School of Art and Media, Xi'an Technological University, Xi'an, Shaanxi 710032, China.
J Environ Public Health. 2022 Sep 12;2022:3749482. doi: 10.1155/2022/3749482. eCollection 2022.
Yan'an is one of the "two holy places" of the Chinese nation and the Chinese revolution and is one of the first cities of historical and cultural significance and an outstanding tourist city in China, as announced by the state council. The evaluation of the effectiveness of environmental conservation is one of the very important elements of the conservation of Yan'an's architectural heritage. However, the existing evaluation methods cannot provide new solutions for decision-making, the meaning of the comprehensive evaluation function is unclear, the naming clarity is low, there is less quantitative data and more qualitative components, and the results are not easily convincing. This paper proposes a method for evaluating the practical effects of environmental class measures in the conservation of Yan'an's architectural heritage based on recurrent neural networks. The recurrent neural network makes full use of the memory function in the network, considers the causal relationship of the actual effect, and efficiently evaluates the existing measures. In comparison with factor analysis and hierarchical analysis, this paper has greater applicability in evaluating the practical effects of environmental measures in the conservation of Yan'an's architectural heritage and is basically consistent with the results of the theoretical analysis. It provides a scientific basis for the construction and implementation of environmental measures for the architectural heritage of Yan'an.
延安是中华民族和中国革命的“圣地”之一,是国务院公布的首批历史文化名城和中国优秀旅游城市之一。保护延安建筑遗产的环境保持效果评估是保护工作的一个非常重要的组成部分。然而,现有的评估方法无法为决策提供新的解决方案,综合评估功能的意义不明确,命名清晰度低,定量数据较少,定性成分较多,结果不易令人信服。本文提出了一种基于递归神经网络的延安建筑遗产保护中环境分类措施实际效果的评估方法。递归神经网络充分利用了网络中的记忆功能,考虑了实际效果的因果关系,并有效地评估了现有措施。与因子分析和层次分析相比,本文在评估延安建筑遗产保护中环境措施的实际效果方面具有更大的适用性,与理论分析结果基本一致。为延安建筑遗产的环境措施的制定和实施提供了科学依据。