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首页> 外文期刊>International Journal of Distributed Sensor Networks >Physical-Rules-Based Adaptive Neuro-Fuzzy Inferential Sensor Model for Predicting the Indoor Temperature in Heating Systems
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Physical-Rules-Based Adaptive Neuro-Fuzzy Inferential Sensor Model for Predicting the Indoor Temperature in Heating Systems

机译:基于物理规则的自适应神经模糊推理传感器模型,用于预测供热系统的室内温度

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摘要

Previous research demonstrated that inferential sensors-based control technology can significantly improve the energy efficiency of space heating systems. However, the performance strongly relies on the accuracy and robustness of the dynamic model upon which the inferential model is built. Traditional methods, such as simplified physical model, adaptive neurofuzzy inferential sensor- (ANFIS-) based model, were developed and tested in this research. In attempt to improve both the accuracy and robustness of inferential model, this study aims to investigate how to improve the performance of inferential sensors using physical-rules-based ANFIS in prediction of the hydraulic system temperature in order to adapt the good power needed in the dwellings. This paper presents the structure of this innovative method. The performance is tested using experimental data and is compared with that of previous methods using three performance measures: RMSE, RMS, andR2. The results show that the physical-rule-based ANFIS inferential model is more accurate and robust. The impact of this improvement on the overall control performance is also discussed.
机译:先前的研究表明,基于推理传感器的控制技术可以显着提高空间加热系统的能源效率。但是,性能在很大程度上取决于建立推理模型的动态模型的准确性和鲁棒性。在这项研究中,开发并测试了传统方法,例如简化的物理模型,基于自适应神经模糊推理传感器的模型(ANFIS-)。为了提高推论模型的准确性和鲁棒性,本研究旨在研究如何使用基于物理规则的ANFIS来提高推论传感器的性能,以预测液压系统温度,以适应液压系统所需的良好功率。住宅。本文介绍了这种创新方法的结构。使用实验数据对性能进行测试,并使用三种性能指标将其与以前的方法进行比较:RMSE,RMS和R2。结果表明,基于物理规则的ANFIS推理模型更准确,更可靠。还讨论了这种改进对总体控制性能的影响。

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