Evaluation of Rural Tourism Spatial Pattern Based on Multifactor-Weighted Neural Network Algorithm Model in Big Data Era

Sci. Program. Pub Date : 2021-12-28 DOI:10.1155/2021/8108287
Qiang Xu
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引用次数: 2

Abstract

In recent years, due to the rapid development of rural tourism, rural tourism has lost its unique rurality, which has led to a certain impact on the sustainable development of rural tourism. Primarily, based on the rural characteristics, the social environment development, population development, and economic development are taken as the research indexes, and the evaluation index system of rural tourism destination is constructed. Afterward, an empirical study on the spatial pattern of rural tourism is carried out with examples, and the model is simulated and analyzed by MATLAB software. Finally, the spatial autocorrelation method is used to analyze the evolution characteristics of the rural tourism spatial pattern. The results show that through the analysis of the evaluation error curve of the Back Propagation Neural Network (BPNN), the evaluation error and the actual error range are within 0.08%, which proves that the BPNN algorithm has good calculation accuracy. The BPNN rural tourism destination rurality evaluation model established here can make an effective evaluation of rural tourism space. The results show that the proportion of employees in the primary industry and the penetration rate of mobile phones are the decisive factors in the adjustment of industrial structure and social environmental factors, respectively. Rural per capita tourism income and the proportion of primary industry output value will also have a certain impact on rural evolution. Certain guiding significance is provided for the sustainable development of rural tourism.
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基于多因素加权神经网络算法模型的大数据时代乡村旅游空间格局评价
近年来,由于乡村旅游的快速发展,乡村旅游失去了其独特的乡村性,这对乡村旅游的可持续发展造成了一定的影响。首先,根据乡村特点,以社会环境发展、人口发展和经济发展为研究指标,构建乡村旅游目的地评价指标体系。随后,结合实例对乡村旅游空间格局进行实证研究,并利用MATLAB软件对模型进行仿真分析。最后,运用空间自相关方法分析了乡村旅游空间格局的演化特征。结果表明:通过对bp神经网络(Back Propagation Neural Network, BPNN)评估误差曲线的分析,评估误差与实际误差范围在0.08%以内,证明了bp神经网络算法具有良好的计算精度。本文建立的BPNN乡村旅游目的地乡村性评价模型可以对乡村旅游空间进行有效的评价。研究结果表明,第一产业从业人员占比和手机普及率分别是产业结构调整的决定性因素,社会环境因素的决定性因素是手机普及率。农村人均旅游收入和第一产业产值占比也会对乡村演化产生一定的影响。对乡村旅游的可持续发展具有一定的指导意义。
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