ConGCNet: convex geometric constructive neural network for industrial internet of things
The intersection of the Industrial Internet of Things (IIoT) and artificial intelligence (AI) has garnered ever-increasing attention and research interest. Nevertheless, the dilemma between the strict resource-constrained nature of IIoT devices and the extensive resource demands of AI has not yet be...
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sg-ntu-dr.10356-1814712024-12-06T15:44:19Z ConGCNet: convex geometric constructive neural network for industrial internet of things Nan, Jing Dai, Wei Yuen, Chau Ding, Jinliang School of Electrical and Electronic Engineering Engineering Industrial Internet of Things Lightweight geometric constructive neural network The intersection of the Industrial Internet of Things (IIoT) and artificial intelligence (AI) has garnered ever-increasing attention and research interest. Nevertheless, the dilemma between the strict resource-constrained nature of IIoT devices and the extensive resource demands of AI has not yet been fully addressed with a comprehensive solution. Taking advantage of the lightweight constructive neural network (LightGCNet) in developing fast learner models for IIoT, a convex geometric constructive neural network with a low-complexity control strategy, namely, ConGCNet, is proposed in this article via convex optimization and matrix theory, which enhances the convergence rate and reduces the computational consumption in comparison with LightGCNet. Firstly, a low-complexity control strategy is proposed to reduce the computational consumption during the hidden parameters training process. Secondly, a novel output weights evaluated method based on convex optimization is proposed to guarantee the convergence rate. Finally, the universal approximation property of ConGCNet is proved by the low-complexity control strategy and convex output weights evaluated method. Simulation results, including four benchmark datasets and the real-world ore grinding process, demonstrate that ConGCNet effectively reduces computational consumption in the modelling process and improves the model's convergence rate. Published version This work was supported in part by the National Natural Science Foundation of China under Grant 62373361, and in part by the State Scholarship Fund, China Scholarship Council, under Grant 202306420127. 2024-12-03T04:57:06Z 2024-12-03T04:57:06Z 2024 Journal Article Nan, J., Dai, W., Yuen, C. & Ding, J. (2024). ConGCNet: convex geometric constructive neural network for industrial internet of things. Journal of Automation and Intelligence, 3(3), 169-175. https://dx.doi.org/10.1016/j.jai.2024.07.004 2949-8554 https://hdl.handle.net/10356/181471 10.1016/j.jai.2024.07.004 2-s2.0-85201675736 3 3 169 175 en Journal of Automation and Intelligence © 2024 The Authors. Published by Elsevier B.V. on behalf of KeAi Communications Co. Ltd. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/). application/pdf |
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Engineering Industrial Internet of Things Lightweight geometric constructive neural network Nan, Jing Dai, Wei Yuen, Chau Ding, Jinliang ConGCNet: convex geometric constructive neural network for industrial internet of things |
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The intersection of the Industrial Internet of Things (IIoT) and artificial intelligence (AI) has garnered ever-increasing attention and research interest. Nevertheless, the dilemma between the strict resource-constrained nature of IIoT devices and the extensive resource demands of AI has not yet been fully addressed with a comprehensive solution. Taking advantage of the lightweight constructive neural network (LightGCNet) in developing fast learner models for IIoT, a convex geometric constructive neural network with a low-complexity control strategy, namely, ConGCNet, is proposed in this article via convex optimization and matrix theory, which enhances the convergence rate and reduces the computational consumption in comparison with LightGCNet. Firstly, a low-complexity control strategy is proposed to reduce the computational consumption during the hidden parameters training process. Secondly, a novel output weights evaluated method based on convex optimization is proposed to guarantee the convergence rate. Finally, the universal approximation property of ConGCNet is proved by the low-complexity control strategy and convex output weights evaluated method. Simulation results, including four benchmark datasets and the real-world ore grinding process, demonstrate that ConGCNet effectively reduces computational consumption in the modelling process and improves the model's convergence rate. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Nan, Jing Dai, Wei Yuen, Chau Ding, Jinliang |
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Article |
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Nan, Jing Dai, Wei Yuen, Chau Ding, Jinliang |
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Nan, Jing |
title |
ConGCNet: convex geometric constructive neural network for industrial internet of things |
title_short |
ConGCNet: convex geometric constructive neural network for industrial internet of things |
title_full |
ConGCNet: convex geometric constructive neural network for industrial internet of things |
title_fullStr |
ConGCNet: convex geometric constructive neural network for industrial internet of things |
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ConGCNet: convex geometric constructive neural network for industrial internet of things |
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congcnet: convex geometric constructive neural network for industrial internet of things |
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2024 |
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https://hdl.handle.net/10356/181471 |
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