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Intelligent Soft-Computing Based Modelling of Naturally Ventilated Buildings

机译:基于智能软计算的自然通风建筑建模

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The paper presents recent results on the application of the soft computing methodology for modelling of the internal climate in office buildings. More specifically, a part of a recently completed naturally ventilated building is considered which comprises three neighbouring offices and one corridor within the Portland Building at the University of Portsmouth. The approach adopted uses fuzzy logic for modelling, neural networks for adaptation and genetic algorithms for optimisation of the fuzzy model. The fuzzy models are of the Takagi-Sugeno type and are built by subtractive clustering. As a result of the latter, the initial values of the antecedent non-linear membership functions and the consequent linear algebraic equations parameters are determined. A method of extensive search of fuzzy model structures is presented which fully explores the dynamics of the plant. The model parameters are further adjusted by a back-propagation training neural network and a real-valued genetic algorithm in order to obtain a better fit to the measured data. Results with real data are presented for two types of models, namely Regression Delay and Proportional Difference. These models are applied for predicting internal air temperatures.
机译:本文介绍了软计算方法在办公楼内部气候建模中的最新应用结果。更具体地说,考虑到最近完成的自然通风建筑的一部分,该建筑包括朴次茅斯大学的波特兰大楼内的三个相邻办公室和一个走廊。所采用的方法使用模糊逻辑进行建模,使用神经网络进行自适应以及使用遗传算法来优化模糊模型。模糊模型属于Takagi-Sugeno类型,并通过减法聚类建立。作为后者的结果,确定了先前的非线性隶属度函数的初始值以及由此产生的线性代数方程参数。提出了一种广泛搜索模糊模型结构的方法,该方法可以充分探索植物的动态特性。通过反向传播训练神经网络和实值遗传算法进一步调整模型参数,以获得对测量数据的更好拟合。带有真实数据的结果针对两种类型的模型给出,即回归延迟和比例差。这些模型适用于预测内部空气温度。

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