Explaining resilience model of historical bazaars using artificial neural network

IF 3.5 Q3 GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY
Mina Heydari Torkamani, Y. Shahbazi, Azita Belali Oskoyi
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引用次数: 0

Abstract

PurposeHistorical bazaars, a huge treasure of Iranian culture, art and economy, are places for social capital development. Un-supervised management in past decades has led to the demolition and change of historical bazaars and negligence of its different aspects. The present research aims to investigate the resilience of historical bazaars preserving their identity and different developments.Design/methodology/approachThe artificial neural network (ANN) has been applied to investigate the resilience of historical bazaars. This model consists of three main networks for evaluating the resilience of historical networks in terms of adaptability, variability and reactivity.FindingsThe ANN proposed to evaluate the resilience of historic bazaars based on the mentioned factors is efficient. By calculating mean squared error (MSE), the model accuracy for evaluating adaptability, variability and reactivity were obtained at 7.62e-25, 2.91e-24 and 1.51e-24. The correlation coefficient was obtained at a significance level of 99%. This indicates the considerable effectiveness of the artificial intelligence model in modeling and predicting the qualitative properties of historical bazaars resilience.Originality/valueThis paper clarifies indexes and components of resilience in terms of adaptability, variability and reactivity. Then, the ANN model is obtained with the least error and very high accuracy that predict the resilience of historical bazaars.
用人工神经网络解释历史市集弹性模型
目的历史集市是伊朗文化、艺术和经济的巨大财富,是社会资本发展的场所。在过去的几十年里,无人监督的管理导致了历史集市的拆除和改变,以及对其各个方面的疏忽。本研究旨在调查历史集市保留其身份和不同发展的复原力。设计/方法/方法人工神经网络(ANN)已被应用于研究历史集市的复原力。该模型由三个主要网络组成,用于评估历史网络的适应性、可变性和反应性。发现基于上述因素的人工神经网络评价历史集市的复原力是有效的。通过计算均方误差(MSE),评估适应性、可变性和反应性的模型精度分别为7.62e-25、2.91e-24和1.51e-24。相关系数在99%的显著性水平上获得。这表明人工智能模型在建模和预测历史集市复原力的定性特性方面具有相当大的有效性。原创性/价值本文从适应性、可变性和反应性三个方面阐明了韧性的指标和组成部分。然后,以最小的误差和很高的精度获得了预测历史集市恢复力的ANN模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Smart and Sustainable Built Environment
Smart and Sustainable Built Environment GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY-
CiteScore
9.20
自引率
8.30%
发文量
53
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