cs.AI updates on arXiv.org 07月31日 12:48
Bayesian Optimization of Process Parameters of a Sensor-Based Sorting System using Gaussian Processes as Surrogate Models
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本文提出一种基于贝叶斯优化和Gaussian过程回归模型的传感器分拣系统参数优化方法,通过减少实验次数同时考虑两个优化目标,并在模型计算中考虑不确定性,以优化分拣精度。

arXiv:2507.22766v1 Announce Type: cross Abstract: Sensor-based sorting systems enable the physical separation of a material stream into two fractions. The sorting decision is based on the image data evaluation of the sensors used and is carried out using actuators. Various process parameters must be set depending on the properties of the material stream, the dimensioning of the system, and the required sorting accuracy. However, continuous verification and re-adjustment are necessary due to changing requirements and material stream compositions. In this paper, we introduce an approach for optimizing, recurrently monitoring and adjusting the process parameters of a sensor-based sorting system. Based on Bayesian Optimization, Gaussian process regression models are used as surrogate models to achieve specific requirements for system behavior with the uncertainties contained therein. This method minimizes the number of necessary experiments while simultaneously considering two possible optimization targets based on the requirements for both material output streams. In addition, uncertainties are considered during determining sorting accuracies in the model calculation. We evaluated the method with three example process parameters.

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传感器分拣系统 贝叶斯优化 Gaussian过程回归 优化调整 不确定性考虑
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