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Coarse-Grain Method for Simulating the Thermal Behavior of Buildings

机译:粗粒法模拟建筑物的热行为

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The paper demonstrates and evaluates a new method for simulating the thermal behavior of buildings that overcomes the limitations of conventional transient heat flow simulation techniques such as the Finite Difference Method (FDM) and the Finite Element Method (FEM). The proposed method uses a coarse-grain approach to model development whereby each element represents a complete building component such as a wall, internal space, or floor. The thermal behavior of each coarse-grain element is captured using empirical modeling techniques such as artificial neural networks (ANNs). The main advantages of the approach compared to conventional simulation methods are: (a) simplified model construction for the end-user; (b) simplified model reconfiguration; © significantly faster simulation runs (orders of magnitude faster for two and three-dimensional models); and (d) potentially more accurate results. rn The viability of the approach is demonstrated through a number of experiments with a model of a composite wall. The approach is shown to be able to sustain highly accurate long-term simulation runs, if the coarse-grain modeling elements are implemented as ANNs. In contrast, an implementation of the coarse-grain elements using a linear model is shown to function inaccurately and erratically. The paper concludes with an identification of on-going work and future areas for development of the technique
机译:本文演示并评估了一种模拟建筑物热行为的新方法,该方法克服了传统瞬态热流模拟技术(如有限差分法(FDM)和有限元方法(FEM))的局限性。所提出的方法使用粗粒度方法进行模型开发,其中每个元素代表完整的建筑组件,例如墙,内部空间或地板。使用经验建模技术(例如人工神经网络(ANN))捕获每个粗粒元素的热行为。与传统的仿真方法相比,该方法的主要优点是:(a)简化了最终用户的模型构建; (b)简化模型重新配置; ©大大加快了仿真运行速度(二维和三维模型的数量级更快); (d)可能更准确的结果。通过使用复合墙模型进行的大量实验证明了该方法的可行性。如果将粗粒度建模元素实现为ANN,则该方法将能够维持高度准确的长期仿真运行。相反,使用线性模型实现的粗粒度元素显示为不准确且不规则地起作用。本文最后指出了该技术的正在进行的工作和未来的发展领域

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