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Comparative study of artificial intelligence-based building thermal control methods - Application of fuzzy, adaptive neuro-fuzzy inference system, and artificial neural network

机译:基于人工智能的建筑热控制方法的比较研究-模糊,自适应神经模糊推理系统和人工神经网络的应用

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摘要

This study's aim is to develop diverse Artificial Intelligence-based (AI-based) thermal control logics and to compare their performances for identifying potentials as an advanced thermal control method in buildings. Towards that aim, three AI-based control logics have been developed: i) Fuzzy-based control; ii) ANFIS-based (Adaptive Neuro-Fuzzy Inference System-based) control; and iii) ANN-based (Artificial Neural Network-based) control. The last-mentioned two were adaptive methods employing iterative self-tuning process during system operation. Each method's performance was tested in a typical two-story residential building in USA, via computer simulation incorporating IBPT (International Building Physics Toolbox) and MATLAB. In analysis of test results for indoor air temperature, thermal comfort profiles, and amount of heat supply and removal, two adaptive control methods - ANFIS-based and ANN-based - significantly stabilized thermal conditions by the increased comfort period and the decreased deviations from the set-point compared to the Fuzzy-based non-adaptive method. No control method showed significant energy saving effects over the other. In conclusion, adaptive AI-based control methods have potential to maintain interior air temperature more comfortably.
机译:这项研究的目的是开发各种基于人工智能(基于AI)的热控制逻辑,并比较它们的性能,以识别潜在的潜在建筑物热控制方法。为了实现这一目标,已经开发了三种基于AI的控制逻辑:i)基于模糊的控制; ii)基于ANFIS(基于自适应神经模糊推理系统)的控制; iii)基于人工神经网络(基于人工神经网络)的控制。最后提到的两种是在系统运行过程中采用迭代自调整过程的自适应方法。通过结合IBPT(国际建筑物理工具箱)和MATLAB的计算机模拟,在美国典型的两层住宅建筑中测试了每种方法的性能。在分析室内空气温度,热舒适度以及供热和除热量的测试结果时,两种自适应控制方法-基于ANFIS和基于ANN-通过增加舒适度和减小与温度的偏差来显着稳定热状况。设定点与基于模糊的非自适应方法相比。没有一种控制方法显示出明显的节能效果。总之,基于AI的自适应控制方法有潜力更舒适地保持室内空气温度。

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