School of Design and Art, Xijing University, Xi'an City 710000, China.
Comput Intell Neurosci. 2022 Jul 16;2022:1340038. doi: 10.1155/2022/1340038. eCollection 2022.
With the development of modern industrialization, the rational planning of land resources, especially rural settlements (RSs), has become an important part of rural revitalization. Optimizing the RS spatial layout and enhancing its evolution simulation can encourage effective land resource allocation. It helps improve rural residents' production and living standards, alleviates the pressure of urban and rural land conflicts, and promotes the common development of urban and rural economies. This work mainly uses the ANN-CN (artificial neural network-cellular automata) model to study the cultural landscape gene construction of ancient towns in Shaanxi. First, RSs' spatial layout and landscape pattern index (LPI) in Shaanxi are analyzed. Second, the ANN-CA model is designed using the artificial neural network (ANN). Finally, Hua Yang Ancient Town in southern Shaanxi, Feng Huo Town in Guan Zhong, and Zhong Jiao Town in Northern Shaanxi are selected as the research objects. The influencing factors of spatial layout are extracted, and the evolution extracted of spatial layout is simulated based on the ANN-CA model. The simulation experiment finds that the area change of Hua Yang Ancient Town is more obvious than that of the other two ancient towns, with a change rate of 6.98%. Although the area change rate of Feng Huo Town is 19.79%, the actual change area is less than that of Hua Yang Ancient Town. Second, comparing the simulation accuracy of the model under different parameters, we can obtain the most suitable parameter for predicting the ancient towns' land-use type and construing landscape gene land. Specifically, for Hua Yang Ancient Town, = 0.9 and the random disturbance parameter = 1.0. For Zhong Jiao Town, = 0.8 and = 1.0. For Feng Huo Town, = 0.9 and = 1.0. It is hoped that this work can further carry forward Shaanxi's traditional culture and carry out the protective development of traditional rural buildings.
随着现代化工业化的发展,土地资源的合理规划,特别是农村住区(RSs),已成为农村振兴的重要组成部分。优化 RS 空间布局并增强其演化模拟可以鼓励有效土地资源的配置。这有助于提高农村居民的生产和生活水平,缓解城乡土地冲突的压力,促进城乡经济的共同发展。本工作主要采用 ANN-CN(人工神经网络-元胞自动机)模型,研究陕西古镇的文化景观基因构建。首先,分析了陕西 RSs 的空间布局和景观格局指数(LPI)。其次,利用人工神经网络(ANN)设计了 ANN-CA 模型。最后,选择陕南华阳古镇、关中风火镇和陕北中焦镇作为研究对象,提取空间布局的影响因素,并基于 ANN-CA 模型模拟空间布局的演化。模拟实验发现,华阳古镇的面积变化比其他两个古镇更为明显,变化率为 6.98%。尽管风火镇的面积变化率为 19.79%,但其实际变化面积小于华阳古镇。其次,比较不同参数下模型的模拟精度,可以得到最适合预测古镇土地利用类型和构建景观基因土地的参数。具体来说,对于华阳古镇, = 0.9 和随机干扰参数 = 1.0。对于中焦镇, = 0.8 和 = 1.0。对于风火镇, = 0.9 和 = 1.0。希望这项工作能够进一步弘扬陕西的传统文化,开展传统农村建筑的保护与开发。