Abstract

Environmental quality is a major factor that directly impacts waterfowl productivity. Accurate prediction of pollution index (PI) is the key to improving environmental management and pollution control. This study applied a new neural network model called temporal convolutional network and a denoising algorithm called wavelet transform (WT) for predicting future 12-, 24-, and 48-hour PI values at a waterfowl farm in Shanwei, China. The temporal convoluted network (TCN) model performance was compared with that of recurrent architectures with the same capacity, long-short time memory neural network (LSTM), and gated recurrent unit (GRU). Denoised environmental data, including ammonia, temperature, relative humidity, carbon dioxide (CO2), and total suspended particles (TSP), were used to construct the forecasting model. The simulation results showed that the TCN model in general produced a more precise PI prediction and provided the highest prediction accuracy for all phases (MAE = 0.0842, 0.0859, and 0.1115; RMSE = 0.0154, 0.0167, and 0.0273; R2 = 0.9789, 0.9791, and 0.9635). The PI assessment prediction model based on TCN exhibited the best prediction accuracy and general performance compared with other parallel forecasting models and is a suitable and useful tool for predicting PI in waterfowl farms.

Highlights

  • Pollution index of waterfowl farm assessment and prediction based on temporal convoluted network relative humidity data (SNR = 4.0809, normalized cross correlation (NCC) = 0.8630), and CO2 data (SNR = 1.7785, NCC = 0.7793), and Coif was suitable for total suspended particles (TSP) data (SNR = 13.1443, NCC = 0.9771)

  • The performance of temporal convoluted network (TCN) fluctuates when the prediction time interval changes from 12 hours to 24 hours, but the wave motion ranges in mean absolute error (MAE), root mean square error (RMSE) and R2 of TCN and gated recurrent unit (GRU) are less than 10%

  • The wave motion range in MAE, RMSE and R2 of long-short time memory neural network (LSTM) reached 25% when the prediction time interval changed from 12 hours to 24 hours and reached 112% when the prediction time interval changed from 24 hours to 48 hours

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Summary

Introduction

Pollution index of waterfowl farm assessment and prediction based on temporal convoluted network poor performance. Based on the above studies, this paper proposes a new waterfowl house environmental quality assessment and prediction model combining WT and a temporal convolutional network. The WT can reduce the noise of original environmental data and obtain high-quality data, and the temporal convolutional network can extract the temporal and spatial features of processed data, output precise environmental quality assessment, and predict results.

Results
Conclusion
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