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Comparative Analysis of Single and Hybrid Neuro-Fuzzy-Based Models for an Industrial Heating Ventilation and Air Conditioning Control System

机译:用于工业供热通风和空调控制系统的单杂交神经模糊基模型的比较分析

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Hybridization of machine learning methods with soft computing techniques is an essential approach to improve the performance of the prediction models. Hybrid machine learning models, particularly, have gained popularity in the advancement of the high-performance control systems. Higher accuracy and better performance for prediction models of exergy destruction and energy consumption used in the control circuit of heating, ventilation, and air conditioning (HVAC) systems can be highly economical in the industrial scale to save energy. This research proposes two hybrid models of adaptive neuro-fuzzy inference system-particle swarm optimization (ANFIS-PSO), and adaptive neuro-fuzzy inference system-genetic algorithm (ANFIS-GA) for HVAC. The results are further compared with the single ANFIS model. The ANFIS-PSO model with the RMSE of 0.0065, MAE of 0.0028, and R2 equal to 0.9999, with a minimum deviation of 0.0691 (KJ/s), outperforms the ANFIS-GA and single ANFIS models.
机译:具有软计算技术的机器学习方法的杂交是提高预测模型性能的必要方法。杂交机学习模型,特别是在高性能控制系统的进步方面取得了普及。用于加热,通风和空调(HVAC)系统的控制电路中使用的高度破坏和能耗预测模型的更高的精度和更好的性能,可以在工业规模中具有高度经济的节省能源。本研究提出了两种适应性神经模糊推理系统粒子群优化(ANFIS-PSO)的混合模型,以及用于HVAC的自适应神经模糊推理系统 - 遗传算法(ANFIS-GA)。结果与单一ANFIS模型相比,进一步比较。 ANFIS-PSO模型,RMSE为0.0065,MAE为0.0028,r 2 等于0.9999,最小偏差为0.0691(KJ / s),优于ANFIS-GA和单个ANFIS模型。

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