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    Load-Capacity Rating of Bridge Populations through Machine Learning: Application of Decision Trees and Random Forests

    Source: Journal of Bridge Engineering:;2017:;Volume ( 022 ):;issue: 010
    Author:
    Mohamad Alipour
    ,
    Devin K. Harris
    ,
    Laura E. Barnes
    ,
    Osman E. Ozbulut
    ,
    Julia Carroll
    DOI: 10.1061/(ASCE)BE.1943-5592.0001103
    Publisher: American Society of Civil Engineers
    Abstract: The functionality of the U.S. transportation infrastructure system is dependent upon the health of an aging network of over 600,000 bridges, and agencies responsible for maintaining these bridges rely on the process of load rating to assess the adequacy of individual structures. This paper presents a new approach for safety screening and load-capacity evaluation of large bridge populations that seeks to uncover heretofore unseen patterns within the National Bridge Inventory database and establish relationships between select bridge attributes and their load-capacity status. Decision-tree and random-forest classification models were trained on the national concrete slab bridge data set of over 40,000 structures. The resulting models were validated on an independent data set and then compared with a number of existing judgment-based schemes found in an extensive survey of the current state of practice in the United States. The proposed approach offers a method that provides guidance for improved allocation of resources by informing maintenance decisions through rapid identification of candidate bridges that require further scrutiny for either possible load restriction or restriction removal.
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      Load-Capacity Rating of Bridge Populations through Machine Learning: Application of Decision Trees and Random Forests

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    http://yetl.yabesh.ir/yetl1/handle/yetl/4241753
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    contributor authorMohamad Alipour
    contributor authorDevin K. Harris
    contributor authorLaura E. Barnes
    contributor authorOsman E. Ozbulut
    contributor authorJulia Carroll
    date accessioned2017-12-16T09:21:30Z
    date available2017-12-16T09:21:30Z
    date issued2017
    identifier other%28ASCE%29BE.1943-5592.0001103.pdf
    identifier urihttp://138.201.223.254:8080/yetl1/handle/yetl/4241753
    description abstractThe functionality of the U.S. transportation infrastructure system is dependent upon the health of an aging network of over 600,000 bridges, and agencies responsible for maintaining these bridges rely on the process of load rating to assess the adequacy of individual structures. This paper presents a new approach for safety screening and load-capacity evaluation of large bridge populations that seeks to uncover heretofore unseen patterns within the National Bridge Inventory database and establish relationships between select bridge attributes and their load-capacity status. Decision-tree and random-forest classification models were trained on the national concrete slab bridge data set of over 40,000 structures. The resulting models were validated on an independent data set and then compared with a number of existing judgment-based schemes found in an extensive survey of the current state of practice in the United States. The proposed approach offers a method that provides guidance for improved allocation of resources by informing maintenance decisions through rapid identification of candidate bridges that require further scrutiny for either possible load restriction or restriction removal.
    publisherAmerican Society of Civil Engineers
    titleLoad-Capacity Rating of Bridge Populations through Machine Learning: Application of Decision Trees and Random Forests
    typeJournal Paper
    journal volume22
    journal issue10
    journal titleJournal of Bridge Engineering
    identifier doi10.1061/(ASCE)BE.1943-5592.0001103
    treeJournal of Bridge Engineering:;2017:;Volume ( 022 ):;issue: 010
    contenttypeFulltext
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