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Multi-Step Apparent Temperature Prediction in Broiler Houses Using a Hybrid SE-TCN–Transformer Model with Kalman Filtering

Pengshen Zheng, Wanchao Zhang, Bin Gao, Yali Ma, Changxi Chen

2025Sensors5 citationsDOIOpen Access PDF

Abstract

In intensive broiler production, rapid environmental fluctuations can induce heat stress, adversely affecting flock welfare and productivity. Apparent temperature (AT), integrating temperature, humidity, and wind speed, provides a comprehensive thermal index, guiding predictive climate control. This study develops a multi-step AT forecasting model based on a hybrid SE-TCN-Transformer architecture enhanced with Kalman filtering. The temporal convolutional network with SE attention extracts short-term local trends, the Transformer captures long-range dependencies, and Kalman smoothing reduces prediction noise, collectively improving robustness and accuracy. The model was trained on multi-source time-series data from a commercial broiler house and evaluated for 5, 15, and 30 min horizons against LSTM, GRU, Autoformer, and Informer benchmarks. Results indicate that the proposed model achieves substantially lower prediction errors and higher determination coefficients. By combining multi-variable feature integration, local-global temporal modeling, and dynamic smoothing, the model offers a precise and reliable tool for intelligent ventilation control and heat stress management. These findings provide both scientific insight into multi-step thermal environment prediction and practical guidance for optimizing broiler welfare and production performance.

Topics & Concepts

Kalman filterRobustness (evolution)SmoothingBroilerComputer scienceHeat stressControl theory (sociology)Wind speedEngineeringEnvironmental scienceThermalSupport vector machineMachine learningArtificial intelligenceThermal comfortModel predictive controlTemperature controlExtended Kalman filterEffects of Environmental Stressors on LivestockGreenhouse Technology and Climate ControlAir Quality Monitoring and Forecasting