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Optimization Method for Energy Saving of Rural Architectures in Hot Summer and Cold Winter Areas Based on Artificial Neural Network

机译:基于人工神经网络的夏冷冬冷乡村建筑节能优化方法

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摘要

With the phased spatial planning of the rural revitalization strategy, the proportion of architecture energy consumption in the overall social energy consumption is also increasing year by year. Considering the hot summer and cold winter areas, the proportion of architecture energy consumption in the total energy consumption is very large. The ecological environment and natural resources have been greatly threatened, and the issue of energy conservation and environmental protection is imminent. Energy consumption prediction and analysis is an important branch of building energy conservation in the field of building technology and science. Aiming at the energy consumption characteristics of rural architectures in areas with hot summer and cold winter, this paper proposes a method for constructing a neural network model. When building a neural network, the dataset is called and the function is applied randomly to training samples. The data are used for simulation tests to analyze the fit between the predicted results and the calculated results. Flexible forecasting of specific target building energy consumption is achieved, which can provide optimization strategies for updating and adjusting architecture energy efficiency design. The experimental analysis benchmark parameters and the output value in the dataset are compared with the target simulation value. The relative error is less than 4, and the average relative error value (mean) and the root mean square error (RMSE) value are both controlled within 2. It is proved that the method in this paper can directly reflect the evaluation of energy consumption by the neural network and realize the high-speed conversion of the generalized model to the concrete goal, which has a certain value and research significance.
机译:随着乡村振兴战略的阶段性空间规划,建筑能耗占社会整体能耗的比重也在逐年提高。考虑到夏季炎热、冬季寒冷的地区,建筑能耗占总能耗的比重非常大。生态环境和自然资源受到极大威胁,节能环保问题迫在眉睫。能耗预测与分析是建筑技术与科学领域建筑节能的重要分支。针对夏热冬冷地区乡村建筑的能耗特点,提出一种神经网络模型的构建方法。在构建神经网络时,会调用数据集,并将函数随机应用于训练样本。这些数据用于仿真测试,以分析预测结果与计算结果之间的拟合度。实现对特定目标建筑能耗的灵活预测,为更新和调整建筑能效设计提供优化策略。将实验分析基准参数和数据集中的输出值与目标仿真值进行比较。相对误差小于4%,平均相对误差值(mean)和均方根误差(RMSE)值均控制在2%以内。证明本文方法能够直接反映神经网络对能耗的评价,实现广义模型向具体目标的高速转换,具有一定的价值和研究意义。

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