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Abstract:
Water quality detection is very important for monitoring water sources and main canal, which is beneficial to offer strategies for the management of water quality and environment. According to the practical distribution and data characteristic, this paper proposes a semi-supervised detection method of water quality based on a sparse autoencoder network. In the proposed approach, an IoT-based distributed structure is implemented to execute data interaction, and a representation model is firstly learned via a sparse autoencoder trained by unlabeled water monitoring data acquired from 8 physical reservoirs, then a softmax classifier is trained using a small set of labeled classification data based on the China Surface Water Environmental Quality Standard (GB3838-2002) expressed by the sparse autoencoder. The combined model is finally used to evaluate the water quality. Compared Experimental results with the traditional methods and actual measure results show that the proposed method has high robustness and accuracy for water quality assessment, and has a good prospect of practical applications. © 2016.
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Journal of Information Hiding and Multimedia Signal Processing
ISSN: 2073-4212
Year: 2016
Issue: 4
Volume: 7
Page: 858-866
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ESI Highly Cited Papers on the List: 0 Unfold All
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30 Days PV: 5
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