2022
DOI: 10.1155/2022/1926227
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Neural Network Model Design for Landscape Ecological Planning Assessment Based on Hierarchical Analysis

Abstract: In this paper, an in-depth study and analysis of landscape ecological planning and evaluation are carried out using the analytic hierarchy process (AHP) algorithm that integrates neural networks. The application of AHP in the field of tree species planning and the introduction of quantitative analysis methods can effectively change the subjectivity of previous qualitative analysis in tree species selection and make it objective, scientific, and reasonable. The research can provide a reference for other urban t… Show more

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Cited by 2 publications
(2 citation statements)
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“…The loss of some data information if a single model is used for prediction is inevitable. Sampling several prediction models for combination forecasting, such as introducing the improving grey model (Liu et al, 2021;Yang et al, 2022) and BP neural network model (Bai Y. L. et al, 2021;Hu, 2022;Liu and Zhou, 2022), which can improve the accuracy of the forecasting model, can also be considered.…”
Section: Research Prospectmentioning
confidence: 99%
“…The loss of some data information if a single model is used for prediction is inevitable. Sampling several prediction models for combination forecasting, such as introducing the improving grey model (Liu et al, 2021;Yang et al, 2022) and BP neural network model (Bai Y. L. et al, 2021;Hu, 2022;Liu and Zhou, 2022), which can improve the accuracy of the forecasting model, can also be considered.…”
Section: Research Prospectmentioning
confidence: 99%
“…A reasonable weighting must be assigned when considering multiple parameters. There are two main types of methods for assigning weights: subjective weighting methods [27,28] and objective weighting methods [29][30][31]. Different weighting methods have their own advantages and disadvantages.…”
Section: Introductionmentioning
confidence: 99%