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Abstract:
Deep variational residual auto-encoder (ResNet-VAE) has shown promising outcomes in missing imputation of wastewater quality data. Nevertheless, with its large storage size and computation overhead, it is of great difficulty to deploy wastewater treatment plant (WWTP) sensors for real-time miss-ing imputation. To address this problem, we propose a novel approach called lightweight-ResNet-VAE to compress classical ResNet-VAE by network pruning, weight quantization, and rela-tive indexing in the paper. Firstly, we develop a three-step net-work pruning method to sparsify the weight matrices by remov-ing insignificant weights to reduce the time cost of model infer-ence. Secondly, we develop weight quantization and use eight shared weights to compress the size of each weight from 32-bit to 3-bit. Finally, the relative indexing is adopted to further com-press the size of the classical ResNet-VAE by compressed sparse row (CSR), which greatly accelerates the model computation and saves storage size. Experiments on the Beipai Iot influent quality dataset demonstrate that lightweight-ResNet-VAE compresses the size of the classical ResNet-VAE from 301.88KB to 26.24KB with a compression rate of 11.50 times, and outperforms the baseline methods in terms of computation acceleration, storage saving and energy consumption with only a slight decrease on accuracy as 2.74% in MAPE of missing imputation for wastewater quality data due to pruning less significant weights and quantizing the remaining weights. IEEE
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IEEE Internet of Things Journal
ISSN: 2327-4662
Year: 2024
Issue: 23
Volume: 11
Page: 1-1
1 0 . 6 0 0
JCR@2022
Cited Count:
SCOPUS Cited Count: 1
ESI Highly Cited Papers on the List: 0 Unfold All
WanFang Cited Count:
Chinese Cited Count:
30 Days PV: 7
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