The Application of Using Supervised Classification Techniques in Selecting the Most Optimized Temporary House Type in Post-disaster Situations

M. Afkhamiaghda, E. Elwakil
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Abstract

The United States spends around 450 million dollars just for lodging the survivors and creating temporary shelters in the wake of hurricane Harvey, Irma, and Maria in 2017. Post-disaster temporary housing is a multi-objective process, thus reaching the optimized model relies on numerous objectives and their interaction with each other. The construction activities, especially in a post-disaster scenario, is considered challenging, leading to ineffective management in post-disaster housing reconstruction. Acknowledging and creating a balance between these issues by the policymakers who provide accommodations to post-disaster victims is one of the main challenges that need to be addressed.Post-disaster temporary housing is an integral part of the recovery process; however, not many research types have been done regarding how the factors and to what degree factors can affect the classification. One way to categorize the temporary housing units (THU) is based on how they get built, either made onsite or created offsite. However, the mechanism of selecting the THU types is mainly based on expert opinion and tacit knowledge, which can result in the insufficiency of the process.This model aims to study how and to what degree the factors that affect the post-disaster temporary housing process dictate the type of THU in terms of being built onsite or modeled offsite. The researchers designed a questionnaire to understand each main factor's importance compared to each other through a ranking process. It also asks each participant to rate the different THUs being used based on their importance. In this study, an ordinal classification framework is introduced using the K-Nearest Neighbor (KNN) model to help decision-makers choose the right type of temporary houses based on their needs. This model’s results show how supervised classification models can be an efficient tool and holistic approach to providing more robust, efficient decisions as an alternative to the current strategy, which relies on tacit knowledge.
监督分类技术在灾后临时住房类型选择中的应用
2017年飓风“哈维”、“厄玛”和“玛丽亚”过后,美国仅为幸存者提供住宿和建造临时避难所就花费了约4.5亿美元。灾后临时住房建设是一个多目标过程,优化模型的建立依赖于众多目标及其相互作用。建筑活动,特别是灾后情况下的建筑活动,被认为具有挑战性,导致灾后住房重建的管理无效。为灾后受害者提供住宿的政策制定者承认并在这些问题之间建立平衡是需要解决的主要挑战之一。灾后临时住房是恢复过程的一个组成部分;然而,关于这些因素如何以及在多大程度上影响分类的研究类型并不多。对临时住房单元(THU)进行分类的一种方法是基于它们的建造方式,无论是在现场建造还是在场外建造。然而,对四u类型的选择机制主要是基于专家意见和隐性知识,这可能导致过程的不足。该模型旨在研究影响灾后临时住房过程的因素如何以及在多大程度上决定了现场建造或非现场建模的THU类型。研究人员设计了一份调查问卷,通过排名过程来了解每个主要因素的重要性。它还要求每个参与者根据其重要性对不同的so进行评分。本研究采用k -最近邻(KNN)模型,引入有序分类框架,帮助决策者根据需求选择合适的临时住房类型。该模型的结果表明,监督分类模型如何成为一种有效的工具和整体方法,以提供更健壮、更有效的决策,作为当前依赖隐性知识的策略的替代方案。
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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