Invention Grant
- Patent Title: Advanced ensemble learning strategy based semi-supervised soft sensing method
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Application No.: US16837428Application Date: 2020-04-01
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Publication No.: US11488071B2Publication Date: 2022-11-01
- Inventor: Weili Xiong , Xudong Shi , Bingbin Gu , Xiaoqing Che , Xiaochen Sheng
- Applicant: Jiangnan University
- Applicant Address: CN Wuxi
- Assignee: Jiangnan University
- Current Assignee: Jiangnan University
- Current Assignee Address: CN Wuxi
- Agency: IPro, PLLC
- Agent Na Xu
- Main IPC: G06N20/20
- IPC: G06N20/20 ; G06F17/16

Abstract:
The present disclosure provides a novel advanced ensemble learning strategy for soft sensor development with semi-supervised model. The main target of the soft sensor is to improve the prediction performance with a limited number of labeled data samples, under the ensemble learning framework. Firstly, in order to improve the prediction accuracy of sub-models for ensemble modeling, a novel sample selection mechanism is established to select the most significantly estimated data samples. Secondly, the Bagging method is employed to both of the labeled and selected data-set, and the two different kinds of datasets are matched based on the Dissimilarity (DISSIM) algorithm. As a result, the proposed method guarantees the diversity and accuracy of the sub-models which are two significant issues of the ensemble learning. In this work, the soft sensor is constructed upon the Gaussian Process Regression (GPR) model.
Public/Granted literature
- US20200234199A1 Advanced Ensemble Learning Strategy Based Semi-supervised Soft Sensing Method Public/Granted day:2020-07-23
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