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Evaluation and Study of Growth of Energy-Saving Building Based on Cascade Neural Network

机译:基于级联神经网络的节能建筑成长性评价研究。

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The energy-saving gap of building is serious. In practical matters of building engineering, the input process of time-varying system can be divided into several stages. In every stage, the system has its own rules and features. At present, various evaluation methods are slow in solving this matter. Cascade neural network can properly describe the growth continuity of each part of building energy-saving. In this paper, we applied cascade neural network to the growth evaluation of building energy-saving to effectively monitor whether building energy-saving is out of joint.
机译:建筑节能缺口很大。在建筑工程的实际问题中,时变系统的输入过程可以分为几个阶段。在每个阶段,系统都有自己的规则和功能。目前,各种评估方法在解决该问题上很慢。级联神经网络可以恰当地描述建筑节能各个环节的增长连续性。本文将级联神经网络应用于建筑节能的增长评价中,以有效地监测建筑节能是否脱节。

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