恢复低阶过程的参数,这有效地绕过了涉及显着误差累积的一些最先进的算法中的两步过程。采用乘法器的交替方向方法有效地解决了非渗透误差最小化问题,并规避了差的本地OptimA。关于数字示例和工业数据集的案例研究表明,所提出的方法不仅提供了更好的建模精度,而且即使对于原始的低质量的工业数据,也可以保护可靠和强大的估计。这对于无需人为干预的识别例程的自动执行特别有助于,成功百分比超过99%,这显着高于最先进的。

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