Quality prediction using functional linear regression with in-situ image and functional sensor data
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作者:
Zerehsaz, Yaser
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Exagens, Data Sci Dept, Montreal, PQ, CanadaExagens, Data Sci Dept, Montreal, PQ, Canada
Zerehsaz, Yaser
[1
]
Sun, Wenbo
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机构:
Univ Michigan, Transportat Res Inst, Ann Arbor, MI USA
Univ Michigan, Transportat Res Inst, Ann Arbor, MI 48109 USAExagens, Data Sci Dept, Montreal, PQ, Canada
Sun, Wenbo
[2
,4
]
Jin, Judy
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机构:
Univ Michigan, Ind & Operat Engn Dept, Ann Arbor, MI USAExagens, Data Sci Dept, Montreal, PQ, Canada
Jin, Judy
[3
]
机构:
[1] Exagens, Data Sci Dept, Montreal, PQ, Canada
[2] Univ Michigan, Transportat Res Inst, Ann Arbor, MI USA
[3] Univ Michigan, Ind & Operat Engn Dept, Ann Arbor, MI USA
[4] Univ Michigan, Transportat Res Inst, Ann Arbor, MI 48109 USA
This article studies a general regression model for a scalar quality response with mixed types of process predictors including process images, functional sensing signals, and scalar process setup attributes. To represent a set of time-dependent process images, a third-order tensor is employed for preserving not only the spatial correlation of pixels within one image but also the temporal dependency among a sequence of images. Although there exist some papers dealing with either tensorial or functional regression, there is little research to thoroughly study a regression model consisting of both tensorial and functional predictors. For simplicity, the presented regression model is called functional linear regression with tensorial and functional predictor (FLR-TFP). The advantage of the presented FLR-TFP model, which is compared to the classical stack-up strategy, is that FLR-TFP can handle both tensorial and functional predictors without destroying the data correlation structure. To estimate an FLR-TFP model, this article presents a new alternating Elastic Net (AEN) estimation algorithm, in which the problem is reformed as three sub-problems by iteratively estimating each group of tensorial, functional, and scalar parameters. To execute the proposed AEN algorithm, a systematic approach is developed to effectively determine the initial running sequence among three sub-problems. The performance of the FLR-TFP model is evaluated using simulations and a real-world case study of friction stir blind riveting process.
机构:
INRA, Unite Biometrie & Intelligence Artificielle, BP 27, F-31326 Castanet Tolosan, FranceINRA, Unite Biometrie & Intelligence Artificielle, BP 27, F-31326 Castanet Tolosan, France
Cardot, Herve
Sarda, Pascal
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机构:
Univ Toulouse 3, LSP, UMR C5583, F-31062 Toulouse, France
Univ Toulouse le Mirail, GRIMM, EA2254, F-31058 Toulouse, FranceINRA, Unite Biometrie & Intelligence Artificielle, BP 27, F-31326 Castanet Tolosan, France